IVCVFeb 12, 2024

Minimally Interactive Segmentation of Soft-Tissue Tumors on CT and MRI using Deep Learning

arXiv:2402.07746v17 citationsh-index: 95Eur Radiol
Originality Incremental advance
AI Analysis

This addresses the need for efficient and accurate segmentation in clinical radiology workflows, offering a practical solution with incremental improvements over existing methods.

The researchers tackled the problem of segmenting soft-tissue tumors on CT and MRI by developing a minimally interactive deep learning method that requires six user clicks, achieving Dice Similarity Coefficients of 0.85±0.11 for CT and 0.84±0.12 for T1-weighted MRI in validation, and robust generalization to unseen phenotypes and modalities.

Segmentations are crucial in medical imaging to obtain morphological, volumetric, and radiomics biomarkers. Manual segmentation is accurate but not feasible in the radiologist's clinical workflow, while automatic segmentation generally obtains sub-par performance. We therefore developed a minimally interactive deep learning-based segmentation method for soft-tissue tumors (STTs) on CT and MRI. The method requires the user to click six points near the tumor's extreme boundaries. These six points are transformed into a distance map and serve, with the image, as input for a Convolutional Neural Network. For training and validation, a multicenter dataset containing 514 patients and nine STT types in seven anatomical locations was used, resulting in a Dice Similarity Coefficient (DSC) of 0.85$\pm$0.11 (mean $\pm$ standard deviation (SD)) for CT and 0.84$\pm$0.12 for T1-weighted MRI, when compared to manual segmentations made by expert radiologists. Next, the method was externally validated on a dataset including five unseen STT phenotypes in extremities, achieving 0.81$\pm$0.08 for CT, 0.84$\pm$0.09 for T1-weighted MRI, and 0.88\pm0.08 for previously unseen T2-weighted fat-saturated (FS) MRI. In conclusion, our minimally interactive segmentation method effectively segments different types of STTs on CT and MRI, with robust generalization to previously unseen phenotypes and imaging modalities.

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