MAMF-GCN: Multi-scale adaptive multi-channel fusion deep graph convolutional network for predicting mental disorder
Existing diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing u...
Saved in:
Published in | Computers in biology and medicine Vol. 148; p. 105823 |
---|---|
Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
Oxford
Elsevier Ltd
01.09.2022
Elsevier Limited |
Subjects | |
Online Access | Get full text |
Cover
Loading…
Abstract | Existing diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results.
In this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers.
To demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%–39.83% and 12.59%–32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis.
The proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis.
•Overcomes the problem of over smoothing and extracts multi-scale deep features.•Considering the disparity and consistency between different modals.•Effective multi-modal fusion strategy.•Satisfactory results are obtained in the classification of public datasets.•This method provides guidance and aids doctors in the clinical diagnosis. |
---|---|
AbstractList | AbstractPurposeExisting diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results. MethodIn this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers. ResultsTo demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%–39.83% and 12.59%–32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis. ConclusionThe proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis. PurposeExisting diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results.MethodIn this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers.ResultsTo demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%–39.83% and 12.59%–32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis.ConclusionThe proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis. Existing diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results. In this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers. To demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%–39.83% and 12.59%–32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis. The proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis. •Overcomes the problem of over smoothing and extracts multi-scale deep features.•Considering the disparity and consistency between different modals.•Effective multi-modal fusion strategy.•Satisfactory results are obtained in the classification of public datasets.•This method provides guidance and aids doctors in the clinical diagnosis. Existing diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results.PURPOSEExisting diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective diagnostic method on fMRI data. Graph neural networks (GNN) have been paid more attention recently because of their advantages in processing unstructured relational data, especially for fMRI data. However, how to deeply embed and well-integrate with different modalities and scales on GNN is still a challenge. Instead of reaching a high degree of fusion, existing GCN methods simply combine image and non-image data. Most graph convolutional network (GCN) models use shallow structures, making it challenging to learn about potential information. Furthermore, current graph construction approaches usually use a single specific brain atlas, limiting the analysis and results.In this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers.METHODIn this paper, a multi-scale adaptive multi-channel fusion deep graph convolutional network based on an attention mechanism (MAMF-GCN) is proposed to better integrate features of modalities and different atlas by exploiting multi-channel correlation. An encoder automatically combines one channel with non-imaging data to generate similarity weights between subjects using a similarity perception mechanism. Other channels generate multi-scale imaging features of fMRI data after processing in the different atlas. Multi-modal information is fused using an adaptive convolution module that applies a deep graph convolutional network (GCN) to extract information from richer hidden layers.To demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%-39.83% and 12.59%-32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis.RESULTSTo demonstrate the effectiveness of our approach, we evaluate the performance of the proposed method on the Autism Brain Imaging Data Exchange (ABIDE) dataset and the Major Depressive Disorder (MDD) dataset. The experimental result shows that the proposed method outperforms many state-of-the-art methods in node classification performance. An extensive group of experiments on two disease prediction tasks demonstrates that the performance of the proposed MAMF-GCN on MDD/ABIDE dataset is improved by 3.37%-39.83% and 12.59%-32.92%, respectively. Moreover, our proposed method has also shown very effective performance in real-life clinical diagnosis. The comprehensive experiments demonstrate that our method is effective for node classification with brain disorders diagnosis.The proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis.CONCLUSIONThe proposed MAMF-GCN method simultaneously extracts specific and common embeddings from the topology composed of multi-scale imaging features, phenotypic information, and their combinations, then learning adaptive embedding weights by attention mechanism, which can capture and fuse the multi-scale essential embeddings to improve the classification performance of brain disorder diagnosis. |
ArticleNumber | 105823 |
Author | Pan, Jiacheng Dong, Yihong Wang, Yu Lin, Haocai Ji, Yunxin |
