A multi-label classification model for full slice brain computerised tomography image
Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use...
Saved in:
Published in | BMC bioinformatics Vol. 21; no. S6; pp. 200 - 18 |
---|---|
Main Authors | , , , , , , |
Format | Journal Article |
Language | English |
Published |
England
BioMed Central Ltd
18.11.2020
BioMed Central BMC |
Subjects | |
Online Access | Get full text |
ISSN | 1471-2105 1471-2105 |
DOI | 10.1186/s12859-020-3503-0 |
Cover
Loading…
Abstract | Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications.
In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934.
The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. |
---|---|
AbstractList | Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications.BACKGROUNDScreening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications.In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934.RESULTSIn this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934.The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images.CONCLUSIONThe proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. Background Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications. Results In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934. Conclusion The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. Keywords: Bioinformatics, Brain computerised tomography, Machine learning, Deep learning, Computer aided diagnosis Abstract Background Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications. Results In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934. Conclusion The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications. In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934. The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. Background Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications. Results In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934. Conclusion The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other conditions. In recent years, deep learning technique has shown remarkable advantages in the clinical practice. Researchers have attempted to use deep learning methods to detect brain diseases from CT images. Methods often used to detect diseases choose images with visible lesions from full-slice brain CT scans, which need to be labelled by doctors. This is an inaccurate method because doctors detect brain disease from a full sequence scan of CT images and one patient may have multiple concurrent conditions in practice. The method cannot take into account the dependencies between the slices and the causal relationships among various brain diseases. Moreover, labelling images slice by slice spends much time and expense. Detecting multiple diseases from full slice brain CT images is, therefore, an important research subject with practical implications. In this paper, we propose a model called the slice dependencies learning model (SDLM). It learns image features from a series of variable length brain CT images and slice dependencies between different slices in a set of images to predict abnormalities. The model is necessary to only label the disease reflected in the full-slice brain scan. We use the CQ500 dataset to evaluate our proposed model, which contains 1194 full sets of CT scans from a total of 491 subjects. Each