IVCVJan 15, 2024

DeepThalamus: A novel deep learning method for automatic segmentation of brain thalamic nuclei from multimodal ultra-high resolution MRI

arXiv:2401.07751v23 citationsh-index: 41
AI Analysis

This work addresses the need for precise thalamic segmentation in neurological pathologies, offering a tool for volumetric analysis, though it is incremental as it builds on existing deep learning approaches.

The authors tackled the problem of automatic segmentation of thalamic nuclei from multimodal ultra-high resolution MRI, achieving competitive results in segmentation quality and efficiency compared to a state-of-the-art method.

The implication of the thalamus in multiple neurological pathologies makes it a structure of interest for volumetric analysis. In the present work, we have designed and implemented a multimodal volumetric deep neural network for the segmentation of thalamic nuclei at ultra-high resolution (0.125 mm3). Current tools either operate at standard resolution (1 mm3) or use monomodal data. To achieve the proposed objective, first, a database of semiautomatically segmented thalamic nuclei was created using ultra-high resolution T1, T2 and White Matter nulled (WMn) images. Then, a novel Deep learning based strategy was designed to obtain the automatic segmentations and trained to improve its robustness and accuaracy using a semisupervised approach. The proposed method was compared with a related state-of-the-art method showing competitive results both in terms of segmentation quality and efficiency. To make the proposed method fully available to the scientific community, a full pipeline able to work with monomodal standard resolution T1 images is also proposed.

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