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arxiv:2404.18731

Real Time Multi Organ Classification on Computed Tomography Images

Published on Apr 29, 2024
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Abstract

A real-time organ classification method using large context size and sparse sampling achieves faster performance than traditional segmentation algorithms while enabling full segmentation generation.

AI-generated summary

Organ segmentation is a fundamental task in medical imaging since it is useful for many clinical automation pipelines. However, some tasks do not require full segmentation. Instead, a classifier can identify the selected organ without segmenting the entire volume. In this study, we demonstrate a classifier based method to obtain organ labels in real time by using a large context size with a sparse data sampling strategy. Although our method operates as an independent classifier at query locations, it can generate full segmentations by querying grid locations at any resolution, offering faster performance than segmentation algorithms. We compared our method with existing segmentation techniques, demonstrating its superior runtime potential for practical applications in medical imaging.

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