Chung Shang-Lin, Cheng Chi-Tung, Liao Chien-Hung, Chung I-Fang
Institute of Biomedical Informatics, National Yang Ming Chiao Tung University, Taipei, Taiwan.
Department of Trauma and Emergency Surgery, Chang Gung Memorial Hospital, Linkou, Chang Gung University, Taoyuan, Taiwan.
Comput Biol Med. 2025 Mar;186:109627. doi: 10.1016/j.compbiomed.2024.109627. Epub 2025 Jan 10.
Hip fractures are a significant public health issue, particularly among the elderly population. Pelvic radiographs (PXRs) play a crucial role in diagnosing hip fractures and are commonly used for their evaluation. Previous research has demonstrated promising performance in classification models for hip fracture detection. However, these models sometimes focus on the images' non-fracture regions, reducing their explainability. This study applies weakly supervised learning techniques to address this issue and improve the model's focus on the fracture region. Additionally, we introduce a method to quantitatively evaluate the model's focus on the region of interest (ROI).
We propose a new auxiliary module called the patch-auxiliary generative adversarial network (PAGAN) for weakly supervised learning tasks. PAGAN can be integrated with any state-of-the-art (SOTA) classification model, such as EfficientNetB0, ResNet50, and DenseNet121, to enhance hip fracture detection. This training strategy incorporates global information (the entire PXR image) and local information (the hip region patch) for more effective learning. Furthermore, we employ GradCAM to generate attention heatmaps, highlighting the focus areas within the classification model. The intersection over union (IOU) and dice coefficient (Dise) are then computed between the attention heatmap and the fracture area, enabling a quantitative assessment of the model's explainability.
Incorporating PAGAN improved the performance of the classification models. The accuracy of EfficientNetB0 increased from 93.61 % to 95.97 %, ResNet50 improved from 90.66 % to 94.89 %, and DenseNet121 saw an increase from 93.51 % to 94.49 %. Regarding model explainability, the integration of PAGAN into classification models led to a more pronounced attention to ROI. The average IOU improved from 0.32 to 0.54 for EfficientNetB0, from 0.28 to 0.40 for ResNet50, and from 0.37 to 0.51 for DenseNet121. These results indicate that PAGAN improves hip fracture classification performance and substantially enhances the model's focus on the fracture region, thereby increasing its explainability.
髋部骨折是一个重大的公共卫生问题,在老年人群中尤为突出。骨盆X线片(PXR)在髋部骨折诊断中起着关键作用,常用于其评估。先前的研究在髋部骨折检测的分类模型中展现出了良好的性能。然而,这些模型有时会关注图像的非骨折区域,降低了其可解释性。本研究应用弱监督学习技术来解决这一问题,并提高模型对骨折区域的关注度。此外,我们引入了一种方法来定量评估模型对感兴趣区域(ROI)的关注度。
我们提出了一种名为补丁辅助生成对抗网络(PAGAN)的新辅助模块,用于弱监督学习任务。PAGAN可以与任何先进的(SOTA)分类模型集成,如EfficientNetB0、ResNet50和DenseNet121,以增强髋部骨折检测。这种训练策略结合了全局信息(整个PXR图像)和局部信息(髋部区域补丁),以实现更有效的学习。此外,我们使用GradCAM生成注意力热图,突出分类模型中的关注区域。然后计算注意力热图与骨折区域之间的交并比(IOU)和骰子系数(Dice),从而对模型的可解释性进行定量评估。
整合PAGAN提高了分类模型的性能。EfficientNetB0的准确率从93.61%提高到95.97%,ResNet50从90.66%提高到94.89%,DenseNet121从93.51%提高到94.49%。关于模型的可解释性,将PAGAN集成到分类模型中导致对ROI的关注度更高。EfficientNetB0的平均IOU从0.32提高到0.54,ResNet50从0.28提高到0.40,DenseNet121从0.37提高到0.51。这些结果表明,PAGAN提高了髋部骨折分类性能,并显著增强了模型对骨折区域的关注度,从而提高了其可解释性。