Explainable deep-learning framework: decoding brain states and prediction of individual performance in false-belief task at early childhood stage
Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and fea...
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Published in | Frontiers in neuroinformatics Vol. 18; p. 1392661 |
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Main Authors | , , , |
Format | Journal Article |
Language | English |
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Switzerland
Frontiers Media S.A
2024
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ISSN | 1662-5196 1662-5196 |
DOI | 10.3389/fninf.2024.1392661 |
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Abstract | Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset,
N
= 155 (122 children; 3–12 yrs and 33 adults; 18–39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices. |
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AbstractList | Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset, N = 155 (122 children; 3-12 yrs and 33 adults; 18-39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices.Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset, N = 155 (122 children; 3-12 yrs and 33 adults; 18-39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices. Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset, N = 155 (122 children; 3–12 yrs and 33 adults; 18–39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices. Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset, = 155 (122 children; 3-12 yrs and 33 adults; 18-39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices. Decoding of cognitive states aims to identify individuals' brain states and brain fingerprints to predict behavior. Deep learning provides an important platform for analyzing brain signals at different developmental stages to understand brain dynamics. Due to their internal architecture and feature extraction techniques, existing machine-learning and deep-learning approaches are suffering from low classification performance and explainability issues that must be improved. In the current study, we hypothesized that even at the early childhood stage (as early as 3-years), connectivity between brain regions could decode brain states and predict behavioral performance in false-belief tasks. To this end, we proposed an explainable deep learning framework to decode brain states (Theory of Mind and Pain states) and predict individual performance on ToM-related false-belief tasks in a developmental dataset. We proposed an explainable spatiotemporal connectivity-based Graph Convolutional Neural Network (Ex-stGCNN) model for decoding brain states. Here, we consider a developmental dataset, N = 155 (122 children; 3–12 yrs and 33 adults; 18–39 yrs), in which participants watched a short, soundless animated movie, shown to activate Theory-of-Mind (ToM) and pain networs. After scanning, the participants underwent a ToM-related false-belief task, leading to categorization into the pass, fail, and inconsistent groups based on performance. We trained our proposed model using Functional Connectivity (FC) and Inter-Subject Functional Correlations (ISFC) matrices separately. We observed that the stimulus-driven feature set (ISFC) could capture ToM and Pain brain states more accurately with an average accuracy of 94%, whereas it achieved 85% accuracy using FC matrices. We also validated our results using five-fold cross-validation and achieved an average accuracy of 92%. Besides this study, we applied the SHapley Additive exPlanations (SHAP) approach to identify brain fingerprints that contributed the most to predictions. We hypothesized that ToM network brain connectivity could predict individual performance on false-belief tasks. We proposed an Explainable Convolutional Variational Auto-Encoder (Ex-Convolutional VAE) model to predict individual performance on false-belief tasks and trained the model using FC and ISFC matrices separately. ISFC matrices again outperformed the FC matrices in prediction of individual performance. We achieved 93.5% accuracy with an F1-score of 0.94 using ISFC matrices and achieved 90% accuracy with an F1-score of 0.91 using FC matrices. |
