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Sine Wave Normalization for Deep Learning-Based Tumor Segmentation in CT/PET Imaging

20 September 2024
Jintao Ren
Muheng Li
Stine Korreman
    OODMedIm
ArXiv (abs)PDFHTMLGithub
Main:3 Pages
Bibliography:2 Pages
Abstract

This report presents a normalization block for automated tumor segmentation in CT/PET scans, developed for the autoPET III Challenge. The key innovation is the introduction of the SineNormal, which applies periodic sine transformations to PET data to enhance lesion detection. By highlighting intensity variations and producing concentric ring patterns in PET highlighted regions, the model aims to improve segmentation accuracy, particularly for challenging multitracer PET datasets. The code for this project is available on GitHub (https://github.com/BBQtime/Sine-Wave-Normalization-for-Deep-Learning-Based-Tumor-Segmentation-in-CT-PET).

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