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Discovery of Diagnosis Pattern of Coronary Heart Disease with Qi Deficiency Syndrome by the T-Test-Based Adaboost Algorithm

机译:基于T检验的Adaboost算法发现气虚证冠心病的诊断模式

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摘要

Coronary heart disease (CHD) is still the leading cause of death for adults worldwide. Traditional Chinese medicine (TCM) has a history of 1000 years fighting against the disease and provides a complementary and alternative treatment to it. Syndrome is the core of TCM diagnosis and it is traditionally diagnosed based on macroscopic symptoms as well as tongue and pulse recognitions of patients. Establishment of the diagnosis method in the microcosmic level is an urgent and major problem in TCM. The aim of this study was to establish characteristic diagnosis pattern for CHD with Qi deficiency syndrome (QDS). Thirty-four biological parameters were detected in 52 patients having unstable angina (UA) with or without QDS. Then, we presented a novel data mining method, t-test-based Adaboost algorithm, to establish highest prediction accuracy with the least number of biological parameters for UA with QDS. We gained a pattern composed of five biological parameters that distinguishes UA with QDS patients from non-QDS patients. The diagnosis accuracy of the patterns could reach 84.5% based on a 3-fold cross validation technique. Moreover, we included 85 UA cases collected from hospitals located in the north and south of China to further verify the association between the pattern and QDS. The classification accuracy is 83.5%, which keeps consistent with the accuracy obtained by the cross-validation technique. The association between a symptom and the five biological parameters was established by the data mining method and it reached an accuracy of ∼80%. These results showed that the t-test-based Adaboost algorithm might be a powerful technique for diagnosing syndrome in TCM in the context of CHD.
机译:冠心病(CHD)仍然是全球成人死亡的主要原因。中医(TCM)与这种疾病作斗争已有1000年的历史,并提供了补充和替代治疗。综合征是中医诊断的核心,传统上是根据宏观症状以及患者的舌头和脉搏识别来诊断。在微观层面建立诊断方法是中医迫切而重大的问题。这项研究的目的是建立气虚症(QDS)的冠心病特征诊断模式。在52名患有或不患有QDS的不稳定型心绞痛(UA)的患者中检测到34个生物学参数。然后,我们提出了一种新颖的数据挖掘方法,即基于t检验的Adaboost算法,以建立具有QDS的UA的生物参数最少的最高预测精度。我们获得了由五个生物学参数组成的模式,该模式将UA与QDS患者与非QDS患者区分开。基于三重交叉验证技术,模式的诊断准确性可以达到84.5%。此外,我们纳入了从中国北方和南方的医院收集的85例UA病例,以进一步验证模式与QDS之间的关联。分类精度为83.5%,与通过交叉验证技术获得的精度保持一致。症状与五个生物学参数之间的关联通过数据挖掘方法建立,并且达到了约80%的准确度。这些结果表明,基于t检验的Adaboost算法可能是在冠心病背景下诊断中医证候的强大技术。

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