人造眼泪
人工智能
医学
数字图像分析
RGB颜色模型
数字图像
皮肤病科
模式识别(心理学)
计算机科学
计算机视觉
眼科
图像(数学)
图像处理
作者
Tatsuo Nagata,Shuhei Noyori,Hiroshi Noguchi,Gojiro Nakagami,Aya Kitamura,Hiromi Sanada
标识
DOI:10.1016/j.jtv.2021.01.004
摘要
Skin tears are traumatic wounds characterised by separation of the skin layers. Severity evaluation is important in the management of skin tears. To support the assessment and management of skin tears, this study aimed to develop an algorithm to estimate a category of the Skin Tear Audit Research classification system (STAR classification) using digital images via machine learning. This was achieved by introducing shape features representing complicated shape of the skin tears. A skin tear image was separated into small segments, and features of each segment were estimated. The segments were then classified into different classes by machine learning algorithms, namely support vector machine and random forest. Their performance in classifying wound segments and STAR categories was evaluated with 31 images using the leave-one-out cross validation. Support vector machine showed an accuracy of 74% and 69% in classifying wound segments and STAR categories, respectively. The corresponding accuracy using random forest were 71% and 63%. Machine learning algorithms revealed capable of classifying categories of skin tears. This could offer the potential to aid nurses in their management of skin tears, even if they are not specialised in wound care.
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