糖尿病溃疡的FO-DPSO算法分割与检测

J. Naveen, S. Sheba, B. Selvam
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引用次数: 1

摘要

最近,糖尿病患者最关心的是足部溃疡。据调查,100人中有15人患有这种足溃疡。糖尿病患者的伤口或溃疡需要更长的愈合时间,也需要更有意识的治疗。足部溃疡可能导致有害的危险状况,也可能是失去肢体的原因。基于对这一严峻情况的认识,本文提出了分数阶达尔文粒子群优化(FO-DPSO)技术对足溃疡二维彩色图像进行分析。本文涉及标准图像处理,即使用FO-DPSO算法进行有效分割,使用灰度共生矩阵(GLCM)技术提取纹理特征。总体预测结果:Naïve贝叶斯分类器的准确率为91.2%,灵敏度为100%,特异性为96.7%;Hoeffding树分类器的准确率为91.2%,灵敏度为100%,灵敏度为79.6%。
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FO-DPSO Algorithm for Segmentation and Detection of Diabetic Mellitus for Ulcers
In recent days, the major concern for diabetic patients is foot ulcers. According to the survey, among 15 people among 100 are suffering from this foot ulcer. The wound or ulcer found which is found in diabetic patients consumes more time to heal, also required more conscious treatment. Foot ulcers may lead to deleterious danger condition and also may be the cause for loss of limb. By understanding this grim condition, this paper proposes Fractional-Order Darwinian Particle Swarm Optimization (FO-DPSO) technique for analyzing foot ulcer 2D color images. This paper deals with standard image processing, i.e. efficient segmentation using FO-DPSO algorithm and extracting textural features using Gray Level Co-occurrence Matrix (GLCM) technique. The whole effort projected results as accuracy of 91.2%, sensitivity of 100% and specificity as 96.7% for Naïve Bayes classifier and accuracy of 91.2%, sensitivity of 100% and sensitivity of 79.6% for Hoeffding tree classifier.
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