Rahmani Katigari Meysam, Ayatollahi Haleh, Malek Mojtaba, Kamkar Haghighi Mehran
Meysam Rahmani Katigari, Haleh Ayatollahi, Mehran Kamkar Haghighi, Department of Health Information Management, School of Health Management and Information Sciences, IRAN University of Medical Sciences, Tehran 1996713883, Iran.
World J Diabetes. 2017 Feb 15;8(2):80-88. doi: 10.4239/wjd.v8.i2.80.
To design a fuzzy expert system to help detect and diagnose the severity of diabetic neuropathy.
The research was completed in 2014 and consisted of two main phases. In the first phase, the diagnostic parameters were determined based on the literature review and by investigating specialists' perspectives ( = 8). In the second phase, 244 medical records related to the patients who were visited in an endocrinology and metabolism research centre during the first six months of 2014 and were primarily diagnosed with diabetic neuropathy, were used to test the sensitivity, specificity, and accuracy of the fuzzy expert system.
The final diagnostic parameters included the duration of diabetes, the score of a symptom examination based on the Michigan questionnaire, the score of a sign examination based on the Michigan questionnaire, the glycolysis haemoglobin level, fasting blood sugar, blood creatinine, and albuminuria. The output variable was the severity of diabetic neuropathy which was shown as a number between zero and 10, had been divided into four categories: absence of the disease, (the degree of severity) mild, moderate, and severe. The interface of the system was designed by ASP.Net (Active Server Pages Network Enabled Technology) and the system function was tested in terms of sensitivity (true positive rate) (89%), specificity (true negative rate) (98%), and accuracy (a proportion of true results, both positive and negative) (93%).
The system designed in this study can help specialists and general practitioners to diagnose the disease more quickly to improve the quality of care for patients.
设计一个模糊专家系统,以帮助检测和诊断糖尿病神经病变的严重程度。
该研究于2014年完成,包括两个主要阶段。在第一阶段,基于文献综述并通过调查专家的观点(n = 8)确定诊断参数。在第二阶段,使用2014年头六个月内在内分泌与代谢研究中心就诊且初步诊断为糖尿病神经病变的患者的244份病历,来测试模糊专家系统的敏感性、特异性和准确性。
最终的诊断参数包括糖尿病病程、基于密歇根问卷的症状检查评分、基于密歇根问卷的体征检查评分、糖化血红蛋白水平、空腹血糖、血肌酐和蛋白尿。输出变量是糖尿病神经病变的严重程度,以0到10之间的数字表示,分为四类:无疾病、(严重程度)轻度、中度和重度。该系统的界面由ASP.Net(启用活动服务器页面网络技术)设计,并且在敏感性(真阳性率)(89%)、特异性(真阴性率)(98%)和准确性(真结果的比例,包括阳性和阴性)(93%)方面对系统功能进行了测试。
本研究设计的系统可以帮助专家和全科医生更快地诊断疾病,以提高患者的护理质量。