Rat Swarm Optimizer based Transform for Performance Improvement of Machine Learning Classifiers in Diagnosis of Lung Cancer

K. B, Meghana G, Roshni M, B. N
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Abstract

Usage of Machine Learning algorithms for assisting healthcare providers is increasing day by day. But the performance and robustness of the machine learning algorithms are the main concerns while implementing them for critical healthcare applications such as detection of cancer. This work concentrates on the performance improvement of supervised classifiers through the feature transform based on Rat Swarm Optimizer in diagnosing lung cancer using histopathological images. Rat Swarm Optimizer used for the transformation of features. These transformed features are more capable of providing better classification accuracy when compared to normal features. The dataset is downloaded from the publicly available website and three classes are present: normal, lung squamous cell carcinomas, and lung adenocarcinomas. In each class, 1000 histopathological images are considered. Four supervised classifiers namely Histogram-Gradient boosting classifier, Random forest classifier, K-Nearest Neighbor classifier, and Linear Discriminant Analysis classifiers are tested. The highest accuracy of 90.66% is offered by Histogram-Gradient boosting classifier and this is increased to 95.82% when Rat Swarm Optimizer is used as transform before classification.
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基于大鼠群优化的机器学习分类器在肺癌诊断中的性能改进
使用机器学习算法来协助医疗保健提供者日益增加。但是,机器学习算法的性能和鲁棒性是将其应用于关键医疗保健应用(如癌症检测)时的主要关注点。本文主要研究了基于鼠群优化器的特征变换在组织病理图像肺癌诊断中的性能改进。鼠群优化器用于特征的转换。与普通特征相比,这些转换后的特征更能提供更好的分类精度。数据集从公开网站下载,目前有三类:正常、肺鳞状细胞癌和肺腺癌。在每一类中,考虑1000个组织病理学图像。测试了直方图梯度增强分类器、随机森林分类器、k近邻分类器和线性判别分析分类器四种监督分类器。直方图梯度增强分类器的准确率最高,为90.66%,在分类前使用Rat Swarm Optimizer进行变换,准确率提高到95.82%。
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