Title :
Random forest classification of depression status based on subcortical brain morphometry following electroconvulsive therapy
Author :
Wade, Benjamin S. C. ; Joshi, Shantanu H. ; Pirnia, Tara ; Leaver, Amber M. ; Woods, Roger P. ; Thompson, Paul M. ; Espinoza, Randall ; Narr, Katherine L.
Abstract :
Disorders of the central nervous system are often accompanied by brain abnormalities detectable with MRI. Advances in biomedical imaging and pattern detection algorithms have led to classification methods that may help diagnose and track the progression of a particular brain disorder and/or predict successful response to treatment. These classification systems often use high-dimensional signals or images, and must handle the computational challenges of high dimensionality as well as complex data types such as shape descriptors. Here, we used shape information from subcortical structures to test a recently developed feature-selection method based on regularized random forests to 1) classify depressed subjects versus controls, and 2) patients before and after treatment with electroconvulsive therapy. We subsequently compared the classification performance of high-dimensional shape features with traditional volumetric measures. Shape-based models outperformed simple volumetric predictors in several cases, highlighting their utility as potential automated alternatives for establishing diagnosis and predicting treatment response.
Keywords :
bioelectric phenomena; biomedical MRI; brain; feature selection; image classification; medical disorders; medical image processing; neurophysiology; patient treatment; psychology; random processes; MRI; biomedical imaging; brain abnormalities; brain disorder progression; central nervous system disorders; classification performance; classification systems; complex data types; depression status; electroconvulsive therapy; feature-selection method; high-dimensional images; high-dimensional shape features; high-dimensional signals; pattern detection algorithms; random forest classification; regularized random forests; shape descriptors; shape information; shape-based models; subcortical brain morphometry; subcortical structures; traditional volumetric measures; treatment response; volumetric predictors; Diseases; Radio frequency; Shape; Solid modeling; Surface morphology; Volume measurement; Random forest; classification; electroconvulsive therapy; feature selection; major depressive disorder; regularization; shape analysis;
Conference_Titel :
Biomedical Imaging (ISBI), 2015 IEEE 12th International Symposium on
Conference_Location :
New York, NY
DOI :
10.1109/ISBI.2015.7163824