Asheghan Mohammad Mostafa, Javadikasgari Hoda, Attary Taraneh, Rouhollahi Amir, Straughan Ross, Willi James Noel, Awal Rabina, Sabe Ashraf, de la Cruz Kim I, Nezami Farhad R
Division of Thoracic and Cardiac Surgery, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, United States.
Bio-Intelligence Unit, Sharif Brain Center, Electrical Engineering Department, Sharif University of Technology, Tehran, Iran.
Front Cardiovasc Med. 2023 Apr 4;10:1130152. doi: 10.3389/fcvm.2023.1130152. eCollection 2023.
Aortic stenosis (AS) is the most common valvular heart disease in the western world, particularly worrisome with an ever-aging population wherein postoperative outcome for aortic valve replacement is strongly related to the timing of surgery in the natural course of disease. Yet, guidelines for therapy planning overlook insightful, quantified measures from medical imaging to educate clinical decisions. Herein, we leverage statistical shape analysis (SSA) techniques combined with customized machine learning methods to extract latent information from segmented left ventricle (LV) shapes. This enabled us to predict left ventricular mass index (LVMI) regression a year after transcatheter aortic valve replacement (TAVR). LVMI regression is an expected phenomena in patients undergone aortic valve replacement reported to be tightly correlated with survival one and five year after the intervention. In brief, LV geometries were extracted from medical images of a cohort of AS patients using deep learning tools, and then analyzed to create a set of statistical shape models (SSMs). Then, the supervised shape features were extracted to feed a support vector regression (SVR) model to predict the LVMI regression. The average accuracy of the predictions was validated against clinical measurements calculating root mean square error and score which yielded the satisfactory values of 0.28 and 0.67, respectively, on test data. Our work reveals the promising capability of advanced mathematical and bioinformatics approaches such as SSA and machine learning to improve medical output prediction and treatment planning.
主动脉瓣狭窄(AS)是西方世界最常见的心脏瓣膜疾病,随着人口老龄化,这一问题尤为令人担忧,因为在这种情况下,主动脉瓣置换术后的结果与疾病自然病程中的手术时机密切相关。然而,治疗计划指南忽略了医学影像中富有洞察力的量化指标,这些指标有助于指导临床决策。在此,我们利用统计形状分析(SSA)技术结合定制的机器学习方法,从分割后的左心室(LV)形状中提取潜在信息。这使我们能够预测经导管主动脉瓣置换术(TAVR)一年后左心室质量指数(LVMI)的变化。据报道,LVMI变化是接受主动脉瓣置换术患者的一种预期现象,与干预后1年和5年的生存率密切相关。简而言之,使用深度学习工具从一组AS患者的医学图像中提取LV几何形状,然后进行分析以创建一组统计形状模型(SSM)。接着,提取有监督的形状特征,输入支持向量回归(SVR)模型以预测LVMI变化。预测的平均准确率通过计算均方根误差和得分与临床测量值进行验证,在测试数据上分别得到了令人满意的0.28和0.67的值。我们的工作揭示了先进的数学和生物信息学方法,如SSA和机器学习,在改善医学输出预测和治疗计划方面的潜力。