set of data from one subject contains scans with one to eight different slice thicknesses and various diseases that are captured in a range of 30 to 396 slices in a set. The evaluation results present that the precision is 67.57%, the recall is 61.04%, the F1 score is 0.6412, and the areas under the receiver operating characteristic curves (AUCs) is 0.8934. The proposed model is a new architecture that uses a full-slice brain CT scan for multi-label classification, unlike the traditional methods which only classify the brain images at the slice level. It has great potential for application to multi-label detection problems, especially with regard to the brain CT images. |
ArticleNumber | 200 |
Audience | Academic |
Author | Liu, Bo Pei, Yan Fu, Guanghui Feng, Hui Li, Jianqiang Li, Pengzhi Chen, Yueda |
Author_xml | – sequence: 1 givenname: Jianqiang surname: Li fullname: Li, Jianqiang – sequence: 2 givenname: Guanghui surname: Fu fullname: Fu, Guanghui – sequence: 3 givenname: Yueda surname: Chen fullname: Chen, Yueda – sequence: 4 givenname: Pengzhi surname: Li fullname: Li, Pengzhi – sequence: 5 givenname: Bo surname: Liu fullname: Liu, Bo – sequence: 6 givenname: Yan orcidid: 0000-0003-1545-9204 surname: Pei fullname: Pei, Yan – sequence: 7 givenname: Hui surname: Feng fullname: Feng, Hui |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/33203366$$D View this record in MEDLINE/PubMed |
BookMark | eNp9ks1u1DAUhSNURNuBB2CDIrGBRYr_nWyQRlULI1VCArq2HOc69ciJBztB9O1xOqV0KoSycHT93XPt43NaHI1hhKJ4jdEZxrX4kDCpeVMhgirKEa3Qs-IEM4krghE_evR_XJymtEUIyxrxF8UxpQRRKsRJcb0uh9lPrvK6BV8ar1Ny1hk9uTCWQ-hy0YZY2tn7MnlnoGyjdmNpwrCbJ4guQVdOYQh91Lub29INuoeXxXOrfYJX9-uquL68-H7-ubr68mlzvr6qDG_YVHVGAmmIAMIkarmtTd3VuBEdIaZh0ArJpMGNBKQZwSBIqxkAt20nCEcdoatis9ftgt6qXczD460K2qm7Qoi90nFyxoNiuq0loqSBljJBjZbWYM5F1xCqLVu0Pu61dnM7QGdgnKL2B6KHO6O7UX34qaSQpMnSq-LdvUAMP2ZIkxpcMuC9HiHMSREm8qPlmTKjb5-g2zDHMVu1pzghnP2lep0v4EYb8lyziKq14Ig1CIlF6-wfVP46GJzJgbEu1w8a3h80ZGaCX1Ov55TU5tvXQ_bNY1Me3PgToAzgPWBiSCmCfUAwUktI1T6kKodULSFVi1HySY9x013g8smd_0_nb0ga6FY |
CitedBy_id | crossref_primary_10_1007_s00414_024_03183_6 crossref_primary_10_3389_fnins_2024_1245791 crossref_primary_10_1097_MD_0000000000031848 crossref_primary_10_1007_s13042_022_01658_9 crossref_primary_10_3390_info15100612 |
Cites_doi | 10.1016/j.cmpb.2016.10.007 10.1016/j.patrec.2013.08.017 10.1109/ISBI.2017.7950647 10.1109/TPAMI.2015.2491929 10.1162/neco.1997.9.8.1735 10.1038/s41591-018-0107-6 10.1111/j.1469-1809.1936.tb02137.x 10.1038/s41551-018-0324-9 10.1109/ICCEEE.2013.6633943 10.1080/14786440109462720 10.1016/j.jfds.2017.05.001 10.1007/s11042-015-2649-7 10.1007/978-981-15-0118-0_51 10.1371/journal.pmed.1002686 10.1109/SMC.2015.368 10.1016/S0140-6736(18)31645-3 10.1016/j.eswa.2011.02.012 |
ContentType | Journal Article |
Copyright | COPYRIGHT 2020 BioMed Central Ltd. 2020. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. The Author(s) 2020 |
Copyright_xml | – notice: COPYRIGHT 2020 BioMed Central Ltd. – notice: 2020. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. – notice: The Author(s) 2020 |
DBID | AAYXX CITATION CGR CUY CVF ECM EIF NPM ISR 3V. 7QO 7SC 7X7 7XB 88E 8AL 8AO 8FD 8FE 8FG 8FH 8FI 8FJ 8FK ABUWG AEUYN AFKRA ARAPS AZQEC BBNVY BENPR BGLVJ BHPHI CCPQU DWQXO FR3 FYUFA GHDGH GNUQQ HCIFZ JQ2 K7- K9. L7M LK8 L~C L~D M0N M0S M1P M7P P5Z P62 P64 PHGZM PHGZT PIMPY PJZUB PKEHL PPXIY PQEST PQGLB PQQKQ PQUKI PRINS Q9U 7X8 5PM DOA |
