Automatic clustering-based segmentation and plaque localization in psoriasis digital images

T. T. Munia, Intisar Rizwan i Haque, A. Aymond, N. Mackinnon, D. Farkas, Minhal Al-Hashim, F. Vasefi, R. Fazel-Rezai
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引用次数: 4

Abstract

Psoriasis is one of the most stressful skin diseases. The accurate assessment and effective management of the disease is one of the contributing factors in reducing the time required for relieving the disease symptoms. As the treatment is unusually subjective, an automatic and efficient computer aided assessment technique is an active area of research. In this study, we developed an automatic psoriasis segmentation and plaque localization system using images captured by a digital camera. Our work differs from other studies by improving the segmentation of lesion regions and using a novel region based color feature extractor for classification of psoriasis plaques from healthy skin areas. The proposed modified k-means clustering based segmentation approach resulted in an accuracy of 93.83% in comparison to the ground truth, which is around 10% more than reported results by others with the same database. Statistical analysis was performed to determine psoriasis biomarkers, and the effectiveness of these biomarkers was validated by developing a machine learning model consisting of support vector machine (SVM) classifier to identify the psoriasis plaques automatically. The classification model predicted the disease plaques with an acceptable accuracy of 86.83% and thus the automated psoriasis segmentation and plaque localization technique developed in this study provide the foundation towards designing an objective assessment system for psoriasis.
基于聚类的银屑病数字图像自动分割与斑块定位
牛皮癣是压力最大的皮肤病之一。准确的评估和有效的疾病管理是减少缓解疾病症状所需时间的因素之一。由于治疗具有很强的主观性,一种自动、高效的计算机辅助评估技术是一个活跃的研究领域。在这项研究中,我们开发了一个自动银屑病分割和斑块定位系统,该系统使用数码相机拍摄的图像。我们的工作与其他研究的不同之处在于改进了病变区域的分割,并使用了一种新的基于区域的颜色特征提取器来对健康皮肤区域的银屑病斑块进行分类。提出的改进的基于k-means聚类的分割方法与地面事实相比,准确率为93.83%,比具有相同数据库的其他人报告的结果高出10%左右。通过统计分析确定银屑病生物标志物,并通过开发由支持向量机(SVM)分类器组成的机器学习模型来自动识别银屑病斑块,验证这些生物标志物的有效性。该分类模型预测疾病斑块的准确率为86.83%,可接受,因此本研究开发的银屑病自动分割和斑块定位技术为设计客观的银屑病评估系统提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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