Dissecting Psychiatric Heterogeneity and Comorbidity with Core Region-Based Machine Learning.
Qian LvKristina ZeljicShaoling ZhaoJiangtao ZhangJianmin ZhangZheng WangPublished in: Neuroscience bulletin (2023)
Machine learning approaches are increasingly being applied to neuroimaging data from patients with psychiatric disorders to extract brain-based features for diagnosis and prognosis. The goal of this review is to discuss recent practices for evaluating machine learning applications to obsessive-compulsive and related disorders and to advance a novel strategy of building machine learning models based on a set of core brain regions for better performance, interpretability, and generalizability. Specifically, we argue that a core set of co-altered brain regions (namely 'core regions') comprising areas central to the underlying psychopathology enables the efficient construction of a predictive model to identify distinct symptom dimensions/clusters in individual patients. Hypothesis-driven and data-driven approaches are further introduced showing how core regions are identified from the entire brain. We demonstrate a broadly applicable roadmap for leveraging this core set-based strategy to accelerate the pursuit of neuroimaging-based markers for diagnosis and prognosis in a variety of psychiatric disorders.
Keyphrases
- machine learning
- resting state
- white matter
- big data
- artificial intelligence
- functional connectivity
- primary care
- oxidative stress
- healthcare
- obsessive compulsive disorder
- deep learning
- ejection fraction
- cerebral ischemia
- newly diagnosed
- electronic health record
- prognostic factors
- anti inflammatory
- chronic kidney disease
- subarachnoid hemorrhage