novel skin cancer Detection based transfer learning with optimization algorithm using Dermatology Dataset

Q2 Computer Science
Polasi Sudhakar, Suresh Chandra Satapathy
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引用次数: 0

Abstract

Detecting skin cancer at the preliminary stage is a challenging issue, and is of high significance for the affected patients. Here, Fractional Gazelle Optimization Algorithm_Convolutional Neural Network based Transfer Learning with Visual Geometric Group-16 (FGOA_CNN based TL with VGG-16) is introduced for primary prediction of skin cancer. Initially, input skin data is acquired from the database and it is fed to the data preprocessing. Here, data preprocessing is done by missing value imputation and linear normalization. Once data is preprocessed, the feature selection is done by the proposed FGOA. Here, the proposed FGOA is an integration of Fractional Calculus (FC) and Gazelle Optimization Algorithm (GOA). After that, skin cancer detection is carried out using CNN-based TL with VGG-16, which is trained by the proposed FGOA and it is an integration of FC and GOA. Moreover, the efficiency of the proposed FGOA_ CNN-based TL with VGG-16 is examined based on five various metrics, like accuracy, Positive Predictive Value (PPV), True Positive Rate (TPR), True Negative Rate (TNR), and Negative Predictive Value (NPV) and the outcome of experimentation reveals that the devised work is highly superior and has attained maximal values of metrics is 92.65%, 90.35%, 91.48%, 93.56%, 90.77% respectively.
基于皮肤病学数据集的迁移学习优化算法的皮肤癌检测新方法
早期发现皮肤癌是一个具有挑战性的问题,对受影响的患者具有重要意义。本文引入分数阶瞪羚优化算法——基于卷积神经网络的迁移学习与视觉几何群-16 (FGOA_CNN基于TL与VGG-16)进行皮肤癌的初步预测。最初,从数据库中获取输入皮肤数据,并将其提供给数据预处理。在这里,数据预处理是通过缺失值输入和线性归一化来完成的。数据经过预处理后,特征选择由所提出的FGOA完成。本文提出的FGOA是分数阶微积分(FC)和Gazelle优化算法(GOA)的集成。之后,使用基于cnn的TL和VGG-16进行皮肤癌检测,VGG-16由所提出的FGOA训练,是FC和GOA的集成。通过准确率、阳性预测值(Positive Predictive Value, PPV)、真阳性率(True Positive Rate, TPR)、真阴性率(True Negative Rate, TNR)和阴性预测值(Negative Predictive Value, NPV) 5个指标对VGG-16基于FGOA_ cnn的TL的效率进行了检验,实验结果表明,所设计的工作具有很高的效率,其指标的最大值分别为92.65%、90.35%、91.48%、93.56%和90.77%。
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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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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