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High-Throughput Analysis of Clinical Flow Cytometry Data by Automated Gating

机译:通过自动门控对临床流式细胞术数据进行高通量分析

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Advancements in flow cytometers with capability to measure 15 or more parameters have enabled us to characterize cell populations at unprecedented levels of detail. Beyond discovery research, there is now a growing demand to dive deeper into evaluating the immune response in clinical trials for immune modulating compounds. However, for high-volume, complex flow cytometry data generated in clinical trials, conventional manual gating remains the standard of practice. Traditional manual gating is resource intense and becomes a bottleneck and an impractical method to complete high volumes of flow cytometry data analysis. Current efforts to automate “manual gating” have shown that computational algorithms can facilitate the analysis of daunting multi-parameter data; however, a greater degree of precision in comparison with traditional manual gating is needed for wide-scale adoption of automated gating methods. In an effort to more closely follow the manual gating process, our automated gating pipeline was created to include negative controls (Fluorescence Minus One [FMO]) to enhance the reliability of gate placement. We demonstrate that use of an automated pipeline, heavily relying on FMO controls for population discrimination, can analyze multi-parameter, large-scale clinical datasets with comparable precision and accuracy to traditional manual gating.
机译:流式细胞仪能够测量15个或更多参数的进步使我们能够以前所未有的详细程度表征细胞群体。除了发现研究以外,现在对在免疫调节化合物的临床试验中深入评估免疫应答的需求也越来越高。但是,对于临床试验中生成的大量复杂流式细胞术数据,常规的手动门控仍然是实践标准。传统的手动门控需要大量资源,并且成为完成大量流式细胞术数据分析的瓶颈和不切实际的方法。当前使“手动门控”自动化的努力表明,计算算法可以促进对艰巨的多参数数据的分析。但是,与传统的手动门控相比,要广泛采用自动门控方法需要更高的精度。为了更严格地遵循手动选通过程,我们创建了自动选通管线,其中包括负控制(荧光减一[FMO])以增强浇口放置的可靠性。我们证明使用高度依赖FMO控件进行人口歧视的自动化管道可以分析多参数,大规模临床数据集,其准确性和准确性与传统手动门控相当。

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