Agarwal, SaurabhSaurabhAgarwalArya, K. V.K. V.AryaKumar Meena, YogeshYogeshKumar Meena2025-08-312025-08-312024-01-0110.1109/TMI.2024.34167442-s2.0-85196481529http://repository.iitgn.ac.in/handle/IITG2025/2918838896522The high burden of lung diseases on healthcare necessitates effective detection methods. Current Computer-Aided design (CAD) systems are limited by their focus on specific diseases and computationally demanding deep learning models. To overcome these challenges, we introduce CNN-O-ELMNet, a lightweight classification model designed to efficiently detect various lung diseases, surpassing the limitations of disease-specific CAD systems and the complexity of deep learning models. This model combines a convolutional neural network for deep feature extraction with an optimized extreme learning machine, utilizing the imperialistic competitive algorithm for enhanced predictions. We then evaluated the effectiveness of CNN-O-ELMNet using benchmark datasets for lung diseases: distinguishing pneumothorax vs. non-pneumothorax, tuberculosis vs. normal, and lung cancer vs. healthy cases. Our findings demonstrate that CNN-O-ELMNet significantly outperformed (p < 0.05) state-of-The-Art methods in binary classifications for tuberculosis and cancer, achieving accuracies of 97.85% and 97.7%, respectively, while maintaining low computational complexity with only 2481 trainable parameters.We also extended themodel to categorize lung disease severity based on Brixia scores. Achieving a 96.2% accuracy in multi-class assessment for mild, moderate, and severe cases, makes it suitable for deployment in lightweight healthcare devices.falseChest X-ray (CXR) | extreme learning machine (ELM) | imperialistic competitive algorithm (ICA) | lightweight deep learning model | lung diseaseCNN-O-ELMNet: Optimized Lightweight and Generalized Model for Lung Disease Classification and Severity AssessmentArticle1558254X4200-4210202464WOS:001371936600020