Author | Bhavna, Km Banerjee, Romi Roy, Dipanjan Akhter, Azman |
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Cites_doi | 10.1016/j.neuron.2011.11.001 10.1109/TNNLS.2022.3202569 10.1016/S0010-0277(96)00786-X 10.1037/0012-1649.43.5.1124 10.1007/s00429-014-0803-z 10.1016/j.knosys.2022.108827 10.3390/molecules26041111 10.1016/j.neuroimage.2019.116461 10.1371/journal.pone.0204056 10.1002/hbm.26255 10.1016/j.neubiorev.2018.06.009 10.1126/science.1089506 10.1126/science.1063736 10.1109/TPAMI.2022.3204236 10.1038/s41598-019-50750-8 10.1109/JBHI.2023.3348130 10.1371/journal.pbio.0040125 10.1093/scan/nsz037 10.1016/j.neuroimage.2021.117963 10.1371/journal.pcbi.1006565 10.1093/scan/nst048 10.1109/ACCESS.2019.2907040 10.1109/ACCESS.2021.3110745 10.1016/j.neuroimage.2021.117847 10.1109/TPAMI.2018.2889774 10.3390/brainsci12081094 10.1016/j.neuropsychologia.2017.01.001 10.1016/j.media.2021.102233 10.1214/aos/1013699998 10.1073/pnas.1515083112 10.1073/pnas.1603186113 10.1214/aoms/1177729694 10.3389/fnins.2022.875828 10.3389/fnins.2019.01165 10.1111/j.1467-9280.2009.02460.x 10.1002/hbm.24891 10.1371/journal.pcbi.1004994 10.1016/j.neuroimage.2019.116059 10.1093/cercor/bhx175 10.1016/j.neuroimage.2019.04.016 10.1016/j.neuroimage.2018.09.042 10.1038/s41467-018-03399-2 10.3389/fninf.2017.00061 10.1006/nimg.1995.1012 10.1038/nn.4433 10.1016/j.neuroimage.2015.11.025 10.1002/hbm.25732 10.1073/pnas.1600282113 10.1186/s13104-017-2768-5 10.1038/ncomms12141 10.1111/j.1551-6709.2011.01172.x 10.1145/2939672.2939754 10.1101/2023.08.09.552564 10.1098/rstb.2001.0915 10.1136/bmj.38478.497164.F7 10.1006/nimg.2002.1174 10.1016/j.tics.2005.12.004 10.1038/nature04968 10.1109/ICIP.2019.8803033 10.1609/aaai.v35i14.17493 10.1162/neco.1997.9.8.1735 10.1002/hbm.24335 |
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Keywords | graph neural networks pain networks decoding of brain states false-belief task theory of mind |
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References | Poldrack (B51) 2006; 10 Hou (B24) 2022 Yan (B71) 2019 Ganesan (B19) 2022 Mazziotta (B43) 2001; 356 Demirtaş (B14) 2019; 184 Whitfield-Gabrieli (B69) 2011 Albouy (B2) 2019; 13 Schlichtkrull (B60) 2020 Zhang (B79) 2021; 231 Haxby (B23) 2001; 293 Li (B37); 196 Jacoby (B26) 2016; 126 Meszlényi (B45) 2017; 11 Zhang (B76) 2018; 41 Cohen (B13) 2011; 35 Yuan (B75) 2021 Saeidi (B58) 2022; 12 Simony (B65) 2016; 7 Lieberman (B39) 2016; 113 Kullback (B32) 1951; 22 Alamolhoda (B1) 2017; 10 Rácz (B54) 2021; 26 Zhang (B78) 2023; 28 Lin (B41) 2018; 13 Muraina (B46) 2022 Bzdok (B9) 2016; 12 Kingma (B29) 2013 Bartley (B5) 2018; 92 Li (B38) 2021; 74 Grover (B21) 2016 Kipf (B30) 2016 Lee (B33) 2022; 248 Wager (B67) 2016; 113 Ye (B72) 2023; 44 Igelström (B25) 2017; 105 Burgund (B8) 2002; 17 Fey (B17) 2019 Ying (B73) 2019 Finn (B18) 2021; 235 Kahloot (B27) 2021; 9 Baetens (B4) 2014; 9 Dubben (B15) 2005; 331 Astington (B3) 2010; 14 Penny (B49) 2011 Christ (B12) 2016 Gao (B20) 2019; 7 Lynch (B42) 2018; 39 Wang (B68) 2020; 41 Poldrack (B53) 2009; 20 Santhanam (B59) 2006; 442 Hasson (B22) 2004; 303 Rosenbaum (B57) 2017; 20 Xie (B70) 2022 Varoquaux (B66) 2018; 14 Dubben (B16) 2016 Li (B36); 9 Perozzi (B50) 2017 Zhang (B77) 2019 Benjamini (B6) 2001; 29 Mazziotta (B44) 1995; 2 Sepp Hochreiter (B63) 1997; 9 Kim (B28) 2018; 28 Nastase (B47) 2019; 14 Reher (B55) 2009 Schulz (B62) 2007; 43 Li (B35) 2019; 202 Richardson (B56) 2018; 9 Schult (B61) 1997; 62 Li (B34) 2018 Simony (B64) 2020; 216 Cao (B11) 2021 Poldrack (B52) 2011 Lieberman (B40) 2015; 112 Yuan (B74) 2022; 45 Krall (B31) 2015; 220 Cantlon (B10) 2006; 4 Paszke (B48) 2019 Bhavna (B7) 2023 |
