1. Rib Fracture Detection Model Based on Faster-RCNN-SE-FA Algorithm.
- Author
-
He, Xiuchao, Qiu, Zhoujian, Zeng, Yingqing, Shen, Zhaoqiang, Pan, Yuning, and Zhou, Chunliang
- Subjects
- *
RIB fractures , *VERNACULAR architecture , *COMPUTED tomography , *DIAGNOSTIC errors , *DEEP learning - Abstract
To address the problem of missed diagnosis in rib fracture detection from CT scans, this study introduces an enhanced model, called Faster-RCNN-SE-FA, which is built upon the traditional Faster-RCNN architecture. The proposed model integrates a novel filter anchor method and thoroughly considers the specific imaging characteristics of ribs in CT images. The preprocessing of the image is followed by applying the Squeeze-and-Excitation (SE) module, which enhances the discrimination of features in the channel dimension while preserving the location Sensitivity (Sen) important for target detection tasks. Consequently, this modification leads to a significant improvement in model performance. Empirical experiments, conducted on CT sequences of 130 rib feature cases provided by the First Affiliated Hospital of Ningbo University, demonstrate that the Faster-RCNN-SE-FA model achieves better Sen and accuracy compared to traditional methods, including the baseline Faster-RCNN. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF