基于自适应权重多模态中西医数据融合方法的冠心病血管阻塞程度预测模型的构建与评价

Construction and evaluation of a predictive model for the degree of coronary artery occlusion based on adaptive weighted multi-modal fusion of traditional Chinese and western medicine data

  • 摘要:
    目的 基于中西医多模态数据的自适应融合,构建一种用于预测冠状动脉狭窄严重程度的无创模型。
    方法 收集2023年5月1日至2024年5月1日期间,在上海市第十人民医院心脏重症监护病房(CCU)接受冠状动脉计算机断层扫描血管造影(CTA)检查患者的临床指标、超声心动图数据、中医舌象特征及面部特征信息。基于深度学习构建了一个自适应加权多模态数据融合(AWMDF)模型,以预测冠状动脉狭窄的严重程度。采用准确率、精确率、召回率、F1值及受试者工作特征曲线下面积(AUC)等指标对模型进行评估。通过与六种集成机器学习方法的比较、数据消融实验、模型组件消融实验及多种决策层融合策略进一步评估模型性能。
    结果 研究共纳入158例患者。AWMDF模型具有优异的预测性能(AUC = 0.973,准确率 = 0.937,精确率 = 0.937,召回率 = 0.929,F1值 = 0.933)。与模型消融、数据消融实验及多种传统机器学习模型比较结果显示,AWMDF模型性能更出色。此外,自适应加权策略优于简单加权、平均法、投票法及固定权重等替代方案。
    结论 AWMDF模型对冠心病无创化预测有一定价值,可作为临床辅助诊断。

     

    Abstract:
    Objective To develop a non-invasive predictive model for coronary artery stenosis severity based on adaptive multi-modal integration of traditional Chinese and western medicine data.
    Methods Clinical indicators, echocardiographic data, traditional Chinese medicine (TCM) tongue manifestations, and facial features were collected from patients who underwent coronary computed tomography angiography (CTA) in the Cardiac Care Unit (CCU) of Shanghai Tenth People's Hospital between May 1, 2023 and May 1, 2024. An adaptive weighted multi-modal data fusion (AWMDF) model based on deep learning was constructed to predict the severity of coronary artery stenosis. The model was evaluated using metrics including accuracy, precision, recall, F1 score, and the area under the receiver operating characteristic (ROC) curve (AUC). Further performance assessment was conducted through comparisons with six ensemble machine learning methods, data ablation, model component ablation, and various decision-level fusion strategies.
    Results A total of 158 patients were included in the study. The AWMDF model achieved excellent predictive performance (AUC = 0.973, accuracy = 0.937, precision = 0.937, recall = 0.929, and F1 score = 0.933). Compared with model ablation, data ablation experiments, and various traditional machine learning models, the AWMDF model demonstrated superior performance. Moreover, the adaptive weighting strategy outperformed alternative approaches, including simple weighting, averaging, voting, and fixed-weight schemes.
    Conclusion The AWMDF model demonstrates potential clinical value in the non-invasive prediction of coronary artery disease and could serve as a tool for clinical decision support.

     

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