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Breast cancer diagnosis from mammographic images using optimized feature selection and neural network architecture

机译:使用优化特征选择和神经网络架构的乳腺癌诊断

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Breast cancer is one of the deadly diseases in women that have raised the mortality rate of women. An accurate and early detection of breast cancer using mammogram images is still a complex task. Hence, this article proposes a novel breast cancer detection model, which included five major phases: (a) preprocessing, (b) segmentation, (c) feature extraction, (d) feature selection, and (e) classification. The input mammogram image is initially preprocessed using contrast limited adaptive histogram equalization (CLAHE) and median filtering. The preprocessed image is then subjected to segmentation via the region growing algorithm. Subsequently, geometric features, texture features and gradient features are extracted from the segmented image. Since the length of the feature vector is large, it is essential to select the optimal features. Here, the selection of optimal features is done by a hybrid optimization algorithm. Once the optimal features are selected, they are subjected to the classification process involving the neural network (NN) classifier. As a novelty, the weight of NN is selected optimally to enhance the accuracy of diagnosis (benign and malignant). The optimal feature selection as well as the weight optimization of NN is accomplished by merging the Lion algorithm (LA) and particle swarm optimization (PSO), named as velocity updated lion algorithm (VU-LA). Finally, a performance-based evaluation is carried out between VU-LA and the existing models like, whale optimization algorithm (WOA), gray wolf optimization (GWO), firefly (FF), PSO, and LA.
机译:乳腺癌是妇女的致命疾病之一,提高了女性的死亡率。使用乳房X线照片图像的准确性和早期检测乳腺癌仍然是一个复杂的任务。因此,本文提出了一种新型乳腺癌检测模型,其中包括五个主要阶段:(a)预处理,(b)分段,(c)特征提取,(d)特征选择,和(e)分类。最初使用对比度有限自适应直方图均衡(CLAHE)和中值滤波最初预处理输入乳房X线图图像。然后通过该区域生长算法对预处理的图像进行分段。随后,从分段图像中提取几何特征,纹理特征和梯度特征。由于特征向量的长度很大,因此必须选择最佳特征。这里,通过混合优化算法来完成最佳特征的选择。一旦选择了最佳特征,就会经受涉及神经网络(NN)分类器的分类过程。作为一种新颖性,最佳选择NN的重量以增强诊断的准确性(良性和恶性)。通过合并狮子算法(LA)和粒子群优化(PSO)来完成最佳特征选择以及NN的权重优化,命名为速度更新的狮子算法(Vu-LA)。最后,基于性能的评估是在Vu-La和现有模型之间进行的,如鲸鱼优化算法(WOA),灰狼优化(GWO),萤火虫(FF),PSO和La。

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