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Fused Hierarchical Neural Networks for Cardiovascular Disease Diagnosis

机译:融合层次神经网络在心血管疾病诊断中的作用

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摘要

A fused hierarchical neural networks (FHNNs) is proposed for applications mainly related to diagnosis and fault detection. The benefit of such a model is well demonstrated by applying FHNNs for cardiovascular disease (CVD) diagnosis hierarchically using hemodynamic parameters (HDPs) derived from non-invasive sphygmogram (SPG). Patients' medical records with diagnostic results confirmed by doctors obtained from two hospitals in China are used to test and verify FHNNs. Variance analysis is used to categorize HDPs according to the importance/relevance based on their influence on discriminating diseases. Different neural networks structures are tested in diagnosing CVD so as to choose the optimal sub neural networks (sub-NNs) for the proposed FHNNs. Finally FHNNs with fused sub-NNs for CVD diagnosis is presented. The validity and effectiveness in the improvement of accuracy is witnessed clearly from the testing results.
机译:针对主要与诊断和故障检测相关的应用,提出了融合层次神经网络(FHNN)。通过将FHNN用于从非侵入式血压计(SPG)得出的血液动力学参数(HDP)分层地用于心血管疾病(CVD)诊断,已很好地证明了这种模型的优势。由中国两家医院的医生确认的具有诊断结果的患者病历用于测试和验证FHNN。方差分析用于根据HDP对区分疾病的影响的重要性/相关性对HDP进行分类。在诊断CVD时测试了不同的神经网络结构,以便为所提出的FHNN选择最佳的亚神经网络(sub-NNs)。最后,提出了具有融合亚神经网络的FHNN用于CVD诊断的方法。从测试结果可以清楚地看出提高准确性的有效性和有效性。

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