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使用机器学习和常规实验室检测进行糖尿病筛查。

Use of Machine Learning and Routine Laboratory Tests for Diabetes Mellitus Screening.

机构信息

Academic Department of Health and Services, Federal Institute of Santa Catarina, Florianopolis, SC 88020-300, Brazil.

Institute of Biomedical Engineering, Federal University of Santa Catarina, Florianopolis, SC 88040-900, Brazil.

出版信息

Biomed Res Int. 2022 Mar 29;2022:8114049. doi: 10.1155/2022/8114049. eCollection 2022.

Abstract

Most patients with diabetes mellitus are asymptomatic, which leads to delayed and more complex treatment. At the same time, most individuals are routinely subjected to standard clinical laboratory examinations, which create large health datasets over a lifetime. Computer processing has been used to search for health anomalies and predict diseases using clinical examinations. This work studied machine learning models to support the screening of diabetes through routine laboratory tests using data from laboratory tests of 62,496 patients. The classification and regression models used were the K-nearest neighbor, support vector machines, Bayes naïve, random forest models, and artificial neural networks. Glycated hemoglobin, a test used for diabetes diagnosis, was used as the target. Regression models calculated glycated hemoglobin directly and were later classified. The performance of classification computer models has been studied under various subdataset partitions and combinations (e.g., healthy, prediabetic, and diabetes, as well as no healthy and no diabetes). The best single performance was achieved with the artificial neural network model when detecting prediabetes or diabetes. The artificial neural network classification model scored 78.1%, 78.7%, and 78.4% for sensitivity, precision, and F1 scores, respectively, when identifying no healthy group. Other models also had good results, depending on what is desired. Machine learning-based models can predict glycated hemoglobin values from routine laboratory tests and can be used as a screening tool to refer a patient for further testing.

摘要

大多数糖尿病患者无症状,导致治疗延误且更加复杂。同时,大多数人通常接受标准临床实验室检查,这些检查会在一生中产生大量健康数据集。计算机处理已被用于搜索健康异常并使用临床检查预测疾病。这项工作研究了机器学习模型,以通过使用来自 62496 名患者的实验室检查数据,通过常规实验室检查支持糖尿病筛查。使用的分类和回归模型是 K-最近邻、支持向量机、朴素贝叶斯、随机森林模型和人工神经网络。用于诊断糖尿病的糖化血红蛋白测试被用作目标。回归模型直接计算糖化血红蛋白,然后进行分类。在各种子数据集分区和组合(例如健康、糖尿病前期和糖尿病,以及无健康和无糖尿病)下研究了分类计算机模型的性能。在检测糖尿病前期或糖尿病时,人工神经网络模型的单项性能最佳。人工神经网络分类模型在识别无健康组时的灵敏度、精度和 F1 分数分别为 78.1%、78.7%和 78.4%。其他模型也有很好的结果,具体取决于需求。基于机器学习的模型可以从常规实验室检查中预测糖化血红蛋白值,并可用作筛查工具,将患者转介进行进一步检查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7bcb/8983182/1060ced7d700/BMRI2022-8114049.001.jpg

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