DOI | 10.1186/s12859-020-3503-0 |
DatabaseName | CrossRef Medline MEDLINE MEDLINE (Ovid) MEDLINE MEDLINE PubMed Gale In Context: Science ProQuest Central (Corporate) Biotechnology Research Abstracts Computer and Information Systems Abstracts 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) ProQuest Central (Alumni) ProQuest One Sustainability (subscription) 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 Health Research Premium Collection Health Research Premium Collection (Alumni) ProQuest Central Student SciTech Premium Collection ProQuest Computer Science Collection Computer Science Database ProQuest Health & Medical Complete (Alumni) Advanced Technologies Database with Aerospace Biological Sciences Computer and Information Systems Abstracts Academic Computer and Information Systems Abstracts Professional Computing Database Health & Medical Collection (Alumni) PML(ProQuest Medical Library) Biological Science Database Advanced Technologies & Aerospace Database ProQuest Advanced Technologies & Aerospace Collection Biotechnology and BioEngineering Abstracts ProQuest Central Premium ProQuest One Academic Publicly Available Content Database 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 PubMed Central (Full Participant titles) DOAJ Directory of Open Access Journals |
DatabaseTitle | CrossRef MEDLINE Medline Complete MEDLINE with Full Text PubMed MEDLINE (Ovid) Publicly Available Content Database Computer Science Database ProQuest Central Student ProQuest Advanced Technologies & Aerospace Collection ProQuest Central Essentials ProQuest Computer Science Collection Computer and Information Systems Abstracts SciTech Premium Collection ProQuest Central China ProQuest One Applied & Life Sciences ProQuest One Sustainability 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 ProQuest Health & Medical Complete ProQuest One Academic UKI Edition Engineering Research Database ProQuest One Academic ProQuest One Academic (New) Technology Collection Technology Research Database Computer and Information Systems Abstracts – Academic ProQuest One Academic Middle East (New) ProQuest Health & Medical Complete (Alumni) ProQuest Central (Alumni Edition) ProQuest One Community College ProQuest One Health & Nursing ProQuest Natural Science Collection ProQuest Pharma Collection ProQuest Central ProQuest Health & Medical Research Collection Biotechnology Research Abstracts Health and Medicine Complete (Alumni Edition) ProQuest Central Korea Advanced Technologies Database with Aerospace ProQuest Computing ProQuest Central Basic ProQuest Computing (Alumni Edition) ProQuest SciTech Collection Computer and Information Systems Abstracts Professional Advanced Technologies & Aerospace Database ProQuest Medical Library ProQuest Central (Alumni) MEDLINE - Academic |
DatabaseTitleList | MEDLINE - Academic MEDLINE Publicly Available Content Database |
Database_xml | – sequence: 1 dbid: DOA name: DOAJ Directory of Open Access Journals url: https://www.doaj.org/ sourceTypes: Open Website – sequence: 2 dbid: NPM name: PubMed url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed sourceTypes: Index Database – sequence: 3 dbid: EIF name: MEDLINE url: https://proxy.k.utb.cz/login?url=https://www.webofscience.com/wos/medline/basic-search sourceTypes: Index Database – sequence: 4 dbid: 8FG name: ProQuest Technology Collection url: https://search.proquest.com/technologycollection1 sourceTypes: Aggregation Database |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Biology |
