Li Yonghong, Qiu Haiyang, Xian Sidong, Li Laquan, Zhao Zhiqiang, Deng Yang, Tang Jingqing
School of Computer Science and Technology, Chongqing University of Posts and Telecommunications, Chongqing, 400065, P.R. China.
School of Science, Chongqing University of Posts and Telecommunications, Chongqing, 400065, P.R. China.
Med Biol Eng Comput. 2025 Jan;63(1):195-211. doi: 10.1007/s11517-024-03187-9. Epub 2024 Sep 12.
Deep learning is a transformative force in the medical field and it has made significant progress as a pivotal alternative to conventional manual testing methods. Detection of Tubercle Bacilli in sputum samples is faced with the problems of complex backgrounds, tiny and numerous objects, and human observation over a long time not only causes eye fatigue, but also greatly increases the error rate of subjective judgement. To solve these problems, we optimize YOLOv8s model and propose a new detection algorithm, Lite-YOLOv8. Firstly, the Lite-C2f module is used to ensure accuracy by significantly reducing the number of parameters. Secondly, a lightweight down-sampling module is introduced to reduce the common feature information loss. Finally, the NWD loss is utilized to mitigate the impact of small object positional bias on the IoU. On the public Tubercle Bacilli datasets, the mean average precision of 86.3% was achieved, with an improvement of 2.2%, 1.5%, and 2.8% over the baseline model (YOLOv8s) in terms of mAP0.5, precision, and recall, respectively. In addition, the parameters reduced from 11.2 to 5.1 M, and the number of GFLOPs from 28.8 to 13.8. Our model is not only more lightweight, but also more accurate, thus it can be easily deployed on computing-poor medical devices to provide greater convenience to doctors.
深度学习是医学领域的变革力量,作为传统手动检测方法的关键替代方案已取得重大进展。痰液样本中结核杆菌的检测面临背景复杂、目标微小且数量众多的问题,长时间人工观察不仅会导致眼睛疲劳,还会大幅提高主观判断的错误率。为解决这些问题,我们优化了YOLOv8s模型并提出了一种新的检测算法Lite-YOLOv8。首先,使用Lite-C2f模块通过大幅减少参数数量来确保准确性。其次,引入轻量级下采样模块以减少常见特征信息损失。最后,利用NWD损失来减轻小目标位置偏差对交并比(IoU)的影响。在公共结核杆菌数据集上,实现了86.3%的平均精度均值,在mAP0.5、精度和召回率方面分别比基线模型(YOLOv8s)提高了2.2%、1.5%和2.8%。此外,参数从11.2M减少到5.1M,千兆浮点运算次数从28.8减少到13.8。我们的模型不仅更轻量级,而且更准确,因此可以轻松部署在计算能力较差的医疗设备上,为医生提供更大便利。