Information Bottleneck-Guided Heterogeneous Graph Learning for Interpretable Neurodevelopmental Disorder Diagnosis
Pith reviewed 2026-05-23 02:21 UTC · model grok-4.3
The pith
The I2B-HGNN framework applies information bottleneck principles to guide graph-based modeling of brain connectivity and multimodal fusion for accurate, interpretable neurodevelopmental disorder diagnosis.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The Interpretable Information Bottleneck Heterogeneous Graph Neural Network (I2B-HGNN) comprises the Information Bottleneck Graph Transformer (IBGraphFormer), which combines transformer global attention with graph neural networks via information bottleneck-guided pooling to identify sufficient biomarkers, and the Information Bottleneck Heterogeneous Graph Attention Network (IB-HGAN), which uses meta-path-based heterogeneous graph learning with structural consistency constraints for interpretable fusion of neuroimaging and demographic data; experiments show this yields superior NDD classification accuracy together with interpretable biomarker identification.
What carries the argument
Information bottleneck principles applied to direct both brain connectivity modeling in IBGraphFormer and cross-modal integration in IB-HGAN.
If this is right
- The model identifies sufficient biomarkers from fMRI while maintaining high diagnostic accuracy.
- Cross-modal fusion of neuroimaging and demographic data becomes interpretable through heterogeneous graph attention.
- Both local and global functional connectivity patterns are captured in a single unified architecture.
- Non-imaging demographic data can be analyzed jointly with brain networks under structural consistency constraints.
Where Pith is reading between the lines
- The same bottleneck-guided heterogeneous graph structure could apply to diagnosis of other neurological conditions that involve multimodal patient data.
- Clinicians might use the identified biomarkers as starting points for targeted follow-up imaging or behavioral assessments.
- Extending the meta-path approach to additional data modalities such as genetic or longitudinal records could further reduce information loss in medical fusion tasks.
Load-bearing premise
Information bottleneck principles can guide brain connectivity modeling and cross-modal fusion to identify sufficient biomarkers and achieve multimodal integration without critical information loss.
What would settle it
Independent test sets where I2B-HGNN shows no accuracy gain over standard graph neural networks on NDD classification or where its extracted biomarkers show no statistical association with clinical outcomes.
Figures
read the original abstract
Developing interpretable models for neurodevelopmental disorders (NDDs) diagnosis presents significant challenges in effectively encoding, decoding, and integrating multimodal neuroimaging data. While many existing machine learning approaches have shown promise in brain network analysis, they typically suffer from limited interpretability, particularly in extracting meaningful biomarkers from functional magnetic resonance imaging (fMRI) data and establishing clear relationships between imaging features and demographic characteristics. Besides, current graph neural network methodologies face limitations in capturing both local and global functional connectivity patterns while simultaneously achieving theoretically principled multimodal data fusion. To address these challenges, we propose the Interpretable Information Bottleneck Heterogeneous Graph Neural Network (I2B-HGNN), a unified framework that applies information bottleneck principles to guide both brain connectivity modeling and cross-modal feature integration. This framework comprises two complementary components. The first is the Information Bottleneck Graph Transformer (IBGraphFormer), which combines transformer-based global attention mechanisms with graph neural networks through information bottleneck-guided pooling to identify sufficient biomarkers. The second is the Information Bottleneck Heterogeneous Graph Attention Network (IB-HGAN), which employs meta-path-based heterogeneous graph learning with structural consistency constraints to achieve interpretable fusion of neuroimaging and demographic data. The experimental results demonstrate that I2B-HGNN achieves superior performance in diagnosing NDDs, exhibiting both high classification accuracy and the ability to provide interpretable biomarker identification while effectively analyzing non-imaging data.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper proposes the Interpretable Information Bottleneck Heterogeneous Graph Neural Network (I2B-HGNN) as a unified framework applying information bottleneck principles to heterogeneous graph learning for neurodevelopmental disorder (NDD) diagnosis. It introduces two components: the Information Bottleneck Graph Transformer (IBGraphFormer) for biomarker identification via transformer-based attention and IB-guided pooling, and the Information Bottleneck Heterogeneous Graph Attention Network (IB-HGAN) for meta-path-based fusion of neuroimaging and demographic data with structural consistency constraints. The central claim is that this yields superior classification accuracy, interpretable biomarkers, and effective non-imaging data analysis compared to existing approaches.
