Resetting the baseline: CT-based COVID-19 diagnosis with Deep Transfer Learning is not as accurate as widely thought

F. Altaf, S. M. Islam, Naveed Akhtar
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引用次数: 1

Abstract

Deep learning is gaining instant popularity in computer aided diagnosis of COVID-19. Due to the high sensitivity of Computed Tomography (CT) to this disease, CT-based COVID-19 detection with visual models is currently at the forefront of medical imaging research. Outcomes published in this direction are frequently claiming highly accurate detection under deep transfer learning. This is leading medical technologists to believe that deep transfer learning is the mainstream solution for the problem. However, our critical analysis of the literature reveals an alarming performance disparity between different published results. Hence, we conduct a systematic thorough investigation to analyze the effectiveness of deep transfer learning for COVID-19 detection with CT images. Exploring 14 state-of-the-art visual models with over 200 model training sessions, we conclusively establish that the published literature is frequently overestimating transfer learning performance for the problem, even in the prestigious scientific sources. The roots of overestimation trace back to inappropriate data curation. We also provide case studies that consider more realistic scenarios, and establish transparent baselines for the problem. We hope that our reproducible investigation will help in curbing hype-driven claims for the critical problem of COVID-19 diagnosis, and pave the way for a more transparent performance evaluation of techniques for CT-based COVID-19 detection.
重置基线:基于ct的COVID-19诊断与深度迁移学习并不像人们普遍认为的那样准确
深度学习在新型冠状病毒感染症(COVID-19)的计算机辅助诊断中迅速普及。由于计算机断层扫描(CT)对该病的高灵敏度,基于CT的视觉模型检测COVID-19是目前医学影像学研究的前沿。在这个方向上发表的成果经常声称深度迁移学习下的检测非常准确。这使得医疗技术专家相信深度迁移学习是解决这个问题的主流方法。然而,我们对文献的批判性分析揭示了不同发表结果之间惊人的表现差异。因此,我们进行了系统深入的研究,分析深度迁移学习在CT图像检测COVID-19中的有效性。研究了14个最先进的视觉模型和200多个模型训练课程,我们最终确定,即使在著名的科学来源中,已发表的文献也经常高估迁移学习的性能。高估的根源可以追溯到不恰当的数据管理。我们还提供了考虑更现实场景的案例研究,并为问题建立了透明的基线。我们希望我们的可重复研究有助于遏制对COVID-19诊断这一关键问题的炒作,并为基于ct的COVID-19检测技术的更透明的性能评估铺平道路。
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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