Attention-guided CenterNet deep learning approach for lung cancer detection

被引:0
作者
Dawood, Hussain [1 ]
Nawaz, Marriam [2 ]
Ilyas, Muhammad U. [3 ]
Nazir, Tahira [4 ]
Javed, Ali [2 ]
机构
[1] School of Computing, Skyline University College, Sharjah
[2] Department of Software Engineering, University of Engineering and Technology-Taxila, Punjab
[3] School of Computer Science, University of Birmingham, Dubai
[4] Department of Software Engineering and Computer Science, Riphah International University, Gulberg Green Campus Islamabad
关键词
Attention mechanism; CenterNet; Classification; Deep learning; Lung cancer; ResNet;
D O I
10.1016/j.compbiomed.2024.109613
中图分类号
学科分类号
摘要
Lung cancer remains a significant health concern worldwide, prompting ongoing research efforts to enhance early detection and diagnosis. Prior studies have identified key challenges in existing approaches, including limitations in feature extraction, interpretability, and computational efficiency. In response, this study introduces a novel deep learning (DL) framework, termed the Improved CenterNet approach, tailored specifically for lung cancer detection. The primary importance of this work lies in its innovative integration of ResNet-34 with an attention mechanism within the CenterNet architecture, addressing critical limitations identified in previous studies. By augmenting the base network with an attention mechanism, our framework offers improved feature extraction capabilities, enabling the model to learn relevant patterns associated with lung cancer amidst complex backgrounds and varying environmental conditions. This enhancement facilitates more accurate and interpretable predictions while reducing computational complexity and inference times. Through extensive experimental evaluations conducted on standard datasets, our proposed approach demonstrates promising results, highlighting its potential to advance the field of lung cancer detection and diagnosis. Specifically, we have acquired the precision, recall, and F1-Score of 99.89 %, 99.82 %, and 99.85 % on the LUNA-16 dataset, and 98.33 %, 98.02 %, and 98.17 % for the Kaggle data sample, respectively which is showing the efficacy of our approach. One limitation of the work is that it cannot effectively locate the samples with intense light variations. Therefore, future research work is focused on overcoming this challenge. © 2024 Elsevier Ltd
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共 65 条
[1]  
Wani N.A., Kumar R., Bedi J., DeepXplainer: an interpretable deep learning based approach for lung cancer detection using explainable artificial intelligence, Comput. Methods Progr. Biomed., 243, (2024)
[2]  
Gomez D.R., Liao Z., Non-small cell lung cancer (NSCLC) and small cell lung cancer (SCLC), Target Volume Delineation and Field Setup: A Practical Guide for Conformal and Intensity-Modulated Radiation Therapy, pp. 87-103, (2012)
[3]  
Leiter A., Veluswamy R.R., Wisnivesky J.P., The global burden of lung cancer: current status and future trends, Nat. Rev. Clin. Oncol., 20, 9, pp. 624-639, (2023)
[4]  
Siegel R.L., Miller K.D., Wagle N.S., Jemal A., Cancer statistics, CA: a cancer journal for clinicians, 73, 1, pp. 17-48, (2023)
[5]  
Padinharayil H., Et al., Non-small cell lung carcinoma (NSCLC): implications on molecular pathology and advances in early diagnostics and therapeutics, Genes Diseases, 10, 3, pp. 960-989, (2023)
[6]  
Vadala R., Et al., A review on electronic nose for diagnosis and monitoring treatment response in lung cancer, J. Breath Res., 17, 2, (2023)
[7]  
Lanjewar M.G., Panchbhai K.G., Charanarur P., Lung cancer detection from CT scans using modified DenseNet with feature selection methods and ML classifiers, Expert Syst. Appl., 224, (2023)
[8]  
Makaju S., Prasad P., Alsadoon A., Singh A., Elchouemi A., Lung cancer detection using CT scan images, Procedia Computer Science, 125, pp. 107-114, (2018)
[9]  
Pastorino U., Et al., Early lung-cancer detection with spiral CT and positron emission tomography in heavy smokers: 2-year results, Lancet, 362, 9384, pp. 593-597, (2003)
[10]  
Pan X., Et al., Cost-effectiveness of volume computed tomography in lung cancer screening: a cohort simulation based on nelson study outcomes, J. Med. Econ., 27, 1, pp. 27-38, (2024)