Systematic Misestimation of Machine Learning Performance in Neuroimaging Studies of Depression

Flint C, Cearns M, Opel N, Redlich R, Mehler DMA, Emden D, Winter NR, Leenings R, Eickhoff SB, Kircher T, Krug A, Nenadic I, Arolt V, Clark S, Baune BT, Jiang X, Dannlowski U, Hahn T

Research article (journal) | Peer reviewed

Abstract

We currently observe a disconcerting phenomenon in machine learning studies in psychiatry: While we would expect larger samples to yield better results due to the availability of more data, larger machine learning studies consistently show much weaker performance than the numerous small-scale studies. Here, we systematically investigated this effect focusing on one of the most heavily studied questions in the field, namely the classification of patients suffering from major depressive disorder (MDD) and healthy control (HC) based on neuroimaging data. Drawing upon structural magnetic resonance imaging (MRI) data from a balanced sample of N = 1,868 MDD patients and HC from our recent international Predictive Analytics Competition (PAC), we first trained and tested a classification model on the full dataset which yielded an accuracy of 61 %. Next, we mimicked the process by which researchers would draw samples of various sizes (N = 4 to N = 150) from the population and showed a strong risk of misestimation. Specifically, for small sample sizes (N = 20), we observe accuracies of up to 95 %. For medium sample sizes (N = 100) accuracies up to 75 % were found. Importantly, further investigation showed that sufficiently large test sets effectively protect against performance misestimation whereas larger datasets per se do not. While these results question the validity of a substantial part of the current literature, we outline the relatively low-cost remedy of larger test sets, which is readily available in most cases.

Details about the publication

JournalNeuropsychopharmacology (Neuropsychopharmacology)
Volume46
Page range1510-517
StatusPublished
Release year2021 (06/05/2021)
Language in which the publication is writtenEnglish
DOI10.1038/s41386-021-01020-7
Link to the full texthttps://doi.org/10.1038/s41386-021-01020-7
Keywordsmachine learning; neuroimaging; major depressive disorder; misestimation; overestimation; small sample size; clinical translation

Authors from the University of Münster

Arolt, Volker
Clinic for Mental Health
Baune, Bernhard
Clinic for Mental Health
Dannlowski, Udo
Institute of Translational Psychiatry
Emden, Daniel
Institute of Translational Psychiatry
Flint, Claas
Professur für Praktische Informatik (Prof. Jiang)
Hahn, Tim
Clinic for Mental Health
Jiang, Xiaoyi
Professur für Praktische Informatik (Prof. Jiang)
Leenings, Ramona
Institute of Translational Psychiatry
Redlich, Ronny
Institute of Translational Psychiatry
Winter, Nils
Institute of Translational Psychiatry