| Literature DB >> 34098248 |
Aleix Solanes1, Pol Palau2, Lydia Fortea3, Raymond Salvador4, Laura González-Navarro5, Cristian Daniel Llach6, Marc Valentí6, Eduard Vieta6, Joaquim Radua7.
Abstract
Brain MRI researchers conducting multisite studies, such as within the ENIGMA Consortium, are very aware of the importance of controlling the effects of the site (EoS) in the statistical analysis. Conversely, authors of the novel machine-learning MRI studies may remove the EoS when training the machine-learning models but not control them when estimating the models' accuracy, potentially leading to severely biased estimates. We show examples from a toy simulation study and real MRI data in which we remove the EoS from both the "training set" and the "test set" during the training and application of the model. However, the accuracy is still inflated (or occasionally shrunk) unless we further control the EoS during the estimation of the accuracy. We also provide several methods for controlling the EoS during the estimation of the accuracy, and a simple R package ("multisite.accuracy") that smoothly does this task for several accuracy estimates (e.g., sensitivity/specificity, area under the curve, correlation, hazard ratio, etc.).Keywords: Bias; Effects of the site; Machine learning; Magnetic resonance imaging
Mesh:
Year: 2021 PMID: 34098248 DOI: 10.1016/j.pscychresns.2021.111313
Source DB: PubMed Journal: Psychiatry Res Neuroimaging ISSN: 0925-4927 Impact factor: 2.376