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Liver fibrosis diagnosis support using the Dempster-Shafer theory extended for fuzzy focal elements

机译:使用Dempster-Shafer理论为肝纤维化诊断提供支持

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Classifiers are used in a variety of applications, among them the classification of medical data. Their efficiency depends on the quality of training data, which is a disadvantage in the case of medical data that are often imperfect (e.g. incomplete, imbalanced, uncertain). Moreover, numerous classifiers are black-boxes from the perspective of diagnosticians who perform the final diagnoses. These drawbacks degrade the potential usefulness of classifiers in diagnosis support. A rule-based reasoning may overcome these mentioned limitations. We introduce both a rule selection and a diagnosis support method based on the Dempster–Shafer and fuzzy set theories. The theories can manage an interpretation of incomplete and imbalanced data, imprecision of medical information and knowledge uncertainty. The usefulness of the method will be proven on a test case of liver fibrosis diagnosis. The liver fibrosis stage is difficult to recognize even for experienced physicians. The diagnosis of the liver state by an invasive biopsy is ambiguous and dependent on its finite precision. Therefore, knowledge-based methods are being sought to reduce the need of invasive testing. We use a real medical database related to patients affected by hepatitis C virus to extract knowledge. The database has missing and outlying values and patients’ diagnoses are uncertain. The proposed methods provide simple diagnostic rules that are helpful in this study of liver fibrosis and in processing deficient data. The greatest benefit and novelty of the approach is the ability to assess three stages of fibrosis in a non-invasive way, whereas other medical tests allow to detect only the last stage, i.e. the cirrhosis.
机译:分类器用于多种应用中,其中包括医学数据的分类。它们的效率取决于训练数据的质量,这在通常不完善的医学数据(例如不完整,不平衡,不确定)的情况下是不利的。此外,从执行最终诊断的诊断师的角度来看,许多分类器都是黑匣子。这些缺点降低了分类器在诊断支持中的潜在用途。基于规则的推理可以克服这些限制。我们介绍了基于Dempster-Shafer和模糊集理论的规则选择和诊断支持方法。这些理论可以管理不完整和不平衡数据的解释,医学信息的不精确性和知识的不确定性。该方法的有效性将在诊断肝纤维化的测试案例中得到证明。即使对于有经验的医生来说,肝纤维化阶段也难以识别。通过侵入性活检对肝状态的诊断是模棱两可的,并取决于其有限的精度。因此,正在寻求基于知识的方法以减少侵入性测试的需求。我们使用与丙型肝炎病毒感染患者相关的真实医学数据库来提取知识。该数据库缺少值和异常值,患者的诊断不确定。所提出的方法提供了简单的诊断规则,有助于研究肝纤维化和处理缺乏的数据。该方法的最大好处和新颖之处在于能够以非侵入性方式评估纤维化的三个阶段,而其他医学测试仅能检测到最后一个阶段,即肝硬化。

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