用DBN技术检测红斑鳞状疾病(esd)

S. Gopalakrishnan, Abishek.B Ebenezer, A. Vijayalakshmi
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引用次数: 2

摘要

ESD是近几十年来在世界范围内不断增加的一种严重的皮肤病,作为医学领域治疗策略的后续,利用皮肤镜图像自动检测ESD仍然是一项具有挑战性和复杂性的任务。由于ESD的边界不清晰、颜色对比度差、位置依赖、形状变化和结构复杂等因素,导致了ESD诊断的困难。必须及早发现日益严重的公共卫生负担问题,并以适当的方式进行治疗,以防止进一步扩散到身体的其他器官,医疗专业人员和研究人员可以通过这些器官挽救一些生命。当皮肤外观出现异常变化时,受试者就有可能受到ESD的影响。为了获得更好的解决方案,计算机视觉方法必须与皮肤病学知识相结合,以实现高效的ESD检测。因此,开发基于深度信念网络(DBN)的检测技术来帮助临床医生在早期诊断ESD是非常重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AN ERYTHEMATO SQUAMOUS DISEASE (ESD) DETECTION USING DBN TECHNIQUE
ESD is a serious type of skin disease that increases over the past decades in the world and as a sequel to curing strategy in the medical field, automatic detection of ESDs using dermoscopic images has been still challenging and complicated task. This kind of difficulty occurs in the diagnosis of ESD owing to the following factors such as indistinct ESD borders, poor color contrast, location-dependent, shape variations, and complex structures of the ESDs. The progressing public health burden issues have to be detected early and treated in proper ways to prevent further spreading to other organs of the body through which medical professionals and researchers can save several lives. When there is an abnormal change in the appearance of the skin, then there is a chance for the subject that may be affected by ESD. To obtain better solutions, the computer vision methods must be paired with dermatology knowledge for efficient ESD detection. Hence, it is important to develop Deep Belief Network (DBN) based detection techniques to assist clinicians to diagnose ESD at early stages.
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