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An optimized convolutional neural network architecture for lung cancer detection

Authors :
Sameena Pathan
Tanweer Ali
Sudheesh P G
Vasanth Kumar P
Divya Rao
Source :
APL Bioengineering, Vol 8, Iss 2, Pp 026121-026121-13 (2024)
Publication Year :
2024
Publisher :
AIP Publishing LLC, 2024.

Abstract

Lung cancer, the treacherous malignancy affecting the respiratory system of a human body, has a devastating impact on the health and well-being of an individual. Due to the lack of automated and noninvasive diagnostic tools, healthcare professionals look forward toward biopsy as a gold standard for diagnosis. However, biopsy could be traumatizing and expensive process. Additionally, the limited availability of dataset and inaccuracy in diagnosis is a major drawback experienced by researchers. The objective of the proposed research is to develop an automated diagnostic tool for screening of lung cancer using optimized hyperparameters such that convolutional neural network (CNN) model generalizes well for universally obtained computerized tomography (CT) slices of lung pathologies. The aforementioned objective is achieved in the following ways: (i) Initially, a preprocessing methodology specific to lung CT scans is formulated to avoid the loss of information due to random image smoothing, and (ii) a sine cosine algorithm optimization algorithm (SCA) is integrated in the CNN model, to optimally select the tuning parameters of CNN. The error rate is used as an objective function, and the SCA algorithm tries to minimize. The proposed method successfully achieved an average classification accuracy of 99% in classification of lung scans in normal, benign, and malignant classes. Further, the generalization ability of the proposed model is tested on unseen dataset, thereby achieving promising results. The quantitative results prove the efficacy of the system to be used by radiologists in a clinical scenario.

Details

Language :
English
ISSN :
24732877
Volume :
8
Issue :
2
Database :
Directory of Open Access Journals
Journal :
APL Bioengineering
Publication Type :
Academic Journal
Accession number :
edsdoj.68a633dfa38b4673a016c1ff11899ec6
Document Type :
article
Full Text :
https://doi.org/10.1063/5.0208520