Using machine learning to forecast symptom changes among subclinical depression patients receiving stepped care or usual care

被引:8
|
作者
Scodari, Bruno T. [1 ,5 ]
Chacko, Sarah [2 ]
Matsumura, Rina [2 ]
Jacobson, Nicholas C. [1 ,2 ,3 ,4 ]
机构
[1] Geisel Sch Med Dartmouth, Dept Biomed Data Sci, Lebanon, NH USA
[2] Geisel Sch Med Dartmouth, Ctr Technol & Behav Hlth, Lebanon, NH USA
[3] Geisel Sch Med Dartmouth, Dept Psychiat, Lebanon, NH USA
[4] Dartmouth Coll, Dept Comp Sci, Hanover, NH USA
[5] 1 Med Ctr Dr, Lebanon, NH 03766 USA
关键词
Subclinical depression; Stepped care; Machine learning; PHQ-9; HADS-A; CORONARY-HEART-DISEASE; QUALITY-OF-LIFE; MINOR DEPRESSION; MAJOR DEPRESSION; TREATMENT OUTCOMES; SUBSYNDROMAL DEPRESSION; SUBTHRESHOLD DEPRESSION; MEDICATION ADHERENCE; CONTROL ORIENTATION; OLDER-ADULTS;
D O I
10.1016/j.jad.2023.08.004
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: Subclinical depression (SD) is a mental health disorder characterized by minor depressive symptoms. Most SD patients are treated in the primary practice, but many respond poorly to treatment at the expense of provider resources. Stepped care approaches are appealing for tiering SD care to efficiently allocate scarce resources while jointly optimizing patient outcomes. However, stepped care can be time inefficient, as some persons may respond poorly and be forced to suffer with their symptoms for prolonged periods. Machine learning can offer insight into optimal treatment paths and inform clinical recommendations for incident patients.Methods: As part of the Step-Dep trial, participants with SD were randomized to receive stepped care (N=96) or usual care (N=140). Machine learning was used to predict changes in depressive symptoms every three months over a year for each treatment group.Results: Tree-based models were effective in predicting PHQ-9 changes among patients who received stepped care (r=0.35-0.46, MAE=0.14-0.17) and usual care (r=0.34-0.49, MAE=0.15-0.18). Patients who received stepped care were more likely to reduce PHQ-9 scores if they had high PHQ-9 but low HADS-A scores at baseline, a low number of chronic illnesses, and an internal locus of control.Limitations: Models may suffer from potential overfitting due to sample size limitations.Conclusion: Our findings demonstrate the promise of machine learning for predicting changes in depressive symptoms for SD patients receiving different treatments. Trained models can intake incident patient information and predict outcomes to inform personalized care.
引用
收藏
页码:213 / 220
页数:8
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