Inventec AI Center, Inventec Corporation, Taipei, Taiwan.
Division of Plastic and Reconstructive Surgery, Department of Surgery, Taipei Veterans General Hospital, Taipei, Taiwan.
J Plast Reconstr Aesthet Surg. 2023 Apr;79:89-97. doi: 10.1016/j.bjps.2023.01.030. Epub 2023 Feb 8.
This paper presents a deep learning-based wound classification tool that can assist medical personnel in non-wound care specialization to classify five key wound conditions, namely deep wound, infected wound, arterial wound, venous wound, and pressure wound, given color images captured using readily available cameras. The accuracy of the classification is vital for appropriate wound management. The proposed wound classification method adopts a multi-task deep learning framework that leverages the relationships among the five key wound conditions for a unified wound classification architecture. With differences in Cohen's kappa coefficients as the metrics to compare our proposed model with humans, the performance of our model was better or non-inferior to those of all human medical personnel. Our convolutional neural network-based model is the first to classify five tasks of deep, infected, arterial, venous, and pressure wounds simultaneously with good accuracy. The proposed model is compact and matches or exceeds the performance of human doctors and nurses. Medical personnel who do not specialize in wound care can potentially benefit from an app equipped with the proposed deep learning model.
本文提出了一种基于深度学习的伤口分类工具,可帮助非专业伤口护理的医疗人员对五种关键伤口状况进行分类,即深度伤口、感染伤口、动脉伤口、静脉伤口和压力伤口,这些伤口状况是使用现成的相机拍摄的彩色图像。分类的准确性对于适当的伤口管理至关重要。所提出的伤口分类方法采用了一种多任务深度学习框架,利用五种关键伤口状况之间的关系来构建统一的伤口分类架构。以 Cohen's kappa 系数的差异作为比较我们提出的模型与人类的指标,我们的模型的性能优于或不逊于所有人类医务人员。我们的基于卷积神经网络的模型是第一个能够同时对深度、感染、动脉、静脉和压力五种任务进行分类的模型,具有较好的准确性。所提出的模型紧凑,并且与人类医生和护士的表现相匹配或超过。不专门从事伤口护理的医务人员可能会受益于配备了我们提出的深度学习模型的应用程序。