Author_xml | – sequence: 1 givenname: Jiacheng orcidid: 0000-0002-8985-9561 surname: Pan fullname: Pan, Jiacheng organization: Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, China – sequence: 2 givenname: Haocai surname: Lin fullname: Lin, Haocai organization: Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, China – sequence: 3 givenname: Yihong orcidid: 0000-0002-6048-2377 surname: Dong fullname: Dong, Yihong email: dongyihong@nbu.edu.cn organization: Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, China – sequence: 4 givenname: Yu orcidid: 0000-0003-1562-7562 surname: Wang fullname: Wang, Yu organization: First Hospital of Ningbo, Ningbo, China – sequence: 5 givenname: Yunxin surname: Ji fullname: Ji, Yunxin email: janegege123@163.com organization: First Hospital of Ningbo, Ningbo, China |
BookMark | eNqNkl9rFDEUxYNUcFv9DgFffJk1yWT--VCsS1uFrj6ozyGT3GmzzSRjklnptzfjisKCsOQhcHLuj9x77jk6c94BQpiSNSW0frtbKz9OvfEj6DUjjGW5aln5DK1o23QFqUp-hlaEUFLwllUv0HmMO0IIJyVZobi92t4Ut5vP7_B2tskUUUkLWGo5JbMHPP4W1YN0Diwe5mi8wxpgwvdBTg9Yebf3dk5ZlhY7SD99eMSDD3gKoI1Kxt3jEVzKr9pEHzSEl-j5IG2EV3_uC_T95vrb5mNx9-X20-bqrlC8o6nQqpU149CxnpVD05e85Zo2Je-lqkrCK9BSdQOhTDb59JVu6pZRSpqsSj6UF-jNgTsF_2OGmMRoogJrpQM_R8HqjnNasa7L1tdH1p2fQ24puxrC27okrMquy4NLBR9jgEEok-TSewrSWEGJWDIRO_EvE7FkIg6ZZEB7BJiCGWV4OqX0w6EU8sT2BoKIyoBTecgBVBLam1Mgl0cQZY0zOfJHeIL4t2cqIhNEfF22ZlkaxkgGlCwD3v8fcNoffgFq-tpx |
CitedBy_id | crossref_primary_10_1016_j_inffus_2023_102134 crossref_primary_10_1111_mice_13382 crossref_primary_10_1016_j_compbiomed_2024_108069 crossref_primary_10_1109_TNSRE_2023_3314516 crossref_primary_10_3389_fnins_2023_1288882 crossref_primary_10_1016_j_bspc_2023_105837 crossref_primary_10_1016_j_media_2024_103368 crossref_primary_10_1002_hbm_70017 crossref_primary_10_3389_fnmol_2022_999605 crossref_primary_10_1016_j_knosys_2025_113175 crossref_primary_10_1088_1361_6560_ad8c94 crossref_primary_10_1016_j_neunet_2025_107293 crossref_primary_10_1016_j_patter_2024_101081 crossref_primary_10_3390_ijms241310854 crossref_primary_10_3390_brainsci13101462 crossref_primary_10_1016_j_eswa_2025_126978 crossref_primary_10_1186_s12868_023_00841_0 crossref_primary_10_1371_journal_pone_0295621 crossref_primary_10_1016_j_bspc_2023_105675 crossref_primary_10_3390_sym17010115 crossref_primary_10_1002_ird3_20 crossref_primary_10_1016_j_bspc_2024_106800 crossref_primary_10_1016_j_neucom_2025_129605 crossref_primary_10_1049_cit2_12340 crossref_primary_10_1016_j_ins_2024_121023 crossref_primary_10_1109_TNSRE_2025_3543177 crossref_primary_10_1016_j_jad_2023_07_077 crossref_primary_10_1016_j_inffus_2024_102619 |
Cites_doi | 10.1006/nimg.2001.0978 10.3389/fnins.2020.00191 10.1109/TMI.2021.3051604 10.1007/978-3-030-85899-5_3 10.1038/nrn2575 10.1016/j.bspc.2021.103015 10.1073/pnas.1900390116 10.1016/j.media.2018.06.001 10.1016/j.compbiomed.2021.104949 10.1007/978-3-030-32239-7_68 10.1038/mp.2013.78 10.1007/978-3-030-59728-3_55 10.1186/s11689-019-9291-z 10.1093/bib/bby117 10.1007/978-3-030-59354-4_10 10.1007/978-3-030-59861-7 10.1016/j.neuroimage.2017.12.052 10.3389/fnins.2019.01325 10.1001/archgenpsychiatry.2011.148 10.1016/j.neuroimage.2016.10.045 10.1007/978-3-030-20351-1_6 10.1145/3394486.3403177 10.1109/TNNLS.2020.2978386 10.1007/978-3-319-66179-7_21 10.1007/978-3-030-59728-3_13 10.1016/j.compbiomed.2020.104096 10.1007/978-3-319-66182-7_54 |
ContentType | Journal Article |
Copyright | 2022 Elsevier Ltd 2022. Elsevier Ltd Copyright © 2022 Elsevier Ltd. All rights reserved. |
Copyright_xml | – notice: 2022 Elsevier Ltd – notice: 2022. Elsevier Ltd – notice: Copyright © 2022 Elsevier Ltd. All rights reserved. |
DBID | AAYXX CITATION 3V. 7RV 7X7 7XB 88E 8AL 8AO 8FD 8FE 8FG 8FH 8FI 8FJ 8FK 8G5 ABUWG AFKRA ARAPS AZQEC BBNVY BENPR BGLVJ BHPHI CCPQU DWQXO FR3 FYUFA GHDGH GNUQQ GUQSH HCIFZ JQ2 K7- K9. KB0 LK8 M0N M0S M1P M2O M7P M7Z MBDVC NAPCQ P5Z P62 P64 PHGZM PHGZT PJZUB PKEHL PPXIY PQEST PQGLB PQQKQ PQUKI PRINS Q9U 7X8 |
DOI | 10.1016/j.compbiomed.2022.105823 |
DatabaseName | CrossRef ProQuest Central (Corporate) Nursing & Allied Health Database Health & Medical Collection ProQuest Central (purchase pre-March 2016) Medical Database (Alumni Edition) Computing Database (Alumni Edition) ProQuest Pharma Collection Technology Research Database ProQuest SciTech Collection ProQuest Technology Collection ProQuest Natural Science Collection Hospital Premium Collection Hospital Premium Collection (Alumni Edition) ProQuest Central (Alumni) (purchase pre-March 2016) Research Library (Alumni) ProQuest Central (Alumni) ProQuest Central UK/Ireland Advanced Technologies & Aerospace Collection ProQuest Central Essentials Biological Science Collection ProQuest Central Technology Collection Natural Science Collection ProQuest One Community College ProQuest Central Engineering Research Database ProQuest Health Research Premium Collection Health Research Premium Collection (Alumni) ProQuest Central Student ProQuest Research Library ProQuest SciTech Premium Collection ProQuest Computer Science Collection Computer Science Database ProQuest Health & Medical Complete (Alumni) Nursing & Allied Health Database (Alumni Edition) Biological Sciences Computing Database ProQuest Health & Medical Collection Medical Database Proquest Research Library Biological Science Database Biochemistry Abstracts 1 Research Library (Corporate) ProQuest Nursing & Allied Health Premium Advanced Technologies & Aerospace Database ProQuest Advanced Technologies & Aerospace Collection Biotechnology and BioEngineering Abstracts ProQuest Central Premium ProQuest One Academic ProQuest Health & Medical Research Collection ProQuest One Academic Middle East (New) ProQuest One Health & Nursing ProQuest One Academic Eastern Edition (DO NOT USE) ProQuest One Applied & Life Sciences ProQuest One Academic ProQuest One Academic UKI Edition ProQuest Central China ProQuest Central Basic MEDLINE - Academic |
