Iterative-in-iterative super-resolution biomedical imaging using one real image

Yuanzheng Ma, Xinyue Wang, Benqi Zhao, Ying Xiao, Shijie Deng, Jian Song, Xun Guan
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Abstract

Deep learning-based super-resolution models have the potential to revolutionize biomedical imaging and diagnoses by effectively tackling various challenges associated with early detection, personalized medicine, and clinical automation. However, the requirement of an extensive collection of high-resolution images presents limitations for widespread adoption in clinical practice. In our experiment, we proposed an approach to effectively train the deep learning-based super-resolution models using only one real image by leveraging self-generated high resolution images. We employed a mixed metric of image screening to automatically select images with a distribution similar to ground truth, creating an incrementally curated training data set that encourages the model to generate improved images over time. After five training iterations, the proposed deep learning-based super-resolution model experienced a 7.5% and 5.49% improvement in structural similarity and peak-signal-to-noise ratio, respectively. Significantly, the model consistently produces visually enhanced results for training, improving its performance while preserving the characteristics of original biomedical images. These findings indicate a potential way to train a deep neural network in a self-revolution manner independent of real-world human data.
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使用一张真实图像进行迭代的超分辨率生物医学成像
基于深度学习的超分辨率模型通过有效地解决与早期检测、个性化医疗和临床自动化相关的各种挑战,有可能彻底改变生物医学成像和诊断。然而,大量收集高分辨率图像的要求限制了在临床实践中的广泛采用。在我们的实验中,我们提出了一种利用自生成的高分辨率图像,仅使用一张真实图像有效训练基于深度学习的超分辨率模型的方法。我们采用了图像筛选的混合度量来自动选择分布与真实情况相似的图像,创建了一个增量策划的训练数据集,以鼓励模型随着时间的推移生成改进的图像。经过5次训练迭代,提出的基于深度学习的超分辨率模型在结构相似性和峰值信噪比方面分别提高了7.5%和5.49%。值得注意的是,该模型始终如一地产生视觉增强的训练结果,在保留原始生物医学图像特征的同时提高了其性能。这些发现表明了一种以独立于现实世界人类数据的自我革命方式训练深度神经网络的潜在方法。
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