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Automatic Wound Infection Interpretation for Postoperative Wound Image

机译:术后伤口图像的自动伤口感染解释

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With the growing demand for more efficient wound care after surgery, there is a necessity to develop a machine learning based image analysis approach to reduce the burden for health care professionals. The aim of this study was to propose a novel approach to recognize wound infection on the postsurgical site. Firstly, we proposed an optimal clustering method based on unimodal-rosin threshold algorithm to extract the feature points from a potential wound area into clusters for regions of interest (ROI). Each ROI was regarded as a suture site of the wound area. The automatic infection interpretation based on the support vector machine is available to assist physicians doing decision-making in clinical practice. According to clinical physicians' judgment criteria and the international guidelines for wound infection interpretation, we defined infection detector modules as the following: (1) Swelling Detector, (2) Blood Region Detector, (3) Infected Detector, and (4) Tissue Necrosis Detector. To validate the capability of the proposed system, a retrospective study using the confirmation wound pictures that were used for diagnosis by surgical physicians as the gold standard was conducted to verify the classification models. Currently, through cross validation of 42 wound images, our classifiers achieved 95.23% accuracy, 93.33% sensitivity, 100% specificity, and 100% positive predictive value. We believe this ability could help medical practitioners in decision making in clinical practice.
机译:随着对手术后更有效的伤口护理的需求不断增长,有必要开发一种基于机器学习的图像分析方法,以减轻医疗保健专业人员的负担。这项研究的目的是提出一种新颖的方法来识别术后部位的伤口感染。首先,我们提出了一种基于单峰松香阈值算法的最优聚类方法,用于将潜在伤口区域的特征点提取到感兴趣区域(ROI)的聚类中。每个ROI被视为伤口区域的缝合部位。基于支持向量机的自动感染解释可用于帮助医生在临床实践中做出决策。根据临床医生的判断标准和解释伤口感染的国际准则,我们将感染检测器模块定义如下:(1)肿胀检测器,(2)血液区域检测器,(3)感染检测器和(4)组织坏死探测器。为了验证所提出系统的功能,使用了外科医师用于诊断的确认伤口图片作为黄金标准进行了回顾性研究,以验证分类模型。目前,通过对42幅伤口图像进行交叉验证,我们的分类器达到了95.23%的准确度,93.33%的灵敏度,100%的特异性和100%的阳性预测值。我们相信这种能力可以帮助医生在临床实践中做出决策。

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