监督机器学习模型通过智能手机使用行为对失眠症状的预测价值

Q1 Medicine Sleep Medicine: X Pub Date : 2024-05-04 DOI:10.1016/j.sleepx.2024.100114
Laura Simon , Yannik Terhorst , Caroline Cohrdes , Rüdiger Pryss , Lisa Steinmetz , Jon D. Elhai , Harald Baumeister
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引用次数: 0

摘要

导言:数字表型技术是一种创新的、非侵入性的方法,可以改善失眠症的检测。本研究探讨了智能手机使用特征(SUF)与失眠症状之间的相关性及其对检测失眠症状的预测价值。方法 在一项针对德国便利样本的观察性研究中,研究人员获得了前 7 天的失眠严重程度指数(ISI)和智能手机使用数据(如屏幕激活时间、屏幕夜间最长不活动时间)。根据智能手机使用数据计算出 SUF(如分钟数、平均值)。对 ISI 和 SUF 进行了相关性分析。在确定机器学习模型(ML)时,80% 的数据用于训练,20% 用于测试,并使用了五倍交叉验证。结果 752 名参与者(51.1% 为女性,平均 ISI = 10.23,平均年龄 = 41.92)被纳入分析。发现某些 SUF 与失眠症状之间存在微小的相关性。在 ML 模型中,测试子样本的灵敏度较低,从 0.05 到 0.27 不等。随机森林和自然贝叶是表现最好的算法。结论鉴于相关性较小以及 ML 模型的辨别能力较低,本研究中测量的 SUFs 似乎不足以检测失眠症状。有必要开展进一步的研究,探讨研究个体内部差异和亚人群或采用其他智能手机传感器是否会产生更有前景的结果。
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The predictive value of supervised machine learning models for insomnia symptoms through smartphone usage behavior

Introduction

Digital phenotyping can be an innovative and unobtrusive way to improve the detection of insomnia. This study explores the correlations between smartphone usage features (SUF) and insomnia symptoms and their predictive value for detecting insomnia symptoms.

Methods

In an observational study of a German convenience sample, the Insomnia Severity Index (ISI) and smartphone usage data (e.g., time the screen was active, longest time the screen was inactive in the night) for the previous 7 days were obtained. SUF (e.g., min, mean) were calculated from the smartphone usage data. Correlation analyses between the ISI and SUF were conducted. For the specification of the machine learning models (ML), 80 % of the data was allocated to training, 20 % to testing, and five-fold cross-validation was used. Six algorithms (support vector machine, XGBoost, Random Forest, k-Nearest-Neighbor, Naive Bayes, and Logistic Regressions) were specified to predict ISI scores ≥15.

Results

752 participants (51.1 % female, mean ISI = 10.23, mean age = 41.92) were included in the analyses. Small correlations between some of the SUF and insomnia symptoms were found. In the ML models, sensitivity was low, ranging from 0.05 to 0.27 in the testing subsample. Random Forest and Naive Bayes were the best-performing algorithms. Yet, their AUCs (0.57, 0.58 respectively) in the testing subsample indicated a low discrimination capacity.

Conclusions

Given the small magnitude of the correlations and low discrimination capacity of the ML models, SUFs, as measured in this study, do not appear to be sufficient for detecting insomnia symptoms. Further research is necessary to explore whether examining intra-individual variations and subpopulations or employing alternative smartphone sensors yields more promising outcomes.

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来源期刊
Sleep Medicine: X
Sleep Medicine: X Medicine-Medicine (all)
CiteScore
4.00
自引率
0.00%
发文量
17
审稿时长
25 weeks
期刊最新文献
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