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利用模糊认知图辅助婴儿和儿童的脑膜炎诊断。

Supporting meningitis diagnosis amongst infants and children through the use of fuzzy cognitive mapping.

机构信息

Modelling of Complex Social Systems (MoCSSy) Program, The IRMACS Centre, Simon Fraser University, Burnaby, Canada.

出版信息

BMC Med Inform Decis Mak. 2012 Sep 4;12:98. doi: 10.1186/1472-6947-12-98.

Abstract

BACKGROUND

Meningitis is characterized by an inflammation of the meninges, or the membranes surrounding the brain and spinal cord. Early diagnosis and treatment is crucial for a positive outcome, yet identifying meningitis is a complex process involving an array of signs and symptoms and multiple causal factors which require novel solutions to support clinical decision-making. In this work, we explore the potential of fuzzy cognitive map to assist in the modeling of meningitis, as a support tool for physicians in the accurate diagnosis and treatment of the condition.

METHODS

Fuzzy cognitive mapping (FCM) is a method for analysing and depicting human perception of a given system. FCM facilitates the development of a conceptual model which is not limited by exact values and measurements and thus is well suited to representing relatively unstructured knowledge and associations expressed in imprecise terms. A team of doctors (physicians), comprising four paediatricians, was formed to define the multifarious signs and symptoms associated with meningitis and to identify risk factors integral to its causality, as indicators used by clinicians to identify the presence or absence of meningitis in patients. The FCM model, consisting of 20 concept nodes, has been designed by the team of paediatricians in collaborative dialogue with the research team.

RESULTS

The paediatricians were supplied with a form containing various input parameters to be completed at the time of diagnosing meningitis among infants and children. The paediatricians provided information on a total of 56 patient cases amongst children whose age ranged from 2 months to 7 years. The physicians' decision to diagnose meningitis was available for each individual case which was used as the outcome measure for evaluating the model. The FCM was trained using 40 cases with an accuracy of 95%, and later 16 test cases were used to analyze the accuracy and reliability of the model. The system produced the results with sensitivity of 83.3% and specificity of 80%.

CONCLUSIONS

This work suggests that the application and development of a knowledge based system, using the formalization of FCMs for understanding the symptoms and causes of meningitis in children and infants, can provide a reliable front-end decision-making tool to better assist physicians.

摘要

背景

脑膜炎的特征是脑膜(即包围大脑和脊髓的膜)发炎。早期诊断和治疗对于获得良好的预后至关重要,但脑膜炎的诊断是一个复杂的过程,涉及多种症状和多种病因,需要新的解决方案来支持临床决策。在这项工作中,我们探讨了模糊认知图在协助脑膜炎建模中的应用潜力,作为医生准确诊断和治疗该疾病的辅助工具。

方法

模糊认知图(FCM)是一种分析和描述给定系统的人类感知的方法。FCM 有助于开发概念模型,该模型不受精确值和测量值的限制,因此非常适合表示以不精确术语表达的相对非结构化知识和关联。一个由四名儿科医生组成的医生团队被组建来定义与脑膜炎相关的多种症状和体征,并确定与脑膜炎因果关系相关的风险因素,作为临床医生用于识别患者是否存在脑膜炎的指标。由儿科医生团队在与研究团队的协作对话中设计的 FCM 模型由 20 个概念节点组成。

结果

儿科医生收到了一份表格,其中包含在诊断婴儿和儿童脑膜炎时需要填写的各种输入参数。儿科医生提供了总共 56 例年龄在 2 个月至 7 岁之间的儿童病例信息。每位患者的脑膜炎诊断决定都作为评估模型的结果。FCM 使用 40 个病例进行了训练,准确率为 95%,然后使用 16 个测试病例来分析模型的准确性和可靠性。该系统产生的结果具有 83.3%的敏感性和 80%的特异性。

结论

这项工作表明,应用和开发基于知识的系统,使用 FCM 的形式化来理解儿童和婴儿脑膜炎的症状和病因,可以为医生提供可靠的前端决策工具,以更好地辅助医生。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1952/3473237/302c85d51445/1472-6947-12-98-1.jpg

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