Skin Lesion Classification using Transfer Learning

Bhanu Prasanna Koppolu
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Abstract

Skin Lesion also termed Skin Cancer has continuously recorded a high rate of mortality due to the ever-growing population, global warming, and various gases or pollution present in the atmosphere. Skin Lesions or Skin Cancer can be a horrifying way to die if not diagnosed early. Mainly Skin Lesion like Melanoma has been proven to be lethal. The mortality rate can be reduced if the skin disease is diagnosed at an early stage. The advancements in the Deep Learning community have been able to provide a way to diagnose skin diseases early. In this paper, the usage of pre-trained image classification model EfficientNetB0 is the proposed model which is used to classify 7 types of skin disease derived from the HAM10000 skin lesion dataset with Data Augmentation to increase the accuracy and help Dermatologists to classify and diagnose Skin Cancer early so it can be treated and can also be a way to cut down the cost of diagnosis. This project’s training accuracy and validation accuracy came out to be 97.61% and 93.50%. The weighted average and macro average precision, recall, and f1-score were 95%, 94%, and 95%. This paper proposes 90.5% accuracy to detect the most invasive skin cancer which is Melanoma and can help Dermatologists as a Decision Support System in the diagnosis process and create an application for ease of use.
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基于迁移学习的皮肤病变分类
由于人口不断增长、全球变暖以及大气中存在的各种气体或污染,皮肤病变也被称为皮肤癌,其死亡率一直很高。如果不及早诊断,皮肤病变或皮肤癌可能是一种可怕的死亡方式。主要是皮肤病变,如黑色素瘤已被证明是致命的。如果在早期诊断出这种皮肤病,可以降低死亡率。深度学习社区的进步已经能够提供一种早期诊断皮肤病的方法。本文提出使用预训练图像分类模型EfficientNetB0对HAM10000皮肤病变数据集衍生的7种皮肤病进行数据增强分类的模型,提高准确率,帮助皮肤科医生对皮肤癌进行早期分类和诊断,从而对其进行治疗,也可以降低诊断成本。该方案的训练准确率为97.61%,验证准确率为93.50%。加权平均和宏观平均精密度、召回率和f1-score分别为95%、94%和95%。本文提出90.5%的准确率来检测最具侵袭性的皮肤癌黑色素瘤,可以帮助皮肤科医生在诊断过程中作为决策支持系统,并创建一个易于使用的应用程序。
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