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利用大型管理数据挖掘患者的轨迹进行风险分层:来自泌尿科疾病的一个例子。

Using large administrative data for mining patients' trajectories for risk stratification: An example from urological diseases.

机构信息

Centre for Learning Analytics, Faculty of Information Technology, Monash University, Clayton, Australia.

Digital Health Cooperative Research Centre, Sydney, Australia.

出版信息

PLoS One. 2024 Nov 13;19(11):e0310981. doi: 10.1371/journal.pone.0310981. eCollection 2024.

Abstract

OBJECTIVE

To identify latent clusters among urological patients by examining hospitalisation rate trajectories and their association with risk factors and outcome quality indicators.

MATERIALS AND METHODS

Victorian Admitted Episodes Dataset, containing information on all hospital admissions in Victoria from 2009 to 2019. The top twenty ICD-10 primary diagnosis codes in urology were used to select patients (n = 98,782) who were included in the study. Latent class trajectory modelling (LCTM) was used to cluster urological patient hospitalisation trajectories. Logistic regression was used to find baseline factors that influence cluster membership, the variables tested included comorbidities, baseline diagnosis codes, and socio-demographic factors. The analysis was further stratified into non-surgical procedures and surgical procedures.

RESULTS

Five clusters of hospitalisation trajectories were identified based on clustering hospitalisation rates over time. Higher hospitalisation clusters were strongly associated with longer length of stay, higher readmission rates and higher complication rates. Higher-risk groups were strongly associated with comorbidities such as renal disease and diabetes. For surgical procedures, urological cancers (kidney, prostate and bladder cancer) and irradiation cystitis were associated with higher-risk groups. For non-surgical procedures, calculus of the bladder, urethral stricture and bladder neck obstruction were associated with higher-risk groups. For patients with two or more admissions, liver cardiovascular disease and being diagnosed with benign prostatic hyperplasia were also associated with higher risk groups.

CONCLUSION

A novel statistical approach to cluster hospitalisation trajectories for urological patients was used to explore potential clusters of patient risks and their associations with outcome quality indicators. This study supports the observation that baseline comorbidities and diagnosis can be predictive of higher hospitalisation rates and, therefore, poorer health outcomes. This demonstrates that it is possible to identify patients at risk of developing complications, higher length of stay and readmissions by using baseline comorbidities and diagnosis from administrative data.

摘要

目的

通过检查住院率轨迹及其与危险因素和结果质量指标的关系,确定泌尿科患者的潜在聚类。

材料与方法

维多利亚州住院记录数据集,包含 2009 年至 2019 年维多利亚州所有住院治疗的信息。使用泌尿科的前 20 个 ICD-10 主要诊断代码选择纳入研究的患者(n=98782)。使用潜在类别轨迹建模(LCTM)对泌尿科患者的住院轨迹进行聚类。使用逻辑回归来寻找影响聚类成员的基线因素,测试的变量包括合并症、基线诊断代码和社会人口统计学因素。分析进一步分为非手术程序和手术程序。

结果

根据随时间聚类住院率,确定了五个住院轨迹聚类。较高的住院率聚类与较长的住院时间、较高的再入院率和较高的并发症发生率密切相关。高风险组与肾脏疾病和糖尿病等合并症密切相关。对于手术程序,泌尿系统癌症(肾、前列腺和膀胱癌)和放射性膀胱炎与高风险组相关。对于非手术程序,膀胱结石、尿道狭窄和膀胱颈梗阻与高风险组相关。对于有两次或更多次住院的患者,肝脏心血管疾病和前列腺增生症的诊断也与高风险组相关。

结论

使用一种新颖的统计方法对泌尿科患者的住院轨迹进行聚类,以探索患者风险的潜在聚类及其与结果质量指标的关系。这项研究支持了这样一种观察,即基线合并症和诊断可以预测更高的住院率,从而导致更差的健康结果。这表明,通过使用管理数据中的基线合并症和诊断,可以识别出有发生并发症、更长住院时间和再入院风险的患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6523/11559980/08158a409119/pone.0310981.g001.jpg

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