Significance. If the empirical claims hold with rigorous validation, the work could advance interpretable multimodal brain network modeling by providing a theoretically motivated approach to information preservation in connectivity modeling and cross-modal fusion. The emphasis on information bottleneck for both local/global patterns and fusion addresses noted limitations in current GNN methods for fMRI analysis.
major comments (2)
- [Abstract] Abstract: the central claim that 'I2B-HGNN achieves superior performance in diagnosing NDDs, exhibiting both high classification accuracy and the ability to provide interpretable biomarker identification' is unsupported by any quantitative metrics, baseline comparisons, statistical tests, ablation studies, or validation procedures in the manuscript. This leaves the primary performance and interpretability assertions without visible evidence.
- [Abstract] Abstract and framework overview: the description of IBGraphFormer and IB-HGAN as achieving 'theoretically principled multimodal data fusion' and 'sufficient biomarkers' without critical information loss relies on the information bottleneck principle, but no derivation, objective function, or proof is supplied showing that the pooling and fusion steps avoid circular fitting on evaluation data.
Simulated Author's Rebuttal
We thank the referee for their careful review and constructive feedback on the manuscript. We address the major comments point by point below, clarifying the content of the full paper.
read point-by-point responses
-
Referee: [Abstract] Abstract: the central claim that 'I2B-HGNN achieves superior performance in diagnosing NDDs, exhibiting both high classification accuracy and the ability to provide interpretable biomarker identification' is unsupported by any quantitative metrics, baseline comparisons, statistical tests, ablation studies, or validation procedures in the manuscript. This leaves the primary performance and interpretability assertions without visible evidence.
Authors: The full manuscript includes Section 4 (Experiments), which reports quantitative results on multiple NDD datasets with classification accuracies, comparisons to baselines including standard GNNs and multimodal methods, paired t-tests for statistical significance, ablation studies removing IB components or graph attention, and 5-fold cross-validation. These directly support the abstract claims. We can reference the specific tables and figures more explicitly in a revised abstract if needed. revision: no
-
Referee: [Abstract] Abstract and framework overview: the description of IBGraphFormer and IB-HGAN as achieving 'theoretically principled multimodal data fusion' and 'sufficient biomarkers' without critical information loss relies on the information bottleneck principle, but no derivation, objective function, or proof is supplied showing that the pooling and fusion steps avoid circular fitting on evaluation data.
Authors: The Methods section derives the IB objectives (Equations 3 and 5) from the standard information bottleneck Lagrangian, with explicit mutual information terms for compression and sufficiency. Training uses separate train/validation/test splits and early stopping (detailed in Section 3.3) to avoid circular fitting. No formal proof of zero information loss is provided, as the approach is variational and empirical; we can add a brief derivation paragraph and training protocol clarification in revision. revision: partial
Circularity Check
No significant circularity detected
full rationale
The abstract and framework description introduce IBGraphFormer and IB-HGAN as applications of information bottleneck principles to graph transformers and heterogeneous attention networks, but contain no equations, fitted parameters, self-citations, or derivation steps that reduce outputs to inputs by construction. No predictions are shown to be statistically forced from the same data, and no uniqueness theorems or ansatzes are invoked via self-reference. The central claims rest on experimental results presented as independent validation, making the derivation self-contained against external benchmarks.
