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基于CT的支架诱导血管损伤预测模型:在B型主动脉夹层中的应用

A CT-based predictive model for stent-induced vessel damage: application to type B aortic dissection.

作者信息

Zhang Xuehuan, Wang Dianpeng, Zhang Xuyang, Liang Shichao, Wu Ziheng, Wen Zipeng, Ventikos Yiannis, Xiong Jiang, Chen Duanduan

机构信息

School of Life Science, Beijing Institute of Technology, Beijing, China.

School of Mathematics, Beijing Institute of Technology, Beijing, China.

出版信息

Eur Radiol. 2023 Dec;33(12):8682-8692. doi: 10.1007/s00330-023-09773-z. Epub 2023 Jun 27.

Abstract

OBJECTIVES

The distal stent-induced new entry (distal SINE) is a life-threatening device-related complication after thoracic endovascular aortic repair (TEVAR). However, risk factors for distal SINE are not fully determined, and prediction models are lacking. This study aimed to establish a predictive model for distal SINE based on the preoperative dataset.

METHODS

Two hundred and six patients with Stanford type B aortic dissection (TBAD) that experienced TEVAR were involved in this study. Among them, thirty patients developed distal SINE. Pre-TEVAR morphological parameters were measured based on the CT-reconstructed configurations. Virtual post-TEVAR morphological and mechanical parameters were computed via the virtual stenting algorithm (VSA). Two predictive models (PM-1 and PM-2) were developed and presented as nomograms to help risk evaluation of distal SINE. The performance of the proposed predictive models was evaluated and internal validation was conducted.

RESULTS

Machine-selected variables for PM-1 included key pre-TEVAR parameters, and those for PM-2 included key virtual post-TEVAR parameters. Both models showed good calibration in both development and validation subsamples, while PM-2 outperformed PM-1. The discrimination of PM-2 was better than PM-1 in the development subsample, with an optimism-corrected area under the curve (AUC) of 0.95 and 0.77, respectively. Application of PM-2 in the validation subsample presented good discrimination with an AUC of 0.9727. The decision curve demonstrated that PM-2 was clinically useful.

CONCLUSION

This study proposed a predictive model for distal SINE incorporating the CT-based VSA. This predictive model could efficiently predict the risk of distal SINE and thus might contribute to personalized intervention planning.

CLINICAL RELEVANCE STATEMENT

This study established a predictive model to evaluate the risk of distal SINE based on the pre-stenting CT dataset and planned device information. With an accurate VSA tool, the predictive model could help to improve the safety of the endovascular repair procedure.

KEY POINTS

• Clinically useful prediction models for distal stent-induced new entry are still lacking, and the safety of the stent implantation is hard to guarantee. • Our proposed predictive tool based on a virtual stenting algorithm supports different stenting planning rehearsals and real-time risk evaluation, guiding clinicians to optimize the presurgical plan when necessary. • The established prediction model provides accurate risk evaluation for vessel damage, improving the safety of the intervention procedure.

摘要

目的

远端支架诱导的新破口(distal SINE)是胸主动脉腔内修复术(TEVAR)后一种危及生命的与器械相关的并发症。然而,远端SINE的危险因素尚未完全明确,且缺乏预测模型。本研究旨在基于术前数据集建立远端SINE的预测模型。

方法

本研究纳入了206例接受TEVAR治疗的B型主动脉夹层(TBAD)患者。其中,30例发生了远端SINE。基于CT重建图像测量TEVAR术前的形态学参数。通过虚拟支架置入算法(VSA)计算虚拟TEVAR术后的形态学和力学参数。开发了两个预测模型(PM-1和PM-2),并以列线图的形式呈现,以帮助评估远端SINE的风险。对所提出的预测模型的性能进行评估并进行内部验证。

结果

PM-1的机器选择变量包括TEVAR术前的关键参数,PM-2的机器选择变量包括虚拟TEVAR术后的关键参数。两个模型在开发和验证子样本中均显示出良好的校准,而PM-2的表现优于PM-1。在开发子样本中,PM-2的辨别能力优于PM-1,乐观校正曲线下面积(AUC)分别为0.95和0.77。PM-2在验证子样本中的应用显示出良好的辨别能力,AUC为0.9727。决策曲线表明PM-2具有临床实用性。

结论

本研究提出了一种结合基于CT的VSA的远端SINE预测模型。该预测模型可以有效地预测远端SINE的风险,从而可能有助于个性化干预方案的制定。

临床相关性声明

本研究基于支架置入术前的CT数据集和计划使用的器械信息建立了一个预测模型,以评估远端SINE的风险。借助精确的VSA工具,该预测模型有助于提高血管腔内修复手术的安全性。

关键点

• 目前仍缺乏对远端支架诱导新破口的临床实用预测模型,支架植入的安全性难以保证。• 我们基于虚拟支架置入算法提出的预测工具支持不同的支架置入计划预演和实时风险评估,指导临床医生在必要时优化术前计划。• 建立的预测模型为血管损伤提供了准确的风险评估,提高了干预手术的安全性。

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