References_xml | – start-page: 692 year: 2011 ident: B52 article-title: Inferring mental states from neuroimaging data: from reverse inference to large-scale decoding publication-title: Neuron doi: 10.1016/j.neuron.2011.11.001 – year: 2022 ident: B24 article-title: “Gcns-net: a graph convolutional neural network approach for decoding time-resolved EEG motor imagery signals,” publication-title: IEEE Transactions on Neural Networks and Learning Systems doi: 10.1109/TNNLS.2022.3202569 – volume: 62 start-page: 291 year: 1997 ident: B61 article-title: Explaining human movements and actions: Children's understanding of the limits of psychological explanation publication-title: Cognition doi: 10.1016/S0010-0277(96)00786-X – volume: 43 start-page: 1124 year: 2007 ident: B62 article-title: Can being scared cause tummy aches? Naive theories, ambiguous evidence, and preschoolers' causal inferences publication-title: Dev. Psychol. doi: 10.1037/0012-1649.43.5.1124 – volume: 220 start-page: 587 year: 2015 ident: B31 article-title: The role of the right temporoparietal junction in attention and social interaction as revealed by ale meta-analysis publication-title: Brain Struct. Funct doi: 10.1007/s00429-014-0803-z – volume: 248 start-page: 108827 year: 2022 ident: B33 article-title: Application of domain-adaptive convolutional variational autoencoder for stress-state prediction publication-title: Knowl. Based Syst doi: 10.1016/j.knosys.2022.108827 – volume: 26 start-page: 1111 year: 2021 ident: B54 article-title: Effect of dataset size and train/test split ratios in qsar/qspr multiclass classification publication-title: Molecules doi: 10.3390/molecules26041111 – volume: 216 start-page: 116461 year: 2020 ident: B64 article-title: Analysis of stimulus-induced brain dynamics during naturalistic paradigms publication-title: NeuroImage doi: 10.1016/j.neuroimage.2019.116461 – volume: 13 start-page: e0204056 year: 2018 ident: B41 article-title: Bias caused by sampling error in meta-analysis with small sample sizes publication-title: PLoS ONE doi: 10.1371/journal.pone.0204056 – volume: 44 start-page: 2921 year: 2023 ident: B72 article-title: Explainable fmri-based brain decoding via spatial temporal-pyramid graph convolutional network publication-title: Hum. Brain Mapp. doi: 10.1002/hbm.26255 – volume: 92 start-page: 318 year: 2018 ident: B5 article-title: Meta-analytic evidence for a core problem solving network across multiple representational domains publication-title: Neurosci. Biobehav. Rev doi: 10.1016/j.neubiorev.2018.06.009 – volume: 303 start-page: 1634 year: 2004 ident: B22 article-title: Intersubject synchronization of cortical activity during natural vision publication-title: Science doi: 10.1126/science.1089506 – year: 2020 ident: B60 article-title: Interpreting graph neural networks for nlp with differentiable edge masking publication-title: arXiv preprint arXiv: 2010.00577 – volume: 293 start-page: 2425 year: 2001 ident: B23 article-title: Distributed and overlapping representations of faces and objects in ventral temporal cortex publication-title: Science doi: 10.1126/science.1063736 – start-page: 12241 year: 2021 ident: B75 article-title: “On explainability of graph neural networks via subgraph explorations,” doi: 10.1109/TPAMI.2022.3204236 – volume: 9 start-page: 14286 ident: B36 article-title: Topography and behavioral relevance of the global signal in the human brain publication-title: Sci. Rep. doi: 10.1038/s41598-019-50750-8 – volume: 28 start-page: 1494 year: 2023 ident: B78 article-title: Unsupervised joint domain adaptation for decoding brain cognitive states from tfmri images publication-title: IEEE J. Biomed. Health Inform doi: 10.1109/JBHI.2023.3348130 – year: 2011 ident: B69 publication-title: Artifact detection tools (ART) – volume: 4 start-page: e125 year: 2006 ident: B10 article-title: Functional imaging of numerical processing in adults and 4-y-old children publication-title: PLoS Biol doi: 10.1371/journal.pbio.0040125 – volume: 14 start-page: 667 year: 2019 ident: B47 article-title: Measuring shared responses across subjects using intersubject correlation publication-title: Soc. Cogn. Affect. Neurosci doi: 10.1093/scan/nsz037 – volume: 235 start-page: 117963 year: 2021 ident: B18 article-title: Movie-watching outperforms rest for functional connectivity-based prediction of behavior publication-title: NeuroImage doi: 10.1016/j.neuroimage.2021.117963 – volume: 14 start-page: e1006565 year: 