Skin Lesion Classification using Machine Learning Algorithm for Differential Diagnosis

H. S, S. Raman, Pitty Sanjay, S. Latha, P. Muthu, S. Dhanalakshmi
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引用次数: 2

Abstract

On comparing diseases that cause major mortality, skin lesions are frequently considered of as minor players in the worldwide league of illness. Melanoma and Melanocytic nevus are skin cancers that have a high fatality rate. In the early stages of skin lesions, accurate classification can help doctors save a patient's life. Even when dermatologists utilize photos to diagnose, specialists' correct diagnosis rates are believed to be 75–84 percent. The purpose of this study is to use machine learning to pre-classify skin lesions as Melanoma or Melanocytic nevus, and to build a decision support system to assist doctors and differential diagnosticians in making better decisions.
基于机器学习算法的皮肤病变分类鉴别诊断
在比较导致主要死亡的疾病时,皮肤损伤通常被认为是世界疾病联盟中的次要角色。黑色素瘤和黑素细胞痣是致死率很高的皮肤癌。在皮肤病变的早期阶段,准确的分类可以帮助医生挽救病人的生命。即使皮肤科医生利用照片进行诊断,专家的正确诊断率也被认为是75 - 84%。本研究的目的是利用机器学习对皮肤病变进行黑色素瘤或黑色素细胞痣的预分类,并建立一个决策支持系统,以帮助医生和鉴别诊断医生做出更好的决策。
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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