Department of Thoracic and Cardiovascular Surgery, Miller Family Heart and Vascular Institute, Cleveland, Ohio.
Department of Thoracic and Cardiovascular Surgery, Miller Family Heart and Vascular Institute, Cleveland, Ohio; Aortic Center, Miller Family Heart and Vascular Institute, Cleveland, Ohio.
J Thorac Cardiovasc Surg. 2018 Feb;155(2):461-469.e4. doi: 10.1016/j.jtcvs.2017.08.123. Epub 2017 Sep 14.
Bicuspid aortic valves (BAV) are associated with incompletely characterized aortopathy. Our objectives were to identify distinct patterns of aortopathy using machine-learning methods and characterize their association with valve morphology and patient characteristics.
We analyzed preoperative 3-dimensional computed tomography reconstructions for 656 patients with BAV undergoing ascending aorta surgery between January 2002 and January 2014. Unsupervised partitioning around medoids was used to cluster aortic dimensions. Group differences were identified using polytomous random forest analysis.
Three distinct aneurysm phenotypes were identified: root (n = 83; 13%), with predominant dilatation at sinuses of Valsalva; ascending (n = 364; 55%), with supracoronary enlargement rarely extending past the brachiocephalic artery; and arch (n = 209; 32%), with aortic arch dilatation. The arch phenotype had the greatest association with right-noncoronary cusp fusion: 29%, versus 13% for ascending and 15% for root phenotypes (P < .0001). Severe valve regurgitation was most prevalent in root phenotype (57%), followed by ascending (34%) and arch phenotypes (25%; P < .0001). Aortic stenosis was most prevalent in arch phenotype (62%), followed by ascending (50%) and root phenotypes (28%; P < .0001). Patient age increased as the extent of aneurysm became more distal (root, 49 years; ascending, 53 years; arch, 57 years; P < .0001), and root phenotype was associated with greater male predominance compared with ascending and arch phenotypes (94%, 76%, and 70%, respectively; P < .0001). Phenotypes were visually recognizable with 94% accuracy.
Three distinct phenotypes of bicuspid valve-associated aortopathy were identified using machine-learning methodology. Patient characteristics and valvular dysfunction vary by phenotype, suggesting that the location of aortic pathology may be related to the underlying pathophysiology of this disease.
二叶式主动脉瓣(BAV)与尚未完全明确的主动脉病变相关。我们的目标是使用机器学习方法确定不同的主动脉病变模式,并对其与瓣叶形态和患者特征的相关性进行分析。
我们分析了 2002 年 1 月至 2014 年 1 月期间接受升主动脉手术的 656 例 BAV 患者的术前三维计算机断层扫描重建图像。使用基于中位数的无监督分区方法对主动脉尺寸进行聚类。使用多分类随机森林分析识别组间差异。
我们识别出三种不同的动脉瘤表型:根部(n=83;13%),主要在主动脉窦扩张;升主动脉型(n=364;55%),升主动脉上段扩张,很少超过头臂干;以及主动脉弓型(n=209;32%),主要为主动脉弓扩张。主动脉弓型与右非冠状动脉瓣叶融合的相关性最强:29%,而升主动脉型为 13%,根部型为 15%(P<0.0001)。严重的瓣叶反流主要见于根部型(57%),其次是升主动脉型(34%)和主动脉弓型(25%;P<0.0001)。主动脉瓣狭窄主要见于主动脉弓型(62%),其次是升主动脉型(50%)和根部型(28%;P<0.0001)。随着动脉瘤范围向远端延伸,患者年龄逐渐增大(根部型 49 岁,升主动脉型 53 岁,主动脉弓型 57 岁;P<0.0001),与升主动脉型和主动脉弓型相比,根部型患者以男性为主(分别为 94%、76%和 70%;P<0.0001)。通过机器学习方法可以准确识别出 94%的表型。
我们使用机器学习方法确定了三种不同的二叶式主动脉瓣相关主动脉病变表型。患者特征和瓣叶功能障碍因表型而异,提示主动脉病变的位置可能与这种疾病的潜在病理生理学有关。