2018 ident: B66 article-title: Atlases of cognition with large-scale human brain mapping publication-title: PLoS Comput. Biol. doi: 10.1371/journal.pcbi.1006565 – volume: 9 start-page: 817 year: 2014 ident: B4 article-title: Involvement of the mentalizing network in social and non-social high construal publication-title: Soc. Cogn. Affect. Neurosci doi: 10.1093/scan/nst048 – volume: 7 start-page: 43222 year: 2019 ident: B20 article-title: Decoding behavior tasks from brain activity using deep transfer learning publication-title: IEEE Access doi: 10.1109/ACCESS.2019.2907040 – volume: 9 start-page: 125229 year: 2021 ident: B27 article-title: Algorithmic splitting: a method for dataset preparation publication-title: IEEE Access doi: 10.1109/ACCESS.2021.3110745 – volume: 231 start-page: 117847 year: 2021 ident: B79 article-title: Functional annotation of human cognitive states using deep graph convolution publication-title: NeuroImage doi: 10.1016/j.neuroimage.2021.117847 – volume: 41 start-page: 2008 year: 2018 ident: B76 article-title: Advances in variational inference publication-title: IEEE Trans. Pattern Anal. Mach. Intell doi: 10.1109/TPAMI.2018.2889774 – volume: 12 start-page: 1094 year: 2022 ident: B58 article-title: Decoding task-based fmri data with graph neural networks, considering individual differences publication-title: Brain Sci doi: 10.3390/brainsci12081094 – volume: 105 start-page: 70 year: 2017 ident: B25 article-title: The inferior parietal lobule and temporoparietal junction: a network perspective publication-title: Neuropsychologia doi: 10.1016/j.neuropsychologia.2017.01.001 – volume: 74 start-page: 102233 year: 2021 ident: B38 article-title: Braingnn: Interpretable brain graph neural network for fmri analysis publication-title: Med. Image Analy. doi: 10.1016/j.media.2021.102233 – volume: 29 start-page: 1165 year: 2001 ident: B6 article-title: The control of the false discovery rate in multiple testing under dependency publication-title: Ann. Statist doi: 10.1214/aos/1013699998 – volume: 112 start-page: 15250 year: 2015 ident: B40 article-title: The dorsal anterior cingulate cortex is selective for pain: Results from large-scale reverse inference publication-title: Proc. Nat. Acad. Sci. doi: 10.1073/pnas.1515083112 – volume: 113 start-page: E2476 year: 2016 ident: B39 article-title: Reply to wager et al.: Pain and the dacc: The importance of hit rate-adjusted effects and posterior probabilities with fair priors publication-title: Proc. Nat. Acad. Sci. doi: 10.1073/pnas.1603186113 – volume: 22 start-page: 79 year: 1951 ident: B32 article-title: On information and sufficiency publication-title: Ann. Mathem. Statist doi: 10.1214/aoms/1177729694 – year: 2019 ident: B48 article-title: “Pytorch: an imperative style, high-performance deep learning library,” publication-title: Advances in Neural Information Processing Systems 32 (NeurIPS 2019) – year: 2013 ident: B29 article-title: Auto-encoding variational bayes publication-title: arXiv preprint arXiv:1312.6114 – year: 2022 ident: B70 article-title: A tale of two connectivities: intra-and inter-subject functional connectivity jointly enable better prediction of social abilities publication-title: bioRxiv doi: 10.3389/fnins.2022.875828 – start-page: 496 year: 2022 ident: B46 article-title: “Ideal dataset splitting ratios in machine learning algorithms: general concerns for data scientists and data analysts,” publication-title: 7th International Mardin Artuklu Scientific Research Conference – year: 2019 ident: B73 article-title: “Gnnexplainer: generating explanations for graph neural networks,” publication-title: Advances in Neural Information Processing Systems – volume: 13 start-page: 1165 year: 2019 ident: B2 article-title: Decoding task-related functional brain imaging data to identify developmental disorders: the case of congenital amusia publication-title: Front. Neurosci doi: 10.3389/fnins.2019.01165 – volume: 20 start-page: 1364 year: 2009 ident: B53 article-title: Decoding the large-scale structure of brain function by classifying mental states across individuals