Predictive Model for Diagnosis of Gestational Diabetes in the Kurdistan Region by a Combination of Clustering and Classification Algorithms: An Ensemble Approach

Rasool F. Jader, S. Aminifar
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引用次数: 6

Abstract

Gestational diabetes is a type of high blood sugar that develops during pregnancy. It can occur at any stage of pregnancy and cause problems for both the mother and the baby, during and after birth. The risks can be reduced if they are early detected and managed, especially in areas where only periodic tests of pregnant women are available. Intelligent systems designed by machine learning algorithms are remodelling all fields of our lives, including the healthcare system. This study proposes a combined prediction model to diagnose gestational diabetes. The dataset was obtained from the Kurdistan region laboratories, which collected information from pregnant women with and without diabetes. The suggested model uses the clustering KMeans technique for data reduction and the elbow method to find the optimal k value and the Mahalanobis distance method to find more related cluster to new samples, and the classification methods such as decision tree, random forest, SVM, KNN, logistic regression, and Naïve Bayes are used for prediction. The results showed that using a mix of KMeans clustering, elbow method, Mahalanobis distance, and ensemble technique significantly improves prediction accuracy.
基于聚类和分类算法的库尔德斯坦地区妊娠期糖尿病诊断预测模型:一种集成方法
妊娠糖尿病是一种在怀孕期间发生的高血糖。它可以发生在怀孕的任何阶段,并在分娩期间和分娩后对母亲和婴儿造成问题。如果及早发现和管理这些风险,特别是在只能对孕妇进行定期检查的地区,就可以减少这些风险。由机器学习算法设计的智能系统正在重塑我们生活的各个领域,包括医疗保健系统。本研究提出一种诊断妊娠期糖尿病的联合预测模型。该数据集是从库尔德斯坦地区的实验室获得的,该实验室收集了患有和不患有糖尿病的孕妇的信息。该模型使用聚类KMeans技术进行数据约简,使用肘部法寻找最优k值,使用马氏距离法寻找与新样本更相关的聚类,并使用决策树、随机森林、支持向量机、KNN、逻辑回归和Naïve贝叶斯等分类方法进行预测。结果表明,混合使用KMeans聚类、肘部法、马氏距离和集合技术可显著提高预测精度。
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