Breast Cancer Classification Using Concatenated Triple Convolutional Neural Networks Model

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
M. Alshayeji, Jassim Al-Buloushi
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Abstract

Improved disease prediction accuracy and reliability are the main concerns in the development of models for the medical field. This study examined methods for increasing classification accuracy and proposed a precise and reliable framework for categorizing breast cancers using mammography scans. Concatenated Convolutional Neural Networks (CNN) were developed based on three models: Two by transfer learning and one entirely from scratch. Misclassification of lesions from mammography images can also be reduced using this approach. Bayesian optimization performs hyperparameter tuning of the layers, and data augmentation will refine the model by using more training samples. Analysis of the model’s accuracy revealed that it can accurately predict disease with 97.26% accuracy in binary cases and 99.13% accuracy in multi-classification cases. These findings are in contrast with recent studies on the same issue using the same dataset and demonstrated a 16% increase in multi-classification accuracy. In addition, an accuracy improvement of 6.4% was achieved after hyperparameter modification and augmentation. Thus, the model tested in this study was deemed superior to those presented in the extant literature. Hence, the concatenation of three different CNNs from scratch and transfer learning allows the extraction of distinct and significant features without leaving them out, enabling the model to make exact diagnoses.
基于级联三重卷积神经网络模型的癌症乳腺分类
提高疾病预测的准确性和可靠性是医学领域模型发展的主要问题。本研究探讨了提高分类准确性的方法,并提出了一个精确可靠的框架,用于使用乳房x线摄影扫描对乳腺癌进行分类。串联卷积神经网络(CNN)是基于三个模型开发的:两个是通过迁移学习开发的,另一个是完全从零开始开发的。使用这种方法也可以减少乳房x线摄影图像中病变的错误分类。贝叶斯优化执行层的超参数调优,数据增强将通过使用更多的训练样本来改进模型。对模型的准确率分析表明,该模型对二元病例的准确率为97.26%,对多分类病例的准确率为99.13%。这些发现与最近使用相同数据集对同一问题进行的研究形成对比,并证明多重分类准确率提高了16%。此外,经过超参数修正和增强后,精度提高了6.4%。因此,本研究中测试的模型被认为优于现有文献中提出的模型。因此,从头开始连接三个不同的cnn并进行迁移学习,可以提取出不同且重要的特征,而不会遗漏它们,从而使模型能够做出准确的诊断。
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
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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