publication-title: Psychol. Sci. doi: 10.1111/j.1467-9280.2009.02460.x – volume: 41 start-page: 1505 year: 2020 ident: B68 article-title: Decoding and mapping task states of the human brain via deep learning publication-title: Hum. Brain Mapp doi: 10.1002/hbm.24891 – volume: 12 start-page: e1004994 year: 2016 ident: B9 article-title: Formal models of the network co-occurrence underlying mental operations publication-title: PLoS Computat. Biol doi: 10.1371/journal.pcbi.1004994 – start-page: 855 year: 2016 ident: B16 article-title: “node2vec: Scalable feature learning for networks,” – volume: 202 start-page: 116059 year: 2019 ident: B35 article-title: Interpretable, highly accurate brain decoding of subtly distinct brain states from functional mri using intrinsic functional networks and long short-term memory recurrent neural networks publication-title: NeuroImage doi: 10.1016/j.neuroimage.2019.116059 – volume: 28 start-page: 3065 year: 2018 ident: B28 article-title: A new modular brain organization of the bold signal during natural vision publication-title: Cerebral Cortex doi: 10.1093/cercor/bhx175 – volume: 196 start-page: 126 ident: B37 article-title: Global signal regression strengthens association between resting-state functional connectivity and behavior publication-title: NeuroImage doi: 10.1016/j.neuroimage.2019.04.016 – volume: 184 start-page: 335 year: 2019 ident: B14 article-title: Distinct modes of functional connectivity induced by movie-watching publication-title: Neuroimage doi: 10.1016/j.neuroimage.2018.09.042 – volume: 9 start-page: 1 year: 2018 ident: B56 article-title: Development of the social brain from age three to twelve years publication-title: Nat. Commun doi: 10.1038/s41467-018-03399-2 – volume: 11 start-page: 61 year: 2017 ident: B45 article-title: Resting state fmri functional connectivity-based classification using a convolutional neural network architecture publication-title: Front. Neuroinform. doi: 10.3389/fninf.2017.00061 – volume: 2 start-page: 89 year: 1995 ident: B44 article-title: A probabilistic atlas of the human brain: theory and rationale for its development publication-title: Neuroimage doi: 10.1006/nimg.1995.1012 – volume: 20 start-page: 107 year: 2017 ident: B57 article-title: The spatial structure of correlated neuronal variability publication-title: Nat. Neurosci doi: 10.1038/nn.4433 – volume: 126 start-page: 39 year: 2016 ident: B26 article-title: Localizing pain matrix and theory of mind networks with both verbal and non-verbal stimuli publication-title: Neuroimage doi: 10.1016/j.neuroimage.2015.11.025 – start-page: 1403 year: 2022 ident: B19 article-title: Multi-timepoint pattern analysis: Influence of personality and behavior on decoding context-dependent brain connectivity dynamics publication-title: Human brain mapping doi: 10.1002/hbm.25732 – start-page: 258 year: 2017 ident: B50 article-title: “Don't walk, skip! online learning of multi-scale network embeddings,” publication-title: Proceedings of the 2017 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining 2017 – volume: 113 start-page: E2474 year: 2016 ident: B67 article-title: Pain in the ACC? publication-title: Proc. Nat. Acad. Sci doi: 10.1073/pnas.1600282113 – volume: 10 start-page: 1 year: 2017 ident: B1 article-title: A comparative study of the impacts of unbalanced sample sizes on the four synthesized methods of meta-analytic structural equation modeling publication-title: BMC Res. Notes doi: 10.1186/s13104-017-2768-5 – volume: 14 start-page: 1 year: 2010 ident: B3 article-title: The development of theory of mind in early childhood publication-title: Encycl. Early Childh. Dev – start-page: 320 volume-title: Medical Image Computing and Computer Assisted Intervention-MICCAI 2018: 21st International Conference, Granada, Spain, September 16-20, 2018, Proceedings, Part III 11 year: 2018 ident: B34 article-title: “Brain decoding from functional mri using long short-term memory recurrent neural networks,” – year: 2019 ident: B77 article-title: “Functional annotation of human cognitive states using graph convolution networks,” publication-title: