An Effective Method for Lung Cancer Classification Using Convolutional Neural Network

Authors

  • P. Deepa Research Scholar, Department of CSE Annamalai University, Chidambaram
  • M. Arulselvi Associate Professor, Department of CSE, Annamalai University Chidambaram
  • M. Meenakshi Sundaram Principal, Mahalakshmi College of Engineering, Trichy

Keywords:

Convolution Neural Networks, Computer-Aided Diagnosis, Lung cancer Image Dataset Consortium (LIDC)

Abstract

The incidence of lung cancer has been increasing exponentially in recent years due to hazardous consumption habits and environmental factors. While there are ongoing comprehensive research efforts in the field, the accuracy and efficiency of lung cancer detection remain a challenge. To address this, this study proposes a multi-view aspect model using digital image processing techniques for lung cancer research. The model utilizes Convolutional Neural Networks (CNN) to categorize different types of lung cancer, leveraging the power of image classification capabilities. By employing CNNs, the model aims to enhance the diagnostic accuracy in lung cancer detection. To evaluate the model's performance, several metrics are used, including Matthew's correlation coefficient, Cohen's Kappa score, and log loss. Matthew's correlation coefficient measures the correlation between predicted and actual classifications, providing insights into the overall performance of the model. Cohen's Kappa score assesses the agreement beyond chance between predicted and actual classifications. The log loss metric measures the accuracy of the model's probability estimates. By incorporating these evaluation metrics, this research aims to provide a comprehensive assessment of the proposed multi-view aspect model for lung cancer diagnosis. The goal is to improve the accuracy and efficiency of lung cancer detection, enabling earlier interventions and better patient outcomes.

Downloads

Download data is not yet available.

References

Ardila, D.; Kiraly, A.P.; Bharadwaj, S.; Choi, B.,et al., End-to-End Lung Cancer Screening withThree-Dimensional Deep Learning on Low-DoseChest Computed Tomography. Nat. Med. 2019,25, 954–961, doi:10.1038/s41591-019-0447-x.

Rehman, M. Kashif, et al., "Lung Cancer Detectionand Classification from Chest CT Scans usingMachine Learning Techniques," 2021 Artif. Intell.Data Anal. CAIDA 2021, pp. 101–104,2021,

T.L.Chaunzwa et al., "Deep learningclassificationof lung cancer histology byCT images," Sci. Rep.,vol. 11, no. 1, pp. 1–12, 2021,

QingZeng, “Using Deep Learning forclassificationof Lung Nodules on computed TomographyImages, 2017.

D. Kumar, A. Wong, and D. A. Clausi, “Lung noduleclassification using deep features in CT images,”in 12th Conferenceon Computer and Robot Vision(CRV), pp.133–138, IEEE, 2015.

Sarfaraz Hussein et al, “Lung and pancreatic Tumorcharacterization in the Deep learning Era: NovelSupervised and Unsupervisedlearning approaches,”IEEE Trans. Med.Imaging, vol. 38 (8), pp. 1777–1787, 2019.

S. Baskar, “Classification System for Lung CancerNodule Using Machine Learning Technique andCT Images,” Proc. 4th Int. Conf. Common. Electron.Syst. ICCES 2019,pp. 1957–62, 2019.

TafadzwaL. Chaunzwa, “Deep learning classificationof lung cancer histology using CT images,” Sci. Rep.,vol. 11(1), pp. 1–12, 2021.

Swati Mukherjee and S.U.Bohra “Lung cancerdisease diagnosis using machine learning approach,”Proc. 3rd Int. Conf. Intell. Sustain. Syst. ICISS 2020,pp. 207–211, 2020.

Riquelme, “Deep Learning for Lung Cancer NodulesDetection and Classification in CT Scans,” vol.1(1), pp. 28–67, 2020.

Zhu, W.; Liu, C, et al., Deep Lung: Deep 3D Dual-Path Nets for Automated Pulmonary NoduleDetection and Classification ar Xiv:1801.09555,2018.

M. H. Jony, F. TujJohora, P. Khatun and H. K. Rana,"Detection of Lung Cancer from CT Scan Imagesusing GLCM and SVM", 2019 1stInternationalConference on Advances in Science Engineering and Robotics Technology (ICASERT), pp. 1-6, 2019

Amjad Rehman, “Lung Cancer Detection and Classification from Chest CT Scans using MachineLearning Techniques,” 1st Int. Conf. Artif. Intell.Data Anal. CAIDA, pp. 101-104, 2021.

Mohammed, S. H. M., & Çinar, A., “Lung cancerclassification with Convolutional Neural NetworkArchitectures”, Qubahan Academic Journal, 1(1),33–39.(2021). https://doi.org/10.48161/qaj.v1n1a33

Amjad Khana, Zahid Ansarib, “Identification ofLung Cancer Using Convolutional Neural Networksbased Classification”, Turkish Journal of Computerand Mathematics Education Vol.12 No.10 (2021),192-203

Chitra, T., Sundar, C., & Gopalakrishnan, S. (2022). Investigation and Classification of Chronic Wound Tissue images Using Random Forest Algorithm (RF). International Journal of Nonlinear Analysis and Applications, 13(1), 643-651. doi: 10.22075/ijnaa.2021.24438.2744

Martinez, M., Davies, C., Garcia, J., Castro, J., & Martinez, J. Machine Learning-Enabled Quality Control in Engineering Manufacturing. Kuwait Journal of Machine Learning, 1(2). Retrieved from http://kuwaitjournals.com/index.php/kjml/article/view/122

Anupong, W., Azhagumurugan, R., Sahay, K. B., Dhabliya, D., Kumar, R., & Vijendra Babu, D.(2022). Towards a high precision in AMI-based smart meters and new technologies in the smart grid. Sustainable Computing: Informatics and Systems, 35 doi:10.1016/j.suscom.2022.100690

Downloads

Published

11.07.2023

How to Cite

Deepa, P. ., Arulselvi, M. ., & Sundaram, M. M. . (2023). An Effective Method for Lung Cancer Classification Using Convolutional Neural Network. International Journal of Intelligent Systems and Applications in Engineering, 11(9s), 461–467. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/3136

Issue

Section

Research Article