Author:
Naga Ramesh Janjhyam Venkata,Agarwal Raghav,Deekshita Polireddy,Elahi Shaik Aashik,Surya Bindu Saladi Hima,Pavani Juluru Sai
Abstract
INTRODUCTION: Lung cancer, a fatal disease characterized by abnormal cell growth, ranks as the second most lethal worldwide, as observed in recent research conducted in India and other regions. Early detection is crucial for effective treatment, and manual differentiation of nodule types in CT images poses challenges for radiologists.
OBJECTIVES: To enhance accuracy and efficiency, deep learning algorithms are proposed for early lung cancer detection. Transfer learning-based computer recognition algorithms have shown promise in providing radiologists with additional insights.
METHODS: The dataset used in this study comprises 1000 CT scan images representing lung large cell carcinoma, lung adenocarcinoma, lung squamous cell carcinoma, and normal lung cases. A preprocessing phase, including picture rescaling and modification, is applied to the input CT scan images of the lungs, followed by the utilization of a specific transfer learning model to develop a lung cancer detection system.
RESULTS: The performance of various transfer learning strategies is evaluated using measures such as accuracy, precision, recall, specificity, area under the curve, and F1-score.
CONCLUSION: Comparative analysis indicates that VGG16 outperforms other models in accurately categorizing different types of lung cancer.
Publisher
European Alliance for Innovation n.o.
Reference20 articles.
1. Smita Raut1, Shraddha Patil2, Gopichand Shelke”, Lung Cancer Detection using Machine Learning Approach”, International Journal of Advance Scientific Research and Engineering Trends (IJASRET), 2021.
2. Oshima, Y., Shinzawa, H., Takenaka, T., Furihata, C., & Sato, H. (2010). Discrimination analysis of human lung cancer cells associated with histological type and malignancy using Raman spectroscopy. Journal of biomedical optics, 15(1), 017009.
3. Cancer.org. 2021. Lung Cancer Statistics — How Common is Lung Cancer?. [online] Available at: https://www.cancer.org/cancer/lungcancer/about/key-statistics.html [Accessed 9 August 2021].
4. V. Krishnaiah, G. Narsimha, and N. S. Chandra, "Diagnosis of lung cancer prediction system using data mining classification techniques", International Journal of Computer Science and Information Technologies, vol. 4, no. 1, 2013, pp. 39-45.
5. Xing, PuǦYuan, et al. "What are the clinical symptoms and physical signs for nonǦsmall cell lung cancer before diagnosis is made? A nationǦwide multicenter 10Ǧyear retrospective study in China." Cancer medicine 8.8 (2019): 4055-4069.