Exploring the potential of representation and transfer learning for anatomical neuroimaging: Application to psychiatry

被引:4
作者
Dufumier, Benoit [1 ,2 ]
Gori, Pietro [2 ]
Petiton, Sara [1 ]
Louiset, Robin [1 ,2 ]
Mangin, Jean-Francois [1 ]
Grigis, Antoine [1 ]
Duchesnay, Edouard [1 ]
机构
[1] Univ Paris Saclay, NeuroSpin, CEA, CNRS,UMR 9027 Baobab, Saclay, France
[2] IPParis, LTCI, Telecom Paris, Palaiseau, France
基金
欧盟地平线“2020”;
关键词
Deep learning; Machine learning; Anatomical neuroimaging; Individual subject prediction; Psychiatric disorders; BRAIN AGE; NETWORK; LIFE; SCHIZOPHRENIA; REGISTRATION; INDIVIDUALS; DISEASE; BIAS;
D O I
10.1016/j.neuroimage.2024.120665
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
The perspective of personalized medicine for brain disorders requires efficient learning models for anatomical neuroimaging-based prediction of clinical conditions. There is now a consensus on the benefit of deep learning (DL) in addressing many medical imaging tasks, such as image segmentation. However, for single -subject prediction problems, recent studies yielded contradictory results when comparing DL with Standard Machine Learning (SML) on top of classical feature extraction. Most existing comparative studies were limited in predicting phenotypes of little clinical interest, such as sex and age, and using a single dataset. Moreover, they conducted a limited analysis of the employed image pre-processing and feature selection strategies. This paper extensively compares DL and SML prediction capacity on five multi -site problems, including three increasingly complex clinical applications in psychiatry namely schizophrenia, bipolar disorder, and Autism Spectrum Disorder (ASD) diagnosis. To compensate for the relative scarcity of neuroimaging data on these clinical datasets, we also evaluate three pre -training strategies for transfer learning from brain imaging of the general healthy population: self -supervised learning, generative modeling and supervised learning with age. Overall, we find similar performance between randomly initialized DL and SML for the three clinical tasks and a similar scaling trend for sex prediction. This was replicated on an external dataset. We also show highly correlated discriminative brain regions between DL and linear ML models in all problems. Nonetheless, we demonstrate that self -supervised pre -training on large-scale healthy population imaging datasets ( N approximate to 10k), along with Deep Ensemble, allows DL to learn robust and transferable representations to smaller -scale clinical datasets ( N <= 1 k). It largely outperforms SML on 2 out of 3 clinical tasks both in internal and external test sets. These findings suggest that the improvement of DL over SML in anatomical neuroimaging mainly comes from its capacity to learn meaningful and useful abstract representations of the brain anatomy, and it sheds light on the potential of transfer learning for personalized medicine in psychiatry
引用
收藏
页数:18
相关论文
共 124 条
[31]  
Devlin J, 2019, 2019 CONFERENCE OF THE NORTH AMERICAN CHAPTER OF THE ASSOCIATION FOR COMPUTATIONAL LINGUISTICS: HUMAN LANGUAGE TECHNOLOGIES (NAACL HLT 2019), VOL. 1, P4171
[32]   The autism brain imaging data exchange: towards a large-scale evaluation of the intrinsic brain architecture in autism [J].
Di Martino, A. ;
Yan, C-G ;
Li, Q. ;
Denio, E. ;
Castellanos, F. X. ;
Alaerts, K. ;
Anderson, J. S. ;
Assaf, M. ;
Bookheimer, S. Y. ;
Dapretto, M. ;
Deen, B. ;
Delmonte, S. ;
Dinstein, I. ;
Ertl-Wagner, B. ;
Fair, D. A. ;
Gallagher, L. ;
Kennedy, D. P. ;
Keown, C. L. ;
Keysers, C. ;
Lainhart, J. E. ;
Lord, C. ;
Luna, B. ;
Menon, V. ;
Minshew, N. J. ;
Monk, C. S. ;
Mueller, S. ;
Mueller, R. A. ;
Nebel, M. B. ;
Nigg, J. T. ;
O'Hearn, K. ;
Pelphrey, K. A. ;
Peltier, S. J. ;
Rudie, J. D. ;
Sunaert, S. ;
Thioux, M. ;
Tyszka, J. M. ;
Uddin, L. Q. ;
Verhoeven, J. S. ;
Wenderoth, N. ;
Wiggins, J. L. ;
Mostofsky, S. H. ;
Milham, M. P. .
MOLECULAR PSYCHIATRY, 2014, 19 (06) :659-667
[33]   Anatomic Correlation of the Mini-Mental State Examination: A Voxel-Based Morphometric Study in Older Adults [J].
Dinomais, Mickael ;
Celle, Sebastien ;
Duval, Guillaume T. ;
Roche, Frederic ;
Henni, Samir ;
Bartha, Robert ;
Beauchet, Olivier ;
Annweiler, Cedric .
PLOS ONE, 2016, 11 (10)
[34]   Deep learning-based unlearning of dataset bias for MRI harmonisation and confound removal [J].
Dinsdale, Nicola K. ;
Jenkinson, Mark ;
Namburete, Ana I. L. .
NEUROIMAGE, 2021, 228
[35]  
Dufumier B., 2021, MEDNEURIPS WORKSH NE
[36]  
Dufumier B., 2023, INT C MACH LEARN ICM
[37]   OpenBHB: a Large-Scale Multi-Site Brain MRI Data-set for Age Prediction and Debiasing [J].
Dufumier, Benoit ;
Grigis, Antoine ;
Victor, Julie ;
Ambroise, Corentin ;
Frouin, Vincent ;
Duchesnay, Edouard .
NEUROIMAGE, 2022, 263
[38]   Contrastive Learning with Continuous Proxy Meta-data for 3D MRI Classification [J].
Dufumier, Benoit ;
Gori, Pietro ;
Victor, Julie ;
Grigis, Antoine ;
Wessa, Michele ;
Brambilla, Paolo ;
Favre, Pauline ;
Polosan, Mircea ;
McDonald, Colm ;
Piguet, Camille Marie ;
Phillips, Mary ;
Eyler, Lisa ;
Duchesnay, Edouard .
MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2021, PT II, 2021, 12902 :58-68
[39]   Promises and pitfalls of deep neural networks in neuroimaging-based psychiatric research [J].
Eitel, Fabian ;
Schulz, Marc-Andre ;
Seiler, Moritz ;
Walter, Henrik ;
Ritter, Kerstin .
EXPERIMENTAL NEUROLOGY, 2021, 339
[40]   Machine Learning Methods for Diagnosing Autism Spectrum Disorder and Attention- Deficit/Hyperactivity Disorder Using Functional and Structural MRI: A Survey [J].
Eslami, Taban ;
Almuqhim, Fahad ;
Raiker, Joseph S. ;
Saeed, Fahad .
FRONTIERS IN NEUROINFORMATICS, 2021, 14