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Multi-modal Pipeline for Comprehensive Validation of Mitral Valve Geometry and Functional Computational Models

机译:二重模型管道,用于综合验证二尖瓣几何和功能计算模型

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Valvular heart disease affects a high number of patients, exhibiting significant mortality and morbidity rates. Mitral Valve (MV) Regurgitation, a disorder in which the MV does not close properly during systole, is among its most common forms. Traditionally, it has been treated with MV replacement. However, recently there is an increased interest in MV repair procedures, providing better long-term survival, better preservation of heart function, lower risk of complications, and usually eliminating the need for long-term use of blood thinners (anticoagulants). These procedures are complex and require an experienced surgeon and elaborate pre-operative planning. Hence, there is a need for efficient tools for training and planning of MV repair interventions. Computational models of valve function have been developed for these purposes. Nevertheless, state-of-the-art models remain approximations of real anatomy with considerable simplifications, since current modalities are limited by image quality. Hence, there is an important need to validate such low-fidelity models against comprehensive ex-vivo data to assess their clinical applicability. As a first step towards this aim, we propose an integrated pipeline for the validation of MV geometry and function models estimated in ex-vivo TEE data with respect to ex-vivo microCT data. We utilize a controlled experimental setup for ex-vivo imaging and employ robust machine learning and optimization techniques to extract reproducible geometrical models from both modalities. Using one exemplary case, we demonstrate the validity of our framework.
机译:瓣膜心脏病影响大量患者,表现出显着的死亡率和发病率。二尖瓣(MV)反流性,MV在收缩过程中没有正确靠近的疾病,是其最常见的形式。传统上,它已被MV更换替代治疗。然而,最近对MV修复程序的兴趣增加,提供了更好的长期存活,更好地保存心脏功能,降低并发症的风险,并且通常消除了对血液稀释剂长期使用的需要(抗凝血剂)。这些程序很复杂,需要经验丰富的外科医生并详细说明术前计划。因此,需要有效的工具用于培训和规划MV修复干预。已经为这些目的开发了阀门功能的计算模型。然而,最先进的模型以相当大的简化保持真实解剖学的近似,因为当前模式受图像质量的限制。因此,存在验证综合的前体内数据的这种低保真模型,以评估其临床适用性。作为朝向此目的的第一步,我们提出了一个集成的管道,用于验证MV几何和功能模型以及在Ex-Vivo TEE数据中估计的ex-Vivo MicroCT数据。我们利用了对ex-Vivo成像的受控实验设置,采用强大的机器学习和优化技术,以从两种方式中提取可重复的几何模型。使用一个示例性情况,我们展示了我们框架的有效性。

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