TY - UNPB
T1 - Machine learning models for diagnosis and risk prediction in eating disorders, depression, and alcohol use disorder
AU - Desrivières, Sylvane
AU - Zhang, Zuo
AU - Robinson, Lauren
AU - Whelan, Robert
AU - Jollans, Lee
AU - Wang, Zijian
AU - Nees, Frauke
AU - Chu, Congying
AU - Bobou, Marina
AU - Du, Dongping
AU - Cristea, Ilinca
AU - Banaschewski, Tobias
AU - Barker, Gareth
AU - Bokde, Arun
AU - Grigis, Antoine
AU - Garavan, Hugh
AU - Heinz, Andreas
AU - Bruhl, Rudiger
AU - Martinot, Jean-Luc
AU - Martinot, Marie-Laure Paillère
AU - Artiges, Eric
AU - Orfanos, Dimitri Papadopoulos
AU - Poustka, Luise
AU - Hohmann, Sarah
AU - Millenet, Sabina
AU - Fröhner, Juliane
AU - Smolka, Michael
AU - Vaidya, Nilakshi
AU - Walter, Henrik
AU - Winterer, Jeanne
AU - Broulidakis, M.
AU - van Noort, Betteke
AU - Stringaris, Argyris
AU - Penttilä, Jani
AU - Grimmer, Yvonne
AU - Insensee, Corinna
AU - Becker, Andreas
AU - Zhang, Yuning
AU - King, Sinead
AU - Sinclair, Julia
AU - Schumann, Gunter
AU - Schmidt, Ulrike
PY - 2024/2/1
Y1 - 2024/2/1
N2 - This study uses machine learning models to uncover diagnostic and risk prediction markers for eating disorders (EDs), major depressive disorder (MDD), and alcohol use disorder (AUD). Utilizing case-control samples (ages 18-25 years) and a longitudinal population-based sample (n=1,851), the models, incorporating diverse data domains, achieved high accuracy in classifying EDs, MDD, and AUD from healthy controls. The area under the receiver operating characteristic curves (AUC-ROC [95% CI]) reached 0.92 [0.86-0.97] for AN and 0.91 [0.85-0.96] for BN, without relying on body mass index as a predictor. The classification accuracies for MDD (0.91 [0.88-0.94]) and AUD (0.80 [0.74-0.85]) were also high. Each data domain emerged as accurate classifiers individually, with personality distinguishing AN, BN, and their controls with AUC-ROCs ranging from 0.77 to 0.89. The models demonstrated high transdiagnostic potential, as those trained for EDs were also accurate in classifying AUD and MDD from healthy controls, and vice versa (AUC-ROCs, 0.75-0.93). Shared predictors, such as neuroticism, hopelessness, and symptoms of attention-deficit/hyperactivity disorder, were identified as reliable classifiers. For risk prediction in the longitudinal population sample, the models exhibited moderate performance (AUC-ROCs, 0.64-0.71), highlighting the potential of combining multi-domain data for precise diagnostic and risk prediction applications in psychiatry.
AB - This study uses machine learning models to uncover diagnostic and risk prediction markers for eating disorders (EDs), major depressive disorder (MDD), and alcohol use disorder (AUD). Utilizing case-control samples (ages 18-25 years) and a longitudinal population-based sample (n=1,851), the models, incorporating diverse data domains, achieved high accuracy in classifying EDs, MDD, and AUD from healthy controls. The area under the receiver operating characteristic curves (AUC-ROC [95% CI]) reached 0.92 [0.86-0.97] for AN and 0.91 [0.85-0.96] for BN, without relying on body mass index as a predictor. The classification accuracies for MDD (0.91 [0.88-0.94]) and AUD (0.80 [0.74-0.85]) were also high. Each data domain emerged as accurate classifiers individually, with personality distinguishing AN, BN, and their controls with AUC-ROCs ranging from 0.77 to 0.89. The models demonstrated high transdiagnostic potential, as those trained for EDs were also accurate in classifying AUD and MDD from healthy controls, and vice versa (AUC-ROCs, 0.75-0.93). Shared predictors, such as neuroticism, hopelessness, and symptoms of attention-deficit/hyperactivity disorder, were identified as reliable classifiers. For risk prediction in the longitudinal population sample, the models exhibited moderate performance (AUC-ROCs, 0.64-0.71), highlighting the potential of combining multi-domain data for precise diagnostic and risk prediction applications in psychiatry.
U2 - 10.21203/rs.3.rs-3777784/v1
DO - 10.21203/rs.3.rs-3777784/v1
M3 - Preprint
C2 - 38352452
BT - Machine learning models for diagnosis and risk prediction in eating disorders, depression, and alcohol use disorder
PB - Research Square
ER -