Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks

08/14/2023
by   Lukas Fisch, et al.
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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 enabling high precision segmentation with minimal compute. Consequently, traditional brain extraction methods are now being replaced by deep learning-based methods. Here, we used a unique dataset comprising 568 T1-weighted (T1w) MR images from 191 different studies in combination with cutting edge deep learning methods to build a fast, high-precision brain extraction tool called deepbet. deepbet uses LinkNet, a modern UNet architecture, in a two stage prediction process. This increases its segmentation performance, setting a novel state-of-the-art performance during cross-validation with a median Dice score (DSC) of 99.0 outperforming current state of the art models (DSC = 97.8 While current methods are more sensitive to outliers, resulting in Dice scores as low as 76.5 samples. Finally, our model accelerates brain extraction by a factor of  10 compared to current methods, enabling the processing of one image in  2 seconds on low level hardware.

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