Department of Surgery, Division of Vascular Surgery, University of Florida, Gainesville, FL.
Department of Medicine, University of Florida, Gainesville, FL.
J Vasc Surg. 2024 Oct;80(4):1025-1034.e4. doi: 10.1016/j.jvs.2024.06.001. Epub 2024 Jun 6.
Machine learning techniques have shown excellent performance in three-dimensional medical image analysis, but have not been applied to acute uncomplicated type B aortic dissection (auTBAD) using Society for Vascular Surgery (SVS) and Society of Thoracic Surgeons (STS)-defined aortic zones. The purpose of this study was to establish a trained, automatic machine learning aortic zone segmentation model to facilitate performance of an aortic zone volumetric comparison between patients with auTBAD based on the rate of aortic growth.
Patients with auTBAD and serial imaging were identified. For each patient, imaging characteristics from two computed tomography (CT) scans were analyzed: (1) the baseline CT angiography (CTA) at the index admission and (2) either the most recent surveillance CTA or the most recent CTA before an aortic intervention. Patients were stratified into two comparative groups based on aortic growth: rapid growth (diameter increase of ≥5 mm/year) and no or slow growth (diameter increase of <5 mm/year). Deidentified images were imported into an open source software package for medical image analysis and images were annotated based on SVS/STS criteria for aortic zones. Our model was trained using four-fold cross-validation. The segmentation output was used to calculate aortic zone volumes from each imaging study.
Of 59 patients identified for inclusion, rapid growth was observed in 33 patients (56%) and no or slow growth was observed in 26 patients (44%). There were no differences in baseline demographics, comorbidities, admission mean arterial pressure, number of discharge antihypertensives, or high-risk imaging characteristics between groups (P > .05 for all). Median duration between baseline and interval CT was 1.07 years (interquartile range [IQR], 0.38-2.57). Postdischarge aortic intervention was performed in 13 patients (22%) at a mean of 1.5 ± 1.2 years, with no difference between the groups (P > .05). Among all patients, the largest relative percent increases in zone volumes over time were found in zone 4 (13.9%; IQR, -6.82 to 35.1) and zone 5 (13.4%; IQR, -7.78 to 37.9). There were no differences in baseline zone volumes between groups (P > .05 for all). The average Dice coefficient, a performance measure of the model output, was 0.73. Performance was best in zone 5 (0.84) and zone 9 (0.91).
We describe an automatic deep learning segmentation model incorporating SVS-defined aortic zones. The open source, trained model demonstrates concordance to the manually segmented aortas with the strongest performance in zones 5 and 9, providing a framework for further clinical applications. In our limited sample, there were no differences in baseline aortic zone volumes between patients with rapid growth and patients with no or slow growth.
机器学习技术在三维医学图像分析中表现出了优异的性能,但尚未应用于基于血管外科学会(SVS)和胸外科学会(STS)定义的主动脉区的急性非复杂性 B 型主动脉夹层(auTBAD)。本研究的目的是建立一个经过训练的、自动的机器学习主动脉区分割模型,以便根据主动脉生长率对 auTBAD 患者进行主动脉区容积比较。
确定了 auTBAD 患者和连续影像学检查的患者。对于每个患者,分析两次 CT 扫描的影像学特征:(1)指数入院时的基线 CT 血管造影(CTA),以及(2)最近的监测 CTA 或最近的主动脉介入前 CTA。根据主动脉生长情况,将患者分为两组进行比较:快速生长(直径增加≥5mm/年)和无生长或缓慢生长(直径增加<5mm/年)。对无身份信息的图像进行导入开源医学图像分析软件包,并根据 SVS/STS 标准对主动脉区进行标注。我们的模型使用四折交叉验证进行训练。分割输出用于计算每个影像学研究的主动脉区容积。
共确定了 59 例符合纳入标准的患者,其中 33 例(56%)出现快速生长,26 例(44%)出现无生长或缓慢生长。两组间的基线人口统计学、合并症、入院平均动脉压、出院时使用的降压药数量或高危影像学特征均无差异(所有 P 值均>0.05)。基线和间隔 CTA 之间的中位时间为 1.07 年(四分位距[IQR]:0.38-2.57)。13 例患者(22%)在平均 1.5±1.2 年后进行了主动脉介入治疗,两组间无差异(所有 P 值均>0.05)。在所有患者中,随着时间的推移,区域 4(13.9%;IQR:-6.82 至 35.1)和区域 5(13.4%;IQR:-7.78 至 37.9)的区域体积的相对百分比增加最大。两组间基线区域体积无差异(所有 P 值均>0.05)。模型输出的性能衡量指标——Dice 系数的平均值为 0.73。性能最好的是区域 5(0.84)和区域 9(0.91)。
我们描述了一种自动深度学习分割模型,该模型纳入了 SVS 定义的主动脉区。开源的、经过训练的模型与手动分割的主动脉具有一致性,在区域 5 和区域 9 的性能最佳,为进一步的临床应用提供了框架。在我们的有限样本中,快速生长患者和无生长或缓慢生长患者的基线主动脉区体积无差异。