FC-YOLO: a fast inference backbone and lightweight attention mechanism-enhanced YOLO for detecting gastric adenocarcinoma in pathological image
Hengtong Zhang, Jianxin Jia, Wenlian Zhang, Rigui Yi, Xusheng Yan, Wenyue Sun, Xinxin Wang, Yunfei Gao

TL;DR
FC-YOLO is a fast and efficient AI model designed to detect gastric adenocarcinoma in histopathological images, improving diagnostic accuracy and speed.
Contribution
FC-YOLO introduces a lightweight attention mechanism and efficient backbone for fast and accurate gastric adenocarcinoma detection.
Findings
FC-YOLO achieved 82.8% mAP on a public dataset, outperforming YOLOv11s by 2.6%.
The model reached 131.56 FPS inference speed while maintaining high accuracy.
FC-YOLO demonstrated strong generalization with 85.7% mAP on an independent clinical dataset.
Abstract
Gastric adenocarcinoma (GAC) is a leading cause of cancer-related mortality, but its histopathological diagnosis is challenged by image complexity and a shortage of pathologists. While deep learning models show promise, many are computationally demanding and lack the fine-grained feature extraction necessary for effective GAC detection. We propose FC-YOLO, an optimized object detection framework for GAC histopathological image analysis. Based on the YOLOv11s architecture, FC-YOLO incorporates a FasterNet backbone for efficient multi-scale feature extraction, a lightweight Mixed Local-Channel Attention (MLCA) mechanism for feature recalibration, and Content-Aware ReAssembly of FEatures (CARAFE) for enhanced upsampling. The model was evaluated on a public dataset comprising 1,855 images and on a separate, independent clinical dataset consisting of 2,500 pathological images of gastric…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
