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基于血管内超声的深度学习预测冠状动脉支架扩张不足。

Prediction of Coronary Stent Underexpansion by Pre-Procedural Intravascular Ultrasound-Based Deep Learning.

机构信息

Department of Cardiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Korea.

Department of Cardiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Korea.

出版信息

JACC Cardiovasc Interv. 2021 May 10;14(9):1021-1029. doi: 10.1016/j.jcin.2021.01.033. Epub 2021 Apr 14.

Abstract

OBJECTIVES

The aim of this study was to develop pre-procedural intravascular ultrasound (IVUS)-based models for predicting the occurrence of stent underexpansion.

BACKGROUND

Although post-stenting IVUS has been used to optimize percutaneous coronary intervention, there are no pre-procedural guidelines to estimate the degree of stent expansion and provide preemptive management before stent deployment.

METHODS

A total of 618 coronary lesions in 618 patients undergoing percutaneous coronary intervention were randomized into training and test sets in a 5:1 ratio. Following the coregistration of pre- and post-stenting IVUS images, the pre-procedural images and clinical information (stent diameter, length, and inflation pressure; balloon diameter; and maximal balloon pressure) were used to develop a regression model using a convolutional neural network to predict post-stenting stent area. To separate the frames with from those without the occurrence of underexpansion (stent area <5.5 mm), binary classification models (XGBoost) were developed.

RESULTS

Overall, the frequency of stent underexpansion was 15% (5,209 of 34,736 frames). At the frame level, stent areas predicted by the pre-procedural IVUS-based regression model significantly correlated with those measured on post-stenting IVUS (r = 0.802). To predict stent underexpansion, maximal accuracy of 94% (area under the curve = 0.94) was achieved when the convolutional neural network- and mask image-derived features were used for the classification model. At the lesion level, there were significant correlations between predicted and measured minimal stent area (r = 0.832) and between predicted and measured total stent volume (r = 0.958).

CONCLUSIONS

Deep-learning algorithms accurately predicted incomplete stent expansion. A data-driven approach may assist clinicians in making treatment decisions to avoid stent underexpansion as a preventable cause of stent failure.

摘要

目的

本研究旨在建立血管内超声(IVUS)术前模型,以预测支架扩张不足的发生。

背景

虽然支架置入后 IVUS 已用于优化经皮冠状动脉介入治疗,但目前尚无术前指南来估计支架扩张程度,并在支架置入前提供预防性治疗。

方法

将 618 例接受经皮冠状动脉介入治疗的患者的 618 个冠状动脉病变随机分为训练集和测试集,比例为 5:1。在支架置入前后 IVUS 图像配准后,使用卷积神经网络建立回归模型,利用术前图像和临床信息(支架直径、长度和膨胀压;球囊直径;最大球囊压)预测支架置入后的支架面积。为了区分发生和未发生支架扩张不足(支架面积<5.5mm)的节段,建立了二分类模型(XGBoost)。

结果

总体而言,支架扩张不足的发生率为 15%(34736 个节段中有 5209 个)。在节段水平上,基于术前 IVUS 的回归模型预测的支架面积与支架置入后 IVUS 测量的支架面积显著相关(r=0.802)。在分类模型中,使用卷积神经网络和掩模图像衍生特征预测支架扩张不足的最大准确度为 94%(曲线下面积=0.94)。在病变水平上,预测的最小支架面积与测量的最小支架面积(r=0.832)和预测的总支架体积与测量的总支架体积(r=0.958)之间存在显著相关性。

结论

深度学习算法准确预测了支架扩张不完全。数据驱动方法可能有助于临床医生做出治疗决策,以避免支架扩张不足,因为这是支架失败的一个可预防原因。

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