Abstract
Worldwide, the number of people who pass away as a result of lung cancer is on the rise. Due to advancements in AI technology testing for cancer at an earlier stage can save various lives. Lung cancer detection methods that entail many steps and necessitate human empirical parameter adjustments are often employed. This research paper presents a comparative study between machine and deep learning models. First lung slice and nodule segmentation using ML and DL is essential for cancer detection. Deep learning techniques have improved healthcare image analysis. There are a few machine learning approaches like random forest, decision tree, logistic regression, and SVM along with deep learning approaches like CNN, ResNet50,101,50V2, VGG16,19, and transfer learning: DenseNet201 and InceptionV3 over chest CT dataset. Experimental results on chest CT images have demonstrated that logistic regression (ML) and transfer learning (DL) can provide superior performance to the state-of-the-art methods regarding accuracy and loss decrement.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Molina JR et al. (208) Non-small cell lung cancer: epidemiology, risk factors, treatment, and survivorship. In: Mayo clinic proceedings 83(5)
Massimiliano C, Turco F et al. (2023) How does environmental and occupational exposure contribute to carcinogenesis in genitourinary and lung cancers?. Cancers 15
Agrawal T, Choudhary P (2023) Segmentation and classification on chest radiography: a systematic survey. Vis Comput 39:875–913
Kwee TC, Almaghrabi et al. (2023) Diagnostic radiology and its future: what do clinicians need and think? Eur Radiol 33:9401–9410
Samha AK, Malik N, Sharma D et al. (2023) Intrusion detection system using hybrid convolutional neural network. Mobile Netw Appl
Keting M et al. (2022) Developmental trends and research hotspots in bronchoscopy anesthesia: a bibliometric study. Front Med 9:837389
Sathiyapalan A et al. (2023) Molecular testing in non–small-cell lung cancer: a call to action. JCO Oncol Practice 23:00669
Malik N, Balaji A (2021) Predicting the big-five personality traits from handwriting. In: Innovations in computational intelligence and computer vision, pp 225–237
Zainab R et al. (2023) Lung tumor image segmentation from computer tomography images using MobileNetV2 and transfer learning. Bioeng (Basel, Switzerland) 10(8):981
Kavitha BC et al. (2023) An approach of AlexNet CNN algorithm model for lung cancer detection and classification. Int J Recent and Innov Trends in Comput Commun
Naz S, Sharan A et al. (2018) Sentiment classification on twitter data using support vector machine. In: IEEE/WIC/ACM international conference on web intelligence (WI). Santiago, Chile
Yanan D et al. (2023) A synthesizing semantic characteristics lung nodules classification method based on 3D convolutional neural network. Bioengineering, (Basel, Switzerland)
Xie RL, Wang Y, Zhao YN et al (2023) Lung nodule pre-diagnosis and insertion path planning for chest CT images. BMC Med Imaging 23:22
Wang G, Luo X, Gu R, Yang S et al. (2022) PyMIC: a deep learning toolkit for annotation-efficient medical image segmentation. ArXiv
Wang G et al. (2023) PyMIC: a deep learning toolkit for annotation-efficient medical image segmentation. Comput Methods Prog Biomed 231
Nguyen P, Rathod A, Chapman et al. (2023) Active semi-supervised learning via bayesian experimental design for lung cancer classification using low dose computed tomography scans. Appl Sci
Everardo V-R et al. (2023) Machine learning-based lung cancer detection using multiview image registration and fusion. J Sens Hindawi
Haiqun X, Zhang et al. (2022) A deep learning-based post-processing method for automated pulmonary lobe and airway trees segmentation using chest CT images in PET/CT. Quantitat Imaging in Med Surgery 12(10)
Jabbar RA et al. (2021) Lung cancer prediction using random forest. In: Recent advances in computer science and communications (Formerly: Recent Patents on Computer Science), Bentham Science Publishers, vol 14(5)
Mishra A et al. (2023) Lung cancer detection and classification using machine learning algorithms. Int J Recent Innov Trends Comput Commun
Sivanagireddy K, Yerram S et al. (2022) Early lung cancer prediction using correlation and regression. In: 2022 International conference on computer, power and communications (ICCPC). Chennai, India
Nagajyothi D et al. (2020) Detection of lung cancer using SVM classifier. Int J Emerg Trends Eng Res 85:21772180
Malik N, Jain S (2019) Comparative study of machine learning algorithms for social media text analysis. In: Batra U, Roy N, Panda B (eds) Data science and analytics. REDSET, communications in computer and information science. Springer, Singapore, vol 1230
Chauhan R, Ghanshala KK et al. (2018) Convolutional neural network (CNN) for image detection and recognition. In: First international conference on secure cyber computing and communication
Demir A, Yilmaz F, Kose O (2019) Early detection of skin cancer using deep learning architectures: Resnet-101 and inception-v3. In: Proceedings of the 2019 medical technologies congress (TIPTEKNO), IEEE
Nguyen T-H, Nguyen et al. (2022) A VGG-19 model with transfer learning and image segmentation for classification of tomato leaf disease. Agri Eng
Chhikara R, Sharma P, Chandra B et al (2023) Modified bird swarm algorithm for blind image steganalysis. Int J Inf Technol 15:2877–2888
Al-Shouka TT, Alheeti KMA (2023) A transfer learning for intelligent prediction of lung cancer detection. In: Al-Sadiq international conference on communication and information technology (AICCIT), Al-Muthana, Iraq
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2024 The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
About this paper
Cite this paper
Chauhan, S., Malik, N., Vig, R. (2024). Experimental Comparisons of Deep Neural Network and Machine Learning Lung Cancer Detection Algorithms for CT Images. In: Hassanien, A.E., Anand, S., Jaiswal, A., Kumar, P. (eds) Innovative Computing and Communications. ICICC 2024. Lecture Notes in Networks and Systems, vol 1043. Springer, Singapore. https://doi.org/10.1007/978-981-97-4228-8_29
Download citation
DOI: https://doi.org/10.1007/978-981-97-4228-8_29
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-97-4227-1
Online ISBN: 978-981-97-4228-8
eBook Packages: EngineeringEngineering (R0)