论文标题
实时检测和分析Wagner溃疡分类系统的深度学习方法
Deep Learning Methods for Real-time Detection and Analysis of Wagner Ulcer Classification System
论文作者
论文摘要
目前,诊断糖尿病脚严重程度(DF)的无处不在方法取决于专业的足病医生。但是,在大多数情况下,专业的足病医生的工作量很大,尤其是在欠发达和发展中国家和地区,而且足病医生通常不足以满足DF患者快速增长的治疗需求。有必要开发一种有助于诊断DF的医疗系统,以减少足病医生的一部分工作量,并向DF患者提供及时的相关信息。在本文中,我们开发了一个可以实时对糖尿病脚的瓦格纳溃疡进行分类和定位的系统。首先,我们提出了一个带注释的2688糖尿病脚的数据集。然后,为了使系统能够实时和准确地检测糖尿病足溃疡,本文基于Yolov3算法以及图像融合,标签平滑和变异学习速率模式技术,以提高原始算法的鲁棒性和预测精度。最后,在本文中,将Yolov3上的改进用作最佳算法,以将其部署到Android智能手机中,以实时预测糖尿病脚的类和定位。实验结果验证了改进的Yolov3算法的地图达到91.95%,并满足了在移动设备(例如智能手机)上实时检测和分析糖尿病足瓦格纳溃疡的需求。这项工作有可能导致未来DF的临床治疗的范式转移,从而为DF组织分析和愈合状态提供有效的医疗解决方案。
At present, the ubiquity method to diagnose the severity of diabetic feet (DF) depends on professional podiatrists. However, in most cases, professional podiatrists have a heavy workload, especially in underdeveloped and developing countries and regions, and there are often insufficient podiatrists to meet the rapidly growing treatment needs of DF patients. It is necessary to develop a medical system that assists in diagnosing DF in order to reduce part of the workload for podiatrists and to provide timely relevant information to patients with DF. In this paper, we have developed a system that can classify and locate Wagner ulcers of diabetic foot in real-time. First, we proposed a dataset of 2688 diabetic feet with annotations. Then, in order to enable the system to detect diabetic foot ulcers in real time and accurately, this paper is based on the YOLOv3 algorithm coupled with image fusion, label smoothing, and variant learning rate mode technologies to improve the robustness and predictive accuracy of the original algorithm. Finally, the refinements on YOLOv3 was used as the optimal algorithm in this paper to deploy into Android smartphone to predict the classes and localization of the diabetic foot with real-time. The experimental results validate that the improved YOLOv3 algorithm achieves a mAP of 91.95%, and meets the needs of real-time detection and analysis of diabetic foot Wagner Ulcer on mobile devices, such as smart phones. This work has the potential to lead to a paradigm shift for clinical treatment of the DF in the future, to provide an effective healthcare solution for DF tissue analysis and healing status.