Microcirculation Research Group, Institute of Cardiovascular Sciences, College of Medical and Dental Sciences, University of Birmingham, Edgbaston, Birmingham, United Kingdom.
School of Mathematics, University of Birmingham, Edgbaston, Birmingham, United Kingdom.
PLoS One. 2019 Mar 11;14(3):e0213162. doi: 10.1371/journal.pone.0213162. eCollection 2019.
The ability to image biological tissues is critical to our understanding of a range of systems and processes. In the case of in situ living tissue, such imaging is hampered by the innate mechanical properties of the tissue. In many cases, this provides challenges in how to process large amounts of image data which may contain aberrations from movement. Generally, current tools require the provision of reference images and are unable to maintain temporal correlations within an image set. Here, we describe a tool-Tify-which can accurately predict a numerical quality score versus human scoring and can analyse image sets in a manner that allows the maintenance of temporal relationships. The tool uses regression-based techniques to link image statistics to image quality based on user provided scores from a sample of images. Scores calculated by the software correlate strongly with the scores provided by human users. We identified that, in most cases, the software requires users to score between 20-30 frames in order to be able to accurately calculate the remaining images. Importantly, our results suggest that the software can use coefficients generated from consolidated image sets to process images without the need for additional manual scoring. Finally, the tool is able to use a frame windowing technique to identify the highest quality frame from a moving window, thus retaining macro-chronological connections between frames. In summary, Tify is able to successfully predict the quality of images in an image set based on a small number of sample scores provided by end-users. This software has the potential to improve the effectiveness of biological imaging techniques where motion artefacts, even in the presence of stabilisation, pose a significant problem.
成像生物组织的能力对于我们理解一系列系统和过程至关重要。在原位活体组织的情况下,这种成像受到组织固有机械特性的阻碍。在许多情况下,这在如何处理可能包含运动偏差的大量图像数据方面带来了挑战。通常,当前的工具需要提供参考图像,并且无法在图像集中维持时间相关性。在这里,我们描述了一种工具-Tify-它可以准确地预测数值质量分数与人类评分,并以允许维持时间关系的方式分析图像集。该工具使用基于回归的技术将图像统计信息与基于用户从样本图像提供的分数的图像质量相关联。软件计算的分数与人类用户提供的分数高度相关。我们发现,在大多数情况下,软件要求用户对 20-30 帧进行评分,以便能够准确计算其余的图像。重要的是,我们的结果表明,该软件可以使用从合并的图像集中生成的系数来处理图像,而无需额外的手动评分。最后,该工具能够使用帧窗口技术从移动窗口中识别出质量最高的帧,从而保留帧之间的宏观时间连接。总之,Tify 能够根据最终用户提供的少量样本分数成功预测图像集中的图像质量。该软件有可能提高生物成像技术的有效性,因为即使在存在稳定化的情况下,运动伪影也会带来重大问题。