DatabaseTitle | CrossRef Research Library Prep Computer Science Database ProQuest Central Student ProQuest Advanced Technologies & Aerospace Collection ProQuest Central Essentials ProQuest Computer Science Collection SciTech Premium Collection ProQuest Central China ProQuest One Applied & Life Sciences Health Research Premium Collection Natural Science Collection Health & Medical Research Collection Biological Science Collection ProQuest Central (New) ProQuest Medical Library (Alumni) Advanced Technologies & Aerospace Collection ProQuest Biological Science Collection ProQuest One Academic Eastern Edition ProQuest Hospital Collection ProQuest Technology Collection Health Research Premium Collection (Alumni) Biological Science Database ProQuest Hospital Collection (Alumni) Biotechnology and BioEngineering Abstracts Nursing & Allied Health Premium ProQuest Health & Medical Complete ProQuest One Academic UKI Edition ProQuest Nursing & Allied Health Source (Alumni) Engineering Research Database ProQuest One Academic ProQuest One Academic (New) Technology Collection Technology Research Database ProQuest One Academic Middle East (New) ProQuest Health & Medical Complete (Alumni) ProQuest Central (Alumni Edition) ProQuest One Community College ProQuest One Health & Nursing Research Library (Alumni Edition) ProQuest Natural Science Collection ProQuest Pharma Collection ProQuest Central ProQuest Health & Medical Research Collection Health and Medicine Complete (Alumni Edition) ProQuest Central Korea ProQuest Research Library ProQuest Computing ProQuest Central Basic ProQuest Computing (Alumni Edition) ProQuest Nursing & Allied Health Source ProQuest SciTech Collection Advanced Technologies & Aerospace Database ProQuest Medical Library Biochemistry Abstracts 1 ProQuest Central (Alumni) MEDLINE - Academic |
DatabaseTitleList | Research Library Prep MEDLINE - Academic |
Database_xml | – sequence: 1 dbid: 8FG name: ProQuest Technology Collection url: https://search.proquest.com/technologycollection1 sourceTypes: Aggregation Database |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Medicine |
EISSN | 1879-0534 |
EndPage | 105823 |
ExternalDocumentID | 10_1016_j_compbiomed_2022_105823 S0010482522005832 1_s2_0_S0010482522005832 |
GroupedDBID | --- --K --M --Z -~X .1- .55 .DC .FO .GJ .~1 0R~ 1B1 1P~ 1RT 1~. 1~5 29F 4.4 457 4G. 53G 5GY 5VS 7-5 71M 7RV 7X7 88E 8AO 8FE 8FG 8FH 8FI 8FJ 8G5 8P~ 9JN AAEDT AAEDW AAIKJ AAKOC AALRI AAOAW AAQFI AAQXK AATTM AAXKI AAXUO AAYFN AAYWO ABBOA ABFNM ABJNI ABMAC ABMZM ABOCM ABUWG ABWVN ABXDB ACDAQ ACGFS ACIEU ACIUM ACIWK ACNNM ACPRK ACRLP ACRPL ACVFH ACZNC ADBBV ADCNI ADEZE ADJOM ADMUD ADNMO AEBSH AEIPS AEKER AENEX AEUPX AEVXI AFJKZ AFKRA AFPUW AFRAH AFRHN AFTJW AFXIZ AGCQF AGHFR AGQPQ AGUBO AGYEJ AHHHB AHMBA AHZHX AIALX AIEXJ AIGII AIIUN AIKHN AITUG AJRQY AJUYK AKBMS AKRWK AKYEP ALMA_UNASSIGNED_HOLDINGS AMRAJ ANKPU ANZVX AOUOD APXCP ARAPS ASPBG AVWKF AXJTR AZFZN AZQEC BBNVY BENPR BGLVJ BHPHI BKEYQ BKOJK BLXMC BNPGV BPHCQ BVXVI CCPQU CS3 DU5 DWQXO EBS EFJIC EFKBS EJD EMOBN EO8 EO9 EP2 EP3 EX3 F5P FDB FEDTE FGOYB FIRID FNPLU FYGXN FYUFA G-2 G-Q GBLVA GBOLZ GNUQQ GUQSH HCIFZ HLZ HMCUK HMK HMO HVGLF HZ~ IHE J1W K6V K7- KOM LK8 LX9 M1P M29 M2O M41 M7P MO0 N9A NAPCQ O-L O9- OAUVE OZT P-8 P-9 P2P P62 PC. PHGZM PHGZT PJZUB PPXIY PQGLB PQQKQ PROAC PSQYO PUEGO Q38 R2- ROL RPZ RXW SAE SBC SCC SDF SDG SDP SEL SES SEW SPC SPCBC SSH SSV SSZ SV3 T5K TAE UAP UKHRP WOW WUQ X7M XPP Z5R ZGI ~G- 3V. AACTN AFCTW AFKWA AJOXV ALIPV AMFUW M0N RIG AAIAV ABLVK ABYKQ AHPSJ AJBFU EFLBG LCYCR AAYXX AGRNS CITATION 7XB 8AL 8FD 8FK FR3 JQ2 K9. M7Z MBDVC P64 PKEHL PQEST PQUKI PRINS Q9U 7X8 |
ID | FETCH-LOGICAL-c491t-dc8a624e92b23f7b3484d1734bac53045edac9f012a7a7ab5d76821107c9fa4f3 |
IEDL.DBID | .~1 |
ISSN | 0010-4825 1879-0534 |
IngestDate | Fri Jul 11 14:54:04 EDT 2025 Wed Aug 13 07:35:21 EDT 2025 Tue Jul 01 03:28:52 EDT 2025 Thu Apr 24 23:03:45 EDT 2025 Fri Feb 23 02:38:35 EST 2024 Tue Feb 25 20:03:27 EST 2025 Tue Aug 26 20:14:30 EDT 2025 |
IsPeerReviewed | true |
IsScholarly | true |
Keywords | Deep learning Brain neuroscience Semi-supervised classification Graph neural network Disease prediction |
Language | English |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-c491t-dc8a624e92b23f7b3484d1734bac53045edac9f012a7a7ab5d76821107c9fa4f3 |
Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 |
ORCID | 0000-0003-1562-7562 0000-0002-8985-9561 0000-0002-6048-2377 |
PQID | 2704863025 |
PQPubID | 1226355 |
PageCount | 1 |
ParticipantIDs | proquest_miscellaneous_2694415299 proquest_journals_2704863025 crossref_citationtrail_10_1016_j_compbiomed_2022_105823 crossref_primary_10_1016_j_compbiomed_2022_105823 elsevier_sciencedirect_doi_10_1016_j_compbiomed_2022_105823 elsevier_clinicalkeyesjournals_1_s2_0_S0010482522005832 elsevier_clinicalkey_doi_10_1016_j_compbiomed_2022_105823 |
ProviderPackageCode | CITATION AAYXX |
PublicationCentury | 2000 |
PublicationDate | 2022-09-01 |
PublicationDateYYYYMMDD | 2022-09-01 |
PublicationDate_xml | – month: 09 year: 2022 text: 2022-09-01 day: 01 |
PublicationDecade | 2020 |
PublicationPlace | Oxford |
PublicationPlace_xml | – name: Oxford |
PublicationTitle | Computers in biology and medicine |
PublicationYear | 2022 |
Publisher | Elsevier Ltd Elsevier Limited |
Publisher_xml | – name: Elsevier Ltd – name: Elsevier Limited |
