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Data analytics identify glycated haemoglobin co-markers for type 2 diabetes mellitus diagnosis

机译:数据分析可识别用于2型糖尿病诊断的糖化血红蛋白共标记

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Glycated haemoglobin (HbA1c) is being more commonly used as an alternative test for the identification of type 2 diabetes mellitus (T2DM) or to add to fasting blood glucose level and oral glucose tolerance test results, because it is easily obtained using point-of-care technology and represents long-term blood sugar levels. HbA1c cut-off values of 6.5% or above have been recommended for clinical use based on the presence of diabetic comorbidities from population studies. However, outcomes of large trials with a HbA1c of 6.5% as a cut-off have been inconsistent for a diagnosis of T2DM. This suggests that a HbA1c cut-off of 6.5% as a single marker may not be sensitive enough or be too simple and miss individuals at risk or with already overt, undiagnosed diabetes. In this study, data mining algorithms have been applied on a large clinical dataset to identify an optimal cut-off value for HbA1c and to identify whether additional biomarkers can be used together with HbA1c to enhance diagnostic accuracy of T2DM. T2DM classification accuracy increased if 8-hydroxy-2-deoxyguanosine (8-OhdG), an oxidative stress marker, was included in the algorithm from 78.71% for HbA1c at 6.5% to 86.64%. A similar result was obtained when interleukin-6 (IL-6) was included (accuracy=85.63%) but with a lower optimal HbA1c range between 5.73 and 6.22%. The application of data analytics to medical records from the Diabetes Screening programme demonstrates that data analytics, combined with large clinical datasets can be used to identify clinically appropriate cut-off values and identify novel biomarkers that when included improve the accuracy of T2DM diagnosis even when HbA1c levels are below or equal to the current cut-off of 6.5%. (C) 2016 Elsevier Ltd. All rights reserved.
机译:糖化血红蛋白(HbA1c)更常用作鉴定2型糖尿病(T2DM)的替代测试,或增加空腹血糖水平和口服葡萄糖耐量测试的结果,因为它很容易通过检测点获得护理技术,代表长期血糖水平。根据人群研究中存在的糖尿病合并症,建议将HbA1c临界值设定为6.5%或更高,以用于临床。但是,HbA1c为6.5%作为临界值的大型试验的结果与诊断T2DM不一致。这表明,作为单一标志物的HbA1c临界值不能达到6.5%,这可能不够敏感或过于简单,并且错过了处于危险之中或已经患有尚未确诊的糖尿病的个体。在这项研究中,数据挖掘算法已应用于大型临床数据集,以确定HbA1c的最佳临界值,并确定是否可以将其他生物标志物与HbA1c一起使用以提高T2DM的诊断准确性。如果将8-羟基-2-脱氧鸟苷(8-OhdG)(一种氧化应激标记)包括在算法中,则T2DM的分类准确度将从HbA1c的78.71%(6.5%)提高到86.64%。当包括白介素-6(IL-6)时,获得了相似的结果(准确性= 85.63%),但最佳HbA1c范围在5.73%至6.22%之间。将数据分析应用于糖尿病筛查计划的医疗记录表明,将数据分析与大型临床数据集相结合,可用于识别临床上适当的临界值并识别新颖的生物标志物,即使包括在内,即使HbA1c仍可提高T2DM诊断的准确性水平低于或等于目前的6.5%截止值。 (C)2016 Elsevier Ltd.保留所有权利。

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