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Deepbet: Fast Brain Extraction of T1-weighted MRI Using Convolutional Neural Networks

Computers in Biology and Medicine(2024)

University of Münster | Department of Mathematics and Computer Science

Cited 1|Views50
Abstract
BACKGROUND:Brain extraction in magnetic resonance imaging (MRI) data is an important segmentation step in many neuroimaging preprocessing pipelines. Image segmentation is one of the research fields in which deep learning had the biggest impact in recent years. Consequently, traditional brain extraction methods are now being replaced by deep learning-based methods. METHOD:Here, we used a unique dataset compilation comprising 7837 T1-weighted (T1w) MR images from 191 different OpenNeuro datasets in combination with advanced deep learning methods to build a fast, high-precision brain extraction tool called deepbet. RESULTS:deepbet sets a novel state-of-the-art performance during cross-dataset validation with a median Dice score (DSC) of 99.0 on unseen datasets, outperforming the current best performing deep learning (DSC=97.9) and classic (DSC=96.5) methods. While current methods are more sensitive to outliers, deepbet achieves a Dice score of >97.4 across all 7837 images from 191 different datasets. This robustness was additionally tested in 5 external datasets, which included challenging clinical MR images. During visual exploration of each method's output which resulted in the lowest Dice score, major errors could be found for all of the tested tools except deepbet. Finally, deepbet uses a compute efficient variant of the UNet architecture, which accelerates brain extraction by a factor of ≈10 compared to current methods, enabling the processing of one image in ≈2 s on low level hardware. CONCLUSIONS:In conclusion, deepbet demonstrates superior performance and reliability in brain extraction across a wide range of T1w MR images of adults, outperforming existing top tools. Its high minimal Dice score and minimal objective errors, even in challenging conditions, validate deepbet as a highly dependable tool for accurate brain extraction. deepbet can be conveniently installed via "pip install deepbet" and is publicly accessible at https://github.com/wwu-mmll/deepbet.
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Brain extraction,Skull stripping,Deep learning,Neural network
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要点】:本文介绍了利用卷积神经网络(CNN)构建的快速大脑提取工具deepbet,该工具在T1加权磁共振成像(MRI)数据中表现出优越的性能,并在多个数据集上显著超越了现有方法。

方法】:研究采用了包含来自191个不同OpenNeuro数据集的7837张T1加权MR图像的独特数据集,结合先进的深度学习方法来构建deepbet。

实验】:deepbet在交叉数据集验证中表现出色,其平均Dice得分(DSC)达到99.0,高于当前最佳深度学习方法的97.9和传统方法的96.5。它在所有7837张来自191个不同数据集的图像上取得了大于97.4的Dice得分,并在5个外部数据集上(包括具有挑战性的临床MR图像)也显示了鲁棒性。此外,deepbet采用了一种计算效率高的UNet架构变种,使得大脑提取过程比现有方法快约10倍,能够在低级别硬件上处理约2秒一张图像。