基于弥散加权核磁共振成像的缺血性卒中区域深度学习分类:利用图像变换增强输入的附加值。

Ilker Ozgur Koska, Alper Selver, Fazil Gelal, Muhsin Engin Uluc, Yusuf Kenan Çetinoğlu, Nursel Yurttutan, Mehmet Serindere, Oğuz Dicle
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引用次数: 0

摘要

我们这项研究的主要目的是利用人工智能在 DWI 中建立一个患者级别的卒中区域分类器,以便将卒中患者快速分流到专门的卒中中心。我们对来自两个中心的 271 名和 122 名连续急性缺血性脑卒中患者的 DWI 图像进行了回顾性收集。使用预训练的 MobileNetV2 和 EfficientNetB0 架构将区域亚型分为大脑中动脉、后循环或分水岭梗死以及正常切片。探索了使用边缘图、阈值和硬注意力版本的各种输入组合。分析了增强预训练模型的三通道输入对分类性能的影响。报告了模型的 ROC 分析和混淆矩阵得出的性能指标。本研究共纳入 271 名患者,其中 151 名(55.7%)为男性,120 名(44.3%)为女性。中心 1 的 129 名患者为 MCA 梗死(47.6%),65 名患者为后循环梗死(24%),77 名患者为分水岭梗死(28.0%)。在中心 2 的 122 名患者中,78 名(64%)为男性,44 名(34%)为女性。52名患者(43%)患有MCA,51名患者患有后循环(42%),19名患者(15%)患有分水岭梗死。Mobile-Crop 模型性能最佳,切片分类准确率为 0.95,平均 f1 得分为 0.91,外部测试集准确率为 0.88,平均 AUC 为 0.92。总之,经过修改的预训练模型可以通过图像转换来增强对 DWI 中卒中受影响区域的分类准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Classification of Ischemic Stroke Territory on Diffusion-Weighted MRI: Added Value of Augmenting the Input with Image Transformations.

Our primary aim with this study was to build a patient-level classifier for stroke territory in DWI using AI to facilitate fast triage of stroke to a dedicated stroke center. A retrospective collection of DWI images of 271 and 122 consecutive acute ischemic stroke patients from two centers was carried out. Pretrained MobileNetV2 and EfficientNetB0 architectures were used to classify territorial subtypes as middle cerebral artery, posterior circulation, or watershed infarcts along with normal slices. Various input combinations using edge maps, thresholding, and hard attention versions were explored. The effect of augmenting the three-channel inputs of pre-trained models on classification performance was analyzed. ROC analyses and confusion matrix-derived performance metrics of the models were reported. Of the 271 patients included in this study, 151 (55.7%) were male and 120 (44.3%) were female. One hundred twenty-nine patients had MCA (47.6%), 65 patients had posterior circulation (24%), and 77 patients had watershed (28.0%) infarcts for center 1. Of the 122 patients from center 2, 78 (64%) were male and 44 (34%) were female. Fifty-two patients (43%) had MCA, 51 patients had posterior circulation (42%), and 19 (15%) patients had watershed infarcts. The Mobile-Crop model had the best performance with 0.95 accuracy and a 0.91 mean f1 score for slice-wise classification and 0.88 accuracy on external test sets, along with a 0.92 mean AUC. In conclusion, modified pre-trained models may be augmented with the transformation of images to provide a more accurate classification of affected territory by stroke in DWI.

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