An adaptation of hybrid binary optimization algorithms for medical image feature selection in neural network for classification of breast cancer

IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Neurocomputing Pub Date : 2024-11-28 DOI:10.1016/j.neucom.2024.129018
Olaide N. Oyelade , Enesi Femi Aminu , Hui Wang , Karen Rafferty
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Abstract

The performance of neural network is largely dependent on their capability to extract very discriminant features supporting the characterization of abnormalities in the medical image. Several benchmark architectures have been proposed and the use of transfer learning has further made these architectures return good performances. Study has shown that the use of optimization algorithms for selection of relevant features has improved classifiers. However continuous optimization algorithms have mostly been used though it allows variables to take value within a range of values. The advantage of binary optimization algorithms is that it allows variables to be assigned only two states, and this have been sparsely applied to medical image feature optimization. This study therefore proposes hybrid binary optimization algorithms to efficiently identify optimal features subset in medical image feature sets. The binary dwarf mongoose optimizer (BDMO) and the particle swarm optimizer (PSO) were hybridized with the binary Ebola optimization search algorithm (BEOSA) on new nested transfer functions. Medical images passed through convolutional neural networks (CNN) returns extracted features into a continuous space which are piped through these new hybrid binary optimizers. Features in continuous space a mapped into binary space for optimization, and then mapped back into the continuous space for classification. Experimentation was conducted on medical image samples using the Curated Breast Imaging Subset of Digital Database for Screening Mammography (DDSM+CBIS). Results obtained from the evaluation of the hybrid binary optimization methods showed that they yielded outstanding classification accuracy, fitness, and cost function values of 0.965, 0.021 and 0.943. To investigate the statistical significance of the hybrid binary methods, the analysis of variance (ANOVA) test was conducted based on the two-factor analysis on the classification accuracy, fitness, and cost metrics. Furthermore, results returned from application of the binary hybrid methods medical image analysis showed classification accuracy of 0.8286, precision of 0.97, recall of 0.83, and F1-score of 0.99, AUC of 0.8291. Findings from the study showed that contrary to the popular approach of using continuous metaheuristic algorithms for feature selection problem, the binary metaheuristic algorithms are well suitable for handling the challenge. Complete source code can be accessed from: https://github.com/NathanielOy/hybridBinaryAlgorithm4FeatureSelection
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基于混合二值优化算法的医学图像特征选择神经网络乳腺癌分类
神经网络的性能在很大程度上取决于它们提取非常有区别的特征的能力,这些特征支持医学图像中异常的表征。已经提出了几种基准架构,并且迁移学习的使用进一步使这些架构返回良好的性能。研究表明,使用优化算法来选择相关特征可以改进分类器。然而,连续优化算法大多被使用,尽管它允许变量在一定范围内取值。二元优化算法的优点是它允许变量只被分配两种状态,这已经被稀疏地应用于医学图像特征优化。因此,本研究提出混合二值优化算法来有效地识别医学图像特征集中的最优特征子集。将二元矮猫鼬优化器(BDMO)和粒子群优化器(PSO)在新的嵌套传递函数上与二元埃博拉优化搜索算法(BEOSA)进行杂交。医学图像通过卷积神经网络(CNN)将提取的特征返回到连续空间中,该空间通过这些新的混合二进制优化器进行管道传输。特征在连续空间中先映射到二值空间进行优化,然后再映射回连续空间进行分类。实验采用乳腺造影筛查数字数据库(DDSM+CBIS)的精选乳腺成像子集对医学图像样本进行。对混合二元优化方法的评价结果表明,它们的分类精度、适应度和代价函数值分别为0.965、0.021和0.943。为了检验混合二元方法的统计显著性,在对分类精度、适应度和成本指标进行双因素分析的基础上进行方差分析(ANOVA)检验。应用二元混合方法进行医学图像分析,分类准确率为0.8286,精密度为0.97,召回率为0.83,f1评分为0.99,AUC为0.8291。研究结果表明,与使用连续元启发式算法解决特征选择问题的流行方法相反,二元元启发式算法非常适合处理这一挑战。完整的源代码可以访问:https://github.com/NathanielOy/hybridBinaryAlgorithm4FeatureSelection
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
Neurocomputing
Neurocomputing 工程技术-计算机:人工智能
CiteScore
13.10
自引率
10.00%
发文量
1382
审稿时长
70 days
期刊介绍: Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.
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