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A Quantitative Diagnostic Method Based on Bayesian Networks in Traditional Chinese Medicine

机译:一种基于贝叶斯网络中的中医诊断方法

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Traditional Chinese Medicine (TCM) is one of the most important complementary and alternative medicines. Due to the subjectivity and fuzziness of diagnosis in TCM, quantitative model or methods are needed to facilitate the popularization of TCM. In this article, a novel quantitative method for syndrome differentiation based on BNs is proposed. First the symptoms are selected by a novel mutual information based symptom selection algorithm (MISS) and then the mapping relationships between the selected symptoms and key elements are constructed. Finally, the corresponding syndromes are output by combining the key elements. The results show that the diagnostic model obtains relative reliable predictions of syndrome, and its average predictive accuracy rate reach 91.68%, which testifies that the method we proposed is feasible and effective and can be expected to be useful in the modernization of TCM.
机译:中药(TCM)是最重要的互补和替代药物之一。由于TCM诊断的主观性和模糊性,需要定量模型或方法来促进中医的普及。在本文中,提出了一种基于BNS的综合分化的新量化方法。首先,症状由新的互信息的症状选择算法(未命中)选择,然后构建所选症状和关键元素之间的映射关系。最后,通过组合关键元件来输出相应的校正图。结果表明,诊断模型获得了综合征的相对可靠的预测,其平均预测精度率达到91.68%,证明了我们提出的方法是可行和有效的,可以预计在中医的现代化中有用。

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