Trivizakis Eleftherios, Tsiknakis Nikos, Vassalou Evangelia E, Papadakis Georgios Z, Spandidos Demetrios A, Sarigiannis Dimosthenis, Tsatsakis Aristidis, Papanikolaou Nikolaos, Karantanas Apostolos H, Marias Kostas
Computational Biomedicine Laboratory (CBML), Foundation for Research and Technology Hellas (FORTH), 70013 Heraklion, Greece.
Department of Radiology, Medical School, University of Crete, 71003 Heraklion, Greece.
Exp Ther Med. 2020 Nov;20(5):78. doi: 10.3892/etm.2020.9210. Epub 2020 Sep 11.
The coronavirus pandemic and its unprecedented consequences globally has spurred the interest of the artificial intelligence research community. A plethora of published studies have investigated the role of imaging such as chest X-rays and computer tomography in coronavirus disease 2019 (COVID-19) automated diagnosis. Οpen repositories of medical imaging data can play a significant role by promoting cooperation among institutes in a world-wide scale. However, they may induce limitations related to variable data quality and intrinsic differences due to the wide variety of scanner vendors and imaging parameters. In this study, a state-of-the-art custom U-Net model is presented with a dice similarity coefficient performance of 99.6% along with a transfer learning VGG-19 based model for COVID-19 versus pneumonia differentiation exhibiting an area under curve of 96.1%. The above was significantly improved over the baseline model trained with no segmentation in selected tomographic slices of the same dataset. The presented study highlights the importance of a robust preprocessing protocol for image analysis within a heterogeneous imaging dataset and assesses the potential diagnostic value of the presented COVID-19 model by comparing its performance to the state of the art.
新冠疫情及其在全球范围内造成的前所未有的后果激发了人工智能研究界的兴趣。大量已发表的研究探讨了胸部X光和计算机断层扫描等成像技术在2019冠状病毒病(COVID-19)自动诊断中的作用。医学影像数据的开放存储库通过促进全球范围内各机构之间的合作可以发挥重要作用。然而,由于扫描仪供应商和成像参数种类繁多,它们可能会导致与数据质量变化和内在差异相关的局限性。在本研究中,提出了一种先进的定制U-Net模型,其骰子相似系数性能达到99.6%,同时还提出了一种基于迁移学习VGG-19的模型,用于COVID-19与肺炎的鉴别,曲线下面积为96.1%。与在同一数据集的选定断层切片上未进行分割训练的基线模型相比,上述结果有了显著改善。本研究强调了在异构成像数据集中进行图像分析时采用稳健预处理协议的重要性,并通过将其性能与现有技术进行比较来评估所提出的COVID-19模型的潜在诊断价值。