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Generalized Bayesian Inference Nets Model and Diagnosis of Cardiovascular Diseases

机译:广义贝叶斯推理网络模型与心血管疾病的诊断

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摘要

A generalized Bayesian inference nets model (GBINM) is proposed to aid researchers to construct Bayesian inference nets for various applications. The benefit of such a model is well demonstrated by applying GBINM in constructing a hierarchical Bayesian fuzzy inference nets (HBFIN) to diagnose five important types of cardiovascular diseases (CVD). The patients' medical records with doctors' confirmed diagnostic results obtained from two hospitals in China are used to design and verify HBFIN. Bayesian theorem is used to calculate the propagation of probability and address the uncertainties involved in each sequential stage of inference nets to deduce the disease(s). The validity and effectiveness of proposed approach is witnessed clearly from testing results obtained.
机译:提出了一种通用的贝叶斯推理网络模型(GBINM),以帮助研究人员构建用于各种应用的贝叶斯推理网络。通过应用GBINM构建层次贝叶斯模糊推理网络(HBFIN)来诊断五种重要的心血管疾病(CVD),可以很好地证明这种模型的优势。从中国两家医院获得的患者病历和医生确认的诊断结果用于设计和验证HBFIN。贝叶斯定理用于计算概率的传播并解决推理网络每个顺序阶段所涉及的不确定性,以推断出疾病。从测试结果中可以清楚地看到所提出方法的有效性和有效性。

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