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首页> 外文期刊>Cardiovascular engineering and technology. >Towards Longitudinal Monitoring of Leaflet Mobility in Prosthetic Aortic Valves viaIn-Situ Pressure Sensors: In-Silico Modeling and Analysis
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Towards Longitudinal Monitoring of Leaflet Mobility in Prosthetic Aortic Valves viaIn-Situ Pressure Sensors: In-Silico Modeling and Analysis

机译:通过原位压力传感器对人工主动脉瓣中的瓣叶活动度进行纵向监测:计算机模拟和分析

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Background Transcatheter aortic valves (TAVs) are susceptible to leaflet thrombosis which may lead to thromboembolic events, and early detection and intervention are believed to be the key to avoiding such adverse outcomes. An embedded sensor system installed on the valve stent, coupled with an appropriate machine learning-based continuous monitoring algorithm can facilitate early detection to predict severity of reduced leaflet motion (RLM) and avoid adverse outcomes. Methods We present a data-driven, in silico, proof-of-concept analysis of a pressure microsensor based system for quantifying RLM in TAVs. We generate a dataset of 21 high-fidelity transvalvular flow simulations with healthy and mildly stenotic TAVs to train a logistic regression model to correlate individual leaflet mobility in each simulation with principal components of corresponding hemodynamic pressure recorded at strategic locations of the TAV stent. A separate test dataset of 7 simulations is also generated for prospective assessment of model performance. Results An array of 6 sensors embedded on the TAV stent, with two sensors tracking individual leaflet, successfully correlates leaflet mobility with recorded pressure. The sensors are placed along leaflet centerlines, one in the sinus, and the other at the sino-tubular junction. The regression model is tuned using cross-validation to achieve high accuracy on both training (R-2 = 0.93) and test (R-2 = 0.77) sets. Conclusion Discrete blood pressure recordings on TAV stents can be successfully correlated with individual leaflet mobility. Further development of this technology can enable longitudinal monitoring of TAVs and early detection of valve failure.
机译:背景 经导管主动脉瓣 (TAV) 易发生小叶血栓形成,可能导致血栓栓塞事件,早期发现和干预被认为是避免此类不良后果的关键。安装在瓣膜支架上的嵌入式传感器系统,加上适当的基于机器学习的连续监测算法,可以促进早期检测,以预测瓣叶运动减少 (RLM) 的严重程度并避免不良后果。方法 我们提出了一个基于压力微传感器的系统的数据驱动的计算机模拟概念验证分析,用于量化TAV中的RLM。我们生成了一个包含 21 个高保真跨瓣血流模拟的数据集,其中包含健康和轻度狭窄的 TAV,以训练逻辑回归模型,以将每个模拟中的个体瓣叶活动度与 TAV 支架战略位置记录的相应血流动力学压力的主成分相关联。此外,还生成了一个包含 7 个模拟的单独测试数据集,用于对模型性能进行前瞻性评估。结果 TAV 支架上嵌入了 6 个传感器阵列,其中 2 个传感器跟踪单个小叶,成功地将小叶活动度与记录的压力相关联。传感器沿小叶中心线放置,一个在鼻窦中,另一个在正弦-管状交界处。回归模型使用交叉验证进行调整,以在训练集 (R-2 = 0.93) 和测试集 (R-2 = 0.77) 上实现高精度。结论 TAV支架上的离散血压记录可以成功地与个体瓣叶活动度相关联。该技术的进一步发展可以实现TAV的纵向监测和阀门故障的早期检测。

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