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A Predictive Risk Score to Diagnose Adrenal Insufficiency in Outpatients: A 7 Year Retrospective Cohort Study

机译:预测风险评分诊断门诊患者肾上腺功能不全:7年的回顾性队列队列研究

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摘要

Background: The diagnosis of adrenal insufficiency (AI) requires dynamic tests which may not be available in some institutions. This study aimed to develop a predictive risk score to help diagnose AI in outpatients with indeterminate serum cortisol levels. Methods: Five hundred and seven patients with intermediate serum cortisol levels (3–17.9 µg/dL) who had undergone ACTH (adrenocorticotropin) stimulation tests were included in the study. A predictive risk score was created using significant predictive factors identified by multivariable analysis using Poisson regression clustered by ACTH dose. Results: The seven predictive factors used in the development of a predictive model with their assigned scores are as follows: chronic kidney disease (9.0), Cushingoid appearance in exogenous steroid use (12.0), nausea and/or vomiting (6.0), fatigue (2.0), basal cortisol <9 µg/dL (12.5), cholesterol <150 mg/dL (2.5) and sodium <135 mEq/L (1.0). Predictive risk scores range from 0–50.0. A high risk level (scores of 19.5–50.0) indicates a higher possibility of having AI (positive likelihood ratio (LR+) = 11.75), while a low risk level (scores of <19.0) indicates a lower chance of having AI (LR+ = 0.09). The predictive performance of the scoring system was 0.82 based on the area under the curve. Conclusions: This predictive risk score can help to determine the probability of AI and can be used as a guide to determine which patients need treatment for AI and which require dynamic tests to confirm AI.
机译:背景:肾上腺功能不全(AI)的诊断需要动态测试,可能在某些机构中不可用。本研究旨在制定预测性风险评分,以帮助诊断出在门诊患者的患者中,具有不确定的血清皮质醇水平。方法:在研究中纳入500七名患有Acth(肾上腺皮质激素)刺激试验的中间血清皮质醇水平(3-17.9μg/ dl)的患者。使用由Acth剂量聚集的泊松回归通过多变量分析鉴定的显着预测因子来创建预测风险评分。结果:用于开发预测模型的七种预测因素及其指定分数如下:慢性肾病(9.0),外源类固醇使用(12.0),恶心和/或呕吐(6.0),疲劳( 2.0),基础皮质醇<9μg/ dl(12.5),胆固醇<150mg / dl(2.5)和钠<135meq / L(1.0)。预测风险得分范围从0-50.0。高风险级别(分数为19.5-50.0),表明具有AI的可能性更高(正似然比(LR +)= 11.75),而低风险级别(分数<19.0)表示具有AI的较低机会(LR + = 0.09)。基于曲线下的区域的评分系统的预测性能为0.82。结论:这种预测性风险评分可以帮助确定AI的概率,并可以用作确定哪些患者对AI进行治疗的指导,并且需要动态测试以确认AI。

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