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The cost of Type II Diabetes Mellitus: A Machine Learning Perspective

机译:II型糖尿病的成本Mellitus:机器学习视角

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In this study, the burden of type II diabetes mellitus is investigated using machine learning methods. In particular, it is mainly aimed at obtaining an accurate quantification of the burden of diabetes by computing the number of indicators that provide the highest discrimination rate between normal people and patients. Assuming that the cardinality of the best-fitting feature set can be used to quantify the magnitude of the overall burden, several healthcare related features are extracted from demographic, diagnosis, medication and lab test records. Experimental results have shown that there are about 200 relevant indicators and the highest classification performance achieved in discriminating diabetic and normal people is remarkably superior to that of the baseline system. In other words, the burden of diabetes is not limited to a small group of complications, medications or lab tests. In the second phase of experiments, the relative effects of different indicators are evaluated by employing Lasso and Ridge regression algorithms. It is observed that the best set of indicators have different levels of effects in discriminating between diabetic and normal people.
机译:在这项研究中,使用机器学习方法研究了II型糖尿病的负担。特别是,它主要旨在通过计算在正常人和患者之间提供最高歧视率的指标的数量来获得准确定量糖尿病的负担。假设可以使用最佳配件特征集的基数来量化整体负担的大小,从人口统计,诊断,药物和实验室测试记录中提取了几个医疗保健相关特征。实验结果表明,在歧视糖尿病和正常人群中,有大约200个相关指标和最高的分类性能,非常优于基线系统的最高分类性能。换句话说,糖尿病的负担不限于一小部分并发症,药物或实验室测试。在第二阶段的实验中,通过采用套索和脊回归算法来评估不同指标的相对效果。观察到,最好的指标在患有糖尿病和正常人之间的歧视方面具有不同的效果。

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