泌尿系统疾病诊断预测:三种决策树算法的比较研究

Mahmood Hussain Kadhem, A. Zeki
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引用次数: 6

摘要

数据挖掘在医疗保健领域有着广泛的应用。DM可以用来发现不同诊断之间的隐藏模式,或者根据一定数量的症状来预测患者的病情。它也可以用来根据一些可用的特征和参数来分析一组患者的特定治疗的成功程度。本文论证了糖尿病对两种常见泌尿系统疾病——急性膀胱炎症和肾盂肾炎——的推定诊断能力。这项工作中使用的数据集包括许多特征,这些特征对于诊断任何患有急性膀胱炎症或肾炎的患者都很重要。本研究评估了有监督机器学习算法Ridor, OneR和J48的性能和准确性,以确定最佳分类算法,该算法将用于开发准确的预测模型。决策树(J48)具有较强的预测准确性和预测能力,已被用于对急性炎症疾病的患者数据进行分类。所分析的数据集已使用10倍交叉验证进行训练。建立了急性膀胱肾炎的决策树。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Urinary System Disease Diagnosis: A Comparative Study of Three Decision Tree Algorithms
Data mining (DM) has a wide range of applications in the health care field. DM can be used to discover hidden patterns among different diagnoses or to predict the disease of patients based on certain number of symptoms. It can be used also to analyze the success major of a given treatment for a group of patients based on a number of characteristics and parameters available. This paper demonstrates the ability of DM to develop a prediction model for a presumptive diagnosis of two familiar urinary diseases: the acute inflammation of the urinary bladder and nephritis of renal pelvis. The dataset used in this work includes a number of characteristics, which are important in diagnosing any patient with an acute inflammation of urinary bladder or nephritis. This research evaluates the supervised machine learning algorithms Ridor, OneR, and J48 in terms of performance and accuracy to determine the best classification algorithm which will be used to develop the accurate prediction model. The decision tree (J48) shows a powerful accuracy and capability in prediction, and has been used to classify the patients' data with the proper acute inflammation diseases. The analyzed dataset has been trained using the 10-fold cross validation. The decision tree for the acute urinary bladder and nephritis has been generated.
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