Explainable AI-based identification of contributing factors to the mood state change of children and adolescents with pre-existing psychiatric disorders in the context of COVID-19 related lockdowns in Greece

Ntakolia, Charis, Priftis, Dimitrios, Kotsis, Konstantinos, Magklara, Konstantina, Rannou, Ioanna, Ladopoulou, Konstantina, Koullourou, Iouliani, Tsalamanios, Emmanouil, Lazaratou, Eleni, Serdari, Aspasia, Grigoriadou, Aliki, Sadeghi, Neda, O'Callaghan, Georgia, Chiu, Kenny ORCID: https://orcid.org/0000-0001-8776-9864 and Giannopoulou, Ioanna (2022) Explainable AI-based identification of contributing factors to the mood state change of children and adolescents with pre-existing psychiatric disorders in the context of COVID-19 related lockdowns in Greece.

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Abstract

The COVID-19 pandemic and accompanying restrictions have significantly impacted lives globally. There is an increasing interest in examining the influence of this unprecedented situation on our mental well-being, with less attention towards the impact of elongation of COVID-19 related measures on youth with a pre-existing psychiatric/developmental disorder. The majority of studies are focusing on individuals, such as students, adults, youths, among others, with little attention to be given to the elongation of COVID-19 related measures and their impact to a special group of individuals, such as children and adolescents with diagnosed developmental and psychiatric disorders. In addition, most of these studies adopt statistical methodologies to identify pair-wise relationships among factors, an approach that limits the ability to understand and interpret the impact of various factors. In response, this study aims to adopt an explainable machine learning approach to identify factors that explain the deterioration or amelioration of mood state in youth clinical sample. The purpose of this study is to identify and interpret the impact of the most contributing features of mood states change to the prediction output, via an explainable machine learning pipeline. Among all the machine learning classifiers, Random Forest model achieved the highest accuracy, with 76% Best AUC-ROC Score and 13 features. Explainability analysis showed that stress or positive changes derived from the imposing restrictions and COVID-19 pandemic are the top two factors that could affect mood state.

Item Type: Article
Faculty \ School: Faculty of Medicine and Health Sciences > Norwich Medical School
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Depositing User: LivePure Connector
Date Deposited: 24 Aug 2022 14:30
Last Modified: 13 Sep 2022 11:30
URI: https://ueaeprints.uea.ac.uk/id/eprint/87598
DOI:

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