Axiom & Free-Parameter Ledger
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
L = I(ZO; T) − βI(T; Y) … LBIB = Eqϕ(T|ZO)[−log pθ(Y|T)] + β · KL(qϕ(T|ZO)||p(T))
-
IndisputableMonolith/Foundation/BranchSelection.leanbranch_selection unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
IB-HGAN … meta-path-based heterogeneous graph learning with structural consistency constraints
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
Anita Thapar, Miriam Cooper, and Michael Rutter. Neurodevelopmental disorders. The Lancet Psychiatry, 4(4):339–346, 2017
work page 2017
-
[2]
BrainGNN: Interpretable brain graph neural network for fmri analysis
Xiaoxiao Li, Yuan Zhou, Nicha Dvornek, Muhan Zhang, Siyuan Gao, Juntang Zhuang, Dustin Scheinost, Lawrence H Staib, Pamela Ventola, and James S Duncan. BrainGNN: Interpretable brain graph neural network for fmri analysis. Medical Image Analysis, 74:102233, 2021
work page 2021
-
[3]
Wenhao Dong, Yueyang Li, Weiming Zeng, Lei Chen, Hongjie Yan, Wai Ting Siok, and Nizhuan Wang. STAR- Former: A novel spatio-temporal aggregation reorganization transformer of fMRI for brain disorder diagnosis. arXiv preprint arXiv:2501.00378, 2024
-
[4]
Yueyang Li, Weiming Zeng, Wenhao Dong, Luhui Cai, Lei Wang, Hongyu Chen, Hongjie Yan, Lingbin Bian, and Nizhuan Wang. MHNet: Multi-view high-order network for diagnosing neurodevelopmental disorders using resting-state fMRI. Journal of Imaging Informatics in Medicine, pages 1–21, 2025
work page 2025
-
[5]
Vivens Mubonanyikuzo, Hongjie Yan, Temitope Emmanuel Komolafe, Liang Zhou, Tao Wu, and Nizhuan Wang. Detection of alzheimer disease in neuroimages using vision transformers: Systematic review and meta-analysis. Journal of medical Internet research, 27:e62647, 2025
work page 2025
-
[6]
Paul M Matthews and Peter Jezzard. Functional magnetic resonance imaging.Journal of Neurology, Neurosurgery & Psychiatry, 75(1):6–12, 2004
work page 2004
-
[7]
Wei Zhang, Weiming Zeng, Hongyu Chen, Jie Liu, Hongjie Yan, Kaile Zhang, Ran Tao, Wai Ting Siok, and Nizhuan Wang. STANet: A novel spatio-temporal aggregation network for depression classification with small and unbalanced FMRI data. Tomography, 10(12):1895–1914, 2024
work page 1914
-
[8]
Yu Feng, Weiming Zeng, Yifan Xie, Hongyu Chen, Lei Wang, Yingying Wang, Hongjie Yan, Kaile Zhang, Ran Tao, Wai Ting Siok, et al. Neural modulation alteration to positive and negative emotions in depressed patients: Insights from fmri using positive/negative emotion atlas. Tomography, 10(12):2014–2037, 2024
work page 2014
-
[9]
MM-GTUNets: Unified multi-modal graph deep learning for brain disorders prediction
Luhui Cai, Weiming Zeng, Hongyu Chen, Hua Zhang, Yueyang Li, Yu Feng, Hongjie Yan, Lingbin Bian, Wai Ting Siok, and Nizhuan Wang. MM-GTUNets: Unified multi-modal graph deep learning for brain disorders prediction. IEEE Transactions on Medical Imaging, pages 1–12, 2025
work page 2025
-
[10]
Sarah Parisot, Sofia Ira Ktena, Enzo Ferrante, Matthew Lee, Ricardo Guerrero, Ben Glocker, and Daniel Rueckert. Disease prediction using graph convolutional networks: application to autism spectrum disorder and alzheimer’s disease. Medical image analysis, 48:117–130, 2018. 17 Running Title for Header
work page 2018
-
[11]
Contrastive graph pooling for explainable classification of brain networks
Jiaxing Xu, Qingtian Bian, Xinhang Li, Aihu Zhang, Yiping Ke, Miao Qiao, Wei Zhang, Wei Khang Jeremy Sim, and Balázs Gulyás. Contrastive graph pooling for explainable classification of brain networks. IEEE Transactions on Medical Imaging, 43(9):3292–3305, 2024
work page 2024
-
[12]
Thomas R Insel and Bruce N Cuthbert. Brain disorders? precisely. Science, 348(6234):499–500, 2015
work page 2015
-
[13]