EISSN | 1471-2105 |
EndPage | 18 |
ExternalDocumentID | oai_doaj_org_article_4ab870329eb3463ca7fc1556d923af42 PMC7672970 A650490067 33203366 10_1186_s12859_020_3503_0 |
Genre | Journal Article |
GeographicLocations | China |
GeographicLocations_xml | – name: China |
GrantInformation_xml | – fundername: Key Technologies Research and Development Program grantid: 2017YFB1400803 – fundername: ; grantid: 2017YFB1400803 |
GroupedDBID | --- 0R~ 23N 2WC 53G 5VS 6J9 7X7 88E 8AO 8FE 8FG 8FH 8FI 8FJ AAFWJ AAJSJ AAKPC AASML AAYXX ABDBF ABUWG ACGFO ACGFS ACIHN ACIWK ACPRK ACUHS ADBBV ADMLS ADUKV AEAQA AENEX AEUYN AFKRA AFPKN AFRAH AHBYD AHMBA AHYZX ALIPV ALMA_UNASSIGNED_HOLDINGS AMKLP AMTXH AOIJS ARAPS AZQEC BAPOH BAWUL BBNVY BCNDV BENPR BFQNJ BGLVJ BHPHI BMC BPHCQ BVXVI C6C CCPQU CITATION CS3 DIK DU5 DWQXO E3Z EAD EAP EAS EBD EBLON EBS EMB EMK EMOBN ESX F5P FYUFA GNUQQ GROUPED_DOAJ GX1 HCIFZ HMCUK HYE IAO ICD IHR INH INR ISR ITC K6V K7- KQ8 LK8 M1P M48 M7P MK~ ML0 M~E O5R O5S OK1 OVT P2P P62 PGMZT PHGZM PHGZT PIMPY PQQKQ PROAC PSQYO RBZ RNS ROL RPM RSV SBL SOJ SV3 TR2 TUS UKHRP W2D WOQ WOW XH6 XSB CGR CUY CVF ECM EIF NPM PJZUB PPXIY PQGLB PMFND 3V. 7QO 7SC 7XB 8AL 8FD 8FK FR3 JQ2 K9. L7M L~C L~D M0N P64 PKEHL PQEST PQUKI PRINS Q9U 7X8 5PM PUEGO |
ID | FETCH-LOGICAL-c594t-dc7e2926e2470b5f8c8d8196d22c94eb6747c197e0a421e62ba4ee5fbd6250d23 |
IEDL.DBID | M48 |
ISSN | 1471-2105 |
IngestDate | Wed Aug 27 01:08:25 EDT 2025 Thu Aug 21 18:18:02 EDT 2025 Fri Jul 11 02:48:43 EDT 2025 Fri Jul 25 10:34:21 EDT 2025 Tue Jun 17 21:26:16 EDT 2025 Tue Jun 10 20:24:29 EDT 2025 Fri Jun 27 04:56:18 EDT 2025 Mon Jul 21 06:07:21 EDT 2025 Thu Apr 24 23:04:35 EDT 2025 Tue Jul 01 03:38:31 EDT 2025 |
IsDoiOpenAccess | true |
IsOpenAccess | true |
IsPeerReviewed | true |
IsScholarly | true |
Issue | S6 |
Keywords | Deep learning Brain computerised tomography Computer aided diagnosis Bioinformatics Machine learning |
Language | English |
License | Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data. |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-c594t-dc7e2926e2470b5f8c8d8196d22c94eb6747c197e0a421e62ba4ee5fbd6250d23 |
Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 |
ORCID | 0000-0003-1545-9204 |
OpenAccessLink | http://journals.scholarsportal.info/openUrl.xqy?doi=10.1186/s12859-020-3503-0 |
PMID | 33203366 |
PQID | 2461852254 |
PQPubID | 44065 |
PageCount | 18 |
ParticipantIDs | doaj_primary_oai_doaj_org_article_4ab870329eb3463ca7fc1556d923af42 pubmedcentral_primary_oai_pubmedcentral_nih_gov_7672970 proquest_miscellaneous_2461861557 proquest_journals_2461852254 gale_infotracmisc_A650490067 gale_infotracacademiconefile_A650490067 gale_incontextgauss_ISR_A650490067 pubmed_primary_33203366 crossref_primary_10_1186_s12859_020_3503_0 crossref_citationtrail_10_1186_s12859_020_3503_0 |
ProviderPackageCode | CITATION AAYXX |
PublicationCentury | 2000 |
PublicationDate | 2020-11-18 |
PublicationDateYYYYMMDD | 2020-11-18 |
PublicationDate_xml | – month: 11 year: 2020 text: 2020-11-18 day: 18 |
PublicationDecade | 2020 |
PublicationPlace | England |
PublicationPlace_xml | – name: England – name: London |