References | Veličković, Casanova, Liò, Cucurull, Romero, Bengio (bib29) 2018 Parisot, Ktena, Ferrante, Lee, Guerrero, Glocker, Rueckert (bib13) 2018; 48 Xu, Ruan, Korpeoglu, Kumar, Achan (bib10) 2020; vols. 1–19 Huang, Chung (bib24) 2020 Vivar, Kazi, Burwinkel, Zwergal, Navab, Ahmadi (bib44) 2020 Yan, Chen, Li (bib31) 2019; 116 Luan, Zhao, Chang, Precup (bib27) 2019; 32 Di Martino, Yan, Li (bib34) 2014; 19 Parisot, Ktena, Ferrante, Lee, Moreno, Glocker, Rueckert (bib21) 2017 Sherkatghanad, Akhondzadeh, Salari, Zomorodi-Moghadam, Abdar, Acharya, Khosrowabadi, Salari (bib6) 2020; 13 Tzourio-Mazoyer, Landeau, Papathanassiou, Crivello, Etard, Delcroix, Mazoyer, Joliot (bib25) 2002; 15 Zhao, Neves, Woodford (bib39) 2020 Yan, Di Wang, Zuo, Zang (bib32) 2016 Rakhimberdina, Murata (bib37) 2019 Kazi, Shekarforoush, Arvind Krishna, Burwinkel, Vivar, Kortüm, Ahmadi, Albarqouni, Navab (bib22) 2019 Andrews, Lee, Solomon, Rogers, Amaral, Nordahl (bib43) 2019; 11 Zhang, Tong, Xu, Maciejewski (bib26) 2018 Song, Frangi, Xiao, Cao, Wang, Lei (bib17) 2020 Jiang, Cao, Xu, Yang, Zaiane, Hi-Gcn (bib23) 2020; 127 Zhuo, Li, Lin, Jiang, Xu, Tian, Wang, Song (bib1) 2019; 9 Mocsari, Stone (bib28) 1978; 39 Kingma, Ba (bib36) 2015 Yao, Sui, Wang, Yang, Jiaerken, Luo, Yap, Liu, Shen (bib18) 2021; 40 Banka, Buzi, Rekik (bib14) 2020 Ktena, Parisot, Ferrante, Rajchl, Lee, Glocker, Rueckert (bib16) 2017 Bullmore, Sporns (bib4) 2009; 10 Su, Tong, Zhu, Cui, Wang (bib11) 2018; 21 Tang, Qiao, Hong, Wang, Dharejo, Zhou, Du (bib40) 2021 Wu, Pan, Chen, Long, Zhang, Yu (bib8) 2021; 32 Chen, Zhuang, Xiao, Ma, Liu, Zhang, Jiang, He, Ama-Gcn (bib19) 2021 Song, Smola, Gretton, Borgwardt, Bedo (bib30) 2007; 227 . Lord, Petkova, Hus (bib41) 2012; 69 Kipf, Welling (bib9) 2017 Huang, Chung (bib5) 2019 Ktena, Parisot, Ferrante, Rajchl, Lee, Glocker, Rueckert (bib12) 2018; 169 Yan, Xu, Liu, Zheng, Liu, Li, Wei, Zhang, Lu, Li (bib3) 2020; 14 Abraham, Milham, Di Martino, Craddock, Samaras, Thirion, Varoquaux (bib35) 2017; 147 Ma, Sengupta, Ahmed, Cole, Yu, Willke, Turk-Browne (bib15) 2019 Craddock (bib20) 2013; 42 Khodatars, Shoeibi, Sadeghi, Ghaasemi, Jafari, Moridian, Khadem, Alizadehsani, Zare, Kong, Khosravi, Nahavandi, Hussain, Acharya, Berk (bib42) 2021; 139 American Psychiatric Association (bib2) 2013; 5 Cao, Yang, Qin, Zhu, Chen, Wang, Liu (bib38) 2021; 70 D. Yao, J. Sui, E. Yang, P. Yap, Temporal-Adaptive Graph Convolutional Network for Automated Identification of Major Depressive Disorder Using Resting-State fMRI Dongren, Springer International Publishing, n.d. Wang, Zhu, Bo, Cui, Shi, Pei, Gcn (bib7) 2020 Yan (10.1016/j.compbiomed.2022.105823_bib3) 2020; 14 Bullmore (10.1016/j.compbiomed.2022.105823_bib4) 2009; 10 Zhang (10.1016/j.compbiomed.2022.105823_bib26) 2018 Andrews (10.1016/j.compbiomed.2022.105823_bib43) 2019; 11 Zhao (10.1016/j.compbiomed.2022.105823_bib39) 2020 Su (10.1016/j.compbiomed.2022.105823_bib11) 2018; 21 Mocsari (10.1016/j.compbiomed.2022.105823_bib28) 1978; 39 Huang (10.1016/j.compbiomed.2022.105823_bib24) 2020 Chen (10.1016/j.compbiomed.2022.105823_bib19) 2021 Luan (10.1016/j.compbiomed.2022.105823_bib27) 2019; 32 Di Martino (10.1016/j.compbiomed.2022.105823_bib34) 2014; 19 Parisot (10.1016/j.compbiomed.2022.105823_bib21) 2017 Zhuo (10.1016/j.compbiomed.2022.105823_bib1) 2019; 9 Abraham (10.1016/j.compbiomed.2022.105823_bib35) 2017; 147 Banka (10.1016/j.compbiomed.2022.105823_bib14) 2020 Kazi (10.1016/j.compbiomed.2022.105823_bib22) 2019 10.1016/j.compbiomed.2022.105823_bib33 Yao (10.1016/j.compbiomed.2022.105823_bib18) 2021; 40 American Psychiatric Association (10.1016/j.compbiomed.2022.105823_bib2) 2013; 5 Khodatars (10.1016/j.compbiomed.2022.105823_bib42) 2021; 139 Kipf (10.1016/j.compbiomed.2022.105823_bib9) 2017 Ma (10.1016/j.compbiomed.2022.105823_bib15) 2019 Song (10.1016/j.compbiomed.2022.105823_bib30) 2007; 227 Jiang (10.1016/j.compbiomed.2022.105823_bib23) 2020; 127 Lord (10.1016/j.compbiomed.2022.105823_bib41) 2012; 69 Wang (10.1016/j.compbiomed.2022.105823_bib7) 2020 Ktena (10.1016/j.compbiomed.2022.105823_bib12) 2018; 169 Yan (10.1016/j.compbiomed.2022.105823_bib32) 2016 Song (10.1016/j.compbiomed.2022.105823_bib17) 2020 Wu (10.1016/j.compbiomed.2022.105823_bib8) 2021; 32 Tang (10.1016/j.compbiomed.2022.105823_bib40) 2021 Huang (10.1016/j.compbiomed.2022.105823_bib5) 2019 Kingma (10.1016/j.compbiomed.2022.105823_bib36) 2015 Yan (10.1016/j.compbiomed.2022.105823_bib31) 2019; 116 Ktena (10.1016/j.compbiomed.2022.105823_bib16) 2017 Rakhimberdina (10.1016/j.compbiomed.2022.105823_bib37) 2019 Sherkatghanad (10.1016/j.compbiomed.2022.105823_bib6) 2020; 13 Cao (10.1016/j.compbiomed.2022.105823_bib38) 2021; 70 Vivar (10.1016/j.compbiomed.2022.105823_bib44) 2020 Tzourio-Mazoyer (10.1016/j.compbiomed.2022.105823_bib25) 2002; 15 Veličković (10.1016/j.compbiomed.2022.105823_bib29) 2018 Craddock (10.1016/j.compbiomed.2022.105823_bib20) 2013; 42 Parisot (10.1016/j.compbiomed.2022.105823_bib13) 2018; 48 Xu (10.1016/j.compbiomed.2022.105823_bib10) 2020; vols. 1–19 |