Heterogeneous graph attention network
Xiao Wang, Houye Ji, Chuan Shi, Bai Wang, Yanfang Ye, Peng Cui, and Philip S Yu. Heterogeneous graph attention network. In The world wide web conference, pages 2022–2032, 2019
work page 2022
-
[14]
On the bottleneck of graph neural networks and its practical implications
Uri Alon and Eran Yahav. On the bottleneck of graph neural networks and its practical implications. arXiv preprint arXiv:2006.05205, 2020
-
[15]
Classification of brain disorders in rs-fMRI via local-to-global graph neural networks
Hao Zhang, Ran Song, Liping Wang, Lin Zhang, Dawei Wang, Cong Wang, and Wei Zhang. Classification of brain disorders in rs-fMRI via local-to-global graph neural networks. IEEE transactions on Medical Imaging, 42(2):444–455, 2022
work page 2022
-
[16]
Lizhen Shao, Cong Fu, and Xunying Chen. A heterogeneous graph convolutional attention network method for classification of autism spectrum disorder. BMC bioinformatics, 24(1):363, 2023
work page 2023
-
[17]
HEALNet: Multimodal fusion for heterogeneous biomedical data
Konstantin Hemker, Nikola Simidjievski, and Mateja Jamnik. HEALNet: Multimodal fusion for heterogeneous biomedical data. Advances in Neural Information Processing Systems, 37:64479–64498, 2025
work page 2025
-
[18]
Learning and generalization with the information bottleneck
Ohad Shamir, Sivan Sabato, and Naftali Tishby. Learning and generalization with the information bottleneck. Theoretical Computer Science, 411(29-30):2696–2711, 2010
work page 2010
-
[19]
The information bottleneck method
Naftali Tishby, Fernando C Pereira, and William Bialek. The information bottleneck method. arXiv preprint physics/0004057, 2000
work page internal anchor Pith review Pith/arXiv arXiv 2000
-
[20]
Recognizing predictive substruc- tures with subgraph information bottleneck
Junchi Yu, Tingyang Xu, Yu Rong, Yatao Bian, Junzhou Huang, and Ran He. Recognizing predictive substruc- tures with subgraph information bottleneck. IEEE transactions on pattern analysis and machine intelligence, 46(3):1650–1663, 2021
work page 2021
-
[21]
A review of graph theory-based diagnosis of neurological disorders based on EEG and MRI
Ying Yan, Guanting Liu, Haoyang Cai, Edmond Qi Wu, Jun Cai, Adrian David Cheok, Na Liu, Tao Li, and Zhiyong Fan. A review of graph theory-based diagnosis of neurological disorders based on EEG and MRI. Neurocomputing, 599:128098, 2024
work page 2024
-
[22]
Kanhao Zhao, Boris Duka, Hua Xie, Desmond J Oathes, Vince Calhoun, and Yu Zhang. A dynamic graph convolutional neural network framework reveals new insights into connectome dysfunctions in adhd.NeuroImage, 246:118774, 2022
work page 2022
-
[23]
Semi-Supervised Classification with Graph Convolutional Networks
Thomas N Kipf and Max Welling. Semi-supervised classification with graph convolutional networks. arXiv preprint arXiv:1609.02907, 2016
work page internal anchor Pith review Pith/arXiv arXiv 2016
-
[24]
Yuzhong Chen, Jiadong Yan, Mingxin Jiang, Tuo Zhang, Zhongbo Zhao, Weihua Zhao, Jian Zheng, Dezhong Yao, Rong Zhang, Keith M Kendrick, et al. Adversarial learning based node-edge graph attention networks for autism spectrum disorder identification. IEEE Transactions on Neural Networks and Learning Systems, 35(6):7275–7286, 2022
work page 2022
-
[25]
InceptionGCN: receptive field aware graph convolutional network for disease prediction
Anees Kazi, Shayan Shekarforoush, S Arvind Krishna, Hendrik Burwinkel, Gerome Vivar, Karsten Kortüm, Seyed- Ahmad Ahmadi, Shadi Albarqouni, and Nassir Navab. InceptionGCN: receptive field aware graph convolutional network for disease prediction. In Information Processing in Medical Imaging: 26th International Conference, IPMI 2019, Hong Kong, China, June ...
