ISSN 1004-4140
    CN 11-3017/P

    基于冠状动脉CTA定量参数联合临床风险因素对经导管主动脉瓣置换术后全因死亡的预测价值

    Combining Coronary CTA Features with Clinical Risk Factors to Predict All-cause Mortality in Patients after Transcatheter Aortic Valve Replacement

    • 摘要: 目的:探讨冠状动脉CTA(CCTA)定量参数联合临床风险因素对经导管主动脉瓣置换术(TAVR)后全因死亡的预测价值。方法:本研究为回顾性多中心研究,纳入2017年9月至2023年9月期间接受术前CCTA检查的380例TAVR患者,终点为全因死亡。通过单因素、多因素Cox回归分析分别筛选预测TAVR术后全因死亡的独立临床因素及独立影像因素,构建临床模型、影像模型和综合模型。采用时间依赖性受试者工作特征曲线下面积(time-AUC)和Harrell一致性指数(C-index)评估模型预测性能,通过似然比\chi^2 检验比较综合模型与临床模型的性能差异。采用Shapley加法解释(SHAP)对模型决策过程进行可解释性分析。结果:中位随访时间为706天,全因死亡发生率为13%(48/380)。基于年龄、糖尿病构建的临床模型预测全因死亡的C-index为0.630(95%置信区间(CI):0.538~0.718)。基于节段狭窄评分(SSS)、前降支近端脂肪衰减指数(FAI)及冠状动脉病变报告和数据系统(CAD-RADS)构建的影像模型预测全因死亡的C-index为0.656(95% CI:0.567~0.748),联合临床模型、影像模型构建的综合模型预测全因死亡的C-index为0.690(95% CI:0.590~0.772)。与临床模型比较,综合模型获得了更高的C-index,似然比检验证实综合模型比临床模型性能更优。SHAP示LAD-FAI和年龄对模型贡献较大。结论:联合CCTA定量参数和临床风险因素建立的综合模型能有效预测TAVR术后全因死亡。

       

      Abstract:
      Objectives We explored the value of combining coronary computed tomography angiography (CCTA)-derived features with clinical factors to predict all-cause mortality after (transcatheter aortic valve replacement, TAVR).
      Methods A total of 380 candidates for CCTA examined between September 2017 and September 2023 were enrolled in this multicenter retrospective cohort study with clinical end point being all-cause mortality. Univariate and multivariate Cox regression analyses were performed to identify independent clinical and CCTA-derived predictors of post-TAVR mortality to construct clinical or imaging factor only models and a combined factor model. Model performance was evaluated using time-dependent area under the receiver operating characteristic curve (time-AUC) and Harrell’s concordance index (C-index). To compare nested models, \chi^2 likelihood ratio analyses were performed.
      Results Median follow-up duration was 706 days. All-cause mortality occurred in 13% (48/380) of the patients. The combined model (age + diabetes + coronary artery disease reporting and data system, (CAD-RADS) + (segment stenosis score, SSS) + (left anterior descending artery-fat attenuation index, LAD-FAI)) demonstrated superior predictive performance for all-cause mortality with higher C-index (0.690, 95% confidence interval CI: 0.590-0.772) compared with the clinical model (age + diabetes) (C-index, 0.630, 95% CI: 0.538-0.718). Likelihood ratio tests confirmed significantly better fit of the combined model than the clinical model. SHAP analysis indicated that LAD-FAI and age were the most influential factors contributing to model prediction accuracy.
      Conclusion A combined model incorporating CCTA features and clinical risk factors can improve all-cause mortality prediction efficacy in patients after TAVR.

       

    /

    返回文章
    返回