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深度学习预测 Stanford B 型主动脉夹层胸主动脉腔内修复术后远端主动脉重塑。

Deep Learning Prediction for Distal Aortic Remodeling After Thoracic Endovascular Aortic Repair in Stanford Type B Aortic Dissection.

机构信息

Department of Vascular Surgery, Zhongshan Hospital, Fudan University, Shanghai, China.

Institute of Vascular Surgery, Fudan University, Shanghai, China.

出版信息

J Endovasc Ther. 2024 Oct;31(5):910-918. doi: 10.1177/15266028231160101. Epub 2023 Mar 16.

Abstract

PURPOSE

This study aimed to develop a deep learning model for predicting distal aortic remodeling after proximal thoracic endovascular aortic repair (TEVAR) in patients with Stanford type B aortic dissection (TBAD) using computed tomography angiography (CTA).

METHODS

A total of 147 patients with acute or subacute TBAD who underwent proximal TEVAR at a single center were retrospectively reviewed. The boundary of aorta was manually segmented, and the point clouds of each aorta were obtained. Prediction of negative aortic remodeling or reintervention was accomplished by a convolutional neural network (CNN) and a point cloud neural network (PC-NN), respectively. The discriminatory value of the established models was mainly evaluated by the area under the receiver operating characteristic curve (AUC) in the test set.

RESULTS

The mean follow-up time was 34.0 months (range: 12-108 months). During follow-up, a total of 25 (17.0%) patients were identified as having negative aortic remodeling, and 16 (10.9%) patients received reintervention. The AUC (0.876) by PC-NN for predicting negative aortic remodeling was superior to that obtained by CNN (0.612, p=0.034) and similar to the AUC by PC-NN combined with clinical features (0.884, p=0.92). As to reintervention, the AUC by PC-NN was significantly higher than that by CNN (0.805 vs 0.579; p=0.042), and AUCs by PC-NN combined with clinical features and PC-NN alone were comparable (0.836 vs 0.805; p=0.81).

CONCLUSION

The CTA-based deep learning algorithms may assist clinicians in automated prediction of distal aortic remodeling after TEVAR for acute or subacute TBAD.

CLINICAL IMPACT

Negative aortic remodeling is the leading cause of late reintervention after proximal thoracic endovascular aortic repair (TEVAR) for Stanford type B aortic dissection (TBAD), and possesses great challenge to endovascular repair. Early recognizing high-risk patients is of supreme importance for optimizing the follow-up interval and therapy strategy. Currently, clinicians predict the prognosis of these patients based on several imaging signs, which is subjective. The computed tomography angiography-based deep learning algorithms may incorporate abundant morphological information of aorta, provide with a definite and objective output value, and finally assist clinicians in automated prediction of distal aortic remodeling after TEVAR for acute or subacute TBAD.

摘要

目的

本研究旨在使用计算机断层血管造影术(CTA)为急性或亚急性 Stanford B 型主动脉夹层(TBAD)患者开发一种深度学习模型,用于预测近端胸主动脉腔内修复术(TEVAR)后远端主动脉重塑。

方法

回顾性分析了在一家中心接受近端 TEVAR 的 147 例急性或亚急性 TBAD 患者。手动分割主动脉边界,并获取每个主动脉的点云。通过卷积神经网络(CNN)和点云神经网络(PC-NN)分别对阴性主动脉重塑或再干预进行预测。在测试集中,主要通过接受者操作特征曲线下面积(AUC)评估所建立模型的判别值。

结果

中位随访时间为 34.0 个月(范围:12-108 个月)。随访期间,共有 25 例(17.0%)患者被确定为存在阴性主动脉重塑,16 例(10.9%)患者接受了再干预。PC-NN 预测阴性主动脉重塑的 AUC(0.876)优于 CNN(0.612,p=0.034),与 PC-NN 结合临床特征的 AUC(0.884,p=0.92)相似。对于再干预,PC-NN 的 AUC 明显高于 CNN(0.805 比 0.579;p=0.042),而 PC-NN 结合临床特征和 PC-NN 单独的 AUC 相当(0.836 比 0.805;p=0.81)。

结论

CTA 基于的深度学习算法可协助临床医生自动预测急性或亚急性 TBAD 患者 TEVAR 后远端主动脉重塑。

临床意义

阴性主动脉重塑是近端胸主动脉腔内修复术(TEVAR)治疗 Stanford B 型主动脉夹层(TBAD)后晚期再干预的主要原因,对血管内修复具有巨大挑战。早期识别高危患者对于优化随访间隔和治疗策略至关重要。目前,临床医生基于几种影像学征象来预测这些患者的预后,这是主观的。CTA 基于的深度学习算法可以整合主动脉丰富的形态信息,提供明确和客观的输出值,最终协助临床医生自动预测急性或亚急性 TBAD 患者 TEVAR 后远端主动脉重塑。

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