PublicationTitle | BMC bioinformatics |
PublicationTitleAlternate | BMC Bioinformatics |
PublicationYear | 2020 |
Publisher | BioMed Central Ltd BioMed Central BMC |
Publisher_xml | – name: BioMed Central Ltd – name: BioMed Central – name: BMC |
References | 3503_CR25 3503_CR21 3503_CR24 S Chilamkurthy (3503_CR30) 2018; 392 K He (3503_CR22) 2016 D Tran (3503_CR31) 2015 K Cho (3503_CR7) 2014 XW Gao (3503_CR3) 2017; 138 J De Fauw (3503_CR2) 2018; 24 J Wang (3503_CR16) 2016 S Ioffe (3503_CR27) 2015 3503_CR15 G Huang (3503_CR23) 2017 3503_CR6 G Zhong (3503_CR18) 2016; 2 3503_CR5 N Srivastava (3503_CR28) 2014; 15 3503_CR12 RA Fisher (3503_CR20) 1936; 7 Y Wei (3503_CR17) 2016; 38 Y Zhang (3503_CR10) 2011; 38 K Pearson (3503_CR19) 1901; 2 S Hochreiter (3503_CR26) 1997; 9 P Rajpurkar (3503_CR1) 2018; 15 G Yang (3503_CR8) 2016; 75 V Wegmayr (3503_CR14) 2018 3503_CR9 H Lee (3503_CR4) 2019; 3 M Saritha (3503_CR11) 2013; 34 DP Kingma (3503_CR29) 2014 K Jnawali (3503_CR13) 2018 |
References_xml | – volume: 138 start-page: 49 year: 2017 ident: 3503_CR3 publication-title: Comput Methods Prog Biomed doi: 10.1016/j.cmpb.2016.10.007 – ident: 3503_CR5 – volume-title: Medical Imaging 2018: Computer-Aided Diagnosis. vol. 10575. International Society for Optics and Photonics year: 2018 ident: 3503_CR14 – volume: 15 start-page: 1929 issue: 1 year: 2014 ident: 3503_CR28 publication-title: J Mach Learn Res – volume: 34 start-page: 2151 issue: 16 year: 2013 ident: 3503_CR11 publication-title: Pattern Recog Lett doi: 10.1016/j.patrec.2013.08.017 – volume-title: Medical Imaging 2018: Computer-Aided Diagnosis. vol. 10575. International Society for Optics and Photonics year: 2018 ident: 3503_CR13 – ident: 3503_CR12 doi: 10.1109/ISBI.2017.7950647 – ident: 3503_CR24 – volume: 38 start-page: 1901 issue: 9 year: 2016 ident: 3503_CR17 publication-title: IEEE Trans Pattern Anal Mach Intell doi: 10.1109/TPAMI.2015.2491929 – volume: 9 start-page: 1735 issue: 8 year: 1997 ident: 3503_CR26 publication-title: Neural Comput doi: 10.1162/neco.1997.9.8.1735 – volume: 24 start-page: 1342 issue: 9 year: 2018 ident: 3503_CR2 publication-title: Nat Med doi: 10.1038/s41591-018-0107-6 – volume: 7 start-page: 179 issue: 2 year: 1936 ident: 3503_CR20 publication-title: Annals Eugenics doi: 10.1111/j.1469-1809.1936.tb02137.x – volume: 3 start-page: 173 issue: 3 year: 2019 ident: 3503_CR4 publication-title: Nat Biomed Eng doi: 10.1038/s41551-018-0324-9 – ident: 3503_CR9 doi: 10.1109/ICCEEE.2013.6633943 – ident: 3503_CR6 – volume: 2 start-page: 559 issue: 11 year: 1901 ident: 3503_CR19 publication-title: Lond Edinb Dublin Philos Mag J Sci doi: 10.1080/14786440109462720 – volume: 2 start-page: 265 issue: 4 year: 2016 ident: 3503_CR18 publication-title: J Finance Data Sci doi: 10.1016/j.jfds.2017.05.001 – volume-title: Proceedings of the IEEE international conference on computer vision year: 2015 ident: 3503_CR31 – ident: 3503_CR25 – volume-title: Proceedings of the IEEE conference on computer vision and pattern recognition year: 2017 ident: 3503_CR23 – volume: 75 start-page: 15601 issue: 23 year: 2016 ident: 3503_CR8 publication-title: Multimedia Tools Appl doi: 10.1007/s11042-015-2649-7 – volume-title: Proceedings of the IEEE conference on computer vision and pattern recognition year: 2016 ident: 3503_CR22 – ident: 3503_CR15 