Reifs David, Reig-Bolaño Ramon, Casals Marta, Grau-Carrion Sergi
Digital Care Research Group, Centre for Health and Social Care, Universitat of Vic-Central University of Catalonia, Vic, Spain.
Hospital Santa Creu de Vic, Vic, Spain.
JMIR Med Inform. 2022 Aug 22;10(8):e37284. doi: 10.2196/37284.
Skin ulcers are an important cause of morbidity and mortality everywhere in the world and occur due to several causes, including diabetes mellitus, peripheral neuropathy, immobility, pressure, arteriosclerosis, infections, and venous insufficiency. Ulcers are lesions that fail to undergo an orderly healing process and produce functional and anatomical integrity in the expected time. In most cases, the methods of analysis used nowadays are rudimentary, which leads to errors and the use of invasive and uncomfortable techniques on patients. There are many studies that use a convolutional neural network to classify the different tissues in a wound. To obtain good results, the network must be trained with a correctly labeled data set by an expert in wound assessment. Typically, it is difficult to label pixel by pixel using a professional photo editor software, as this requires extensive time and effort from a health professional.
The aim of this paper is to implement a new, fast, and accurate method of labeling wound samples for training a neural network to classify different tissues.
We developed a support tool and evaluated its accuracy and reliability. We also compared the support tool classification with a digital gold standard (labeling the data with an image editing software).
The obtained comparison between the gold standard and the proposed method was 0.9789 for background, 0.9842 for intact skin, 0.8426 for granulation tissue, 0.9309 for slough, and 0.9871 for necrotic. The obtained speed on average was 2.6, compared to that of an advanced image editing user.
This method increases tagging speed on average compared to an advanced image editing user. This increase is greater with untrained users. The samples obtained with the new system are indistinguishable from the samples made with the gold standard.
皮肤溃疡是全球发病和死亡的重要原因,由多种因素引起,包括糖尿病、周围神经病变、活动不便、压力、动脉硬化、感染和静脉功能不全。溃疡是未能经历有序愈合过程且未在预期时间内实现功能和解剖完整性的病变。在大多数情况下,目前使用的分析方法较为初级,这会导致错误,并对患者使用侵入性和令人不适的技术。有许多研究使用卷积神经网络对伤口中的不同组织进行分类。为了获得良好的结果,该网络必须使用由伤口评估专家正确标注的数据集进行训练。通常,使用专业的照片编辑软件逐像素标注很困难,因为这需要健康专业人员投入大量时间和精力。
本文的目的是实现一种新的、快速且准确的方法来标注伤口样本,以便训练神经网络对不同组织进行分类。
我们开发了一种支持工具,并评估了其准确性和可靠性。我们还将该支持工具的分类与数字金标准(使用图像编辑软件标注数据)进行了比较。
金标准与所提出方法之间的比较结果为,背景的准确率为0.9789,完整皮肤的准确率为0.9842,肉芽组织的准确率为0.8426,腐肉的准确率为0.9309,坏死组织的准确率为0.9871。与高级图像编辑用户相比,平均获得的速度为2.6。
与高级图像编辑用户相比,该方法平均提高了标注速度。对于未经训练的用户,这种提高更为显著。新系统获得的样本与金标准制作的样本难以区分。