2024
DOI: 10.1186/s13244-024-01733-5
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A radiomics-boosted deep-learning for risk assessment of synchronous peritoneal metastasis in colorectal cancer

Ding Zhang,
BingShu Zheng,
LiuWei Xu
et al.

Abstract: Objectives Synchronous colorectal cancer peritoneal metastasis (CRPM) has a poor prognosis. This study aimed to create a radiomics-boosted deep learning model by PET/CT image for risk assessment of synchronous CRPM. Methods A total of 220 colorectal cancer (CRC) cases were enrolled in this study. We mapped the feature maps (Radiomic feature maps (RFMs)) of radiomic features across CT and PET image patches by a 2D sliding kernel. Based on ResNet50, … Show more

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