An accurate assessment of the cardiovascular system and prediction of cardiovascular diseases (CVDs) are crucial. Measured cardiac blood flow data provide insights about patient-specific hemodynamics, where many specialized techniques have been developed for the visual exploration of such data sets to better understand the influence of morphological and hemodynamic conditions on CVDs. However, there is a lack of machine learning approaches techniques that allow a feature-based classification of heart-healthy people and patients with CVDs.In this work, we investigate the potential of morphological and hemodynamic characteristics, extracted from measured blood flow data in the aorta, for the classification of heart-healthy volunteers and patients with bicuspid aortic valve (BAV). Furthermore, we research if there are characteristic features to classify male and female as well as younger and older heart-healthy volunteers. We propose a data analysis pipeline for the classification of the cardiac status, encompassing feature selection, model training and hyperparameter tuning. In our experiments, we use several feature selection methods and classification algorithms to train separate models for the healthy subgroups and BAV patients. We report on classification performance and investigate the predictive power of morphological and hemodynamic features with regard to the classification oft he defined groups. Finally, we identify the key features for the best models.
翻译:准确评估心血管系统和预测心血管疾病(CVDs)至关重要。测量心脏血液流动数据能提供对特定病人血液动力学的洞察力,在这类数据组的直观探索中,已经开发了许多专门技术,以更好地了解形态学和血动力学条件对心血管疾病的影响。然而,缺乏机械学习方法技术,无法对心脏健康的人和患有心血管疾病的人进行基于特征的分类。在这项工作中,我们调查从Aorta的测量血液流数据中提取的形态学和血液动力学特征的潜力,以便进行心脏健康志愿者和双振动阀(BAVAV)病人的分类。此外,我们研究是否有特征对男女以及年轻和年长的心脏健康志愿者进行分类。我们建议对心脏状况进行分类的数据分析管道,包括特征选择、模型培训和超度调控计。我们在实验中,使用几种特征选择方法和分类算法为健康分组和BAVAV病人分别培养模型模型的模型。我们报告最佳动力学特征,并预测他确定的主要动力分类特征。我们最后报告其分类和动力特征。