Development and validation of a prediction model for online gambling problems based on players' account data

Author:

Perrot Bastien12ORCID,Hardouin Jean-Benoit12ORCID,Thiabaud Elsa3ORCID,Saillard Anaïs3ORCID,Grall-Bronnec Marie13ORCID,Challet-Bouju Gaëlle13ORCID

Affiliation:

1. Nantes Université, Univ Tours, CHU Nantes, CHU Tours, INSERM, MethodS in Patients Centered Outcomes and HEalth ResEarch, SPHERE, F-44000, Nantes, France

2. Nantes Université, CHU Nantes, Biostatistics and Methodology Unit, Department of Clinical Research and Innovation, F-44000, Nantes, France

3. Nantes Université, CHU Nantes, UIC Psychiatrie et Santé Mentale, F-44000, Nantes, France

Abstract

Abstract Background and aims Gambling disorder is characterized by problematic gambling behavior that causes significant problems and distress. This study aimed to develop and validate a predictive model for screening online problem gamblers based on players' account data. Methods Two random samples of French online gamblers in skill-based (poker, horse race betting and sports betting, n = 8,172) and pure chance games (scratch games and lotteries, n = 5,404) answered an online survey and gambling tracking data were retrospectively collected for the participants. The survey included age and gender, gambling habits, and the Problem Gambling Severity Index (PGSI). We used machine learning algorithms to predict the PGSI categories with gambling tracking data. We internally validated the prediction models in a leave-out sample. Results When predicting gambling problems binary based on each PGSI threshold (1 for low-risk gambling, 5 for moderate-risk gambling and 8 for problem gambling), the predictive performances were good for the model for skill-based games (AUROCs from 0.72 to 0.82), but moderate for the model for pure chance games (AUROCs from 0.63 to 0.76, with wide confidence intervals) due to the lower frequency of problem gambling in this sample. When predicting the four PGSI categories altogether, performances were good for identifying extreme categories (non-problem and problem gamblers) but poorer for intermediate categories (low-risk and moderate-risk gamblers), whatever the type of game. Conclusions We developed an algorithm for screening online problem gamblers, excluding online casino gamblers, that could enable the setting of prevention measures for the most vulnerable gamblers.

Funder

French Institute for Public Health Research

French National Cancer Institute

French National Health Insurance Fund

French Directorate General of Health

Arc Foundation for Cancer Research

French National Institute for Prevention and Education in Health

French National Institute of Health and Medical Research

French Inter‐Departmental Agency for the Fight against Drugs and Addictive Behaviors

French Social Security Scheme for Liberal Professionals

Publisher

Akademiai Kiado Zrt.

Subject

Psychiatry and Mental health,Clinical Psychology,General Medicine,Medicine (miscellaneous)

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