Interval valued data enhanced fuzzy cognitive maps: Torwards an appraoch for Autism deduction in Toddlers

Alya Al Farsi, F. Doctor, D. Petrovic, S. Chandran, Charalampos Karyotis
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引用次数: 9

Abstract

Fuzzy Cognitive Maps (FCMs) are a soft computing technique characterized by robust properties that make them an effective technique for medical decision support systems. Making decisions within a medical domain is difficult due to the existence of high levels of uncertainty. The sources of this uncertainty can be due to the variation of physicians' opinions and experiences. The structure of existing FCMs is based on type-1 fuzzy sets in order to represent the causal relations among concepts of the modeled system. Therefore, the ability of the FCM to handle high levels of uncertainties and deliver accurate results can be hindered. In this paper, we propose using the Interval Agreement Approach to model the weights of links in FCMs to capture high level uncertainties in the presence of imprecise data acquired from different medical experts to enhance its decision modelling and reasoning capability. The proposed model is used in identifying if a child is diagnosed with an Autism Spectrum Disorder (ASD) where the Modified Checklist for Autism in Toddlers is used as a standard tool to derive the inputs for the FCMs. Initial results demonstrate that the proposed method outperforms conventional FCMs in classifying ASD based on a dataset of diagnosed cases.
区间值数据增强模糊认知图:幼儿自闭症演绎的一种方法
模糊认知图(fcm)是一种软计算技术,其鲁棒性使其成为医疗决策支持系统的有效技术。由于存在高度的不确定性,在医疗领域内做出决定是困难的。这种不确定性的来源可能是由于医生的意见和经验的变化。现有的fcm结构是基于1型模糊集来表示建模系统概念之间的因果关系。因此,FCM处理高水平不确定性和提供准确结果的能力可能会受到阻碍。在本文中,我们提出使用区间协议方法对fcm中的链路权重进行建模,以捕获来自不同医学专家的不精确数据存在的高水平不确定性,以增强其决策建模和推理能力。所提出的模型用于确定儿童是否被诊断为自闭症谱系障碍(ASD),其中修改的幼儿自闭症检查表被用作导出fcm输入的标准工具。初步结果表明,该方法在基于诊断病例数据集对ASD进行分类方面优于传统的fcm。
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