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Artificial intelligence for segmentation and classification in lumbar spinal stenosis: an overview of current methods
4
Zitationen
7
Autoren
2025
Jahr
Abstract
DL models achieve excellent performance for segmentation and classification tasks for LSS, outperforming conventional ML algorithms. However, comparisons between studies are challenging due to the variety in outcome measures and test datasets. Future studies should focus on the segmentation task using DL models and utilize a standardized set of outcome measures and publicly available test dataset to express model performance. In addition, these models need to be externally validated to assess generalizability.
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