Xiao Duo, Zhu Fei, Jiang Jian, Niu Xiaoqiang
Ministry of Culture, Sports and Labor, Jiangxi Gannan Health Vocational College, Ganzhou, Jiangxi, China.
Gannan University of Science and Technology, Ganzhou, Jiangxi, China.
Front Neurosci. 2023 Sep 19;17:1273931. doi: 10.3389/fnins.2023.1273931. eCollection 2023.
In this study, we explore the potential benefits of integrating natural cognitive systems (medical professionals' expertise) and artificial cognitive systems (deep learning models) in the realms of medical image analysis and sports injury prediction. We focus on analyzing medical images of athletes to gain valuable insights into their health status.
To synergize the strengths of both natural and artificial cognitive systems, we employ the ResNet50-BiGRU model and introduce an attention mechanism. Our goal is to enhance the performance of medical image feature extraction and motion injury prediction. This integrated approach aims to achieve precise identification of anomalies in medical images, particularly related to muscle or bone damage.
We evaluate the effectiveness of our method on four medical image datasets, specifically pertaining to skeletal and muscle injuries. We use performance indicators such as Peak Signal-to-Noise Ratio and Structural Similarity Index, confirming the robustness of our approach in sports injury analysis.
Our research contributes significantly by providing an effective deep learning-driven method that harnesses both natural and artificial cognitive systems. By combining human expertise with advanced machine learning techniques, we offer a comprehensive understanding of athletes' health status. This approach holds potential implications for enhancing sports injury prevention, improving diagnostic accuracy, and tailoring personalized treatment plans for athletes, ultimately promoting better overall health and performance outcomes. Despite advancements in medical image analysis and sports injury prediction, existing systems often struggle to identify subtle anomalies and provide precise injury risk assessments, underscoring the necessity of a more integrated and comprehensive approach.
在本研究中,我们探讨了在医学图像分析和运动损伤预测领域整合自然认知系统(医学专业人员的专业知识)和人工认知系统(深度学习模型)的潜在益处。我们专注于分析运动员的医学图像,以深入了解他们的健康状况。
为了发挥自然和人工认知系统的优势,我们采用了ResNet50-BiGRU模型并引入了注意力机制。我们的目标是提高医学图像特征提取和运动损伤预测的性能。这种集成方法旨在精确识别医学图像中的异常情况,特别是与肌肉或骨骼损伤相关的异常。
我们在四个医学图像数据集上评估了我们方法的有效性,这些数据集专门涉及骨骼和肌肉损伤。我们使用诸如峰值信噪比和结构相似性指数等性能指标,证实了我们的方法在运动损伤分析中的稳健性。
我们的研究通过提供一种有效的深度学习驱动方法做出了重大贡献,该方法利用了自然和人工认知系统。通过将人类专业知识与先进的机器学习技术相结合,我们提供了对运动员健康状况的全面理解。这种方法对于加强运动损伤预防、提高诊断准确性以及为运动员量身定制个性化治疗方案具有潜在意义,最终促进更好的整体健康和表现结果。尽管医学图像分析和运动损伤预测取得了进展,但现有系统往往难以识别细微异常并提供精确的损伤风险评估,这凸显了采用更综合全面方法的必要性。