Cassidy Bill, Reeves Neil D, Pappachan Joseph M, Gillespie David, O'Shea Claire, Rajbhandari Satyan, Maiya Arun G, Frank Eibe, Boulton Andrew Jm, Armstrong David G, Najafi Bijan, Wu Justina, Kochhar Rupinder Singh, Yap Moi Hoon
Centre for Applied Computational Science, Faculty of Science and Engineering, Manchester Metropolitan University, Manchester, UK.
Research Centre for Musculoskeletal Science & Sports Medicine, Faculty of Science and Engineering, Manchester Metropolitan University, Manchester, UK.
touchREV Endocrinol. 2021 Apr;17(1):5-11. doi: 10.17925/EE.2021.17.1.5. Epub 2021 Apr 28.
Every 20 seconds a limb is amputated somewhere in the world due to diabetes. This is a global health problem that requires a global solution. The International Conference on Medical Image Computing and Computer Assisted Intervention challenge, which concerns the automated detection of diabetic foot ulcers (DFUs) using machine learning techniques, will accelerate the development of innovative healthcare technology to address this unmet medical need. In an effort to improve patient care and reduce the strain on healthcare systems, recent research has focused on the creation of cloud-based detection algorithms. These can be consumed as a service by a mobile app that patients (or a carer, partner or family member) could use themselves at home to monitor their condition and to detect the appearance of a DFU. Collaborative work between Manchester Metropolitan University, Lancashire Teaching Hospitals and the Manchester University NHS Foundation Trust has created a repository of 4,000 DFU images for the purpose of supporting research toward more advanced methods of DFU detection. This paper presents a dataset description and analysis, assessment methods, benchmark algorithms and initial evaluation results. It facilitates the challenge by providing useful insights into state-of-the-art and ongoing research.
世界上每20秒就有一条肢体因糖尿病而被截肢。这是一个全球性的健康问题,需要全球共同解决。医学图像计算与计算机辅助干预国际会议的挑战,即使用机器学习技术自动检测糖尿病足溃疡(DFU),将加速创新医疗技术的发展,以满足这一未被满足的医疗需求。为了改善患者护理并减轻医疗系统的负担,最近的研究集中在创建基于云的检测算法上。这些算法可以作为一种服务被移动应用程序使用,患者(或护理人员、伴侣或家庭成员)可以在家中自行使用该应用程序来监测自己的病情并检测DFU的出现。曼彻斯特城市大学、兰开夏郡教学医院和曼彻斯特大学国民保健服务基金会信托基金之间的合作创建了一个包含4000张DFU图像的存储库,以支持对更先进的DFU检测方法的研究。本文介绍了一个数据集的描述与分析、评估方法、基准算法和初步评估结果。它通过提供对当前先进水平和正在进行的研究的有用见解,推动了这一挑战。