Wang Dongfang, Guo Lirui, Zhong Juan, Yu Huodan, Tang Yadi, Peng Li, Cai Qiuni, Qi Yangzhi, Zhang Dong, Lin Puxuan
Department of Neurosurgery, Wuhan University Renmin Hospital, Wuhan, China.
School of Physics and Technology, Wuhan University, Wuhan, China.
Front Physiol. 2024 Feb 22;15:1304829. doi: 10.3389/fphys.2024.1304829. eCollection 2024.
Precise classification has an important role in treatment of pressure injury (PI), while current machine-learning or deeplearning based methods of PI classification remain low accuracy. In this study, we developed a deeplearning based weighted feature fusion architecture for fine-grained classification, which combines a top-down and bottom-up pathway to fuse high-level semantic information and low-level detail representation. We validated it in our established database that consist of 1,519 images from multi-center clinical cohorts. ResNeXt was set as the backbone network. We increased the accuracy of stage 3 PI from 60.3% to 76.2% by adding weighted feature pyramid network (wFPN). The accuracy for stage 1, 2, 4 PI were 0.870, 0.788, and 0.845 respectively. We found the overall accuracy, precision, recall, and F1-score of our network were 0.815, 0.808, 0.816, and 0.811 respectively. The area under the receiver operating characteristic curve was 0.940. Compared with current reported study, our network significantly increased the overall accuracy from 75% to 81.5% and showed great performance in predicting each stage. Upon further validation, our study will pave the path to the clinical application of our network in PI management.
精确分类在压疮(PI)治疗中具有重要作用,而目前基于机器学习或深度学习的PI分类方法准确率仍然较低。在本研究中,我们开发了一种基于深度学习的加权特征融合架构用于细粒度分类,该架构结合了自上而下和自下而上的路径来融合高级语义信息和低级细节表示。我们在自建的数据库中对其进行了验证,该数据库由来自多中心临床队列的1519张图像组成。将ResNeXt设置为主干网络。通过添加加权特征金字塔网络(wFPN),我们将3期PI的准确率从60.3%提高到了76.2%。1期、2期、4期PI的准确率分别为0.870、0.788和0.845。我们发现我们网络的总体准确率、精确率、召回率和F1分数分别为0.815、0.808、0.816和0.811。受试者工作特征曲线下面积为0.940。与目前报道的研究相比,我们的网络将总体准确率从75%显著提高到了81.5%,并在预测每个阶段方面表现出色。经过进一步验证,我们的研究将为我们的网络在PI管理中的临床应用铺平道路。