Cross-Modal Interactive Perception Network with Mamba for Lung Tumor Segmentation in PET-CT Images
By: Jie Mei , Chenyu Lin , Yu Qiu and more
Potential Business Impact:
Finds lung tumors better in body scans.
Lung cancer is a leading cause of cancer-related deaths globally. PET-CT is crucial for imaging lung tumors, providing essential metabolic and anatomical information, while it faces challenges such as poor image quality, motion artifacts, and complex tumor morphology. Deep learning-based models are expected to address these problems, however, existing small-scale and private datasets limit significant performance improvements for these methods. Hence, we introduce a large-scale PET-CT lung tumor segmentation dataset, termed PCLT20K, which comprises 21,930 pairs of PET-CT images from 605 patients. Furthermore, we propose a cross-modal interactive perception network with Mamba (CIPA) for lung tumor segmentation in PET-CT images. Specifically, we design a channel-wise rectification module (CRM) that implements a channel state space block across multi-modal features to learn correlated representations and helps filter out modality-specific noise. A dynamic cross-modality interaction module (DCIM) is designed to effectively integrate position and context information, which employs PET images to learn regional position information and serves as a bridge to assist in modeling the relationships between local features of CT images. Extensive experiments on a comprehensive benchmark demonstrate the effectiveness of our CIPA compared to the current state-of-the-art segmentation methods. We hope our research can provide more exploration opportunities for medical image segmentation. The dataset and code are available at https://github.com/mj129/CIPA.
Similar Papers
Context-Gated Cross-Modal Perception with Visual Mamba for PET-CT Lung Tumor Segmentation
CV and Pattern Recognition
Finds lung tumors better using two types of scans.
Mamba Based Feature Extraction And Adaptive Multilevel Feature Fusion For 3D Tumor Segmentation From Multi-modal Medical Image
CV and Pattern Recognition
Finds tumors better in different body scans.
Prompt-Guided Dual-Path UNet with Mamba for Medical Image Segmentation
Image and Video Processing
Helps doctors see tiny details in medical pictures.