References_xml | – start-page: 1243 year: 2020 end-page: 1253 ident: bib7 article-title: Adaptive multi-Channel graph convolutional networks publication-title: Proc. ACM SIGKDD Int. Conf. Knowl. Discov. Data Min. – start-page: 1 year: 2020 end-page: 19 ident: bib39 article-title: Data Augmentation for Graph Neural Networks, ArXiv – start-page: 124 year: 2020 end-page: 133 ident: bib17 article-title: Integrating similarity awareness and adaptive calibration in graph convolution network to predict disease publication-title: Lect. Notes Comput. Sci – volume: 39 start-page: 1442 year: 1978 end-page: 1446 ident: bib28 article-title: Densely connected convolutional networks Gao publication-title: Am. J. Vet. Res. – start-page: 1 year: 2017 end-page: 14 ident: bib9 article-title: Semi-supervised classification with graph convolutional networks publication-title: 5th Int. Conf. Learn. Represent. ICLR 2017 - Conf. Track Proc. – volume: 42 start-page: 10 year: 2013 ident: bib20 article-title: Towards automated analysis of connectomes, the configurable pipeline for the analysis of connectomes (c-pac) publication-title: Front. Neuroinf. – start-page: 562 year: 2020 end-page: 572 ident: bib24 article-title: Edge-variational graph convolutional networks for uncertainty-aware disease prediction publication-title: Lect. Notes Comput. Sci. – volume: 227 start-page: 823 year: 2007 end-page: 830 ident: bib30 article-title: Supervised feature selection via dependence estimation publication-title: ACM Int. Conf. Proceeding Ser. – volume: 40 start-page: 1279 year: 2021 end-page: 1289 ident: bib18 article-title: A mutual multi-scale triplet graph convolutional network for classification of brain disorders using functional or structural connectivity publication-title: IEEE Trans. Med. Imag. – year: 2016 ident: bib32 article-title: Data Processing & Analysis for (Resting-State) Brain Imaging – volume: 5 year: 2013 ident: bib2 article-title: Diagnostic and Statistical Manual of Mental disorders: dSM-5, Washington, DC Am publication-title: Psychiatr. Assoc. – volume: 10 start-page: 186 year: 2009 end-page: 198 ident: bib4 article-title: Complex brain networks: graph theoretical analysis of structural and functional systems publication-title: Nat. Rev. Neurosci. – start-page: 33 year: 2021 end-page: 48 ident: bib40 article-title: Data augmentation for graph convolutional network on semi-supervised classification publication-title: Lect. Notes Comput. Sci. – volume: 14 start-page: 1 year: 2020 end-page: 13 ident: bib3 article-title: Quantitative identification of major depression based on resting-state dynamic functional connectivity: a machine learning approach publication-title: Front. Neurosci. – volume: 21 start-page: 182 year: 2018 end-page: 197 ident: bib11 article-title: Network embedding in biomedical data science publication-title: Briefings Bioinf. – volume: 169 start-page: 431 year: 2018 end-page: 442 ident: bib12 article-title: Metric learning with spectral graph convolutions on brain connectivity networks publication-title: Neuroimage – year: 2019 ident: bib37 article-title: Linear Graph Convolutional Model for Diagnosing Brain Disorders – start-page: 73 year: 2019 end-page: 85 ident: bib22 article-title: InceptionGCN: receptive field aware graph convolutional network for disease prediction publication-title: Lect. Notes Comput. Sci. – volume: 11 start-page: 1 year: 2019 end-page: 12 ident: bib43 article-title: A diffusion-weighted imaging tract-based spatial statistics study of autism spectrum disorder in preschool-Aged children publication-title: J. Neurodev. Disord. – start-page: 613 year: 2019 end-page: 621 ident: bib5 article-title: Evidence localization for pathology images using weakly supervised learning publication-title: Lect. Notes Comput. Sci. – volume: 19 start-page: 659 year: 2014 end-page: 667 ident: bib34 article-title: The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism publication-title: Mol. Psychiatr. – volume: 13 start-page: 1 year: 2020 end-page: 12 ident: bib6 article-title: Automated detection of autism spectrum disorder using a convolutional neural network publication-title: Front. Neurosci. – volume: 70 year: 2021 ident: bib38 article-title: Using DeepGCN to identify the autism spectrum disorder from multi-site resting-state data publication-title: Biomed. Signal Process Control – volume: 116 start-page: 9078 year: 2019 end-page: 9083 ident: bib31 article-title: Reduced default mode network functional connectivity in patients with recurrent major depressive disorder publication-title: Proc. Natl. Acad. Sci. U.S.A. – volume: 15 start-page: 273 year: 2002 end-page: 289 ident: bib25 article-title: Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain publication-title: Neuroimage – volume: 139 year: 2021 ident: bib42 article-title: Deep learning for neuroimaging-based diagnosis and rehabilitation of Autism Spectrum Disorder: a review publication-title: Comput. Biol. Med. – volume: 32 start-page: 4 year: 2021 end-page: 24 ident: bib8 article-title: A comprehensive survey on graph neural networks publication-title: IEEE Transact. Neural Networks Learn. Syst. – volume: vols. 1–19 year: 2020 ident: bib10 publication-title: Inductive Representation Learning on Temporal Graphs – reference: . – start-page: 1 year: 2015 end-page: 15 ident: bib36 article-title: Adam: a method for stochastic optimization, 3rd publication-title: Int. Conf. Learn. Represent. ICLR 2015 - Conf. Track Proc. – volume: 9 year: 2019 ident: bib1 article-title: The rise and fall of MRI studies in major depressive disorder, Transl publication-title: Psychiatry – volume: 147 start-page: 736 year: 2017 end-page: 745 ident: bib35 article-title: Deriving reproducible biomarkers from multi-site resting-state data: an Autism-based example publication-title: Neuroimage – start-page: 101 year: 2020 end-page: 110 ident: bib14 article-title: Multi-view brain HyperConnectome AutoEncoder for brain state classification publication-title: Lect. Notes Comput. Sci. – start-page: 2743 year: 2019 end-page: 2751 ident: bib15 article-title: Deep graph similarity learning for brain data analysis publication-title: Int. Conf. Inf. Knowl. Manag. Proc. – start-page: 177 year: 2017 end-page: 185 ident: bib21 article-title: Spectral graph convolutions for population-based disease prediction publication-title: Lect. Notes Comput. Sci. – start-page: 469 year: 2017 end-page: 477 ident: bib16 article-title: Distance metric learning using graph convolutional networks: application to functional brain networks publication-title: Lect. Notes Comput. Sci. – volume: 69 start-page: 306 year: 2012 end-page: 313 ident: bib41 article-title: A multisite study of the clinical diagnosis of different autism spectrum disorders publication-title: Arch. Gen. Psychiatr. – start-page: 1 year: 2018 end-page: 12 ident: bib29 article-title: Graph attention networks, 6th publication-title: Int. Conf. Learn. Represent. ICLR 2018 - Conf. Track Proc. – start-page: 1 year: 2020 end-page: 8 ident: bib44 article-title: Simultaneous Imputation and Disease Classification in Incomplete Medical Datasets Using Multigraph Geometric Matrix Completion – volume: 48 start-page: 117 year: 2018 end-page: 130 ident: bib13 article-title: Disease prediction using graph convolutional networks: application to Autism Spectrum Disorder and Alzheimer's disease publication-title: Med. Image Anal. – start-page: 79 year: 2018 end-page: 91 ident: bib26 article-title: Graph convolutional networks: algorithms, applications and open challenges publication-title: Lect. Notes Comput. Sci. – reference: D. Yao, J. Sui, E. Yang, P. Yap, Temporal-Adaptive Graph Convolutional Network for Automated Identification of Major Depressive Disorder Using Resting-State fMRI Dongren, Springer International Publishing, n.d. – start-page: 2235 year: 2021 end-page: 2241 ident: bib19 article-title: Adaptive multi-layer aggregation graph convolutional network for disease prediction publication-title: IJCAI Int. Jt. Conf. Artif. Intell. – volume: 127 year: 2020 ident: bib23 article-title: A hierarchical graph convolution network for graph embedding learning of brain network and brain disorders prediction publication-title: Comput. Biol. Med. – volume: 32 start-page: 1 year: 2019 end-page: 16 ident: bib27 article-title: Break the ceiling: stronger multi-scale deep graph convolutional networks publication-title: Adv. Neural Inf. Process. Syst. – volume: 42 start-page: 10 year: 2013 ident: 10.1016/j.compbiomed.2022.105823_bib20 article-title: Towards automated analysis of connectomes, the configurable pipeline for the analysis of connectomes (c-pac) publication-title: Front. Neuroinf. – volume: 15 start-page: 273 year: 2002 ident: 10.1016/j.compbiomed.2022.105823_bib25 article-title: Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain publication-title: Neuroimage doi: 10.1006/nimg.2001.0978 – volume: 39 start-page: 1442 year: 1978 ident: 10.1016/j.compbiomed.2022.105823_bib28 article-title: Densely connected convolutional networks Gao publication-title: Am. J. Vet. Res. – start-page: 1 year: 2017 ident: 10.1016/j.compbiomed.2022.105823_bib9 article-title: Semi-supervised classification with graph convolutional networks – volume: 14 start-page: 1 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib3 article-title: Quantitative identification of major depression based on resting-state dynamic functional connectivity: a machine learning approach publication-title: Front. Neurosci. doi: 10.3389/fnins.2020.00191 – start-page: 1 year: 2015 ident: 10.1016/j.compbiomed.2022.105823_bib36 article-title: Adam: a method for stochastic optimization, 3rd publication-title: Int. Conf. Learn. Represent. ICLR 2015 - Conf. Track Proc. – volume: vols. 1–19 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib10 – start-page: 2743 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib15 article-title: Deep graph similarity learning for brain data analysis publication-title: Int. Conf. Inf. Knowl. Manag. Proc. – volume: 40 start-page: 1279 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib18 article-title: A mutual multi-scale triplet graph convolutional network for classification of brain disorders using functional or structural connectivity publication-title: IEEE Trans. Med. Imag. doi: 10.1109/TMI.2021.3051604 – year: 2016 ident: 10.1016/j.compbiomed.2022.105823_bib32 – start-page: 33 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib40 article-title: Data augmentation for graph convolutional network on semi-supervised classification publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-030-85899-5_3 – volume: 10 start-page: 186 year: 2009 ident: 10.1016/j.compbiomed.2022.105823_bib4 article-title: Complex brain networks: graph theoretical analysis of structural and functional systems publication-title: Nat. Rev. Neurosci. doi: 10.1038/nrn2575 – start-page: 2235 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib19 article-title: Adaptive multi-layer aggregation graph convolutional network for disease prediction publication-title: IJCAI Int. Jt. Conf. Artif. Intell. – volume: 70 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib38 article-title: Using DeepGCN to identify the autism spectrum disorder from multi-site resting-state data publication-title: Biomed. Signal Process Control doi: 10.1016/j.bspc.2021.103015 – start-page: 1 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib39 – volume: 116 start-page: 9078 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib31 article-title: Reduced default mode network functional connectivity in patients with recurrent major depressive disorder publication-title: Proc. Natl. Acad. Sci. U.S.A. doi: 10.1073/pnas.1900390116 – volume: 48 start-page: 117 year: 2018 ident: 10.1016/j.compbiomed.2022.105823_bib13 article-title: Disease prediction using graph convolutional networks: application to Autism Spectrum Disorder and Alzheimer's disease publication-title: Med. Image Anal. doi: 