Vijay Kumar Janga, Harshavardhan A, Bhukya Hanumanthu, Krishna Prasad A V
BuleHora University, Ethiopia.
Department of CSE, SR University, Warnagal, India.
Mater Today Proc. 2020 Oct 14. doi: 10.1016/j.matpr.2020.10.053.
The domain of medical diagnosis and predictive analytics is one of the key domains of research with enormous dimensions whereby the diseases of different types can be predicted. Nowadays, there is a huge panic of impact and rapid mutation of the COVID-19 virus impression. The world is getting affected by this virus to a huge extent and there is no vaccine developed so far. India is also having more than 10,000 patients with than 300 deceased. The global human community is having around 20 lacs of Coronavirus patients. The Generative Adversarial Network (GAN) is the contemporary high-performance approach in which the use of advanced neural networks is done for the cavernous analytics of the images and multimedia data. In this research work, the analytics of key points from medical images of the COVID-19 dataset is to be presented using which the diagnosis and predictions can be done for the patients. The GANs are used for the generation, transformation as well as presentation of the dataset and key points using advanced deep learning models which can analyze the patterns in the medical images including X-Ray, CT Scan, and many others. Using such approaches with the integration of GANs, the overall predictive analytics can be made high performance aware as compared to the classical neural networks with multiple layers. In this research manuscript, the inscription of work is projected on the benchmark datasets with the advanced scripting so that the predictive mining and knowledge discovery can be done effectively with more accuracy.
医学诊断和预测分析领域是一个具有巨大规模的关键研究领域,通过该领域可以预测不同类型的疾病。如今,新冠病毒的影响和快速变异引发了巨大恐慌。世界在很大程度上受到这种病毒的影响,而且迄今为止尚未研发出疫苗。印度也有超过10000名患者,其中300多人死亡。全球人类社区大约有200万冠状病毒患者。生成对抗网络(GAN)是一种当代高性能方法,其中使用先进的神经网络对图像和多媒体数据进行深入分析。在这项研究工作中,将展示对新冠病毒数据集医学图像关键点的分析,通过这些分析可以对患者进行诊断和预测。GAN用于使用先进的深度学习模型生成、转换以及呈现数据集和关键点,这些模型可以分析包括X光、CT扫描等在内的医学图像中的模式。与具有多层的经典神经网络相比,通过将GAN集成到此类方法中,可以使整体预测分析具有更高的性能。在本研究手稿中,通过先进的脚本将工作记录投影到基准数据集上,以便能够更准确有效地进行预测挖掘和知识发现。