解锁最佳血糖解释:利用机器学习算法重新定义糖尿病和缺铁性贫血女性患者的 HbA1c 分析。

IF 2.6 4区 医学 Q2 MEDICAL LABORATORY TECHNOLOGY
Kadra Mohamed Abdillahi, Fatma Ceyla Eraldemir, Irfan Kösesoy
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引用次数: 0

摘要

研究目的针对糖尿病合并缺铁性贫血(IDA)妇女面临的细微血糖挑战,本研究采用先进的机器学习算法重新定义血红蛋白(Hb)A1c测量值。我们的目的是通过认识这一特殊人群中红细胞、铁和血糖水平之间的关键相互作用,提高血糖解释的准确性:这项回顾性观察研究纳入了 2017 年至 2022 年期间记录 HbA1c 水平的 17526 名成年女性。根据 HbA1c 和空腹血糖 (FBG) 水平将样本分类为糖尿病、糖尿病前期或非糖尿病,以便在不影响模型训练的情况下进行分布分析。支持向量机、线性回归、随机森林和 K-近邻算法作为机器学习 (ML) 方法用于预测 HbA1c 水平。模型训练完成后,使用训练好的模型预测 IDA 样本的 HbA1c 值:根据我们的结果,HbA1c 值变化了 0.1 个单位,这导致一些患者的临床决策发生了变化:讨论:使用 ML 分析患有 IDA 的女性患者的 HbA1c 结果可能会揭示 HbA1c 值在临界医疗决策阈值附近徘徊的患者之间的区别。这种技术与实验室科学的交叉有望提高医疗决策过程的精确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Unlocking Optimal Glycemic Interpretation: Redefining HbA1c Analysis in Female Patients With Diabetes and Iron-Deficiency Anemia Using Machine Learning Algorithms

Unlocking Optimal Glycemic Interpretation: Redefining HbA1c Analysis in Female Patients With Diabetes and Iron-Deficiency Anemia Using Machine Learning Algorithms

Objective

In response to the nuanced glycemic challenges faced by women with iron deficiency anemia (IDA) associated with diabetes, this study uses advanced machine learning algorithms to redefine hemoglobin (Hb)A1c measurement values. We aimed to improve the accuracy of glycemic interpretation by recognizing the critical interaction between erythrocytes, iron, and glycemic levels in this specific demographic group.

Methods

This retrospective observational study included 17,526 adult women with HbA1c levels recorded from 2017 to 2022. Samples were classified as diabetic, prediabetic, or non-diabetic based on HbA1c and fasting blood glucose (FBG) levels for distribution analysis without impacting model training. Support Vector Machines, Linear Regression, Random Forest, and K-Nearest Neighbor algorithms as machine learning (ML) methods were used to predict HbA1c levels. Following the training of the model, HbA1c values were predicted for the IDA samples using the trained model.

Results

According to our results, there has been a 0.1 unit change in HbA1c values, which has resulted in a clinical decision change in some patients.

Discussion

Using ML to analyze HbA1c results in women with IDA may unveil distinctions among patients whose HbA1c values hover near critical medical decision thresholds. This intersection of technology and laboratory science holds promise for enhancing precision in medical decision-making processes.

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来源期刊
Journal of Clinical Laboratory Analysis
Journal of Clinical Laboratory Analysis 医学-医学实验技术
CiteScore
5.60
自引率
7.40%
发文量
584
审稿时长
6-12 weeks
期刊介绍: Journal of Clinical Laboratory Analysis publishes original articles on newly developing modes of technology and laboratory assays, with emphasis on their application in current and future clinical laboratory testing. This includes reports from the following fields: immunochemistry and toxicology, hematology and hematopathology, immunopathology, molecular diagnostics, microbiology, genetic testing, immunohematology, and clinical chemistry.
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