Use of machine learning to identify risk factors for insomnia

被引:28
|
作者
Huang, Alexander A. A. [1 ]
Huang, Samuel Y. Y. [2 ]
机构
[1] Northwestern Univ, Feinberg Sch Med, Chicago, IL 60611 USA
[2] Virginia Commonwealth Univ, Sch Med, Richmond, VA USA
来源
PLOS ONE | 2023年 / 18卷 / 04期
关键词
SLEEP DISORDERS; EPIDEMIOLOGY; MEDICATION; DEPRESSION; CHILDREN; DURATION; ALCOHOL; QUALITY; ANXIETY; LIFE;
D O I
10.1371/journal.pone.0282622
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
ImportanceSleep is critical to a person's physical and mental health, but there are few studies systematically assessing risk factors for sleep disorders. ObjectiveThe objective of this study was to identify risk factors for a sleep disorder through machine-learning and assess this methodology. Design, setting, and participantsA retrospective, cross-sectional cohort study using the publicly available National Health and Nutrition Examination Survey (NHANES) was conducted in patients who completed the demographic, dietary, exercise, and mental health questionnaire and had laboratory and physical exam data. MethodsA physician diagnosis of insomnia was the outcome of this study. Univariate logistic models, with insomnia as the outcome, were used to identify covariates that were associated with insomnia. Covariates that had a p<0.0001 on univariate analysis were included within the final machine-learning model. The machine learning model XGBoost was used due to its prevalence within the literature as well as its increased predictive accuracy in healthcare prediction. Model covariates were ranked according to the cover statistic to identify risk factors for insomnia. Shapely Additive Explanations (SHAP) were utilized to visualize the relationship between these potential risk factors and insomnia. ResultsOf the 7,929 patients that met the inclusion criteria in this study, 4,055 (51% were female, 3,874 (49%) were male. The mean age was 49.2 (SD = 18.4), with 2,885 (36%) White patients, 2,144 (27%) Black patients, 1,639 (21%) Hispanic patients, and 1,261 (16%) patients of another race. The machine learning model had 64 out of a total of 684 features that were found to be significant on univariate analysis (P<0.0001 used). These were fitted into the XGBoost model and an AUROC = 0.87, Sensitivity = 0.77, Specificity = 0.77 were observed. The top four highest ranked features by cover, a measure of the percentage contribution of the covariate to the overall model prediction, were the Patient Health Questionnaire depression survey (PHQ-9) (Cover = 31.1%), age (Cover = 7.54%), physician recommendation of exercise (Cover = 3.86%), weight (Cover = 2.99%), and waist circumference (Cover = 2.70%). ConclusionMachine learning models can effectively predict risk for a sleep disorder using demographic, laboratory, physical exam, and lifestyle covariates and identify key risk factors.
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页数:16
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