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An Efficient Feed Foreword Network Model with Sine Cosine Algorithm for Breast Cancer Classification

机译:具有乳腺癌分类正弦余弦算法的高效饲料前言网络模型

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摘要

This article describes how breast cancer is the most common invasive cancer in females worldwide and is major cause of deaths. The diagnoses of breast cancer include mammograms, breast ultrasound, magnetic resonance imaging (MRI), ductogram and biopsy. Biopsy is best and only way to know if the breast tumour is cancerous. Reports say that positive detection of breast cancer through biopsy can reach as low as 10%. So many statistical techniques and cognitive science approaches like artificial intelligence are being used to detect the type of breast cancer in a patient. This article presents the breast cancer classification using a feed foreword neural network trained by a sine-cosine algorithm. The superiority of the SCA-NN is shown by experimenting on the Wisconsin Hospital data set and comparing with the recently reported results. The evaluations show that the proposed approach is very robust, effective and gives better correct classification as compared to other classifiers.
机译:本文介绍了乳腺癌如何是全世界女性中最常见的侵入性癌症,并且是死亡的主要原因。 乳腺癌的诊断包括乳腺照片,乳房超声波,磁共振成像(MRI),导轨和活组织检查。 活组织检查是最好的,也是知道乳腺肿瘤是否癌症的方法。 报告称,通过活组织检查阳性检测乳腺癌可达到10%。 如此多的统计技术和认知科学方法,如人工智能,用于检测患者中的乳腺癌类型。 本文呈现乳腺癌分类,使用由正弦余弦算法训练的饲料前言神经网络。 通过试验威斯康星州医院数据集并与最近报道的结果进行比较,显示了SCA-NN的优越性。 评估表明,与其他分类器相比,所提出的方法非常稳健,有效,并提供更好的正确分类。

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