Deep Greedy Network: A Tool for Medical Diagnosis on Exiguous Dataset of COVID-19

Sumagna Dey, S. Biswas, Srija Nandi, Subhrapratim Nath, Indrajit Das
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引用次数: 1

Abstract

The extensive outbreak of COVID-19 has created a worldwide health crisis. Transmission of this disease occurs among people through droplets which causes severe respiratory distress and in turn can also lead to fatal death. At the pinnacle of this pandemic, scientists endeavor to discover the medication for the COVID-19 victims. Artificial Intelligence algorithms, especially, deep learning, on the other hand, is used for the diagnosis of the COVID-19 patients but this requires an enormous radiographic data set to effectively provide an optimized outcome for a particular scenario. This work presents a new technique called ‘Deep Greedy Network’ which will work efficiently with a finite number of datasets. In spite of peculiarity caused due to limited dataset, the anomaly of overfitting and underfitting could be effectively overcome using the proposed algorithm. This, in turn, is simultaneously going to be both cost-effective and efficient. The proposed architecture ensures the efficacious result after the proper judgement of the trained model on the given X-ray datasets of COVID-19 cases.
深度贪婪网络:在 COVID-19 稀疏数据集上进行医学诊断的工具
COVID-19 的大面积爆发引发了一场全球性的健康危机。这种疾病通过飞沫在人与人之间传播,造成严重的呼吸困难,进而导致死亡。在这一流行病的巅峰时期,科学家们正在努力寻找治疗 COVID-19 患者的药物。另一方面,人工智能算法,尤其是深度学习,被用于 COVID-19 患者的诊断,但这需要庞大的影像数据集,才能有效地为特定场景提供优化结果。本研究提出了一种名为 "深度贪婪网络 "的新技术,它能在有限数量的数据集上高效工作。尽管数据集有限会导致一些特殊情况,但使用所提出的算法可以有效克服过拟合和欠拟合的异常情况。反过来,这也同时具有成本效益和效率。在对给定的 COVID-19 病例 X 射线数据集进行正确判断后,所提出的架构确保了训练模型的有效结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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