用于患者术后二尖瓣功能状态预测的计算管道。

IF 1.7 4区 医学 Q4 BIOPHYSICS Journal of Biomechanical Engineering-Transactions of the Asme Pub Date : 2023-11-01 DOI:10.1115/1.4062849
Hao Liu, Natalie T Simonian, Alison M Pouch, Paul A Iaizzo, Joseph H Gorman, Robert C Gorman, Michael S Sacks
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引用次数: 0

摘要

虽然二尖瓣(MV)修复仍然是二尖瓣反流(MR)治疗的首选临床选择,但长期结果仍然不理想,难以预测。此外,术前优化因MR表现的异质性和潜在修复配置的多样性而变得复杂。在目前的工作中,我们严格基于标准的护理术前成像数据建立了一个患者特异性MV计算管道,以定量预测修复后MV功能状态。首先,我们建立了人类二尖瓣腱索(MVCT)的几何特征,这些特征是从五个CT成像的切除的人类心脏中获得的。根据这些数据,我们开发了一个完整的患者特异性MV装置的有限元模型,该模型包括从体外研究和术前三维超声心动图图像中获得的MVCT乳头肌来源。为了在功能上调整患者特定的MV机械行为,我们模拟了术前MV闭合,并迭代更新了小叶和MVCT预训练,以最大限度地减少模拟和目标收缩末期几何形状之间的不匹配。使用由此产生的完全校准的MV模型,我们通过直接从环的几何形状定义环的几何形状来模拟小尺寸环瓣成形术(URA)。在三例人类病例中,术后几何形状预测为1 mm,MV瓣叶应变场显示与非侵入性应变估计技术目标非常一致。有趣的是,我们的模型预测了两名复发患者在URA后后后叶栓系增加,这可能是长期MV修复失败的原因。总之,目前的管道能够仅从术前临床数据预测术后结果。因此,这种方法可以为更持久的修复以及二尖瓣数字双胞胎的发展奠定最佳定制手术计划的基础。
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A Computational Pipeline for Patient-Specific Prediction of the Postoperative Mitral Valve Functional State.

While mitral valve (MV) repair remains the preferred clinical option for mitral regurgitation (MR) treatment, long-term outcomes remain suboptimal and difficult to predict. Furthermore, pre-operative optimization is complicated by the heterogeneity of MR presentations and the multiplicity of potential repair configurations. In the present work, we established a patient-specific MV computational pipeline based strictly on standard-of-care pre-operative imaging data to quantitatively predict the post-repair MV functional state. First, we established human mitral valve chordae tendinae (MVCT) geometric characteristics obtained from five CT-imaged excised human hearts. From these data, we developed a finite-element model of the full patient-specific MV apparatus that included MVCT papillary muscle origins obtained from both the in vitro study and the pre-operative three-dimensional echocardiography images. To functionally tune the patient-specific MV mechanical behavior, we simulated pre-operative MV closure and iteratively updated the leaflet and MVCT prestrains to minimize the mismatch between the simulated and target end-systolic geometries. Using the resultant fully calibrated MV model, we simulated undersized ring annuloplasty (URA) by defining the annular geometry directly from the ring geometry. In three human cases, the postoperative geometries were predicted to 1 mm of the target, and the MV leaflet strain fields demonstrated close agreement with noninvasive strain estimation technique targets. Interestingly, our model predicted increased posterior leaflet tethering after URA in two recurrent patients, which is the likely driver of long-term MV repair failure. In summary, the present pipeline was able to predict postoperative outcomes from pre-operative clinical data alone. This approach can thus lay the foundation for optimal tailored surgical planning for more durable repair, as well as development of mitral valve digital twins.

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来源期刊
CiteScore
3.40
自引率
5.90%
发文量
169
审稿时长
4-8 weeks
期刊介绍: Artificial Organs and Prostheses; Bioinstrumentation and Measurements; Bioheat Transfer; Biomaterials; Biomechanics; Bioprocess Engineering; Cellular Mechanics; Design and Control of Biological Systems; Physiological Systems.
期刊最新文献
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