Toward personalized care for insomnia in the US Army: development of a machine-learning model to predict response to pharmacotherapy

被引:2
作者
Gabbay, Frances H. [1 ,2 ]
Wynn, Gary H. [1 ]
Georg, Matthew W. [1 ,2 ]
Gildea, Sarah M. [3 ]
Kennedy, Chris J. [4 ]
King, Andrew J. [3 ]
Sampson, Nancy A. [3 ]
Ursano, Robert J. [1 ]
Stein, Murray B. [5 ,6 ]
Wagner, James R. [7 ]
Kessler, Ronald C. [3 ,8 ]
Capaldi II, Vincent F. [1 ]
机构
[1] Uniformed Serv Univ Hlth Sci, Dept Psychiat, Bethesda, MD USA
[2] Henry M Jackson Fdn Advancement Mil Med, Bethesda, MD USA
[3] Harvard Med Sch, Dept Hlth Care Policy, Boston, MA USA
[4] Massachusetts Gen Hosp, Dept Psychiat, Boston, MA USA
[5] Univ Calif San Diego, Dept Psychiat, La Jolla, CA USA
[6] VA San Diego Healthcare Syst, Psychiat Serv, San Diego, CA USA
[7] Univ Michigan, Inst Social Res, Ann Arbor, MI USA
[8] Harvard Med Sch, Dept Hlth Care Policy, 180 Longwood Ave,Ste 215, Boston, MA 02115 USA
来源
JOURNAL OF CLINICAL SLEEP MEDICINE | 2023年 / 19卷 / 08期
基金
美国国家卫生研究院;
关键词
insomnia; machine learning; military; personalized medicine; pharmacotherapy; treatment response; COGNITIVE-BEHAVIORAL THERAPY; SEVERITY INDEX; VETERANS; RESILIENCE; OUTCOMES;
D O I
10.5664/jcsm.10574
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Study Objectives: Although many military personnel with insomnia are treated with prescription medication, little reliable guidance exists to identify patients most likely to respond. As a first step toward personalized care for insomnia, we present results of a machine-learning model to predict response to insomnia medication.Methods: The sample comprised n = 4,738 nondeployed US Army soldiers treated with insomnia medication and followed 6-12 weeks after initiating treatment. All patients had moderate-severe baseline scores on the Insomnia Severity Index (ISI) and completed 1 or more follow-up ISIs 6-12 weeks after baseline. An ensemble machine-learning model was developed in a 70% training sample to predict clinically significant ISI improvement, defined as reduction of at least 2 standard deviations on the baseline ISI distribution. Predictors included a wide range of military administrative and baseline clinical variables. Model accuracy was evaluated in the remaining 30% test sample.Results: 21.3% of patients had clinically significant ISI improvement. Model test sample area under the receiver operating characteristic curve (standard error) was 0.63 (0.02). Among the 30% of patients with the highest predicted probabilities of improvement, 32.5.% had clinically significant symptom improvement vs 16.6% in the 70% sample predicted to be least likely to improve (x21 = 37.1, P < .001). More than 75% of prediction accuracy was due to 10 variables, the most important of which was baseline insomnia severity.Conclusions: Pending replication, the model could be used as part of a patient-centered decision-making process for insomnia treatment, but parallel models will be needed for alternative treatments before such a system is of optimal value.
引用
收藏
页码:1399 / 1410
页数:12
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