Investigation of treatment delay in a complex healthcare process using physician insurance claims data: an application to symptomatic carotid artery stenosis.

IF 3 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES BMC Health Services Research Pub Date : 2024-11-29 DOI:10.1186/s12913-024-11860-w
Stephen Christopher van Gaal, Arshia Alimohammadi, Mohammad Ehsanul Karim, Wei Zhang, Jason Sutherland
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Abstract

Background: Delays in diagnostic and therapeutic processes are a potentially preventable cause of morbidity and mortality. Process improvement depends on accurate knowledge about as-is processes, historically collected from front-line workers and summarized in flowcharts. Such flowcharts can now be generated by process discovery algorithms supplied with chronological records from real-world cases. However, these algorithms may generate incomprehensible flowcharts when applied to complex unstructured processes, which are common in healthcare. The aim of this study is to evaluate methods for analysing data from real-world cases to determine causes of delay in complex healthcare processes.

Methods: Physician insurance claims and hospital discharge data were obtained for patients undergoing carotid endarterectomy at a single tertiary hospital between 2008 and 2014. All patients were recently symptomatic with vision loss. A chronological record of physician visits and diagnostic tests (activities) was generated for each patient using claims data. Algorithmic process discovery was attempted using the Heuristic Miner. The effect of activity selection on treatment delay was investigated from two perspectives: activity-specific effects were measured using linear regression, and patterns of activity co-occurrence were identified using K means clustering.

Results: Ninety patients were included, with a median symptom-to-surgery treatment time of 34 days. Every patient had a unique sequence of activities. The flowchart generated by the Heuristic Miner algorithm was uninterpretable. Linear regression models of waiting time revealed beneficial effects of emergency and neurology visits, and detrimental effects of carotid ultrasound and post-imaging follow-up visits to family physicians and ophthalmologists. K-means clustering identified two co-occurrence patterns: emergency visits, neurology visits and CT angiography were more common in a cluster of rapidly treated patients (median symptom to surgery time of 18 days), whereas family physician visits, carotid ultrasound imaging and post-imaging follow-up visits to eye specialists were more common in a cluster of patients with treatment delay (median time of 57 days).

Conclusions: Routinely collected data provided a comprehensive account of events in the symptom-to-surgery process for carotid endarterectomy. Linear regression and K-means clustering can be used to analyze real-world data to understand causes of delay in complex healthcare processes.

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使用医生保险索赔数据调查复杂医疗保健过程中的治疗延误:对症状性颈动脉狭窄的应用。
背景:诊断和治疗过程的延误是发病率和死亡率的潜在可预防原因。过程改进依赖于对现有过程的准确了解,这些知识历史地从一线工人那里收集并总结在流程图中。这样的流程图现在可以由过程发现算法生成,并提供来自真实案例的时间顺序记录。然而,当应用于复杂的非结构化流程时,这些算法可能会生成难以理解的流程图,这在医疗保健中很常见。本研究的目的是评估分析真实世界病例数据的方法,以确定复杂医疗保健过程中延迟的原因。方法:收集2008年至2014年在一家三级医院接受颈动脉内膜切除术的患者的医疗保险索赔和出院数据。所有患者近期均有视力丧失症状。使用索赔数据为每位患者生成医生就诊和诊断测试(活动)的时间顺序记录。尝试使用启发式Miner进行算法进程发现。从两个角度研究活动选择对治疗延迟的影响:使用线性回归测量活动特异性效应,使用K均值聚类识别活动共发生模式。结果:纳入90例患者,从症状到手术的中位治疗时间为34天。每个病人都有独特的活动顺序。启发式Miner算法生成的流程图是不可解释的。等待时间的线性回归模型显示急诊和神经内科就诊对患者有益,而颈动脉超声和对家庭医生和眼科医生的成像后随访对患者不利。K-means聚类确定了两种共发生模式:急诊就诊、神经内科就诊和CT血管造影在快速治疗的患者中更为常见(从症状到手术的中位时间为18天),而在治疗延迟的患者中,家庭医生就诊、颈动脉超声成像和成像后眼科专家随访更为常见(中位时间为57天)。结论:常规收集的数据提供了颈动脉内膜切除术从症状到手术过程中事件的全面描述。线性回归和k均值聚类可用于分析真实世界的数据,以了解复杂医疗保健过程中延迟的原因。
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来源期刊
BMC Health Services Research
BMC Health Services Research 医学-卫生保健
CiteScore
4.40
自引率
7.10%
发文量
1372
审稿时长
6 months
期刊介绍: BMC Health Services Research is an open access, peer-reviewed journal that considers articles on all aspects of health services research, including delivery of care, management of health services, assessment of healthcare needs, measurement of outcomes, allocation of healthcare resources, evaluation of different health markets and health services organizations, international comparative analysis of health systems, health economics and the impact of health policies and regulations.
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