Real Neurons {&} Hidden Units: Future directions at the intersection of neuroscience and artificial intelligence@NeurIPS 2019 – volume: 7 start-page: 12141 year: 2016 ident: B65 article-title: Dynamic reconfiguration of the default mode network during narrative comprehension publication-title: Nat. Commun doi: 10.1038/ncomms12141 – volume: 35 start-page: 1282 year: 2011 ident: B13 article-title: Cross-cultural similarities and differences in person-body reasoning: Experimental evidence from the united kingdom and brazilian amazon publication-title: Cogn. Sci doi: 10.1111/j.1551-6709.2011.01172.x – start-page: 855 year: 2016 ident: B21 article-title: “node2vec: scalable feature learning for networks,” publication-title: Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining doi: 10.1145/2939672.2939754 – year: 2023 ident: B7 article-title: Developmental stability and segregation of theory of mind and pain networks carry distinct temporal signatures during naturalistic viewing publication-title: bioRxiv doi: 10.1101/2023.08.09.552564 – volume-title: Statistical Parametric Mapping: the Analysis of Functional Brain Images year: 2011 ident: B49 – year: 2019 ident: B17 article-title: Fast graph representation learning with pytorch geometric publication-title: arXiv preprint arXiv:1903.02428 – volume: 356 start-page: 1293 year: 2001 ident: B43 article-title: A probabilistic atlas and reference system for the human brain: International consortium for brain mapping (icbm) publication-title: Philosoph. Trans. R. Soc. London Series B doi: 10.1098/rstb.2001.0915 – volume: 331 start-page: 433 year: 2005 ident: B15 article-title: Systematic review of publication bias in studies on publication bias publication-title: BMJ doi: 10.1136/bmj.38478.497164.F7 – volume: 17 start-page: 184 year: 2002 ident: B8 article-title: The feasibility of a common stereotactic space for children and adults in fmri studies of development publication-title: Neuroimage doi: 10.1006/nimg.2002.1174 – year: 2016 ident: B12 article-title: Distributed and parallel time series feature extraction for industrial big data applications publication-title: arXiv preprint arXiv – volume: 10 start-page: 59 year: 2006 ident: B51 article-title: Can cognitive processes be inferred from neuroimaging data? publication-title: Trends Cogn. Sci doi: 10.1016/j.tics.2005.12.004 – year: 2009 ident: B55 article-title: “Partly cloudy [Motion Picture],” publication-title: Pixar Animation Studios and Walt Disney Pictures 2009 – volume: 442 start-page: 195 year: 2006 ident: B59 article-title: A high-performance brain-computer interface publication-title: Nature doi: 10.1038/nature04968 – start-page: 1470 volume-title: 2019 IEEE International Conference on Image Processing (ICIP) year: 2019 ident: B71 article-title: “Brain tissue segmentation based on graph convolutional networks,” doi: 10.1109/ICIP.2019.8803033 – year: 2016 ident: B30 article-title: Semi-supervised classification with graph convolutional networks publication-title: arXiv preprint arXiv:1609.02907 – start-page: 12602 year: 2021 ident: B11 article-title: “Brain decoding using fnirs,” publication-title: Proceedings of the AAAI Conference on Artificial Intelligence doi: 10.1609/aaai.v35i14.17493 – volume: 9 start-page: 1735 year: 1997 ident: B63 article-title: Long short-term memory publication-title: Neural Comput. doi: 10.1162/neco.1997.9.8.1735 – volume: 45 start-page: 5782 year: 2022 ident: B74 article-title: Explainability in graph neural networks: a taxonomic survey publication-title: IEEE Trans. Patt. Analy. Mach. Intell. – volume: 39 start-page: 4939 year: 2018 ident: B42 article-title: Task-evoked functional connectivity does not explain functional connectivity differences between rest and task conditions publication-title: Hum. Brain Mapp doi: 10.1002/hbm.24335 |
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Title | Explainable deep-learning framework: decoding brain states and prediction of individual performance in false-belief task at early childhood stage |
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