基于黑色素瘤皮肤癌图像的良恶性皮肤病变检测

Shagun Sharma, Kalpna Guleria, Sushil Kumar, S. Tiwari
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引用次数: 3

摘要

皮肤癌是最危险和致命的癌症,每年影响数百万人。没有专业的皮肤科医生,皮肤癌的准确鉴定是不可能完成的。然而,世界卫生组织在加拿大、美国和澳大利亚的具体研究表明,在20世纪60年代至80年代,皮肤癌的病例比前几年增加了两倍多。早期皮肤癌的识别是一项昂贵而困难的任务,因为它在初始阶段不会造成太大的伤害。然而,根据印度的统计数据,皮肤癌的发展每次都需要活检和许多其他治疗,这是相当昂贵的。这一挑战使得在早期阶段确定皮肤癌的存在以增加长生不老成为必要的一步。随着技术的发展和进步,有各种各样的方法参与和解决医疗问题,包括covid - 19,肺炎等。同样,机器学习(ML)和深度学习(DL)模型也适用于早期皮肤癌的诊断。在这项工作中,支持向量机(SVM)、朴素贝叶斯(NB)、k近邻(KNN)和神经网络(NN)被用于良恶性病变的分类。此外,对于数据集的特征提取,使用了预训练的SqueezeNet模型。KNN、SVM、NB和NN的分类结果在准确率、召回率、F1-Measure、精密度、AUC和ROC方面得到了体现。模型的比较结果表明,当使用SqueezeNet特征提取器时,神经网络模型的准确率最高,F1-Measure、召回率、精度和AUC分别为88.2%、0.882、0.882、0.882和0.957。最后,每个模型的性能指标类比结果已经说明了良性和恶性病变的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benign and Malignant Skin Lesion Detection from Melanoma Skin Cancer Images
Skin cancer is the most dangerous and lethal cancer that affects millions of people each year. The accurate identification of skin cancers can not be accomplished without expert dermatologists. However, specific research studies of WHO in Canada, US and Australia, show that in the year 1960s to 1980s, the cases of skin cancer has noted more than two times increased in comparison with the previous years. The identification of skin cancer in its early stage is an expensive and difficult task because it doesn’t cause too much bad in the initial phase. Whereas, the growth of skin cancer requires biopsy and many other treatments each time which is quite costly as per the statistics of India. This challenge makes it a necessary step to identify the existence of skin cancer in the early stages to increase immortality. With the evolution and progression in technology, there are various methods which have participated in and solved medical issues including covid19, pneumonia and many others. Similarly, machine learning(ML) and deep learning(DL) models are applicable to diagnosing skin cancer in its early stages. In this work, the support vector machine (SVM), naive bayes (NB), K-nearest neighbour (KNN) and neural networks(NN) have been used for classifying benign and malignant lesions. Furthermore, for the feature extraction from the dataset, a pre-trained SqueezeNet model has been used. The classification results of KNN, SVM, NB and NN have been shown in the accuracy, recall, F1-Measure, precision, AUC and ROC. The comparison of the models has resulted that the NN model outperforms all other models when applied with the SqueezeNet feature extractor with the highest accuracy, F1-Measure, recall, precision and AUC as 88.2%, 0.882, 0.882, 0.882 and 0.957, respectively. Lastly, the performance metrics analogies results of each model have been illustrated for the classification of benign and malignant lesions.
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