论文标题

使用深神经网络的伤口严重性分类

Wound Severity Classification using Deep Neural Network

论文作者

Anisuzzaman, D. M., Patel, Yash, Niezgoda, Jeffrey, Gopalakrishnan, Sandeep, Yu, Zeyun

论文摘要

伤口严重程度的分类是伤口诊断的关键步骤。有效的分类器可以帮助伤口专业人员更快,更负担得起伤口状况,从而可以选择最佳治疗选择。这项研究使用伤口照片来构建一个基于神经网络的伤口严重性分类器,将它们分为三类之一:绿色,黄色或红色。绿色类表示仍处于康复早期的伤口,最有可能通过足够的护理恢复。黄色类别的伤口比绿色类别的伤口需要更多的关注和治疗。最后,红色类表示需要迅速注意和治疗的最严重的伤口。包含不同类型的伤口图像的数据集是在伤口专家的帮助下设计的。九个深度学习模型用于应用转移学习的概念。还通过连接这些转移学习模型来开发几种堆叠模型。多级分类的最高准确度为68.49%。此外,我们达到了78.79%,81.40%和77.57%的绿色与黄色,绿色,红色和黄色与红色分类的精度。

The classification of wound severity is a critical step in wound diagnosis. An effective classifier can help wound professionals categorize wound conditions more quickly and affordably, allowing them to choose the best treatment option. This study used wound photos to construct a deep neural network-based wound severity classifier that classified them into one of three classes: green, yellow, or red. The green class denotes wounds still in the early stages of healing and are most likely to recover with adequate care. Wounds in the yellow category require more attention and treatment than those in the green category. Finally, the red class denotes the most severe wounds that require prompt attention and treatment. A dataset containing different types of wound images is designed with the help of wound specialists. Nine deep learning models are used with applying the concept of transfer learning. Several stacked models are also developed by concatenating these transfer learning models. The maximum accuracy achieved on multi-class classification is 68.49%. In addition, we achieved 78.79%, 81.40%, and 77.57% accuracies on green vs. yellow, green vs. red, and yellow vs. red classifications for binary classifications.

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