洞察代用诊断指标对代谢综合征患者识别的预测能力。

Shaghayegh Hosseinkhani, Katayoon Forouzanfar, Nastaran Hadizadeh, Farideh Razi, Somayeh Darzi, Fatemeh Bandarian
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引用次数: 0

摘要

背景:本研究旨在评估胰岛素替代测量在识别代谢综合征(MetS)患者方面的诊断能力,并提出从空腹值得出的适用指数,尤其是在大型研究人群中:数据收集自伊朗非传染性疾病风险因素监测研究(STEPS)的数据集。MetS的定义基于美国国家胆固醇教育计划(NCEP)的标准。对各种胰岛素替代指数进行了评估,包括稳态模型评估(HOMA)、胰岛素敏感性定量检查指数(QUICKI)、空腹血糖与胰岛素比值(FGIR)、雷诺指数、胰岛素倒数、麦考利指数、胰岛素抵抗代谢评分(METS-IR)、甘油三酯-葡萄糖指数(TyG)、总胆固醇/高密度脂蛋白胆固醇、总胆固醇/体重指数和总胆固醇/腹围比值。采用接收者操作特征曲线(ROC)评估病理情况,并通过尤登指数的最高分确定最佳截断值。此外,还根据性别、年龄和体重指数的差异,确定了每项指数的曲线下面积(AUC)值:研究对象包括 373 人(49.9% 为女性;75.1% 为中年,39.1% 为肥胖,27.3% 为超重),其中 117 人(31.4%)患有 MetS。METS-IR(AUC:0.856;95% CI:0.817-0.895)、TG/HDL-C(AUC:0.820;95% CI:0.775-0.886)、TyG(AUC:0.808;95% CI:0.759-0.857)和McAuley(AUC:0.804;95% CI:0.757-0.852)指数分别为检测MetS提供了最大的AUC。所有指数的 AUC 值男性均高于女性。根据体重指数类别、中年和老年人进行数据分层后,这一趋势保持一致:本研究表明,胰岛素指数(包括 METS-IR、TG/HDLC、TyG 和 McAuley)在确定 MetS 风险方面的能力与 HOMA-IR 相当或更好,能够识别 MetS 患者,并可为识别胰岛素抵抗风险人群提供一种简单的方法。
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Insight into the Predictive Power of Surrogate Diagnostic Indices for Identifying Individuals with Metabolic Syndrome.

Background: This study aimed to assess the diagnostic capability of insulin surrogate measurements in identifying individuals with metabolic syndrome (MetS) and propose applicable indices derived from fasting values, particularly in large study populations.

Methods: Data were collected from the datasets of the Surveillance of Risk Factors of NCDs in Iran Study (STEPS). MetS was defined based on the National Cholesterol Education Program (NCEP) criteria. Various insulin surrogate indices, including Homeostasis Model Assessment (HOMA), Quantitative Insulin Sensitivity Check Index (QUICKI), Fasting glucose to insulin ratio (FGIR), Reynaud, Reciprocal insulin, McAuley, Metabolic Score for Insulin Resistance (METS-IR), Triglyceride-glucose index (TyG), TG/ HDL-C, TG/ BMI, and TG/ WC ratio were assessed. Receiver Operating Characteristic (ROC) curves were used to assess pathologic conditions and determine the optimal cut-off through the highest score of the Youden index. Also, Area Under the Curve (AUC) values were established for each index totally and according to sex, age, and BMI differences.

Results: The study population consisted of 373 individuals (49.9% women; 75.1% middle age, 39.1% obese, and 27.3% overweight), of whom 117 (31.4%) had MetS. The METS-IR (AUC: 0.856; 95% CI: 0.817-0.895), TG/ HDL-C (AUC: 0.820; 95% CI: 0.775-0.886), TyG (AUC: 0.808; 95% CI: 0.759-0.857), and McAuley (AUC: 0.804; 95% CI: 0.757-0.852) indices provided the greatest AUC respectively for detection of MetS. The values of AUC for all the indices were higher in men than women. This trend was consistent after data stratification based on BMI categories, middle age, and senile individuals.

Conclusion: The present study indicated that indices of insulin, including METS-IR, TG/HDLC, TyG, and McAuley, have an equal or better capacity in determining the risk of MetS than HOMA-IR, are capable of identifying individuals with MetS and may provide a simple approach for identifying populations at risk of insulin resistance.

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