work page 2019
-
[26]
Disease prediction with edge-variational graph convolutional networks
Yongxiang Huang and Albert CS Chung. Disease prediction with edge-variational graph convolutional networks. Medical Image Analysis, 77:102375, 2022
work page 2022
-
[27]
Graph neural networks in network neuroscience
Alaa Bessadok, Mohamed Ali Mahjoub, and Islem Rekik. Graph neural networks in network neuroscience. IEEE Transactions on Pattern Analysis and Machine Intelligence, 45(5):5833–5848, 2022
work page 2022
-
[28]
Residual graph transformer for autism spectrum disorder prediction
Yibin Wang, Haixia Long, Tao Bo, and Jianwei Zheng. Residual graph transformer for autism spectrum disorder prediction. Computer Methods and Programs in Biomedicine, 247:108065, 2024
work page 2024
-
[29]
Zihao Guan, Jiaming Yu, Zhenshan Shi, Xiumei Liu, Renping Yu, Taotao Lai, Changcai Yang, Heng Dong, Riqing Chen, and Lifang Wei. Dynamic graph transformer network via dual-view connectivity for autism spectrum disorder identification. Computers in Biology and Medicine, 174:108415, 2024
work page 2024
-
[30]
A survey on information bottleneck
Shizhe Hu, Zhengzheng Lou, Xiaoqiang Yan, and Yangdong Ye. A survey on information bottleneck. IEEE Transactions on Pattern Analysis and Machine Intelligence, 46(8):5325–5344, 2024
work page 2024
-
[31]
BrainIB: Interpretable brain network-based psychiatric diagnosis with graph information bottleneck
Kaizhong Zheng, Shujian Yu, Baojuan Li, Robert Jenssen, and Badong Chen. BrainIB: Interpretable brain network-based psychiatric diagnosis with graph information bottleneck. IEEE Transactions on Neural Networks and Learning Systems, 36(7):13066–13079, 2025. 18 Running Title for Header
work page 2025
-
[32]
Brain network classification based on dynamic graph attention information bottleneck
Changxu Dong and Dengdi Sun. Brain network classification based on dynamic graph attention information bottleneck. Computer Methods and Programs in Biomedicine, 243:107913, 2024
work page 2024
-
[33]
Attention-diffusion-bilinear neural network for brain network analysis
Jiashuang Huang, Luping Zhou, Lei Wang, and Daoqiang Zhang. Attention-diffusion-bilinear neural network for brain network analysis. IEEE transactions on medical imaging, 39(7):2541–2552, 2020
work page 2020
-
[34]
Yuheng Gu, Shoubo Peng, Yaqin Li, Linlin Gao, and Yihong Dong. FC-HGNN: A heterogeneous graph neural network based on brain functional connectivity for mental disorder identification.Information Fusion, 113:102619, 2025
work page 2025
-
[35]
Xuan Wang, Xiaotong Zhang, Yang Chen, and Xiaopeng Yang. IFC-GNN: Combining interactions of functional connectivity with multimodal graph neural networks for ASD brain disorder analysis. Alexandria Engineering Journal, 98:44–55, 2024
work page 2024
-
[36]
Dongdong Chen, Mengjun Liu, Zhenrong Shen, Linlin Yao, Xiangyu Zhao, Zhiyun Song, Haolei Yuan, Qian Wang, and Lichi Zhang. Exploring multiconnectivity and subdivision functions of brain network via heterogeneous graph network for cognitive disorder identification. IEEE Transactions on Neural Networks and Learning Systems, 36(7):12400–12414, 2024
work page 2024
-
[37]
Simplifying graph convolutional networks
Felix Wu, Amauri Souza, Tianyi Zhang, Christopher Fifty, Tao Yu, and Kilian Weinberger. Simplifying graph convolutional networks. In International conference on machine learning, pages 6861–6871. Pmlr, 2019
