Diagnostic Performance of Machine Learning-Derived OSA Prediction Tools in Large Clinical and Community-Based Samples

被引:19
|
作者
Holfinger, Steven J. [1 ]
Lyons, M. Melanie [1 ]
Keenan, Brendan T. [2 ]
Mazzotti, Diego R. [3 ]
Mindel, Jesse [1 ]
Maislin, Greg [2 ]
Cistulli, Peter A. [4 ,5 ]
Sutherland, Kate [4 ,5 ]
McArdle, Nigel [6 ,7 ]
Singh, Bhajan [6 ,7 ]
Chen, Ning-Hung [8 ]
Gislason, Thorarinn [9 ,10 ]
Penzel, Thomas [11 ]
Han, Fang [12 ]
Li, Qing Yun [13 ]
Schwab, Richard [2 ]
Pack, Allan I. [2 ]
Magalang, Ulysses J. [1 ]
机构
[1] Ohio State Univ, Div Pulm Crit Care & Sleep Med, Wexner Med Ctr, Columbus, OH 43210 USA
[2] Univ Penn, Perelman Sch Med, Dept Med, Div Sleep Med, Philadelphia, PA USA
[3] Univ Kansas Med Ctr, Dept Internal Med, Div Med Informat, Kansas City, KS USA
[4] Univ Sydney, Fac Med & Hlth, CharlesPerkins Ctr, Sydney, NSW, Australia
[5] Royal North Shore Hosp Sydney, Dept Resp & Sleep Med, Sydney, NSW, Australia
[6] Sir Charles Gairdner Hosp, West Australian Sleep Disorders Res Inst, Nedlands, WA, Australia
[7] Univ Western Australia, Sch Human Sci, Crawley, WA, Australia
[8] Chang Gung Mem Hosp, Div Pulm Crit Care Med & Sleep Med, Taoyuan City, Taiwan
[9] Land spitali Univ Hosp, Dept Sleep Med, Reykjavik, Iceland
[10] Univ Iceland, Med Fac, Reykjavik, Iceland
[11] Charite, Interdisciplinary Ctr Sleep Med, Berlin, Germany
[12] Peking Univ, Dept Resp Med, Beijing, Peoples R China
[13] Shanghai Jiao Tong Univ Sch Med, Ruijin Hosp, Dept Resp & Crit Care Med, Shanghai, Peoples R China
基金
美国国家卫生研究院;
关键词
artificial neural network; electronic medical record; kernel support vector machine; machine learning; OSA; prediction model; random forest; OBSTRUCTIVE-SLEEP-APNEA; RESPIRATORY EVENTS; LIKELIHOOD RATIOS; PREVALENCE; AGREEMENT; SCREEN; TESTS;
D O I
10.1016/j.chest.2021.10.023
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
BACKGROUND: Prediction tools without patient-reported symptoms could facilitate widespread identification of OSA. RESEARCH QUESTION: What is the diagnostic performance of OSA prediction tools derived from machine learning using readily available data without patient responses to questionnaires? Also, how do they compare with STOP-BANG, an OSA prediction tool, in clinical and community-based samples? STUDY DESIGN AND METHODS: Logistic regression and machine learning techniques, including artificial neural network (ANN), random forests (RF), and kernel support vector machine, were used to determine the ability of age, sex, BMI, and race to predict OSA status. A retrospective cohort of 17,448 subjects from sleep clinics within the international Sleep Apnea Global Interdisciplinary Consortium (SAGIC) were randomly split into training (n = 10,469) and validation (n = 6,979) sets. Model comparisons were performed by using the area under the receiver-operating curve (AUC). Trained models were compared with the STOP-BANG questionnaire in two prospective testing datasets: an independent clinic-based sample from SAGIC (n = 1,613) and a community-based sample from the Sleep Heart Health Study (n = 5,599). RESULTS: The AUCs (95% CI) of the machine learning models were significantly higher than logistic regression (0.61 [0.60-0.62]) in both the training and validation datasets (ANN, 0.68 [0.660.69]; RF, 0.68 [0.67-0.70]; and kernel support vector machine, 0.66 [0.65-0.67]). In the SAGIC testing sample, the ANN (0.70 [0.68-0.72]) and RF (0.70 [0.68-0.73]) models had AUCs similar to those of the STOP-BANG (0.71 [0.68-0.72]). In the Sleep Heart Health Study testing sample, the ANN (0.72 [0.71-0.74]) had AUCs similar to those of STOP-BANG (0.72 [0.70-0.73]). INTERPRETATION: OSA prediction tools using machine learning without patient-reported symptoms provide better diagnostic performance than logistic regression. In clinical and community-based samples, the symptomless ANN tool has diagnostic performance similar to that of a widely used prediction tool that includes patient symptoms. Machine learning-derived algorithms may have utility for widespread identification of OSA.
引用
收藏
页码:807 / 817
页数:11
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