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首页> 外文期刊>Indian Journal of Science and Technology >Comparative Analysis of Learning Algorithms for Lung Cancer Identification
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Comparative Analysis of Learning Algorithms for Lung Cancer Identification

机译:肺癌识别学习算法的比较分析

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Lung Cancer detection making use of medical imaging is still a challenging task for radiologist. The objective of this research is to classify the types of lung tumours for extracted and selected features using learning algorithms. In this paper, an experimental study is conducted on 100 cases of lung cancer to evaluate the performance of learning classifiers (DNN, SVM, Random Forest, Decision Tree, Na?ve Bayes) with different medical Imaging (DICOM) features to identify the two types of Lung cancer (Benign and Malignant). The proposed methodology intends to automate the entire procedure of diagnosis by automatically detecting the tumor, measuring the required values such as diameter, perimeter, area, centroid, roundness, indentations and calcification. Experiment is conducted in to two phases: In the first phase, identify the most significant feature used in lung cancer analysis by CT scan and perform the mapping to computer related format. In the second phase, feature selection and extraction is performed to machine learning algorithms. To evaluate the performance of classifiers in term of classification accuracy and improving the false positive rate, every stage of evolution is divided into four different phases: single phase module, single slice testing, series testing and testing of learning algorithms. Experimental results show significant improvement in false positive rate up to 30% for both Benign and Malignant. Whereas, Deep Neural Network (DNN) demonstrate high values in term of classification accuracy in comparison with other classifiers. The proposed methodology for lung cancer detection system having a potential to reduce the time and cost of diagnosis procedure and use for early detection of lung cancer.
机译:利用医学成像检测肺癌对于放射科医生来说仍然是一项艰巨的任务。这项研究的目的是使用学习算法对肺肿瘤的类型进行分类,以提取和选择特征。本文对100例肺癌进行了一项实验研究,以评估具有不同医学成像(DICOM)功能的学习分类器(DNN,SVM,随机森林,决策树,朴素贝叶斯)的性能,以识别这两种疾病肺癌类型(良性和恶性)。提出的方法旨在通过自动检测肿瘤,测量所需值(例如直径,周长,面积,质心,圆度,凹痕和钙化)来自动化整个诊断过程。实验分两个阶段进行:在第一阶段,通过CT扫描确定肺癌分析中最重要的特征,并将其映射到计算机相关格式。在第二阶段,对机器学习算法执行特征选择和提取。为了评估分类器在分类准确性和提高误报率方面的性能,将演化的每个阶段分为四个不同阶段:单阶段模块,单切片测试,系列测试和学习算法测试。实验结果表明,良性和恶性假阳性率均显着提高,最高可达30%。相比其他分类器,深度神经网络(DNN)在分类精度方面显示出较高的价值。所提出的用于肺癌检测系统的方法具有减少诊断过程的时间和成本以及用于肺癌的早期检测的潜力。

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