Qureshi Kashif Naseer, Alhudhaif Adi, Qureshi Maria Ahmed, Jeon Gwanggil
Department of Computer Science, Bahria University, Islamabad, Pakistan.
Department of Computer Science, College of Computer Engineering and Sciences in Al-kharj, Prince Sattam bin Abdulaziz University, P.O. Box 151, Al‑Kharj 11942, Saudi Arabia.
Comput Electr Eng. 2021 Oct;95:107411. doi: 10.1016/j.compeleceng.2021.107411. Epub 2021 Sep 6.
Coronavirus is an infectious life-threatening disease and is mainly transmitted through infected person coughs, sneezes, or exhales. This disease is a global challenge that demands advanced solutions to address multiple dimensions of this pandemic for health and wellbeing. Different types of medical and technological-based solutions have been proposed to control and treat COVID-19. Machine learning is one of the technologies used in Magnetic Resonance Imaging (MRI) classification whereas nature-inspired algorithms are also adopted for image optimization. In this paper, we combined the machine learning and nature-inspired algorithm for brain MRI images of COVID-19 patients namely Machine Learning and Nature Inspired Model for Coronavirus (MLNI-COVID-19). This model improves the MRI image classification and optimization for better diagnosis. This model will improve the overall performance especially the area of brain images that is neglected due to the unavailability of the dataset. COVID-19 has a serious impact on the patient brain. The proposed model will help to improve the diagnosis process for better medical decisions and performance. The proposed model is evaluated with existing algorithms and achieved better performance in terms of sensitivity, specificity, and accuracy.
冠状病毒是一种危及生命的传染病,主要通过感染者咳嗽、打喷嚏或呼气传播。这种疾病是一项全球性挑战,需要先进的解决方案来应对这场大流行在健康和福祉方面的多个层面。人们已经提出了不同类型的基于医学和技术的解决方案来控制和治疗新冠病毒。机器学习是用于磁共振成像(MRI)分类的技术之一,而受自然启发的算法也被用于图像优化。在本文中,我们将机器学习和受自然启发的算法相结合,用于新冠病毒患者的脑部MRI图像,即冠状病毒的机器学习与自然启发模型(MLNI-COVID-19)。该模型改进了MRI图像分类和优化,以实现更好的诊断。该模型将提高整体性能,特别是由于数据集不可用而被忽视的脑部图像区域。新冠病毒对患者大脑有严重影响。所提出的模型将有助于改进诊断过程,以便做出更好的医疗决策并提高性能。所提出的模型与现有算法进行了评估,并在敏感性、特异性和准确性方面取得了更好的性能。