Suppr超能文献

利用自动化临床数据库制定预测规则,以识别大量糖尿病患者中的高危患者。

Developing a prediction rule from automated clinical databases to identify high-risk patients in a large population with diabetes.

作者信息

Selby J V, Karter A J, Ackerson L M, Ferrara A, Liu J

机构信息

Division of Research, Kaiser Permanente of Northern California, 3505 Broadway, Oakland, CA 94611, USA.

出版信息

Diabetes Care. 2001 Sep;24(9):1547-55. doi: 10.2337/diacare.24.9.1547.

Abstract

OBJECTIVE

To develop and validate a prediction rule for identifying diabetic patients at high short-term risk of complications using automated data in a large managed care organization.

RESEARCH DESIGN AND METHODS

Retrospective cohort analyses were performed in 57,722 diabetic members of Kaiser Permanente, Northern California, aged > or =19 years. Data from 1994 to 1995 were used to model risk for macro- and microvascular complications (n = 3,977), infectious complications (n = 1,580), and metabolic complications (n = 316) during 1996. Candidate predictors (n = 36) included prior inpatient and outpatient diagnoses, laboratory records, pharmacy records, utilization records, and survey data. Using split-sample validation, the risk scores derived from logistic regression models in half of the population were evaluated in the second half. Sensitivity, positive predictive value, and receiver operating characteristics curves were used to compare scores obtained from full models to those derived using simpler approaches.

RESULTS

History of prior complications or related outpatient diagnoses were the strongest predictors in each complications set. For patients without previous events, treatment with insulin alone, serum creatinine > or =1.3 mg/dl, use of two or more antihypertensive medications, HbA(1c) >10%, and albuminuria/microalbuminuria were independent predictors of two or all three complications. Several risk scores derived from multivariate models were more efficient than simply targeting patients with elevated HbA(1c) levels for identifying high-risk patients.

CONCLUSIONS

Simple prediction rules based on automated clinical data are useful in planning care management for populations with diabetes.

摘要

目的

利用大型管理式医疗组织中的自动化数据,制定并验证一种用于识别具有短期并发症高风险的糖尿病患者的预测规则。

研究设计与方法

对加利福尼亚州北部凯撒医疗集团的57722名年龄≥19岁的糖尿病成员进行回顾性队列分析。使用1994年至1995年的数据对1996年期间的大血管和微血管并发症(n = 3977)、感染性并发症(n = 1580)以及代谢并发症(n = 316)的风险进行建模。候选预测因素(n = 36)包括既往住院和门诊诊断、实验室记录、药房记录、利用记录以及调查数据。采用样本拆分验证法,在一半人群中通过逻辑回归模型得出的风险评分在另一半人群中进行评估。使用灵敏度、阳性预测值和受试者工作特征曲线来比较从完整模型获得的评分与使用更简单方法得出的评分。

结果

既往并发症史或相关门诊诊断是每组并发症中最强的预测因素。对于无既往事件的患者,仅使用胰岛素治疗、血清肌酐≥1.3mg/dl、使用两种或更多种抗高血压药物、糖化血红蛋白>10%以及蛋白尿/微量白蛋白尿是两种或所有三种并发症的独立预测因素。从多变量模型得出的几个风险评分在识别高危患者方面比单纯针对糖化血红蛋白水平升高的患者更有效。

结论

基于自动化临床数据的简单预测规则有助于为糖尿病患者群体规划护理管理。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验