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A Clinical Decision Support System for Diabetic Retinopathy Screening: Creating a Clinical Support Application

机译:糖尿病视网膜病变筛查的临床决策支持系统:创建临床支持应用程序

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摘要

>Background: The aim of this study was to build a clinical decision support system (CDSS) in diabetic retinopathy (DR), based on type 2 diabetes mellitus (DM) patients.>Method: We built a CDSS from a sample of 2,323 patients, divided into a training set of 1,212 patients, and a testing set of 1,111 patients. The CDSS is based on a fuzzy random forest, which is a set of fuzzy decision trees. A fuzzy decision tree is a hierarchical data structure that classifies a patient into several classes to some level, depending on the values that the patient presents in the attributes related to the DR risk factors. Each node of the tree is an attribute, and each branch of the node is related to a possible value of the attribute. The leaves of the tree link the patient to a particular class (DR, no DR).>Results: A CDSS was built with 200 trees in the forest and three variables at each node. Accuracy of the CDSS was 80.76%, sensitivity was 80.67%, and specificity was 85.96%. Applied variables were current age, gender, DM duration and treatment, arterial hypertension, body mass index, HbA1c, estimated glomerular filtration rate, and microalbuminuria.>Discussion: Some studies concluded that screening every 3 years was cost effective, but did not personalize risk factors. In this study, the random forest test using fuzzy rules permit us to build a personalized CDSS.>Conclusions: We have developed a CDSS that can help in screening diabetic retinopathy programs, despite our results more testing is essential.
机译:>背景:本研究的目的是基于2型糖尿病(DM)患者建立糖尿病视网膜病变(DR)的临床决策支持系统(CDSS)。>方法:我们从2,323名患者的样本中构建了CDSS,将其分为训练集1,212名患者和测试集1,111名患者。 CDSS基于模糊随机森林,该森林是一组模糊决策树。模糊决策树是一种分层的数据结构,根据患者在与DR危险因素相关的属性中提供的值,将患者分为若干级别。树的每个节点都是一个属性,节点的每个分支都与该属性的可能值相关。树的叶子将患者链接到特定的类别(DR,无DR)。>结果:构建了一个CDSS,其中林中有200棵树,每个节点有3个变量。 CDSS的准确度为80.76%,灵敏度为80.67%,特异性为85.96%。应用变量包括当前年龄,性别,糖尿病持续时间和治疗,动脉高血压,体重指数,HbA1c,估计的肾小球滤过率和微量白蛋白尿。>讨论:一些研究得出结论,每3年进行筛查是有成本效益的,但没有个性化风险因素。在本研究中,使用模糊规则的随机森林测试使我们能够构建个性化的CDSS。>结论:尽管我们的结果更重要,但我们已经开发了CDSS可以帮助筛查糖尿病性视网膜病变计划。

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