doi: 10.1007/978-981-15-0118-0_51 – volume: 15 start-page: e1002686 issue: 11 year: 2018 ident: 3503_CR1 publication-title: PLoS Med doi: 10.1371/journal.pmed.1002686 – volume-title: In Proceedings of The 32nd International Conference on Machine Learning year: 2015 ident: 3503_CR27 – ident: 3503_CR21 doi: 10.1109/SMC.2015.368 – volume-title: International Conference on Learning Representations year: 2014 ident: 3503_CR29 – volume-title: Proceedings of the IEEE conference on computer vision and pattern recognition year: 2016 ident: 3503_CR16 – volume: 392 start-page: 2388 issue: 10162 year: 2018 ident: 3503_CR30 publication-title: Lancet doi: 10.1016/S0140-6736(18)31645-3 – volume-title: Proceedings of the Empiricial Methods in Natural Language Processing year: 2014 ident: 3503_CR7 – volume: 38 start-page: 10049 issue: 8 year: 2011 ident: 3503_CR10 publication-title: Expert Syst Appl doi: 10.1016/j.eswa.2011.02.012 |
SSID | ssj0017805 |
Score | 2.3960114 |
Snippet | Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or other... Background Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain trauma or... Abstract Background Screening of the brain computerised tomography (CT) images is a primary method currently used for initial detection of patients with brain... |
SourceID | doaj pubmedcentral proquest gale pubmed crossref |
SourceType | Open Website Open Access Repository Aggregation Database Index Database Enrichment Source |
StartPage | 200 |
SubjectTerms | Abnormalities Accuracy Algorithms Artificial intelligence Bioinformatics Brain Brain - diagnostic imaging Brain computerised tomography Brain diseases Brain research Brain slice preparation Classification Cognitive ability Computational biology Computed tomography Computer aided diagnosis Computer-aided medical diagnosis CT imaging Datasets Deep learning Diagnosis Evaluation Experiments Humans Identification and classification Image classification Image processing Labeling Machine learning Medical imaging Medical research Methods Neural networks Neuroimaging Three dimensional imaging Tomography Tomography, X-Ray Computed Traumatic brain injury |
SummonAdditionalLinks | – databaseName: DOAJ Directory of Open Access Journals dbid: DOA link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1LaxRBEG4kEPAixuckMbQiCMKQ3n7OHDfBEAU9qAu5Nf0aXUhmxdk9-O-t6ulddhD04nW6Zpn5urrrq-narwh5zUwHgYbh5yXFa6mcrH3DQy0gupoWXCrlE_yPn_T1Qn64UTd7rb6wJmyUBx6BO5fOg0sJ3kLWJ7UIznQBYqCOwExcJ_PuCzFvm0yV8wNU6i9nmLNGnw8z1GmrMVUSCguIJlEoi_X_uSXvxaRpveReALp6SB4U5kjn4xMfkXupf0QOx16Svx6TxZzm4sAapjXd0oCsGMuAMvI0N7yhQFApfm-nQC5Doh7bQ9BQ-joshxTpenVXNKzp8g62midkcfXu6-V1XXom1EG1cl3HYBJvuU5cGuZV14QmQtDXkfPQyuQ1pA9h1prEnOSzpLl3MiXV-QiJEItcPCUH_apPzwl12ovoG69UiNJ4IDI8ich4Yiy2MaqKsC2GNhRBcexrcWtzYtFoO8JuAXaLsFtWkbe7W36Mahp_M77AidkZohB2vgDuYYt72H-5R0Ve4bRalLrosZbmm9sMg33_5bOdAzmVLYbrirwpRt0K3iC48tcEwAHVsSaWpxNLWIthOrz1Hlv2gsGiYl8DNFfJirzcDeOdWN_Wp9Wm2OARMfzEs9HZdu8tBGdCaF0RM3HDCTDTkX75PSuFGw25k2HH_wPJE3Kf4wLCEsjmlBysf27SCyBka3-W195vdsYvlQ priority: 102 providerName: Directory of Open Access Journals – databaseName: Health & Medical Collection dbid: 7X7 