Comparative Analysis of Machine Learning Algorithms for the Effective Detection of Lung Cancer

N. Saranya, L. M, N. Kanthimathi, V. Gnanprakash, L. Pavithra
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Abstract

Cancer is becoming the major reason of mortality. Automatic detection of lung cancer leads to early diagnosis and appropriate treatment. This work describes the development of an automated system that detects lung cancer using machine learning. The created system can capture medical images through computerized tomography. The model proposed here is developed using DCT for trait selection and SVM, KNN, Random Forest, Naive Bayes, linear regression and logistic regression classifiers for classification. The proposed system accepts medical images and efficiently detects cancer cells from CT images. Superpixel segmentation is utilized for the purpose of extracting the region of interest from the CT images and Gabor filter is applied for denoising the images. In the cancer detection system, the effectiveness of each of the above-mentioned classifiers was compared based on the parameters such as accuracy, precision, F1 score, MCC and error rate.
有效检测肺癌的机器学习算法比较分析
癌症已成为导致死亡的主要原因。肺癌的自动检测有助于早期诊断和适当治疗。本作品介绍了一种利用机器学习检测肺癌的自动化系统的开发过程。创建的系统可以通过计算机断层扫描捕捉医学图像。这里提出的模型使用 DCT 进行性状选择,并使用 SVM、KNN、随机森林、Naive Bayes、线性回归和逻辑回归分类器进行分类。所提出的系统可接受医学图像,并能从 CT 图像中有效地检测出癌细胞。该系统利用超像素分割技术从 CT 图像中提取感兴趣区域,并应用 Gabor 滤波器对图像进行去噪处理。在癌症检测系统中,根据准确率、精确度、F1 分数、MCC 和错误率等参数比较了上述每种分类器的有效性。
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