伊朗中部亚兹德市不同决策树算法对视网膜病变患者分类的比较

Amin Karami, M. Askarishahi, N. Namiranian
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引用次数: 0

摘要

引言:糖尿病是由代谢紊乱引起的最常见的疾病之一。它是胰岛素分泌或功能受损的结果。糖尿病的患病率正在迅速上升。本研究的目的是研究不同决策树算法在糖尿病视网膜病变诊断中的性能。这是使用一个关于糖尿病患者的数据库完成的。他们被转介到亚兹德糖尿病研究中心。方法:本研究采用横断面分析法。2613名患者访问了亚兹德市的研究和治疗中心。他们的人口统计信息是在第一阶段收到的。然后,他们由护理团队进行测试,患者的信息表由各自的护士填写。之后,观察平均值、模式、中位数、方差、频率和缺失数据百分比的描述性指标。比较了四种诊断模型(Chadi)、分类树和回归(C和R)、(Quest)和C5.0。作者使用三个统计标准评估了这四个模型的性能:准确性、敏感性和特异性。收益图用于更准确地比较模型。数据处理和建模采用SPSS MODELER V18.0软件。显著性水平被认为是5%。结果:在本研究中,在人口统计学和临床变量中,BMI、疾病持续时间、所用药物类型、年龄、高血压、性别、胆固醇和血红蛋白A1c被输入最终模型。研究视网膜病变的因变量。它基于CART模型中获得的准确性(71.75)、敏感性(75.60)、特异性(57.14)标准;Quest模型的准确性(65.84)、敏感性(65.86)、特异性(65.76);Chaid模型的准确性(69.33)、敏感性(67.35)、特异性(76.81);Chaid模型的准确性(73.27)、敏感性(79.65)、特异性(49.05)。结论:基于四种算法的准确性、敏感性、特异性和增益图的比较标准,Chaid算法表现出更好的性能。因此,为了进一步研究,作者提出了该算法。
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Comparison of Different Decision Tree Algorithms for Classification of Retinopathy Patients in Yazd City, Central Part of Iran
Introduction: Diabetes is one of the most common diseases caused by metabolic disorders. It is the result of impaired secretion or function of insulin. The prevalence of diabetes is increasing rapidly. The aim of this study is to investigate the performance of different decision tree algorithms in the diagnosis of diabetic retinopathy. It was done using a database regarding diabetic patients. They were referred to Yazd Diabetes Research Center. Method: This study was analytical and cross-sectional. 2613 patients visited Yazd City's research and treatment center. Their demographic information was received in the first stage. Then, they were tested by the nursing team, and the patient's information form was completed by the respective nurse. After that, the descriptive indicators of mean, mode, median, variance, frequency, and percentage of missing data were observed. Four diagnostic models (Chadi), classification tree and regression (C and R), (Quest) and C 5.0 were compared. Authors evaluated the performance of these four models using three statistical criteria: accuracy, sensitivity, and specificity. Gains chart was used for more accurate comparison of models. SPSS MODELER V 18.0 software was used for data processing and modeling. The significance level was considered 5%. Result: In this study, among the demographic and clinical variables, BMI, duration of disease, type of drug used, age, hypertension, gender, cholesterol, and hemoglobin A1c were entered in the final model. The dependent variable of retinopathy was investigated. It was based on the obtained criteria of accuracy (71.75), sensitivity (75.60), specificity (57.14) in the CART model; accuracy (65.84), sensitivity (65.86), specificity (65.76) of the Quest model; accuracy (69.33), sensitivity (67.35), specificity (76.81) of Chaid model; and accuracy (73.27), sensitivity (79.65), specificity (49.05) of Chaid model. Conclusion: Based on the criteria of accuracy, sensitivity, specificity, and comparison of Gain Chart for four algorithms, Chaid algorithm showed better performance. Therefore, for further research, the authors suggest this algorithm.
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