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Using Machine Learning to Refer Patients with Chronic Kidney Disease to Secondary Care

机译:使用机器学习将慢性肾病患者提交给二次护理

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There has been growing interest recently in using machine learning techniques as an aid in clinical medicine. Machine learning offers a range of classification algorithms which can be applied to medical data to aid in making clinical predictions. Recent studies have demonstrated the high predictive accuracy of various classification algorithms applied to clinical data. Several studies have already been conducted in diagnosing or predicting chronic kidney disease at various stages using different sets of variables. In this study we are investigating the use of machine learning techniques with blood test data. Such a system could aid renal teams in making recommendations to primary care general practitioners to refer patients to secondary care where patients may benefit from earlier specialist assessment and medical intervention. We are able to achieve an overall accuracy of 88.48% using logistic regression, 87.12% using ANN and 85.29% using SVM. ANNs performed with the highest sensitivity at 89.74 % compared to 86.67 % for logistic regression and 85.51 % for SVM.
机译:最近在使用机器学习技术作为临床医学的援助,最近越来越感兴趣。机器学习提供了一系列分类算法,可以应用于医疗数据,以帮助进行临床预测。最近的研究表明,各种分类算法的高预测准确性应用于临床数据。已经在使用不同的变量诊断或预测各个阶段的慢性肾脏疾病中进行了几项研究。在这项研究中,我们正在调查使用机器学习技术进行血液测试数据。这样的系统可以帮助肾组团队向初级保健总员提出建议,以将患者转到患者的二次护理,患者可能会受益于早期的专业评估和医疗干预。我们可以使用SVM使用ANN和85.29%的逻辑回归来实现88.48%的整体准确性88.48%。在89.74%的敏感度下进行的ANNS与逻辑回归的86.67%相比,SVM的85.51%。

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