TL;DR
This paper introduces a supervised CNN that learns spatially varying fusion maps to effectively combine PET and CT images for lung cancer detection and segmentation, outperforming existing methods.
Contribution
A novel CNN approach that generates spatially adaptive fusion maps for multi-modality PET-CT image analysis, enhancing tumor detection and segmentation accuracy.
Findings
Higher foreground detection accuracy (99.29%)
Significantly improved Dice score (63.85%)
Outperforms baseline fusion and segmentation methods
Abstract
The analysis of multi-modality positron emission tomography and computed tomography (PET-CT) images for computer aided diagnosis applications requires combining the sensitivity of PET to detect abnormal regions with anatomical localization from CT. Current methods for PET-CT image analysis either process the modalities separately or fuse information from each modality based on knowledge about the image analysis task. These methods generally do not consider the spatially varying visual characteristics that encode different information across the different modalities, which have different priorities at different locations. For example, a high abnormal PET uptake in the lungs is more meaningful for tumor detection than physiological PET uptake in the heart. Our aim is to improve fusion of the complementary information in multi-modality PET-CT with a new supervised convolutional neural…
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