Signal from Noise: Using Machine Learning to Distil Knowledge from Data in Biological Psychiatry

Autor: Thom Quinn, Jonathan L. Hess, Victoria S. Marshe, Michelle M. Barnett, Anne-Christin Hauschild, Malgorzata Maciukiewicz, Samar S.M. Elsheikh, Schwarz Emanuel, Yannis J. Trakadis, Michael S. Breen, Eric J. Barnett, Yanli Zhang-James, Mehmet Eren Ahsen, Han Cao, Junfang Chen, Jiahui Hou, Asif Salekin, Ping-I Lin, Kristin K. Nicodemus, Andreas Meyer-Lindenberg, Isabelle Bichindaritz, Stephen V. Faraone, Murray J. Cairns, Gaurav Pandey, Daniel J. Mueller, Stephen J. Glatt
Rok vydání: 2022
Popis: Applications of machine learning (ML) in biomedical science are growing rapidly, spurred by interdisciplinary collaborations, aggregation of large datasets, accessibility of analytic routines, and availability of powerful computers. With this increased usage comes a responsibility for education, borne equally by data scientists plying their wares in medical research and biomedical scientists harnessing such methods to glean knowledge from data. This article provides a critical review of ML, covering common ML methods and historical trends of their use in psychiatry, and identifying areas of opportunity for future applications of ML in biological psychiatry. We also establish the ML in Psychiatry (MLPsych) Consortium, enumerate its objectives, and provide a set of standards (Guidelines for REporting ML Investigations in Neuropsychiatry [GREMLIN]) for designing and reporting studies that use ML. This review serves as a cautiously optimistic primer on ML for those on the precipice as they prepare to dive into the field, either as dedicated methodological practitioners or, at the very least, well-informed consumers.
Databáze: OpenAIRE