10.1016/j.media.2018.06.001 – year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib37 – volume: 139 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib42 article-title: Deep learning for neuroimaging-based diagnosis and rehabilitation of Autism Spectrum Disorder: a review publication-title: Comput. Biol. Med. doi: 10.1016/j.compbiomed.2021.104949 – start-page: 613 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib5 article-title: Evidence localization for pathology images using weakly supervised learning publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-030-32239-7_68 – volume: 19 start-page: 659 year: 2014 ident: 10.1016/j.compbiomed.2022.105823_bib34 article-title: The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism publication-title: Mol. Psychiatr. doi: 10.1038/mp.2013.78 – start-page: 562 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib24 article-title: Edge-variational graph convolutional networks for uncertainty-aware disease prediction publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-030-59728-3_55 – volume: 11 start-page: 1 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib43 article-title: A diffusion-weighted imaging tract-based spatial statistics study of autism spectrum disorder in preschool-Aged children publication-title: J. Neurodev. Disord. doi: 10.1186/s11689-019-9291-z – start-page: 79 year: 2018 ident: 10.1016/j.compbiomed.2022.105823_bib26 article-title: Graph convolutional networks: algorithms, applications and open challenges publication-title: Lect. Notes Comput. Sci. – volume: 227 start-page: 823 year: 2007 ident: 10.1016/j.compbiomed.2022.105823_bib30 article-title: Supervised feature selection via dependence estimation publication-title: ACM Int. Conf. Proceeding Ser. – volume: 21 start-page: 182 year: 2018 ident: 10.1016/j.compbiomed.2022.105823_bib11 article-title: Network embedding in biomedical data science publication-title: Briefings Bioinf. doi: 10.1093/bib/bby117 – start-page: 101 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib14 article-title: Multi-view brain HyperConnectome AutoEncoder for brain state classification publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-030-59354-4_10 – volume: 32 start-page: 1 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib27 article-title: Break the ceiling: stronger multi-scale deep graph convolutional networks publication-title: Adv. Neural Inf. Process. Syst. – ident: 10.1016/j.compbiomed.2022.105823_bib33 doi: 10.1007/978-3-030-59861-7 – start-page: 1 year: 2018 ident: 10.1016/j.compbiomed.2022.105823_bib29 article-title: Graph attention networks, 6th – volume: 169 start-page: 431 year: 2018 ident: 10.1016/j.compbiomed.2022.105823_bib12 article-title: Metric learning with spectral graph convolutions on brain connectivity networks publication-title: Neuroimage doi: 10.1016/j.neuroimage.2017.12.052 – volume: 13 start-page: 1 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib6 article-title: Automated detection of autism spectrum disorder using a convolutional neural network publication-title: Front. Neurosci. doi: 10.3389/fnins.2019.01325 – volume: 69 start-page: 306 year: 2012 ident: 10.1016/j.compbiomed.2022.105823_bib41 article-title: A multisite study of the clinical diagnosis of different autism spectrum disorders publication-title: Arch. Gen. Psychiatr. doi: 10.1001/archgenpsychiatry.2011.148 – volume: 147 start-page: 736 year: 2017 ident: 10.1016/j.compbiomed.2022.105823_bib35 article-title: Deriving reproducible biomarkers from multi-site resting-state data: an Autism-based example publication-title: Neuroimage doi: 10.1016/j.neuroimage.2016.10.045 – start-page: 73 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib22 article-title: InceptionGCN: receptive field aware graph convolutional network for disease prediction publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-030-20351-1_6 – start-page: 1243 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib7 article-title: Adaptive multi-Channel graph convolutional networks publication-title: Proc. ACM SIGKDD Int. Conf. Knowl. Discov. Data Min. doi: 10.1145/3394486.3403177 – volume: 32 start-page: 4 year: 2021 ident: 10.1016/j.compbiomed.2022.105823_bib8 article-title: A comprehensive survey on graph neural networks publication-title: IEEE Transact. Neural Networks Learn. Syst. doi: 10.1109/TNNLS.2020.2978386 – start-page: 177 year: 2017 ident: 10.1016/j.compbiomed.2022.105823_bib21 article-title: Spectral graph convolutions for population-based disease prediction publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-319-66179-7_21 – start-page: 124 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib17 article-title: Integrating similarity awareness and adaptive calibration in graph convolution network to predict disease publication-title: Lect. Notes Comput. Sci doi: 10.1007/978-3-030-59728-3_13 – volume: 5 year: 2013 ident: 10.1016/j.compbiomed.2022.105823_bib2 article-title: Diagnostic and Statistical Manual of Mental disorders: dSM-5, Washington, DC Am publication-title: Psychiatr. Assoc. – volume: 9 year: 2019 ident: 10.1016/j.compbiomed.2022.105823_bib1 article-title: The rise and fall of MRI studies in major depressive disorder, Transl publication-title: Psychiatry – volume: 127 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib23 article-title: A hierarchical graph convolution network for graph embedding learning of brain network and brain disorders prediction publication-title: Comput. Biol. Med. doi: 10.1016/j.compbiomed.2020.104096 – start-page: 469 year: 2017 ident: 10.1016/j.compbiomed.2022.105823_bib16 article-title: Distance metric learning using graph convolutional networks: application to functional brain networks publication-title: Lect. Notes Comput. Sci. doi: 10.1007/978-3-319-66182-7_54 – start-page: 1 year: 2020 ident: 10.1016/j.compbiomed.2022.105823_bib44 |
