Mohamed Amna Ali A, Hançerlioğullari Aybaba, Rahebi Javad, Ray Mayukh K, Roy Sudipta
Department of Material Science and Engineering, University of Kastamonu, Kastamonu 37150, Turkey.
Department of Physics, University of Kastamonu, Kastamonu 37150, Turkey.
Diagnostics (Basel). 2023 May 12;13(10):1728. doi: 10.3390/diagnostics13101728.
This paper presents a robust colon cancer diagnosis method based on the feature selection method. The proposed method for colon disease diagnosis can be divided into three steps. In the first step, the images' features were extracted based on the convolutional neural network. Squeezenet, Resnet-50, AlexNet, and GoogleNet were used for the convolutional neural network. The extracted features are huge, and the number of features cannot be appropriate for training the system. For this reason, the metaheuristic method is used in the second step to reduce the number of features. This research uses the grasshopper optimization algorithm to select the best features from the feature data. Finally, using machine learning methods, colon disease diagnosis was found to be accurate and successful. Two classification methods are applied for the evaluation of the proposed method. These methods include the decision tree and the support vector machine. The sensitivity, specificity, accuracy, and F1Score have been used to evaluate the proposed method. For Squeezenet based on the support vector machine, we obtained results of 99.34%, 99.41%, 99.12%, 98.91% and 98.94% for sensitivity, specificity, accuracy, precision, and F1Score, respectively. In the end, we compared the suggested recognition method's performance to the performances of other methods, including 9-layer CNN, random forest, 7-layer CNN, and DropBlock. We demonstrated that our solution outperformed the others.
本文提出了一种基于特征选择方法的稳健结肠癌诊断方法。所提出的结肠疾病诊断方法可分为三个步骤。第一步,基于卷积神经网络提取图像特征。卷积神经网络使用了Squeezenet、Resnet - 50、AlexNet和GoogleNet。提取的特征数量巨大,不适用于训练系统。因此,第二步使用元启发式方法来减少特征数量。本研究使用蚱蜢优化算法从特征数据中选择最佳特征。最后,使用机器学习方法,发现结肠疾病诊断准确且成功。应用了两种分类方法来评估所提出的方法。这些方法包括决策树和支持向量机。敏感性、特异性、准确性和F1分数已被用于评估所提出的方法。对于基于支持向量机的Squeezenet,我们分别获得了敏感性、特异性、准确性、精确性和F1分数为99.34%、99.41%、99.12%、98.91%和98.94%的结果。最后,我们将所建议的识别方法的性能与其他方法的性能进行了比较,包括9层卷积神经网络、随机森林、7层卷积神经网络和DropBlock。我们证明了我们的解决方案优于其他方案。