Logistic regression model as classifier for early detection of gestational diabetes mellitus

Priya Shirley Muller, M. Nirmala
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Abstract

Gestational diabetes mellitus (GDM) is any degree of glucose intolerance during pregnancy. In view of maternal morbidity and mortality as well as fetal complications, early diagnosis is an utmost necessity one in the present scenario. In a developing country like India, early detection and prevention will be more cost effective. Oral glucose tolerance test (OGTT) is the crucial method for diagnosing GDM done usually between 24th and 28th week of pregnancy. The proposed work focuses on early detection of GDM without a visit to the hospital for women who are pregnant for the second time onwards (multigravida patients). In recent years, prediction models using multivariate logistic regression analysis have been developed in many areas of healthcare research. With an accuracy of 82.45%, the classifier has proved to be an efficient model for diagnosis of GDM without the conventional method of blood test by providing newly designed parameters as inputs to the model.
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Logistic回归模型在妊娠期糖尿病早期检测中的应用
妊娠期糖尿病(GDM)是指妊娠期间任何程度的葡萄糖耐受不良。鉴于产妇发病率和死亡率以及胎儿并发症,在目前情况下,早期诊断是极其必要的。在印度这样的发展中国家,早期发现和预防将更具成本效益。口服糖耐量试验(OGTT)是诊断GDM的重要方法,一般在妊娠24 ~ 28周进行。建议的工作重点是对第二次怀孕的妇女(多胎患者)在不去医院的情况下早期发现GDM。近年来,使用多元逻辑回归分析的预测模型在医疗保健研究的许多领域得到了发展。该分类器的准确率为82.45%,通过将新设计的参数作为模型的输入,证明了该分类器是一种无需常规血液检测方法诊断GDM的有效模型。
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