论文标题
高内容筛选质量控制的半监督学习方法的比较
Comparison of semi-supervised learning methods for High Content Screening quality control
论文作者
论文摘要
自动显微镜和定量图像分析的进展已促进了高结构筛查(HCS)作为有效的药物发现和研究工具。尽管HCS提供了从高吞吐量下图像来量化复杂的细胞表型,但该过程可能会被图像畸变所阻塞,例如诸如异位外图像模糊,荧光团饱和度,碎屑,高噪声,高水平的噪声,意外的自动荧光或空图像。尽管此问题在文献中受到了温和的关注,但俯瞰这些人工制品可以严重阻碍下游图像处理任务,并阻碍对微妙表型的检测。因此,在HCS中使用质量控制是主要问题,也是先决条件。在这项工作中,我们评估了不需要大量图像注释的深度学习选项,以便为此问题提供直接且易于使用的半监督学习解决方案。具体而言,我们比较了最近的自我监督和转移学习方法的功效,以提供高吞吐量伪像图像检测器的基础编码器。这项研究的结果表明,转移学习方法应该是此任务的首选,因为它们不仅在这里表现最好,而且具有不需要敏感的超参数设置或大量额外培训的优势。
Progress in automated microscopy and quantitative image analysis has promoted high-content screening (HCS) as an efficient drug discovery and research tool. While HCS offers to quantify complex cellular phenotypes from images at high throughput, this process can be obstructed by image aberrations such as out-of-focus image blur, fluorophore saturation, debris, a high level of noise, unexpected auto-fluorescence or empty images. While this issue has received moderate attention in the literature, overlooking these artefacts can seriously hamper downstream image processing tasks and hinder detection of subtle phenotypes. It is therefore of primary concern, and a prerequisite, to use quality control in HCS. In this work, we evaluate deep learning options that do not require extensive image annotations to provide a straightforward and easy to use semi-supervised learning solution to this issue. Concretely, we compared the efficacy of recent self-supervised and transfer learning approaches to provide a base encoder to a high throughput artefact image detector. The results of this study suggest that transfer learning methods should be preferred for this task as they not only performed best here but present the advantage of not requiring sensitive hyperparameter settings nor extensive additional training.