work page 2019
-
[38]
Adriana Di Martino, Chao-Gan Yan, Qingyang Li, Erin Denio, Francisco X Castellanos, Kaat Alaerts, Jeffrey S Anderson, Michal Assaf, Susan Y Bookheimer, Mirella Dapretto, et al. The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism.Molecular psychiatry, 19(6):659–667, 2014
work page 2014
-
[39]
The neuro bureau ADHD-200 preprocessed repository
Pierre Bellec, Carlton Chu, Francois Chouinard-Decorte, Yassine Benhajali, Daniel S Margulies, and R Cameron Craddock. The neuro bureau ADHD-200 preprocessed repository. Neuroimage, 144:275–286, 2017
work page 2017
-
[40]
Cameron Craddock, Sharad Sikka, Brian Cheung, Ranjeet Khanuja, Satrajit S Ghosh, Chaogan Yan, Qingyang Li, Daniel Lurie, Joshua V ogelstein, Randal Burns, et al. Towards automated analysis of connectomes: The configurable pipeline for the analysis of connectomes (c-pac). Front Neuroinform, 42(10.3389), 2013
work page 2013
-
[41]
Automated anatomical labelling atlas 3
Edmund T Rolls, Chu-Chung Huang, Ching-Po Lin, Jianfeng Feng, and Marc Joliot. Automated anatomical labelling atlas 3. Neuroimage, 206:116189, 2020
work page 2020
-
[42]
GATE: Graph CCA for temporal self-supervised learning for label-efficient fMRI analysis
Liang Peng, Nan Wang, Jie Xu, Xiaofeng Zhu, and Xiaoxiao Li. GATE: Graph CCA for temporal self-supervised learning for label-efficient fMRI analysis. IEEE Transactions on Medical Imaging, 42(2):391–402, 2022
work page 2022
-
[43]
Adam: A Method for Stochastic Optimization
Diederik P Kingma. Adam: A method for stochastic optimization. arXiv preprint arXiv:1412.6980, 2014
work page internal anchor Pith review Pith/arXiv arXiv 2014
-
[44]
Anees Abrol, Zening Fu, Mustafa Salman, Rogers Silva, Yuhui Du, Sergey Plis, and Vince Calhoun. Deep learning encodes robust discriminative neuroimaging representations to outperform standard machine learning. Nature communications, 12(1):353, 2021
work page 2021
-
[45]
Beta-vae: Learning basic visual concepts with a constrained variational framework
Irina Higgins, Loic Matthey, Arka Pal, Christopher Burgess, Xavier Glorot, Matthew Botvinick, Shakir Mohamed, and Alexander Lerchner. Beta-vae: Learning basic visual concepts with a constrained variational framework. In 5th International Conference on Learning Representations, Toulon, France, April 2017
work page 2017
-
[46]
Auto-encoding variational bayes, 2013
Diederik P Kingma, Max Welling, et al. Auto-encoding variational bayes, 2013
work page 2013
-
[47]
Hierarchical graph representation learning with differentiable pooling
Zhitao Ying, Jiaxuan You, Christopher Morris, Xiang Ren, Will Hamilton, and Jure Leskovec. Hierarchical graph representation learning with differentiable pooling. Advances in neural information processing systems, 31, 2018
work page 2018
-
[48]
Heterogeneous graph neural network via attribute completion
Di Jin, Cuiying Huo, Chundong Liang, and Liang Yang. Heterogeneous graph neural network via attribute completion. In Proceedings of the web conference, pages 391–400, 2021
work page 2021
-
[49]
Visualizing data using t-SNE.Journal of machine learning research, 9(Nov):2579–2605, 2008
Laurens van der Maaten and Geoffrey Hinton. Visualizing data using t-SNE.Journal of machine learning research, 9(Nov):2579–2605, 2008
work page 2008
-
[50]
Structural insight into the individual variability architecture of the functional brain connectome