link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwfV3di9QwEA96Ivgifls9JYogCOXSfLZPsorHKeiDurBvofnouXDXntfdB_97Z9LsekW412Za2slk5jfJ9DeEvGGmg0DDcHtJ8VKqVpau5r4UEF1NAyYV0wn-12_6ZCm_rNQqb7iNuaxy5xOTow6Dxz3yI-Q9qwEsKPn-4neJXaPwdDW30LhJbiF1GZZ0mdU-4aqQrz-fZFa1PhorZGsrMWESCsuIZrEoUfb_75ivRKZ51eSVMHR8j9zN-JEupgm_T27E_gG5PXWU_POQLBc0lQiWMLnxjHrExlgMlPRPU9sbCjCV4q47BYjpI3XYJIL63N1hPcZAN8N5ZrKm63NwOI_I8vjTz48nZe6cUHrVyE0ZvIm84TpyaZhTXe3rAKFfB859I6PTkET4qjGRtZJXUXPXyhhV5wKkQyxw8Zgc9EMfnxLaaieCq51SPkjjAM7wKALjkbHQhKAKwnY6tD7TimN3izOb0ota20ntFtRuUe2WFeTd_paLiVPjOuEPODF7QaTDTheGy1ObV5eVrQO_I3gTnZBa-NZ0HoCSDgBf207ygrzGabVIeNFjRc1pux1H-_nHd7sAiCobDNoFeZuFugG-wLf5BwXQA3JkzSQPZ5KwIv18eGc9NnuE0f6z34K82g_jnVjl1sdhm2XwoBge8WQytv13C8GZEFoXxMzMcKaY-Ui__pX4wo2GDMqwZ9e_1nNyh-PSwBLH-pAcbC638QUAro17mVbVX1rIJ2A priority: 102 providerName: ProQuest |
Title | A multi-label classification model for full slice brain computerised tomography image |
URI | https://www.ncbi.nlm.nih.gov/pubmed/33203366 https://www.proquest.com/docview/2461852254 https://www.proquest.com/docview/2461861557 https://pubmed.ncbi.nlm.nih.gov/PMC7672970 https://doaj.org/article/4ab870329eb3463ca7fc1556d923af42 |
Volume | 21 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3raxNBEF_6QPCL-O5pDasIgnC62efdB5FUGmugRVoD-bbcPq4G0kTzAPvfO7O5xB4W8UsC2bkLNzuz85vdud8Q8pqZGgINw-0lxXOpKpm7gvtcQHQ1JZhUTCf4p2f6ZCgHIzXaIZv2Vo0CF7emdthPajifvPv18_ojOPyH5PCFfr_oIgtbjomQUFgetEv2ITAZ9NNT-edQAen708tGpptDpqOaQ85bb9EKU4nN_-81-0bQahdU3ohQ_fvkXgMtaW9tCw_ITpw-JHfWzSavH5Fhj6bqwRzmPU6oR9iMdUJpamjqiEMBwVLckKeAPn2kDvtHUN80fhgvYqDL2VVDck3HV7AWPSbD_vG3Tyd501Qh96qUyzx4E3nJdeTSMKfqwhcBUIEOnPtSRqchv_Dd0kRWSd6NmrtKxqhqFyBTYoGLJ2RvOpvGA0Ir7URwhVPKB2kcIB0eRWA8MhbKEFRG2EaH1jeM49j4YmJT5lFou1a7BbVbVLtlGXm7veTHmm7jX8JHODFbQWTKTj_M5pe2cTwrKwdLkuBldEJq4StTe8BQOgCyrWrJM_IKp9UiF8YUi20uq9ViYb9cnNseoFdZYjzPyJtGqJ7BE_iqeXcB9ID0WS3Jw5YkOKtvD2-sx25s3SKlXwE4WMmMvNwO45VYADeNs1Ujg2fIcIuna2PbPrcQnAmhdUZMywxbimmPTMffE5W40ZBcGfbsP_73ObnL0T-wBLI4JHvL-Sq-AEC2dB2ya0YGPov-5w7Z7_UGFwP4Pjo--3reSZscneSIvwFNMTQc |
linkProvider | Scholars Portal |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV1Lb9QwELaqIgQXxJtAAYNASEhRHcd2kgNCy6PapY8DdKW9ufEjZaU2Kc2uUP8Uv5GZxLs0Quqt180k2ozn8Y09mY-QNyyrINEw3F6SPBayFLHJuY1TyK5ZASbluxP8_QM1nopvMznbIH9W38JgW-UqJnaB2jUW98i3ce5ZDmBBio9nv2JkjcLT1RWFRm8Wu_7iN5Rs7YfJF1jft5zvfD38PI4Dq0BsZSEWsbOZ5wVXnouMGVnlNneQFpXj3BbCGwUA2yZF5lkpeOIVN6XwXlbGQanAHA46gJB_AxIvQ4_KZusCL0F-gHBymuRqu01wOlyMBVoqsW1pkPs6ioD_E8GlTDjs0ryU9nbukjsBr9JRb2D3yIav75ObPYPlxQMyHdGuJTEGY_In1CIWx-ajbr1pR7NDARZT3OWnAGmtpwZJKagNbBLz1ju6aE7D5Gw6P4UA95BMr0Wnj8hm3dT-CaGlMqkzuZHSOpEZgE_cp45xz5grnJMRYSsdahvGmCObxonuyplc6V7tGtSuUe2aReT9-pazfobHVcKfcGHWgjh-u_uhOT_WwZu1KA3EuZQX3qRCpbbMKgvATDmAy2UleERe47JqHLBRYwfPcblsWz358V2PABKLAkFCRN4FoaqBN7Bl-CAC9IAzuQaSWwNJiAB2eHllPTpEoFb_85eIvFpfxjuxq672zTLI4ME0POJxb2zr905TztJUqYhkAzMcKGZ4pZ7_7OaTZwoqtow9vfpvvSS3xof7e3pvcrD7jNzm6CbYXplvkc3F-dI_B7C3MC86D6Pk6Lpd-i8s12Qd |
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=A+multi-label+classification+model+for+full+slice+brain+computerised+tomography+image&rft.jtitle=BMC+bioinformatics&rft.au=Li%2C+Jianqiang&rft.au=Fu%2C+Guanghui&rft.au=Chen%2C+Yueda&rft.au=Li%2C+Pengzhi&rft.date=2020-11-18&rft.issn=1471-2105&rft.eissn=1471-2105&rft.volume=21&rft.issue=Suppl+6&rft.spage=200&rft_id=info:doi/10.1186%2Fs12859-020-3503-0&rft.externalDBID=NO_FULL_TEXT |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=1471-2105&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=1471-2105&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=1471-2105&client=summon |