SSID | ssj0004030 |
Score | 2.4917538 |
Snippet | Existing diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an objective... AbstractPurposeExisting diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore... PurposeExisting diagnoses of mental disorders rely on symptoms, patient descriptions, and scales, which are not objective enough. We attempt to explore an... |
SourceID | proquest crossref elsevier |
SourceType | Aggregation Database Enrichment Source Index Database Publisher |
StartPage | 105823 |
SubjectTerms | Accuracy Artificial neural networks Autism Brain Brain diseases Brain mapping Brain neuroscience Brain research Classification Coders Data exchange Datasets Deep learning Diagnosis Disease prediction Embedding Functional magnetic resonance imaging Graph neural network Graph neural networks Information processing Internal Medicine Magnetic resonance imaging Medical imaging Medical research Mental depression Mental disorders Neural networks Neuroimaging Other Performance evaluation Population Semi-supervised classification Signs and symptoms Similarity Topology Unstructured data |
SummonAdditionalLinks | – databaseName: Health & Medical Collection dbid: 7X7 link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3NS-wwEA9-gHgR9Slv_SKC1_C2abbZ6EFEXEVYLyrsLeSrh4d0q939_51p0l0QlaW3ttOBTjJf-c0MIRdF5kpuy4I57wITVvWZAbeDebTefmiFDJjQHz8VD6_icTKYpIRbk2CVnU5sFbWfOsyR_-MSm8PlYKKv63eGU6PwdDWN0Fgnm9i6DCFdciKXdZH9PJaggK4REAolJE_EdyFkO5a4Q5TIOQ68HfL8J_P0RVG31me0S3aS20hvopz3yFqo9snWOB2M_yHN-GY8Yve3T5e0LallDfz7QI03Neoz2uIGGVb5VuGNlnPMkVEfQk3bjtUUwedpEQKbKmLDKTi0tP5AJgiOpnEOAPWpYecBeR3dvdw-sDRPgTmhshnzbmgKLoLilueltLkYCp_JXFjjBnhiGrxxqgSTZSRcduAhFmkDRLhrRJkfko1qWoW_hIIwIBApHC-UE5YLmxvwBEvluMmCKVSPyO43apeajePMizfdocr-66UANApARwH0SLagrGPDjRVoVCcp3RWUggrUYBVWoJXf0YYm7eVGZ7rhuq-f21ZGsIo4JuJAEfbI1YIyuSvRDVmR70m3pPSC1XKR98j54jFseDzFMVWYzuGdQmEMDG7E0e-fOCbbyC8C4k7IxuxjHk7Bg5rZs3abfAKZnBt2 priority: 102 providerName: ProQuest |
Title | MAMF-GCN: Multi-scale adaptive multi-channel fusion deep graph convolutional network for predicting mental disorder |
URI | https://www.clinicalkey.com/#!/content/1-s2.0-S0010482522005832 https://www.clinicalkey.es/playcontent/1-s2.0-S0010482522005832 https://dx.doi.org/10.1016/j.compbiomed.2022.105823 https://www.proquest.com/docview/2704863025 https://www.proquest.com/docview/2694415299 |
Volume | 148 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwpV3da9swEBelg7KXsU-Wtisa7FVrLCuW1T1loWm2klDGCnkT-jK0FNfUyev-9t5ZcsraDgLDYGNZh4x0ug_pdydCvhSZq7itCua8C0xYNWQGzA7mUXv70goZcEF_vihml-LncrTcIZM-FgZhlUn2R5neSetUcpx687i5usIYX3AlwMHhuDACjIkR7EIil3_98wDzEMM8hqGAvMHaCc0TMV4I245h7uApco6H3pY8_5eKeiSsOw00fU1eJdORjuPfvSE7oX5L9uZpc_wdaefj-ZSdTRYntAurZS30f6DGmwZlGu2wgwwjfetwQ6s1rpNRH0JDu6zVFAHoiRGhmTriwykYtbS5w0YQIE3jWQDUp6Sd78nl9PT3ZMbSmQrMCZWtmHelKbgIilueV9LmohQ-k7mwxo1w1zR441QFastIuOzIgz_SOYlQakSVfyC79W0dPhIqwbmQonC8UE5YLmxuwBqslOMmC6ZQAyL7btQuJRzHcy9udI8su9YPA6BxAHQcgAHJNpRNTLqxBY3qR0r3QaUgBjVohi1o5XO0oU3zudWZbrke6ic8NyDfNpR_se2W7R72LKU3TXGJWRBzsEUH5PPmM0x63MkxdbhdQ51CoR8MpsT-f_3AAXmJbxEzd0h2V3fr8AmMrJU96mYR3OVSwr2cnh2RF-Mf57MFPL-fLi5-3QO15SuQ |
linkProvider | Elsevier |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV1Lb9QwELZKkYAL4qkuFDASHC02tjeJQQhVhe2WNnuhlXozfuWAqmxodoX4U_xGZmJnV0KA9lLllmQyUmY8D_ubGUJe5Zmrua1z5rwLTFo1ZgbCDubRe_vSyiLghn41z2fn8vPF5GKH_BpqYRBWOdjE3lD7hcM98je8wOZwAlz0h_Y7w6lReLo6jNCIanESfv6AlK17f_wR5Pua8-mns8MZS1MFmJMqWzLvSpNzGRS3XNSFFbKUPiuEtMZN8NwweONUDYbbFHDZiYeIvE-T4K6RtYDv3iA3pRAKV1Q5PdrUYY5FLHkB2yYh9UrIoYgnQ4h4LKmHrJRzHLBbcvEvd_iHY-i93fQeuZvCVHoQ9eo-2QnNA3KrSgfxD0lXHVRTdnQ4f0v7El7WgawDNd60aD9pj1NkWFXchEtar3BPjvoQWtp3yKYIdk9KD2yaiEWnEEDT9gqZIBibxrkD1KcGoY_I-bX86cdkt1k0YY9QED4kPrnjuXLScmmFgcizVo6bLJhcjUgx_EbtUnNznLFxqQcU2ze9EYBGAegogBHJ1pRtbPCxBY0aJKWHAlYwuRq80Ba0xd9oQ5dsR6cz3XE91l_61kmgRRw3_sDwjsi7NWUKj2LYsyXf_UGl9JrVZlGNyMv1YzAweGpkmrBYwTu5wpwbwpYn___EC3J7dlad6tPj-clTcgd5RzDePtldXq3CM4jelvZ5v2Qo-Xrda_Q3lU9YZg |
linkToPdf | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV3daxNBEB9qheKL-InRqivo49Lc3uY2p4iU1thaEwQt5G3dr3so5XL2EsR_zb_Omdu9BEQlLyVvSeYGbr53fzMD8LLIXCVsVXDnXeDSlkNuMO3gnqK3H1upAh3oT2fFybn8OB_Nd-BX3wtDsMreJ3aO2i8cnZEfCEXD4XIM0QdVgkV8Pp68a75z2iBFN639Oo2oImfh5w8s39q3p8co61dCTN5_PTrhacMAd7LMlty7sSmEDKWwIq-UzeVY-kzl0ho3ojvE4I0rK3TiRuHHjjxm513JhN8aWeX43BtwU-WjjGxMzdWmJ3OYx_YX9HMSy7CEIorYMoKLx_Z6rFCFoGW7Y5H_KzT-ESS6yDe5A7dTysoOo47dhZ1Q34O9abqUvw_t9HA64R-OZq9Z187LW5R7YMabhnwp6zCLnDqM63DJqhWdzzEfQsO6admMgO_JAJBNHXHpDJNp1lwREwJms7iDgPk0LPQBnF_Lm34Iu_WiDo-AoSJgEVQ4UZROWiFtbjALrUonTBZMUQ5A9a9RuzTonPZtXOoe0XahNwLQJAAdBTCAbE3ZxGEfW9CUvaR038yK7ldjRNqCVv2NNrTJj7Q6063QQ_2lG6OEWiToEBCd8ADerClTqhRToC357vcqpdesNgY2gBfrn9HZ0A2SqcNihf8pSqq_MYV5_P9HPIc9tE796XR29gRuEeuIy9uH3eXVKjzFRG5pn3UWw-DbdZvob3A6XJM |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=MAMF-GCN%3A+Multi-scale+adaptive+multi-channel+fusion+deep+graph+convolutional+network+for+predicting+mental+disorder&rft.jtitle=Computers+in+biology+and+medicine&rft.au=Pan%2C+Jiacheng&rft.au=Lin%2C+Haocai&rft.au=Dong%2C+Yihong&rft.au=Wang%2C+Yu&rft.date=2022-09-01&rft.pub=Elsevier+Ltd&rft.issn=0010-4825&rft.eissn=1879-0534&rft.volume=148&rft_id=info:doi/10.1016%2Fj.compbiomed.2022.105823&rft.externalDocID=S0010482522005832 |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=0010-4825&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=0010-4825&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=0010-4825&client=summon |