利用深度学习优化核磁共振成像上的急性中风分割:自配置神经网络仅使用 DWI 序列就能提供高性能

Peter Kamel, Adway Kanhere, Pranav Kulkarni, Mazhar Khalid, Rachel Steger, Uttam Bodanapally, Dheeraj Gandhi, Vishwa Parekh, Paul H Yi
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摘要

在缺血性中风的治疗和预后判断中,梗死区的分割具有重要的临床意义。目前还不清楚 DWI、ADC 和 FLAIR MRI 序列的组合在梗塞分割的深度学习中能发挥什么作用。最近的模型自配置技术有望通过自动优化提高性能和通用性。我们评估了 DWI、ADC 和 FLAIR 序列对缺血性中风分割的实用性,比较了自配置 nnU-Net 模型和未经人工优化的传统 U-Net 模型,并在外部临床数据集上评估了结果的通用性。使用 DWI、ADC 和 FLAIR 序列分别和以所有组合对 200 例梗死进行了三维自配置 nnU-Net 模型和带有 MONAI 的标准三维 U-Net 模型的训练。在 50 个病例的保留测试集上,使用配对 t 检验比较不同模型的分割结果。nnU-Net 使用 DWI 序列的 Dice 得分为 0.810 ± 0.155。当 DWI 序列辅以 ADC 和 FLAIR 图像时,在统计学上没有明显差异(Dice 得分为 0.813 ± 0.150;p = 0.15)。
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Optimizing Acute Stroke Segmentation on MRI Using Deep Learning: Self-Configuring Neural Networks Provide High Performance Using Only DWI Sequences.

Segmentation of infarcts is clinically important in ischemic stroke management and prognostication. It is unclear what role the combination of DWI, ADC, and FLAIR MRI sequences provide for deep learning in infarct segmentation. Recent technologies in model self-configuration have promised greater performance and generalizability through automated optimization. We assessed the utility of DWI, ADC, and FLAIR sequences on ischemic stroke segmentation, compared self-configuring nnU-Net models to conventional U-Net models without manual optimization, and evaluated the generalizability of results on an external clinical dataset. 3D self-configuring nnU-Net models and standard 3D U-Net models with MONAI were trained on 200 infarcts using DWI, ADC, and FLAIR sequences separately and in all combinations. Segmentation results were compared between models using paired t-test comparison on a hold-out test set of 50 cases. The highest performing model was externally validated on a clinical dataset of 50 MRIs. nnU-Net with DWI sequences attained a Dice score of 0.810 ± 0.155. There was no statistically significant difference when DWI sequences were supplemented with ADC and FLAIR images (Dice score of 0.813 ± 0.150; p = 0.15). nnU-Net models significantly outperformed standard U-Net models for all sequence combinations (p < 0.001). On the external dataset, Dice scores measured 0.704 ± 0.199 for positive cases with false positives with intracranial hemorrhage. Highly optimized neural networks such as nnU-Net provide excellent stroke segmentation even when only provided DWI images, without significant improvement from other sequences. This differs from-and significantly outperforms-standard U-Net architectures. Results translated well to the external clinical environment and provide the groundwork for optimized acute stroke segmentation on MRI.

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