Lung tumor segmentation in MRI mice scans using 3D nnU-Net with minimum annotations
In drug discovery, accurate lung tumor segmentation is an important step for assessing tumor size and its progression using \textit{in-vivo} imaging such as MRI. While deep learning models have been developed to automate this process, the focus has predominantly been on human subjects, neglecting th...
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Zusammenfassung: | In drug discovery, accurate lung tumor segmentation is an important step for
assessing tumor size and its progression using \textit{in-vivo} imaging such as
MRI. While deep learning models have been developed to automate this process,
the focus has predominantly been on human subjects, neglecting the pivotal role
of animal models in pre-clinical drug development. In this work, we focus on
optimizing lung tumor segmentation in mice. First, we demonstrate that the
nnU-Net model outperforms the U-Net, U-Net3+, and DeepMeta models. Most
importantly, we achieve better results with nnU-Net 3D models than 2D models,
indicating the importance of spatial context for segmentation tasks in MRI mice
scans. This study demonstrates the importance of 3D input over 2D input images
for lung tumor segmentation in MRI scans. Finally, we outperform the prior
state-of-the-art approach that involves the combined segmentation of lungs and
tumors within the lungs. Our work achieves comparable results using only lung
tumor annotations requiring fewer annotations, saving time and annotation
efforts. This work
(https://anonymous.4open.science/r/lung-tumour-mice-mri-64BB) is an important
step in automating pre-clinical animal studies to quantify the efficacy of
experimental drugs, particularly in assessing tumor changes. |
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DOI: | 10.48550/arxiv.2411.00922 |