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基于临床数据的指标评估 2 型糖尿病严重程度:系统评价。

Assessing the severity of Type 2 diabetes using clinical data-based measures: a systematic review.

机构信息

Division of Population Health, Health Services Research and Primary Care, School of Health Sciences, Faculty of Biology, Medicine and Health, Manchester Academic Health Science Centre (MAHSC), University of Manchester, Manchester.

NIHR School for Primary Care Research, Centre for Primary Care, Manchester Academic Health Science Centre (MAHSC), University of Manchester, Manchester.

出版信息

Diabet Med. 2019 Jun;36(6):688-701. doi: 10.1111/dme.13905. Epub 2019 Feb 16.

Abstract

AIMS

To identify and critically appraise measures that use clinical data to grade the severity of Type 2 diabetes.

METHODS

We searched MEDLINE, Embase and PubMed between inception and June 2018. Studies reporting on clinical data-based diabetes-specific severity measures in adults with Type 2 diabetes were included. We excluded studies conducted solely in participants with other types of diabetes. After independent screening, the characteristics of the eligible measures including design and severity domains, the clinical utility of developed measures, and the relationship between severity levels and health-related outcomes were assessed.

RESULTS

We identified 6798 studies, of which 17 studies reporting 18 different severity measures (32 314 participants in 17 countries) were included: a diabetes severity index (eight studies, 44%); severity categories (seven studies, 39%); complication count (two studies, 11%); and a severity checklist (one study, 6%). Nearly 89% of the measures included diabetes-related complications and/or glycaemic control indicators. Two of the severity measures were validated in a separate study population. More severe diabetes was associated with increased healthcare costs, poorer cognitive function and significantly greater risks of hospitalization and mortality. The identified measures differed greatly in terms of the included domains. One study reported on the use of a severity measure prospectively.

CONCLUSIONS

Health records are suitable for assessment of diabetes severity; however, the clinical uptake of existing measures is limited. The need to advance this research area is fundamental as higher levels of diabetes severity are associated with greater risks of adverse outcomes. Diabetes severity assessment could help identify people requiring targeted and intensive therapies and provide a major benchmark for efficient healthcare services.

摘要

目的

确定并批判性评估使用临床数据来分级 2 型糖尿病严重程度的方法。

方法

我们检索了 MEDLINE、Embase 和 PubMed 自成立至 2018 年 6 月的文献。纳入了报告 2 型糖尿病成人使用基于临床数据的糖尿病特异性严重程度措施的研究。我们排除了仅在其他类型糖尿病患者中进行的研究。经过独立筛选,评估了合格措施的特征,包括设计和严重程度领域、开发措施的临床实用性以及严重程度水平与健康相关结局之间的关系。

结果

我们确定了 6798 项研究,其中 17 项研究报告了 18 种不同的严重程度措施(来自 17 个国家的 32314 名参与者):糖尿病严重程度指数(8 项研究,44%);严重程度分类(7 项研究,39%);并发症计数(2 项研究,11%);和严重程度检查表(1 项研究,6%)。近 89%的措施包括与糖尿病相关的并发症和/或血糖控制指标。两种严重程度措施在单独的研究人群中得到了验证。更严重的糖尿病与增加的医疗保健费用、认知功能下降以及住院和死亡风险显著增加相关。所确定的措施在包含的领域方面差异很大。一项研究报告了前瞻性使用严重程度措施。

结论

健康记录适合评估糖尿病严重程度;然而,现有措施的临床应用受到限制。推进这一研究领域的需求至关重要,因为更高水平的糖尿病严重程度与不良结局的风险增加相关。糖尿病严重程度评估可以帮助识别需要针对性和强化治疗的人群,并为高效的医疗保健服务提供主要基准。

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