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通过避免患者重复报告来最大化移动健康监测的价值:自动健康评估服务中抑郁相关症状及依从性问题的预测

Maximizing the value of mobile health monitoring by avoiding redundant patient reports: prediction of depression-related symptoms and adherence problems in automated health assessment services.

作者信息

Piette John D, Sussman Jeremy B, Pfeiffer Paul N, Silveira Maria J, Singh Satinder, Lavieri Mariel S

机构信息

VA Center for Clinical Management Research and Division of General Medicine, Department of Internal Medicine, University of Michigan, Ann Arbor, MI 48113-0170, United States.

出版信息

J Med Internet Res. 2013 Jul 5;15(7):e118. doi: 10.2196/jmir.2582.

Abstract

BACKGROUND

Interactive voice response (IVR) calls enhance health systems' ability to identify health risk factors, thereby enabling targeted clinical follow-up. However, redundant assessments may increase patient dropout and represent a lost opportunity to collect more clinically useful data.

OBJECTIVE

We determined the extent to which previous IVR assessments predicted subsequent responses among patients with depression diagnoses, potentially obviating the need to repeatedly collect the same information. We also evaluated whether frequent (ie, weekly) IVR assessment attempts were significantly more predictive of patients' subsequent reports than information collected biweekly or monthly.

METHODS

Using data from 1050 IVR assessments for 208 patients with depression diagnoses, we examined the predictability of four IVR-reported outcomes: moderate/severe depressive symptoms (score ≥10 on the PHQ-9), fair/poor general health, poor antidepressant adherence, and days in bed due to poor mental health. We used logistic models with training and test samples to predict patients' IVR responses based on their five most recent weekly, biweekly, and monthly assessment attempts. The marginal benefit of more frequent assessments was evaluated based on Receiver Operator Characteristic (ROC) curves and statistical comparisons of the area under the curves (AUC).

RESULTS

Patients' reports about their depressive symptoms and perceived health status were highly predictable based on prior assessment responses. For models predicting moderate/severe depression, the AUC was 0.91 (95% CI 0.89-0.93) when assuming weekly assessment attempts and only slightly less when assuming biweekly assessments (AUC: 0.89; CI 0.87-0.91) or monthly attempts (AUC: 0.89; CI 0.86-0.91). The AUC for models predicting reports of fair/poor health status was similar when weekly assessments were compared with those occurring biweekly (P value for the difference=.11) or monthly (P=.81). Reports of medication adherence problems and days in bed were somewhat less predictable but also showed small differences between assessments attempted weekly, biweekly, and monthly.

CONCLUSIONS

The technical feasibility of gathering high frequency health data via IVR may in some instances exceed the clinical benefit of doing so. Predictive analytics could make data gathering more efficient with negligible loss in effectiveness. In particular, weekly or biweekly depressive symptom reports may provide little marginal information regarding how the person is doing relative to collecting that information monthly. The next generation of automated health assessment services should use data mining techniques to avoid redundant assessments and should gather data at the frequency that maximizes the value of the information collected.

摘要

背景

交互式语音应答(IVR)呼叫可增强卫生系统识别健康风险因素的能力,从而实现有针对性的临床随访。然而,重复评估可能会增加患者退出率,并意味着失去收集更多临床有用数据的机会。

目的

我们确定了先前的IVR评估在多大程度上能够预测抑郁症诊断患者的后续反应,从而有可能避免重复收集相同信息的必要性。我们还评估了频繁(即每周一次)的IVR评估尝试是否比每两周或每月收集的信息更能显著预测患者的后续报告。

方法

利用对208名抑郁症诊断患者进行的1050次IVR评估的数据,我们检查了IVR报告的四个结果的可预测性:中度/重度抑郁症状(PHQ-9评分≥10)、一般健康状况为中等/较差、抗抑郁药依从性差以及因心理健康不佳而卧床的天数。我们使用带有训练和测试样本的逻辑模型,根据患者最近的五次每周、每两周和每月评估尝试来预测他们的IVR反应。基于受试者工作特征(ROC)曲线和曲线下面积(AUC)的统计比较,评估了更频繁评估的边际效益。

结果

根据先前的评估反应,患者关于其抑郁症状和感知健康状况的报告具有高度可预测性。对于预测中度/重度抑郁症的模型,假设每周进行评估尝试时,AUC为0.91(95%CI 0.89-0.93),假设每两周进行评估时(AUC:0.89;CI 0.87-0.91)或每月进行评估时(AUC:0.89;CI 0.86-0.91),AUC仅略低。将每周评估与每两周(差异的P值=.11)或每月(P=.81)评估进行比较时,预测健康状况为中等/较差报告的模型的AUC相似。药物依从性问题和卧床天数的报告在一定程度上较难预测,但在每周、每两周和每月进行的评估之间也显示出微小差异。

结论

通过IVR收集高频健康数据的技术可行性在某些情况下可能超过这样做的临床益处。预测分析可以使数据收集更有效率,而有效性损失可忽略不计。特别是,每周或每两周的抑郁症状报告相对于每月收集该信息而言,可能提供关于患者状况的边际信息很少。下一代自动化健康评估服务应使用数据挖掘技术来避免重复评估,并应以能使所收集信息价值最大化的频率收集数据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/07fc/3713922/9729208890ca/jmir_v15i7e118_fig1.jpg

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