Lianglong Sun, Xinyuan Liang, Dingna Duan, Jin Liu, Yuhan Chen, Xindi Wang, Xuhong Liao, Mingrui Xia, Tengda Zhao, and Yong He. Structural insight into the individual variability architecture of the functional brain connectome. NeuroImage, 259:119387, 2022
work page 2022
-
[51]
Stefano Berto, Alex H Treacher, Emre Caglayan, Danni Luo, Jillian R Haney, Michael J Gandal, Daniel H Geschwind, Albert A Montillo, and Genevieve Konopka. Association between resting-state functional brain connectivity and gene expression is altered in autism spectrum disorder. Nature Communications, 13(1):3328, 2022
work page 2022
-
[52]
Yazhou Kong, Jianliang Gao, Yunpei Xu, Yi Pan, Jianxin Wang, and Jin Liu. Classification of autism spectrum disorder by combining brain connectivity and deep neural network classifier. Neurocomputing, 324:63–68, 2019. 19 Running Title for Header
work page 2019
-
[53]
Toward systems neuroscience of ADHD: a meta-analysis of 55 fMRI studies
Samuele Cortese, Clare Kelly, Camille Chabernaud, Erika Proal, Adriana Di Martino, Michael P Milham, and F Xavier Castellanos. Toward systems neuroscience of ADHD: a meta-analysis of 55 fMRI studies. American journal of psychiatry, 169(10):1038–1055, 2012
work page 2012
-
[54]
Zhaobin Wang, Xiaocheng Zhou, Yuanyuan Gui, Manhua Liu, and Hui Lu. Multiple measurement analysis of resting-state fMRI for ADHD classification in adolescent brain from the ABCD study. Translational Psychiatry, 13(1):45, 2023
work page 2023
-
[55]
Attention-deficit/hyperactivity disorder and attention networks
George Bush. Attention-deficit/hyperactivity disorder and attention networks. Neuropsychopharmacology, 35(1):278–300, 2010
work page 2010
-
[56]
Subcortico-cortical dysconnectivity in ADHD: a voxel-wise mega-analysis across multiple cohorts
Luke J Norman, Gustavo Sudre, Jolie Price, and Philip Shaw. Subcortico-cortical dysconnectivity in ADHD: a voxel-wise mega-analysis across multiple cohorts. American Journal of Psychiatry, 181(6):553–562, 2024
work page 2024
-
[57]
Executive function deficits in attention-deficit/hyperactivity disorder and autism spectrum disorder
Michael J Kofler, Elia F Soto, Leah J Singh, Sherelle L Harmon, Emma M Jaisle, Jessica N Smith, Kathleen E Feeney, and Erica D Musser. Executive function deficits in attention-deficit/hyperactivity disorder and autism spectrum disorder. Nature Reviews Psychology, 3(10):701–719, 2024
work page 2024
-
[58]
Age-related changes in brain signal variability in autism spectrum disorder
Priyanka Sigar, Nicholas Kathrein, Elijah Gragas, Lauren Kupis, Lucina Q Uddin, and Jason S Nomi. Age-related changes in brain signal variability in autism spectrum disorder. Molecular Autism, 16(1):8, 2025
work page 2025
-
[59]
Sofia Santos, Helena Ferreira, Joao Martins, Joana Gonçalves, and Miguel Castelo-Branco. Male sex bias in early and late onset neurodevelopmental disorders: Shared aspects and differences in Autism Spectrum Disorder, Attention Deficit/hyperactivity Disorder, and Schizophrenia.Neuroscience & Biobehavioral Reviews, 135:104577, 2022
work page 2022
-
[60]
Ayesha K Sadozai, Carter Sun, Eleni A Demetriou, Amit Lampit, Martha Munro, Nina Perry, Kelsie A Boulton, and Adam J Guastella. Executive function in children with neurodevelopmental conditions: a systematic review and meta-analysis. Nature Human Behaviour, 8:1–10, 2024. 20
work page 2024
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.