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Towards a machine-learning assisted diagnosis of psychiatric disorders and their operationalization in preclinical research: Evidence from studies on addiction-like behaviour in individual rats.
DEROCHE-GAMONET, Veronique
Neurocentre Magendie : Physiopathologie de la Plasticité Neuronale [U1215 Inserm - UB]
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Neurocentre Magendie : Physiopathologie de la Plasticité Neuronale [U1215 Inserm - UB]
DEROCHE-GAMONET, Veronique
Neurocentre Magendie : Physiopathologie de la Plasticité Neuronale [U1215 Inserm - UB]
< Réduire
Neurocentre Magendie : Physiopathologie de la Plasticité Neuronale [U1215 Inserm - UB]
Langue
EN
Article de revue
Ce document a été publié dans
European Journal of Neuroscience. 2022-10-10
Résumé en anglais
Over the last few decades, there has been a progressive transition from a categorical to a dimensional approach to psychiatric disorders. Especially in the case of substance use disorders, interest in the individual ...Lire la suite >
Over the last few decades, there has been a progressive transition from a categorical to a dimensional approach to psychiatric disorders. Especially in the case of substance use disorders, interest in the individual vulnerability to transition from controlled to compulsive drug taking warrants the development of novel dimension-based objective stratification tools. Here we drew on a multidimensional preclinical model of addiction, namely the 3-criteria model, previously developed to identify the neurobehavioural basis of the individual's vulnerability to switch from controlled to compulsive drug taking, to test a machine-learning assisted classifier objectively to identify individual subjects as vulnerable/resistant to addiction. Datasets from our previous studies on addiction-like behaviour for cocaine or alcohol were fed into a variety of machine-learning algorithms to develop a classifier that identifies resilient and vulnerable rats with high precision and reproducibility irrespective of the cohort to which they belong. A classifier based on K-median or K-mean-clustering (for cocaine or alcohol, respectively) followed by artificial neural networks emerged as a highly reliable and accurate tool to predict if a single rat is vulnerable/resilient to addiction. Thus, each rat previously characterized as displaying 0-criterion (i.e., resilient) or 3-criteria (i.e., vulnerable) in individual cohorts was correctly labelled by this classifier. The present machine-learning-based classifier objectively labels single individuals as resilient or vulnerable to developing addiction-like behaviour in a multisymptomatic preclinical model of addiction-like behaviour in rats. This novel dimension-based classifier increases the heuristic value of these preclinical models while providing proof of principle to deploy similar tools for the future of diagnosis of psychiatric disorders.< Réduire
Mots clés en anglais
Addiction
Clustering
Individual vulnerability
Machine learning
Neural networks
Substance use disorder
Project ANR
COCAINE ADDICTION: A TRANSLATIONAL STUDY TO IDENTIFY AND CHARACTERIZE DYSFUNCTIONAL NEURONAL NETWORKS - ANR-13-NEUR-0002
Bordeaux Region Aquitaine Initiative for Neuroscience - ANR-10-LABX-0043
Innovations instrumentales et procédurales en psychopathologie expérimentale chez le rongeur - ANR-10-EQPX-0008
Bordeaux Region Aquitaine Initiative for Neuroscience - ANR-10-LABX-0043
Innovations instrumentales et procédurales en psychopathologie expérimentale chez le rongeur - ANR-10-EQPX-0008
Unités de recherche