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29-04-2024 | Insomnia | Psychiatrics • Original Article

Data-driven shortened Insomnia Severity Index (ISI): a machine learning approach

Authors: Hyeontae Jo, Myna Lim, Hong Jun Jeon, Junseok Ahn, Saebom Jeon, Jae Kyoung Kim, Seockhoon Chung

Published in: Sleep and Breathing

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Abstract

Background

The Insomnia Severity Index (ISI) is a widely used questionnaire with seven items for identifying the risk of insomnia disorder. Although the ISI is still short, more shortened versions are emerging for repeated monitoring in routine clinical settings. In this study, we aimed to develop a data-driven shortened version of the ISI that accurately predicts the severity level of insomnia disorder.

Methods

We collected a sample of 800 responses from the EMBRAIN survey system. Based on the responses, seven items were grouped based on the similarity of their response using exploratory factor analysis (EFA). The most representative item within each group was selected by using eXtreme Gradient Boosting (XGBoost).

Results

Based on the selected three key items, maintenance of sleep, interference with daily function, and concerns about sleep problems, we developed a data-driven shortened questionnaire of ISI, ISI-3 m (machine learning). ISI-3 m achieved the highest coefficient of determination (\({R}^{2}=0.910\)) for the ISI score prediction task and the accuracy of 0.965, precision of 0.841, and recall of 0.838 for the multiclass-classification task, outperforming four previous versions of the shortened ISI.

Conclusion

As ISI-3 m is a highly accurate shortened version of the ISI, it allows clinicians to efficiently screen for insomnia and observe variations in the condition throughout the treatment process. Furthermore, the framework based on the combination of EFA and XGBoost developed in this study can be utilized to develop data-driven shortened versions of the other questionnaires.
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Metadata
Title
Data-driven shortened Insomnia Severity Index (ISI): a machine learning approach
Authors
Hyeontae Jo
Myna Lim
Hong Jun Jeon
Junseok Ahn
Saebom Jeon
Jae Kyoung Kim
Seockhoon Chung
Publication date
29-04-2024
Publisher
Springer International Publishing
Keyword
Insomnia
Published in
Sleep and Breathing
Print ISSN: 1520-9512
Electronic ISSN: 1522-1709
DOI
https://doi.org/10.1007/s11325-024-03037-w
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