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Enhanced CNN Based Super pixel Classification for Automated Wound Area Segmentation

机译:基于CNN的基于CNN的自动伤口区域分割的超像素分类

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With the increasing prevalence rate of diabetes and obesity worldwide, chronic wounds are becoming a significant burden for world health and economy. The treatment of a chronic wound goes through complex and time-intensive process. During the healing period, continuous wound measurement helps clinicians to predict the healing time and monitor the treatment efficiency. Current clinical techniques such as ruler-based or tracing-based methods are inaccurate, time-consuming and also subject to intra- and inter-reader variability that does not satisfy a comprehensive clinical benchmark. In this paper, we proposed a method for wound boundary demarcation and estimation based on Super pixel segmentation and classification using an enhanced convolution neural network. An overall accuracy, sensitivity, and specificity of around 90% was observed, which fared much better against traditional methods.
机译:随着糖尿病和肥胖的普及率越来越多,慢性伤口正在成为世界卫生和经济的重要负担。慢性伤口的处理通过复杂和时间密集的方法。在愈合期间,连续伤口测量有助于临床医生预测愈合时间并监测治疗效率。目前的临床技术,如尺寸的基于尺寸或基于追踪的方法是不准确的,耗时的,并且还经过识别和互相互相的临床变异性,不满足综合临床基准。在本文中,我们提出了一种基于超像素分割和使用增强卷积神经网络的分类的卷绕边界分界和估计方法。观察到整体准确性,敏感度和特异性约为90%,这对传统方法进行了更好的比量。

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