CNN-O-ELMNet: Optimized Lightweight and Generalized Model for Lung Disease Classification and Severity Assessment.

Saurabh Agarwal, K V Arya, Yogesh Kumar Meena
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Abstract

The 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 97.70%, respectively, while maintaining low computational complexity with only 2481 trainable parameters. We also extended the model to categorize lung disease severity based on Brixia scores. Achieving a 96.20% accuracy in multi-class assessment for mild, moderate, and severe cases, makes it suitable for deployment in lightweight healthcare devices.

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CNN-O-ELMNet:用于肺病分类和严重程度评估的优化轻量级通用模型
肺部疾病给医疗保健带来了沉重负担,因此需要有效的检测方法。目前的计算机辅助设计(CAD)系统受限于对特定疾病的关注和计算要求极高的深度学习模型。为了克服这些挑战,我们引入了 CNN-O-ELMNet,这是一种轻量级分类模型,旨在有效检测各种肺部疾病,超越了特定疾病 CAD 系统的局限性和深度学习模型的复杂性。该模型将用于深度特征提取的卷积神经网络与优化的极限学习机相结合,利用帝国主义竞争算法增强预测能力。然后,我们使用肺部疾病的基准数据集评估了 CNN-O-ELMNet 的有效性:区分气胸与非气胸、肺结核与正常、肺癌与健康病例。我们的研究结果表明,在肺结核和癌症的二元分类中,CNN-O-ELMNet 的表现明显优于最先进的方法(p < 0.05),准确率分别达到 97.85% 和 97.70%,同时保持了较低的计算复杂度,只有 2481 个可训练参数。我们还扩展了该模型,根据布里夏评分对肺病严重程度进行分类。该模型在轻度、中度和重度病例的多类评估中达到了 96.20% 的准确率,因此适合部署在轻型医疗保健设备中。
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