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K-nearest neighbor based methodology for accurate diagnosis of diabetes mellitus

机译:基于K最近邻的邻近糖尿病糖尿病的方法论

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Diabetes is one of the leading causes of death, disability and economic loss throughout the world. Type 2 diabetes is more common (90-95% worldwide) type of diabetes. However, it can be prevented or delayed by taking the right care and interventions which indeed an early diagnosis. There has been much advancement in the field of various machine learning algorithms specifically for medical diagnosis. But due to partially complete medical data sets, accuracy often decreases, results in more number of misclassification that can lead t o harmful complications. An accurate prediction and diagnosis of a disease becomes a challenging research problem for many researchers. Therefore, aimed to improve the diagnosis accuracy we have proposed a new methodology, based on novel preprocessing techniques, and K-nearest neighbor classifier. The effectiveness of the proposed methodology is validated with the help of various quantitative metrics and a comparative analysis, with previously reported studies using the same UCI dataset focusing on pima-diabetes disease diagnosis. This is the first work of its kind, where 100% classification accuracy is achieved by feature reduction from eight to two that shows the out performance of the proposed methodology over existing methods.
机译:糖尿病是世界各地的死亡,残疾和经济损失的主要原因之一。 2型糖尿病更常见(全球90-95 %)糖尿病类型。但是,通过采取正确的护理和干预,可以防止或延迟,这确实是早期诊断。专门用于医学诊断的各种机器学习算法领域有很大的进步。但由于部分完整的医疗数据集,准确性往往会降低,导致更多的错误分类,可以导致有害并发症。对许多研究人员来说,疾病的准确预测和诊断成为一个具有挑战性的研究问题。因此,旨在提高我们提出了一种基于新型预处理技术的新方法的诊断精度和K最近邻分类。在各种定量度量和比较分析的帮助下,验证了所提出的方法的有效性,先前报道的使用相同的UCI数据集专注于PIMA-糖尿病疾病诊断。这是它的第一个工作,其中通过8到2的特征减少来实现100 %的分类精度,显示出在现有方法上提出的方法的表现。

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