Poon Steven S S, Wong Jason T, Saunders Darren N, Ma Qianli C, McKinney Steven, Fee John, Aparicio Samuel A J R
Department of Molecular Oncology, British Columbia Cancer Research Centre, Vancouver, BC, Canada, V5Z1L3.
Cytometry A. 2008 Oct;73(10):904-17. doi: 10.1002/cyto.a.20624.
High-content microscopic screening systems are powerful tools for extracting quantitative multiparameter measures from large number of cells under numerous conditions. These systems perform well in applications that monitor the presence of objects, but lack in their ability to accurately estimate object intensities and summarize these findings due to variations in background, aberrations in illumination, and variability in staining over the image and/or sample wells. We present effective and automated methods that are applicable to analyzing intensity-based cell cycle assays under high-throughput screening conditions. We characterize the system aberration response from images of calibration beads and then enhance the detection and segmentation accuracy of traditional algorithms by preprocessing images for local background variations. We also provide a rapid, adaptive, cell-cycle partitioning algorithm to characterize each sample well based on the estimated locally and globally corrected cell intensity measures of BrdU and DAPI incorporation. We demonstrated the utility and range of our cell ploidy and probe density measurement methods in a pilot screen using a siRNA library against 779 human protein kinases. With our method, multiple image-based quantitative phenotypes can be realized from a single high-throughput image-based microtiter-plate screen.
高内涵显微镜筛选系统是在众多条件下从大量细胞中提取定量多参数测量值的强大工具。这些系统在监测物体存在的应用中表现良好,但由于背景变化、光照像差以及图像和/或样品孔上染色的变异性,它们在准确估计物体强度和总结这些发现方面能力不足。我们提出了适用于在高通量筛选条件下分析基于强度的细胞周期测定的有效且自动化的方法。我们从校准珠的图像中表征系统像差响应,然后通过对局部背景变化进行图像预处理来提高传统算法的检测和分割精度。我们还提供了一种快速、自适应的细胞周期划分算法,以基于估计的局部和全局校正的BrdU和DAPI掺入的细胞强度测量值来表征每个样品孔。我们在使用针对779种人类蛋白激酶的siRNA文库的初步筛选中展示了我们的细胞倍性和探针密度测量方法的实用性和范围。通过我们的方法,可以从单个基于高通量图像的微量滴定板筛选中实现多种基于图像的定量表型。