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Problematic internet use (PIU): Associations with the impulsive-compulsive spectrum. An application of machine learning in psychiatry

Problematic internet use (PIU): Associations with the impulsive-compulsive spectrum. An application of machine learning in psychiatry
Problematic internet use (PIU): Associations with the impulsive-compulsive spectrum. An application of machine learning in psychiatry

Problematic internet use is common, functionally impairing, and in need of further study. Its relationship with obsessive-compulsive and impulsive disorders is unclear. Our objective was to evaluate whether problematic internet use can be predicted from recognised forms of impulsive and compulsive traits and symptomatology. We recruited volunteers aged 18 and older using media advertisements at two sites (Chicago USA, and Stellenbosch, South Africa) to complete an extensive online survey. State-of-the-art out-of-sample evaluation of machine learning predictive models was used, which included Logistic Regression, Random Forests and Naïve Bayes. Problematic internet use was identified using the Internet Addiction Test (IAT). 2006 complete cases were analysed, of whom 181 (9.0%) had moderate/severe problematic internet use. Using Logistic Regression and Naïve Bayes we produced a classification prediction with a receiver operating characteristic area under the curve (ROC-AUC) of 0.83 (SD 0.03) whereas using a Random Forests algorithm the prediction ROC-AUC was 0.84 (SD 0.03) [all three models superior to baseline models p < 0.0001]. The models showed robust transfer between the study sites in all validation sets [p < 0.0001]. Prediction of problematic internet use was possible using specific measures of impulsivity and compulsivity in a population of volunteers. Moreover, this study offers proof-of-concept in support of using machine learning in psychiatry to demonstrate replicability of results across geographically and culturally distinct settings.

ADHD, Compulsivity, Impulsivity, Internet use, Machine learning, OCD
0022-3956
94-102
Ioannidis, Konstantinos
0dfc1d89-41be-4d02-ae50-698117e80141
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f
Treder, Matthias S.
48260d27-8260-47a7-a688-d312a76adada
Kiraly, Franz
e98cef70-4d86-4b1a-9b05-d2e6a9f69a6a
Leppink, Eric W.
61a0a712-e471-49fb-99b6-12dc64c7d372
Redden, Sarah A.
f2109178-7158-46c7-971f-4a602a3adf59
Stein, Dan J.
07cf0cbd-837d-49ac-aceb-1c393a2f3e00
Lochner, Christine
8e428f81-855d-467b-9805-49e387f66683
Grant, Jon E.
07372bd5-8a0d-42b4-b41b-e376c652acf3
Ioannidis, Konstantinos
0dfc1d89-41be-4d02-ae50-698117e80141
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f
Treder, Matthias S.
48260d27-8260-47a7-a688-d312a76adada
Kiraly, Franz
e98cef70-4d86-4b1a-9b05-d2e6a9f69a6a
Leppink, Eric W.
61a0a712-e471-49fb-99b6-12dc64c7d372
Redden, Sarah A.
f2109178-7158-46c7-971f-4a602a3adf59
Stein, Dan J.
07cf0cbd-837d-49ac-aceb-1c393a2f3e00
Lochner, Christine
8e428f81-855d-467b-9805-49e387f66683
Grant, Jon E.
07372bd5-8a0d-42b4-b41b-e376c652acf3

Ioannidis, Konstantinos, Chamberlain, Samuel R., Treder, Matthias S., Kiraly, Franz, Leppink, Eric W., Redden, Sarah A., Stein, Dan J., Lochner, Christine and Grant, Jon E. (2016) Problematic internet use (PIU): Associations with the impulsive-compulsive spectrum. An application of machine learning in psychiatry. Journal of Psychiatric Research, 83, 94-102. (doi:10.1016/j.jpsychires.2016.08.010).

Record type: Article

Abstract

Problematic internet use is common, functionally impairing, and in need of further study. Its relationship with obsessive-compulsive and impulsive disorders is unclear. Our objective was to evaluate whether problematic internet use can be predicted from recognised forms of impulsive and compulsive traits and symptomatology. We recruited volunteers aged 18 and older using media advertisements at two sites (Chicago USA, and Stellenbosch, South Africa) to complete an extensive online survey. State-of-the-art out-of-sample evaluation of machine learning predictive models was used, which included Logistic Regression, Random Forests and Naïve Bayes. Problematic internet use was identified using the Internet Addiction Test (IAT). 2006 complete cases were analysed, of whom 181 (9.0%) had moderate/severe problematic internet use. Using Logistic Regression and Naïve Bayes we produced a classification prediction with a receiver operating characteristic area under the curve (ROC-AUC) of 0.83 (SD 0.03) whereas using a Random Forests algorithm the prediction ROC-AUC was 0.84 (SD 0.03) [all three models superior to baseline models p < 0.0001]. The models showed robust transfer between the study sites in all validation sets [p < 0.0001]. Prediction of problematic internet use was possible using specific measures of impulsivity and compulsivity in a population of volunteers. Moreover, this study offers proof-of-concept in support of using machine learning in psychiatry to demonstrate replicability of results across geographically and culturally distinct settings.

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More information

Published date: 1 December 2016
Additional Information: Publisher Copyright: © 2016 The Author(s)
Keywords: ADHD, Compulsivity, Impulsivity, Internet use, Machine learning, OCD

Identifiers

Local EPrints ID: 492971
URI: http://eprints.soton.ac.uk/id/eprint/492971
ISSN: 0022-3956
PURE UUID: 05d70dec-bafc-4ed8-9e75-f03394575e2b
ORCID for Samuel R. Chamberlain: ORCID iD orcid.org/0000-0001-7014-8121

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Date deposited: 21 Aug 2024 17:04
Last modified: 30 Aug 2024 02:00

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Contributors

Author: Konstantinos Ioannidis
Author: Samuel R. Chamberlain ORCID iD
Author: Matthias S. Treder
Author: Franz Kiraly
Author: Eric W. Leppink
Author: Sarah A. Redden
Author: Dan J. Stein
Author: Christine Lochner
Author: Jon E. Grant

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