MRI signatures of brain age and disease over the lifespan based on a deep brain network and 14 468 individuals worldwide

Vishnu Bashyam(University of Pennsylvania), Güray Erus(University of Pennsylvania), Jimit Doshi(University of Pennsylvania), Mohamad Habes(University of Pennsylvania), Ilya M. Nasrallah(University of Pennsylvania), Monica Truelove‐Hill(University of Pennsylvania), Dhivya Srinivasan(University of Pennsylvania), Liz Mamourian(University of Pennsylvania), Raymond Pomponio(University of Pennsylvania), Yong Fan(University of Pennsylvania), Lenore J. Launer(National Institute on Aging), Colin L. Masters(The University of Melbourne), Paul Maruff(The University of Melbourne), Chuanjun Zhuo(Nankai University), Henry Völzke(Universitätsmedizin Greifswald), Sterling C. Johnson(University of Wisconsin–Madison), Jürgen Fripp(Australian e-Health Research Centre), Nikolaos Koutsouleris(Ludwig-Maximilians-Universität München), Theodore D. Satterthwaite(University of Pennsylvania), Daniel H. Wolf(University of Pennsylvania), Raquel E. Gur(University of Pennsylvania), Ruben C. Gur(University of Pennsylvania), John C. Morris(Washington University in St. Louis), Marilyn S. Albert(Johns Hopkins University), Hans J. Grabe(Universität Greifswald), Susan M. Resnick(National Institute on Aging), R. Nick Bryan(The University of Texas at Austin), David A. Wolk(University of Pennsylvania), Haochang Shou(University of Pennsylvania), Christos Davatzikos(University of Pennsylvania)
Brain
May 2, 2020
Cited by 390Open Access
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Abstract

Deep learning has emerged as a powerful approach to constructing imaging signatures of normal brain ageing as well as of various neuropathological processes associated with brain diseases. In particular, MRI-derived brain age has been used as a comprehensive biomarker of brain health that can identify both advanced and resilient ageing individuals via deviations from typical brain ageing. Imaging signatures of various brain diseases, including schizophrenia and Alzheimer's disease, have also been identified using machine learning. Prior efforts to derive these indices have been hampered by the need for sophisticated and not easily reproducible processing steps, by insufficiently powered or diversified samples from which typical brain ageing trajectories were derived, and by limited reproducibility across populations and MRI scanners. Herein, we develop and test a sophisticated deep brain network (DeepBrainNet) using a large (n = 11 729) set of MRI scans from a highly diversified cohort spanning different studies, scanners, ages and geographic locations around the world. Tests using both cross-validation and a separate replication cohort of 2739 individuals indicate that DeepBrainNet obtains robust brain-age estimates from these diverse datasets without the need for specialized image data preparation and processing. Furthermore, we show evidence that moderately fit brain ageing models may provide brain age estimates that are most discriminant of individuals with pathologies. This is not unexpected as tightly-fitting brain age models naturally produce brain-age estimates that offer little information beyond age, and loosely fitting models may contain a lot of noise. Our results offer some experimental evidence against commonly pursued tightly-fitting models. We show that the moderately fitting brain age models obtain significantly higher differentiation compared to tightly-fitting models in two of the four disease groups tested. Critically, we demonstrate that leveraging DeepBrainNet, along with transfer learning, allows us to construct more accurate classifiers of several brain diseases, compared to directly training classifiers on patient versus healthy control datasets or using common imaging databases such as ImageNet. We, therefore, derive a domain-specific deep network likely to reduce the need for application-specific adaptation and tuning of generic deep learning networks. We made the DeepBrainNet model freely available to the community for MRI-based evaluation of brain health in the general population and over the lifespan.


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