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Intelligent skin cancer diagnosis using improved particle swarm optimization and deep learning models

机译:智能皮肤癌诊断采用改进的粒子群优化和深层学习模型

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In this research, we propose an intelligent decision support system for skin cancer detection. Since generating an effective lesion representation is a vital step to ensure the success of lesion classification, the discriminative power of different types of features is exploited. Specifically, we combine clinically important asymmetry, border irregularity, colour and dermoscopic structure features with texture features extracted using Grey Level Run Length Matrix, Local Binary Patterns, and Histogram of Oriented Gradients operators for lesion representation. Then, we propose two enhanced Particle Swarm Optimization (PSO) models for feature optimization. The first model employs adaptive acceleration coefficients, multiple remote leaders, in-depth sub-dimension feature search and re-initialization mechanisms to overcome stagnation. The second model uses random acceleration coefficients, instead of adaptive ones, based on non-linear circle, sine and helix functions, respectively, to increase diversification and intensification. Ensemble classifiers are also constructed with each base model trained using each optimized feature subset. A deep convolutional neural network is devised whose hyper-parameters are fine-tuned using the proposed PSO models. Extensive experimental studies using dermoscopic skin lesion data, medical data from the UCI machine learning repository, and ALL-IDB2 image data are conducted to evaluate the model efficiency systematically. The results from empirical evaluations and statistical tests indicate the superiority of the proposed models over other advanced PSO variants and classical search methods pertaining to discriminative feature selection and optimal hyper-parameter identification for deep learning networks in lesion classification as well as other disease diagnosis. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本研究中,我们提出了一种智能决策支持系统,用于皮肤癌检测。由于产生有效病变表示是确保病变分类成功的重要步骤,因此利用不同类型特征的鉴别力。具体而言,我们将临床重要的不对称性,边界不规则性,颜色和Dermoscopic结构特征与使用灰度级运行长度矩阵,局部二进制图案和导向梯度运算符的直方图提取的纹理特征进行病变表示。然后,我们提出了两个增强的粒子群优化(PSO)模型,用于特征优化。第一型模型采用自适应加速度系数,多个远程领导者,深入的子维度特征搜索和重新初始化机制来克服停滞。第二种模型使用随机加速度系数,而不是自适应的基于非线性圆,正弦和螺旋功能,以增加多样化和强化。合并分类器也是使用每个优化特征子集训练的每个基础模型构造。设计了一个深度卷积神经网络,其使用所提出的PSO模型进行微调。使用Dermoscopic Skesion数据,来自UCI机器学习存储库的医疗数据以及All-IDB2图像数据的广泛实验研究,并系统地评估模型效率。经验评估和统计测试的结果表明,拟议模型在其他先进的PSO变体和与病变分类中深度学习网络的鉴别特征选择和最佳超参数识别有关的典型搜索方法的优越性以及其他疾病诊断。 (c)2019年Elsevier B.V.保留所有权利。

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