Skin Cancer Prediction using Enhanced Genetic Algorithm with Extreme Learning Machine

P. Ramya, B. Sathiyabhama
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引用次数: 2

Abstract

In the current scenario, the death rate due to the cause of skin cancer is increasing enormously. Diagnosis and prediction of Skin Cancer (SC) have become vital at an earlier stage. The main objective of this research is ensemble machine learning with enhanced genetic algorithm technique to achieve higher accuracy in the prediction of skin cancer at an earlier stage compared to other existing techniques. Although many machine learning and deep learning approaches implemented in detecting skin cancer at an earlier stage still there are few limitations. To overcome these problems in our proposed work, the CNN model, ResNet-16 usually produces successful results in extracting the features automatically and classifying the images very accurately. Therefore, the ResNet model used in our work obtains the deep features with the help of a fully connected layer. Later the feature selection is performed with the help of an Enhanced Genetic Algorithm (EGA) that produces optimized solutions by implementing operations like mutations, crossover, and ensemble with Extreme Learning Machine (EGA-ELM) to classify the images as either melanoma or non-melanoma. The proposed model certainly achieved higher accuracy and effective performance. Finally, the obtained results are to be compared with other popular classifying algorithms like Support Vector Machine (SVM) and various other models.
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基于极限学习机的增强型遗传算法预测皮肤癌
在目前的情况下,因皮肤癌引起的死亡率正在急剧上升。皮肤癌(SC)的早期诊断和预测变得至关重要。本研究的主要目标是集成机器学习与增强的遗传算法技术,与其他现有技术相比,在早期阶段实现更高的皮肤癌预测精度。尽管许多机器学习和深度学习方法被用于早期检测皮肤癌,但仍然存在一些局限性。在我们提出的工作中,为了克服这些问题,CNN模型ResNet-16通常在自动提取特征和非常准确地分类图像方面取得了成功的结果。因此,我们工作中使用的ResNet模型借助全连接层获得深度特征。然后,在增强型遗传算法(EGA)的帮助下进行特征选择,该算法通过与极限学习机(EGA- elm)实现突变、交叉和集成等操作来产生优化的解决方案,从而将图像分类为黑色素瘤或非黑色素瘤。该模型具有较高的精度和有效的性能。最后,将得到的结果与其他流行的分类算法,如支持向量机(SVM)和各种其他模型进行比较。
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