从显微图像中评估用于HPV病毒可视化的GAN结构

Xiaohong W. Gao, X. Wen, Dong Li, Weiping Liu, Jichun Xiong, Bin Xu, Juan Liu, Heng Zhang, Xuefeng Liu
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引用次数: 3

摘要

人乳头瘤病毒(HPV)仍然是病毒诱发癌症的主要原因,其典型直径为52至55nm。因此,通常维持在每像素100纳米的分辨率的传统光学显微镜无法检测到它。本研究探讨了可视化HPV的四种最先进的生成对抗网络(gan)。评估是通过计算被正确识别的HPV簇以及药物处理的培养细胞来实现的,即没有HPV。CycleGAN、Pix2pix、ESRGAN和Pix2pixHD的平均敏感性和特异性分别为78.81%、76.37%、76.62%和84.71%。对于ESRGAN,通过在低分辨率和高分辨率(x4)图像之间进行配对来进行训练。对于其他三个网络,从原始的原始图像到他们的彩色地图进行翻译,这些地图已经进行了高斯滤波,以便在视觉上识别HPV集群。Pix2pixHD表现最好。
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Evaluation of GAN Architectures For Visualisation of HPV Viruses From Microscopic Images
Human papillomavirus (HPV) remains a leading cause of virus-induced cancers and has a typical size of 52 to 55nm in diameter. Hence conventional light microscopy that usually sustains a resolution at $\sim$ 100nm per pixel falls short of detecting it. This study explores four state of the art generative adversarial networks (GANs) for visualising HPV. The evaluation is achieved by counting the HPV clusters that are corrected identified as well as drug treated cultured cells, i.e. no HPVs. The average sensitivity and specificity are 78.81%, 76.37%, 76.62% and 84.71% for CycleGAN, Pix2pix, ESRGAN and Pix2pixHD respectively. For ESRGAN, the training takes place by matching pairs between low and high resolution (x4) images. For the other three networks, the translation is performed from original raw images to their coloured maps that have undertaken Gaussian filtering in order to discern HPV clusters visually. Pix2pixHD appears to perform the best.
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