Pneumonia is one of the major reasons for child mortality especially in income-deprived regions of the world. Although it can be detected and treated with very less sophisticated instruments and medication, Pneumonia detection still remains a major concern in developing countries. Computer-aided based diagnosis (CAD) systems can be used in such countries due to their lower operating costs than professional medical experts. In this paper, we propose a CAD system for Pneumonia detection from Chest X-rays, using the concepts of deep learning and a meta-heuristic algorithm. We first extract deep features from the pre-trained ResNet50, fine-tuned on a target Pneumonia dataset. Then, we propose a feature selection technique based on particle swarm optimization (PSO), which is modified using a memory-based adaptation parameter, and enriched by incorporating an altruistic behavior into the agents. We name our feature selection method as adaptive and altruistic PSO (AAPSO). The proposed method successfully eliminates non-informative features obtained from the ResNet50 model, thereby improving the Pneumonia detection ability of the overall framework. Extensive experimentation and thorough analysis on a publicly available Pneumonia dataset establish the superiority of the proposed method over several other frameworks used for Pneumonia detection. Apart from Pneumonia detection, AAPSO is further evaluated on some standard UCI datasets, gene expression datasets for cancer prediction and a COVID-19 prediction dataset. The overall results are satisfactory, thereby confirming the usefulness of AAPSO in dealing with varied real-life problems. The supporting source codes of this work can be found at https://github.com/rishavpramanik/AAPSO
翻译:肺炎是造成儿童死亡率的主要原因之一,特别是在世界上收入匮乏的地区。虽然可以检测到肺炎检测,并且用非常不那么先进的仪器和药物治疗,但肺炎检测仍然是发展中国家的一个主要问题。由于计算机辅助诊断系统(CAD)比专业医学专家的操作成本低,因此可以在这些国家使用计算机辅助诊断系统(CAD)系统。在本文中,我们建议采用深层次学习和超重算法的概念,从胸透透透透透透透透透透透透透透透透透透透透透透透透,我们首先从受过训练的ResNet50模型中提取了深度特征,从而改进了对内透透透透透透透透透透透透析结果的PSOA值数据框架。我们把我们的特征选择方法命名为适应性和高压透透透透透透透透透透光PSOSO(AAP)系统。我们提出的方法成功地消除了ResNet50模型中的一些非信息化特征,从而改进了内空透透透透透透透透透析结果的PSOA-AP结果框架。