利用膳食水质参数和患者病史,通过优化机器学习树分类器评估和复发肾结石

B. Kavitha, P. Parthiban, M. Goel, K. Ravikumar, Ashutosh Das, J. Sudarsan, S. Nithiyanantham
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引用次数: 1

摘要

肾结石疾病是食品消费、饮用水质量和遗传因素综合作用的结果,据观察,在印度南部泰米尔纳德邦的Thanjavur郊区等某些地理区域,肾结石疾病更容易发生(发生和复发)。开展的研究包括收集研究区域肾结石患者的医疗信息,调查其饮食习惯包括饮用水质量(通过实验室研究),选择合适的分类器对22个参数中贡献最大的肾结石复发进行建模(并进行适当的模型评估)。本研究采用Weka(3.8.1)机器学习框架,对66个分类器的模型准确率进行评估,得到22个准确率高于ZeroR的分类器作为基准。基于本研究,基于准确率、精密度、召回率、F-Measure、MCC、ROC面积和PRC面积,发现C-4.5分类器(Weka中称为J48)是最稳健的分类器。根据领域一致性(即文献、逻辑和一致性)对所选分类器再次进行评估,以获得4个经过验证的分类器,从而提供7个参数及其肾结石复发的阈值,即家族史(Yes)、硫酸盐(>17ppm)、钾(>74 ppm)、硝酸盐(>1.2 ppm)、盐度(> 120ppm)、电导率(<=289 ppm)和用水量(中等)。
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Assessment and Recurrence of Kidney Stones Through Optimized Machine Learning Tree Classifiers Using Dietary Water Quality Parameters and Patient’s History
Kidney stone disease is a result of combination of food items consuming, drinking water quality and genetic heritability, which has been observed to be more prone (both occurrence and recurrence) to certain geographic regimes as Thanjavur suburbs of Tamil Nadu in southern India. The research carried out involves collection of medical information of Kidneystone patients of the study area and survey of their dietary habits including drinking water quality (through laboratory study), selection of suitable classifier to model the Kidney stone recurrence with the most contributing of 22 parameters (with due model evaluation). Weka (3.8.1) machine learning framework was used for the study, for evaluating the model accuracy of 66 classifiers, resulting 22 classifiers with accuracy higher than ZeroR, which was considered to be the benchmark. Based on this study, C-4.5 classifier (called J48 in Weka) was found to be most robust classifier, based on accuracy, precision, Recall, F-Measure, MCC, ROC Area and PRC Area. The selected classifiers were again evaluated based on domain conformance (namely, literature, logic and consistency) to obtain four validated classifiers, thereby providing seven parameters and their threshold value for kidney stone recurrence, namely, family history (Yes), Sulphate (>17ppm), potassium (>74 ppm), nitrate (>1.2 ppm), salinity (>120 ppm), conductivity (<=289 ppm) and water consumption (moderate).
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