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Monitoring of Adherent Live Cells Morphology Using the Undecimated Wavelet Transform Multivariate Image Analysis (UWT-MIA)

机译:使用未传定的小波变换多变量图像分析(UWT-MIA)监测粘附活细胞形态的监测

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Cell morphology is an important macroscopic indicator of cellular physiology and is increasingly used as a mean of probing culture state in vitro. Phase contrast microscopy (PCM) is a valuable tool for observing live cells morphology over long periods of time with minimal culture artifact. Two general approaches are commonly used to analyze images: individual object segmentation and characterization by pattern recognition. Single-cell segmentation is difficult to achieve in PCM images of adherent cells since their contour is often irregular and blurry, and the cells bundle together when the culture reaches confluence. Alternatively, pattern recognition approaches such as the undecimated wavelet transform multivariate image analysis (UWT-MIA), allow extracting textural features from PCM images that are correlated with cellular morphology. A partial least squares (PLS) regression model built using textural features froma set of 200 ground truth images was shown to predict the distribution of cellular morphological features (major and minor axes length, orientation, and roundness) with good accuracy for most images. The PLS models were then applied on a large dataset of 631,136 images collected from live myoblast cell cultures acquired under different conditions and grown in two different culture media. The method was found sensitive to morphological changes due to cell growth (culture time) and those introduced by the use of different culture media, and was able to distinguish both sources of variations. The proposed approach is promising for application on large datasets of PCM live-cell images to assess cellular morphology and growth kinetics in real-time which could be beneficial for high-throughput screening as well as automated cell culture kinetics assessment and control applications. (C) 2016 Wiley Periodicals, Inc.
机译:细胞形态是细胞生理学的重要宏观指示剂,越来越多地用作体外探测培养状态的平均值。相位对比显微镜(PCM)是一种有价值的工具,用于观察长时间的活细胞形态,具有最小的文化伪影。通常用于分析图像:通过模式识别来分析图像:单个对象分割和表征。在粘附细胞的PCM图像中难以实现单细胞分割,因为它们的轮廓通常是不规则的并且模糊,并且当培养物达到汇合时,细胞束在一起。或者,诸如未发送的小波变换多变量图像分析(UWT-MIA)的模式识别方法,允许从与细胞形态相关的PCM图像中提取纹理特征。使用来自A组200个地面图像的纹理特征构建的部分最小二乘(PLS)回归模型,以预测大多数图像的良好精度来预测蜂窝形态特征(主要和小轴长,方向和圆度)的分布。然后将PLS模型应用于从不同条件下获得的活肌细胞培养物收集的631,136图像的大型数据集,并在两种不同的培养基中生长。发现该方法对由于细胞生长(培养时间)和使用不同培养基引入的那些敏感的方法,并且能够区分两个变化来源。所提出的方法是对PCM Live-Cell图像的大型数据集的应用,以评估实时的细胞形态和生长动力学,这可能是有益的高通量筛选以及自动细胞培养动力学评估和控制应用。 (c)2016 Wiley期刊,Inc。

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