使用个体化疾病预测模型来识别有可能从糖尿病疾病管理项目中获益的患者。

Christian Weber, Kurt Neeser
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引用次数: 21

摘要

糖尿病是一个日益严重的健康问题,但通过疾病管理计划(DMP)处理这一流行病的努力已经显示出相互矛盾的结果。我们的假设是,除了项目的内容和设置外,选择合适的患者对项目的功效和效果至关重要。我们对918名2型糖尿病患者进行了个体化预测疾病建模(IPDM),以确定那些最有可能从纳入DMP中获益的患者。一部分患者(4.7%)甚至没有理论上预期寿命增加的潜力,因此不太可能从DMP中受益。大约16.1%的人预期寿命增加不到半年。通过替代参数(如可预防的10年成本或预期寿命增加)对整个队列进行分层比通过经典临床参数(如高HbA1c水平)进行分层更有效。可预防费用增加了50.6%(或每名患者1010美元(1 = 1.28美元),p < 0.01),预期寿命增加了54.8%(或2.3年,p < 0.01)。IPDM是一种有价值的策略,可以识别那些最有可能避免糖尿病相关并发症的患者,从而提高dmp治疗糖尿病的总体有效性和疗效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using individualized predictive disease modeling to identify patients with the potential to benefit from a disease management program for diabetes mellitus.

Diabetes is an increasing health problem, but efforts to handle this pandemic by disease management programs (DMP) have shown conflicting results. Our hypothesis is that, in addition to a program's content and setting, the choice of the right patients is crucial to a program's efficacy and effectiveness. We used individualized predictive disease modeling (IPDM) on a cohort of 918 patients with type 2 diabetes to identify those patients with the greatest potential to benefit from inclusion in a DMP. A portion of the patients (4.7%) did not have even a theoretical potential for an increase in life expectancy and would therefore be unlikely to benefit from a DMP. Approximately 16.1% had an increase in life expectancy of less than half a year. Stratification of the entire cohort by surrogate parameters like preventable 10-year costs or gain in life expectancy was much more effective than stratification by classical clinical parameters such as high HbA1c level. Preventable costs increased up to 50.6% (or 1,010 per patient (1 = US dollars 1.28), p < 0.01) and life expectancy increased up to 54.8% (or 2.3 years, p < 0.01). IPDM is a valuable strategy to identify those patients with the greatest potential to avoid diabetes-related complications and thus can improve the overall effectiveness and efficacy of DMPs for diabetes mellitus.

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