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在糖尿病与抑郁症的常规临床数据中运用结构方程模型:观察性队列研究

Using Structural Equation Modelling in Routine Clinical Data on Diabetes and Depression: Observational Cohort Study.

作者信息

Ronaldson Amy, Freestone Mark, Zhang Haoyuan, Marsh William, Bhui Kamaldeep

机构信息

Wolfson Institute of Population Health, Queen Mary University of London, London, United Kingdom.

School for Electronic Engineering and Computer Science, Queen Mary University of London, London, United Kingdom.

出版信息

JMIRx Med. 2022 Apr 27;3(2):e22912. doi: 10.2196/22912.

Abstract

BACKGROUND

Large data sets comprising routine clinical data are becoming increasingly available for use in health research. These data sets contain many clinical variables that might not lend themselves to use in research. Structural equation modelling (SEM) is a statistical technique that might allow for the creation of "research-friendly" clinical constructs from these routine clinical variables and therefore could be an appropriate analytic method to apply more widely to routine clinical data.

OBJECTIVE

SEM was applied to a large data set of routine clinical data developed in East London to model well-established clinical associations. Depression is common among patients with type 2 diabetes, and is associated with poor diabetic control, increased diabetic complications, increased health service utilization, and increased health care costs. Evidence from trial data suggests that integrating psychological treatment into diabetes care can improve health status and reduce costs. Attempting to model these known associations using SEM will test the utility of this technique in routine clinical data sets.

METHODS

Data were cleaned extensively prior to analysis. SEM was used to investigate associations between depression, diabetic control, diabetic care, mental health treatment, and Accident & Emergency (A&E) use in patients with type 2 diabetes. The creation of the latent variables and the direction of association between latent variables in the model was based upon established clinical knowledge.

RESULTS

The results provided partial support for the application of SEM to routine clinical data. Overall, 19% (3106/16,353) of patients with type 2 diabetes had received a diagnosis of depression. In line with known clinical associations, depression was associated with worse diabetic control (β=.034, P<.001) and increased A&E use (β=.071, P<.001). However, contrary to expectation, worse diabetic control was associated with lower A&E use (β=-.055, P<.001) and receipt of mental health treatment did not impact upon diabetic control (P=.39). Receipt of diabetes care was associated with better diabetic control (β=-.072, P<.001), having depression (β=.018, P=.007), and receiving mental health treatment (β=.046, P<.001), which might suggest that comprehensive integrated care packages are being delivered in East London.

CONCLUSIONS

Some established clinical associations were successfully modelled in a sample of patients with type 2 diabetes in a way that made clinical sense, providing partial evidence for the utility of SEM in routine clinical data. Several issues relating to data quality emerged. Data improvement would have likely enhanced the utility of SEM in this data set.

摘要

背景

包含常规临床数据的大型数据集在健康研究中的应用越来越广泛。这些数据集中包含许多可能不适用于研究的临床变量。结构方程模型(SEM)是一种统计技术,它可能允许从这些常规临床变量中创建“便于研究的”临床结构,因此可能是一种更广泛应用于常规临床数据的合适分析方法。

目的

将SEM应用于在东伦敦开发的大型常规临床数据集,以对已确立的临床关联进行建模。抑郁症在2型糖尿病患者中很常见,并且与糖尿病控制不佳、糖尿病并发症增加、医疗服务利用率提高以及医疗保健成本增加有关。试验数据的证据表明,将心理治疗纳入糖尿病护理可以改善健康状况并降低成本。尝试使用SEM对这些已知关联进行建模将测试该技术在常规临床数据集中的效用。

方法

在分析之前对数据进行了广泛清理。使用SEM研究2型糖尿病患者中抑郁症、糖尿病控制、糖尿病护理、心理健康治疗与急诊(A&E)使用之间的关联。模型中潜在变量的创建以及潜在变量之间关联的方向基于已确立的临床知识。

结果

结果为将SEM应用于常规临床数据提供了部分支持。总体而言,19%(3106/16353)的2型糖尿病患者被诊断患有抑郁症。与已知的临床关联一致,抑郁症与更差的糖尿病控制(β = 0.034,P <.001)和更高的急诊使用频率(β = 0.071,P <.001)相关。然而,与预期相反,更差的糖尿病控制与更低的急诊使用频率(β = -0.055,P <.001)相关,并且接受心理健康治疗对糖尿病控制没有影响(P = 0.39)。接受糖尿病护理与更好的糖尿病控制(β = -0.072,P <.001)、患有抑郁症(β = 0.018,P = 0.007)以及接受心理健康治疗(β = 0.046,P <.001)相关,这可能表明东伦敦正在提供全面的综合护理方案。

结论

在2型糖尿病患者样本中,一些已确立的临床关联以具有临床意义的方式成功建模,为SEM在常规临床数据中的效用提供了部分证据。出现了一些与数据质量相关的问题。数据改进可能会提高SEM在该数据集中的效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/36ee/10414237/5cd7bd048ddb/xmed_v3i2e22912_fig1.jpg

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