利用机器学习技术评估妊娠后糖尿病的易感因素

Devi R Krishnan, C. Maddipati, Gayathri P Menakath, A. Radhakrishnan, Yarrangangu Himavarshini, A. A, K. Mukundan, Rahul Krishnan Pathinarupothi, Bithin Alangot, Sirisha Mahankali
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引用次数: 7

摘要

糖尿病(DM)是21世纪全球面临的主要健康挑战之一。这是一种导致多种并发症的慢性疾病,对个人和社会造成了许多社会、身体和经济影响。妊娠期糖尿病(GDM)是一种糖尿病,在少数孕妇中发展,但通常在分娩后恢复正常。然而,已经确定的是,在生命的后期发展为糖尿病的风险随着GDM的增加而增加。该领域很少有研究探索使用预测机器学习算法来预测GDM后DM发生的可能性。在本文中,我们对当前的实践进行了系统的回顾,然后分析了我们大学医院的GDM数据,以确定可作为不同ML技术输入的诱发因素。
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Evaluation of predisposing factors of Diabetes Mellitus post Gestational Diabetes Mellitus using Machine Learning Techniques
Diabetes Mellitus (DM) is one of the major global health challenges of the 21st century. It is a chronic disease leading to multiple complications bearing a lot of social, physical and financial impact on individuals and society. Gestational diabetes mellitus (GDM) is a type of DM that is developed in a few pregnant women although it usually reverts back to normalcy after delivery. However, it is well established that the risk in developing DM at a later stage in their lives increases with GDM. Very few works done in this area explore the possibility of using prognostic Machine Learning algorithms to predict occurrence of DM after GDM. In this paper, we conduct a methodical review of current practices, and then analyze GDM data from our University hospital to identify predisposing factors that could be used as inputs to different ML techniques.
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