Clustering and classification of dermatologic data with Self Organization Map (SOM) method

U. Fidan, Nese Ozkan, İsmail Çalikuşu
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引用次数: 5

Abstract

Nowadays, skin diseases have increased due to various external effects such as chemical, radiological and so on. In dermatology, the distinguished diagnosis of Erythemato-squamos diseases is a situation that doctors often confront. When many skin diseases are examined, it is seen that many of them are quite similar in shape and appearance although their reasons of emergence are different. Doctors try to distinguish diseases from each other and diagnose by evaluating the clinical findings with pathological parameters. It is observed that many researchers have conducted studies on the Erythemato-Squamous diseases to develop decision support systems using different classification algorithms for detection and diagnosis. Unlike the cited studies in literature, the aim of the present study is to extract Self Organization Maps (SOM) of clinical and pathological findings and investigate cluster of condition various diseases from reduced data. SOM is a size reduction process which aim to simplify the problem. Basically, SOM provides less size reduction output using multidimensional input. In this study, the clinical and pathological classification was realized separately and together. As the result, classification of six types of Erythamato-Squamos skin disease was performed with SOM artificial intelligence application. In addition, clinical and pathological effects of SOM application was seen clearly by showing as a graphically display instead of a matrix. As a result, in the diagnosis of Erythemao-Squamos diseases, it was determined that a dermatologist diagnose mostly depending on the clinical findings although pathological findings contain quantative data.
基于自组织图(SOM)方法的皮肤病学数据聚类与分类
目前,由于化学、放射等各种外因的影响,皮肤疾病有所增加。在皮肤病学中,对鳞状红斑疾病的鉴别诊断是医生经常面临的问题。在检查许多皮肤病时,我们会发现,虽然它们出现的原因不同,但它们中的许多在形状和外观上都非常相似。医生试图区分疾病,并通过评估临床表现和病理参数来进行诊断。据观察,许多研究者对红斑鳞状疾病进行了研究,开发了使用不同分类算法进行检测和诊断的决策支持系统。与文献引用的研究不同,本研究的目的是提取临床和病理发现的自组织图(SOM),并从简化的数据中研究各种疾病的群集。SOM是一种旨在简化问题的尺寸缩减过程。基本上,SOM使用多维输入提供较少的大小缩减输出。在本研究中,临床和病理分型分别实现,同时实现。应用SOM人工智能对6种红斑鳞片皮肤病进行分类。此外,SOM应用的临床和病理效果可以通过图形显示而不是矩阵清晰地看到。因此,在红斑鳞状疾病的诊断中,尽管病理表现包含定量数据,但皮肤科医生的诊断大多依赖于临床表现。
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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