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Decision support system for diagnosing Rheumatic-Musculoskeletal Disease using fuzzy cognitive map technique

机译:用模糊认知地图技术诊断风湿肌肉疾病的决策支持系统

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Rheumatic-Musculoskeletal Disease (RMD) is a leading cause of disability worldwide. It causes inflammation of the connecting body structures, affects joints, tendons, ligaments, bones, and muscles, and is responsible for thousands of deaths per year worldwide. It is prevalent in Africa. In Nigeria, RMD constitutes 10–15% of rheumatology cases in most clinics, with a ratio of 2.4:1 (Female:Male), killing over 1652 people per year. The similarity of its symptoms with other diseases often cause misdiagnosis at an early stage among infected patients, and existing computational techniques used for diagnosis cannot address the confusability of the symptoms. Hence, there is an inability to determine the causality of symptoms. Moreover, a dearth of Rheumatologists prevents many RMD infected persons from obtaining an early and accurate diagnosis. Therefore, the need arises to develop a decision support system (DSS) for diagnosing RMD, such as by using a fuzzy cognitive map (FCM) technique. Our study focuses on the development and implementation of FCM-based DSS for RMD diagnosis (RMD-FCMDSS). RMD-FCMDSS serves as a software tool complementing physician decision-making. Our evaluation of RMD-FCMDSS suggests that it has an improved diagnostic value as compared to earlier traditional and conventional medical methods. Performance results indicate an 87% accuracy, 90% sensitivity, and 80% specificity. RMD-FCMDSS was tested on limited data due to a dearth of Rheumatologists in Nigeria and a limited population of rheumatic patients interacted with; thus in future work we shall need to increase the test sample. Hybridization of Fuzzy-Logic and Cognitive Mapping techniques helps to guarantee accuracy, specificity, sensitivity, and also speed diagnosis.
机译:风湿性肌肉骨骼疾病(RMD)是全球残疾的主要原因。它导致连接体结构的炎症,影响关节,肌腱,韧带,骨骼和肌肉,并负责全世界数千人死亡。它在非洲普遍存在。在尼日利亚,RMD构成10-15%的风湿病学病例,大多数诊所,比例为2.4:1(女性:男性),每年造成1652人。其症状与其他疾病的相似性通常会导致感染患者的早期疾病的误诊,并且用于诊断的现有计算技术不能解决症状的可混淆性。因此,存在无法确定症状的因果关系。此外,一种风湿病学家的缺乏可防止许多人民币受感染者获得早期和准确的诊断。因此,需要开发用于诊断RMD的决策支持系统(DSS),例如通过使用模糊认知地图(FCM)技术。我们的研究侧重于开发和实施FCM的DSS用于RMD诊断(RMD-FCMDS)。 RMD-FCMDSS作为补充医生决策的软件工具。我们对RMD-FCMDS的评估表明,与早期的传统和常规医疗方法相比,它具有改善的诊断价值。性能结果表明了87%的精度,90%的灵敏度和80%的特异性。由于尼日利亚的风湿病学家的缺乏,RMD-FCMDSS在有限的数据上进行了测试,并且有限的风湿病患者与之互动的有限;因此,在未来的工作中,我们需要增加测试样本。模糊逻辑和认知映射技术的杂交有助于保证准确性,特异性,敏感性以及速度诊断。

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