Deep learning-based identification of acute ischemic core and deficit from non-contrast CT and CTA.

Chengyan Wang, Zhang Shi, Ming Yang, Lixiang Huang, Wenxing Fang, Li Jiang, Jing Ding, He Wang
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引用次数: 9

Abstract

The accurate identification of irreversible infarction and salvageable tissue is important in planning the treatments for acute ischemic stroke (AIS) patients. Computed tomographic perfusion (CTP) can be used to evaluate the ischemic core and deficit, covering most of the territories of anterior circulation, but many community hospitals and primary stroke centers do not have the capability to perform CTP scan in emergency situation. This study aimed to identify AIS lesions from widely available non-contrast computed tomography (NCCT) and CT angiography (CTA) using deep learning. A total of 345AIS patients from our emergency department were included. A multi-scale 3D convolutional neural network (CNN) was used as the predictive model with inputs of NCCT, CTA, and CTA+ (8 s delay after CTA) images. An external cohort with 108 patients was included to further validate the generalization performance of the proposed model. Strong correlations with CTP-RAPID segmentations (r = 0.84 for core, r = 0.83 for deficit) were observed when NCCT, CTA, and CTA+ images were all used in the model. The diagnostic decisions according to DEFUSE3 showed high accuracy when using NCCT, CTA, and CTA+ (0.90±0.04), followed by the combination of NCCT and CTA (0.87±0.04), CTA-alone (0.76±0.06), and NCCT-alone (0.53±0.09).

Abstract Image

基于深度学习的非对比CT和CTA急性缺血性核心和缺陷识别。
准确识别不可逆性梗死和可修复组织对规划急性缺血性脑卒中(AIS)患者的治疗具有重要意义。计算机断层灌注(CTP)可用于评估缺血核心和缺损,覆盖大部分前循环区域,但许多社区医院和初级卒中中心没有能力在紧急情况下进行CTP扫描。本研究旨在利用深度学习从广泛使用的非对比计算机断层扫描(NCCT)和CT血管造影(CTA)中识别AIS病变。本研究共纳入我院急诊科345例ais患者。采用多尺度三维卷积神经网络(CNN)作为预测模型,输入NCCT、CTA和CTA+ (CTA后延迟8 s)图像。为了进一步验证所提出模型的泛化性能,纳入了108例患者的外部队列。当NCCT, CTA和CTA+图像都用于模型时,观察到与CTP-RAPID分割的强相关性(核心r = 0.84,赤字r = 0.83)。根据DEFUSE3, NCCT、CTA和CTA+的诊断准确率最高(0.90±0.04),其次是NCCT和CTA联合(0.87±0.04)、CTA单独(0.76±0.06)和NCCT单独(0.53±0.09)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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