T Meeradevi, S Sasikala, L Murali, N Manikandan, Krishnaraj Ramaswamy
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引用次数: 0
摘要
呼吸道和肺部其他部位的疾病会引起慢性呼吸系统疾病。肺部疾病的主要原因是烟草烟雾,以及灰尘、空气污染、化学品和儿童时期频繁的下呼吸道感染等风险因素。这些疾病的早期发现需要对医学图像进行分析,这将有助于医生提供有效的治疗。本文的目的是对肺部x线图像进行良性或恶性的分类,如果疾病是恶性的,则确定疾病的类型,如肺不张、浸润、结节、肺炎。机器学习(ML)方法与一种称为TOPSIS (Order Preference Technique for Similarity to Ideal Solution)的多属性决策方法相结合,用于对不同分类器进行排序。此外,提出了深度学习(DL)模型Inception v3。该方法将带有RBF的支持向量机列为该方法中使用的最佳分类器。此外,结果表明,深度学习模型达到了97.05%的最佳准确率,比使用相同数据集的机器学习方法高出11.8%。
Lung cancer detection with machine learning classifiers with multi-attribute decision-making system and deep learning model.
Diseases of the airways and the other parts of the lung cause chronic respiratory diseases. The major cause of lung disease is tobacco smoke, along with risk factors such as dust, air pollution, chemicals, and frequent lower respiratory infections during childhood. Early detection of these diseases requires the analysis of medical images, which would aid doctors in providing effective treatment.This paper aims to classify lung X-ray images as benign or malignant and to identify the type of disease, such as Atelectasis, Infiltration, Nodule, and Pneumonia, if the disease is malignant. Machine learning (ML) approaches, combined with a multi-attribute decision-making method called Technique for Order Preference by Similarity to Ideal Solution (TOPSIS), are used to rank different classifiers. Additionally, the deep learning (DL) model Inception v3 is proposed. This method ranks the SVM with RBF as the best classifier among the others used in this approach. Furthermore, the results show that the deep learning model achieves the best accuracy of 97.05%, which is 11.8% higher than the machine learning approach using the same dataset.
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