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Subtyping Brain Diseases from Imaging Data

Junhao Wen, Erdem Varol, Zhijian Yang, Gyujoon Hwang, Dominique Dwyer, Anahita Fathi Kazerooni, Paris Alexandros Lalousis, Christos Davatzikos

2023Neuromethods15 citationsDOIOpen Access PDF

Abstract

Abstract The imaging community has increasingly adopted machine learning (ML) methods to provide individualized imaging signatures related to disease diagnosis, prognosis, and response to treatment. Clinical neuroscience and cancer imaging have been two areas in which ML has offered particular promise. However, many neurologic and neuropsychiatric diseases, as well as cancer, are often heterogeneous in terms of their clinical manifestations, neuroanatomical patterns, or genetic underpinnings. Therefore, in such cases, seeking a single disease signature might be ineffectual in delivering individualized precision diagnostics. The current chapter focuses on ML methods, especially semi-supervised clustering, that seek disease subtypes using imaging data. Work from Alzheimer’s disease and its prodromal stages, psychosis, depression, autism, and brain cancer are discussed. Our goal is to provide the readers with a broad overview in terms of methodology and clinical applications.

Topics & Concepts

SubtypingNeuroimagingDiseasePsychosisDepression (economics)MedicineBrain diseasePsychologyNeuroscienceData sciencePsychiatryComputer sciencePathologyProgramming languageMacroeconomicsEconomicsFunctional Brain Connectivity StudiesBioinformatics and Genomic NetworksMedical Imaging Techniques and Applications
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