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FluoroCellTrack: An algorithm for automated analysis of high-throughput droplet microfluidic data

机译:FluoroCellTrack:一种自动分析高通量液滴微流数据的算法

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摘要

High-throughput droplet microfluidic devices with fluorescence detection systems provide several advantages over conventional end-point cytometric techniques due to their ability to isolate single cells and investigate complex intracellular dynamics. While there have been significant advances in the field of experimental droplet microfluidics, the development of complementary software tools has lagged. Existing quantification tools have limitations including interdependent hardware platforms or challenges analyzing a wide range of high-throughput droplet microfluidic data using a single algorithm. To address these issues, an all-in-one Python algorithm called FluoroCellTrack was developed and its wide-range utility was tested on three different applications including quantification of cellular response to drugs, droplet tracking, and intracellular fluorescence. The algorithm imports all images collected using bright field and fluorescence microscopy and analyzes them to extract useful information. Two parallel steps are performed where droplets are detected using a mathematical Circular Hough Transform (CHT) while single cells (or other contours) are detected by a series of steps defining respective color boundaries involving edge detection, dilation, and erosion. These feature detection steps are strengthened by segmentation and radius/area thresholding for precise detection and removal of false positives. Individually detected droplet and contour center maps are overlaid to obtain encapsulation information for further analyses. FluoroCellTrack demonstrates an average of a ~92–99% similarity with manual analysis and exhibits a significant reduction in analysis time of 30 min to analyze an entire cohort compared to 20 h required for manual quantification.
机译:具有荧光检测系统的高通量微滴微流控设备具有分离传统细胞和研究复杂细胞内动力学的能力,与传统的终点细胞技术相比,具有许多优势。尽管在实验性微滴微流控领域取得了重大进展,但是互补软件工具的开发却滞后了。现有的定量工具具有局限性,包括相互依赖的硬件平台或使用单个算法分析各种高通量液滴微流数据的挑战。为了解决这些问题,开发了一种名为FluoroCellTrack的多功能Python算法,并在三种不同的应用程序(包括对细胞对药物的反应定量,液滴跟踪和细胞内荧光)中测试了其广泛的实用性。该算法导入所有使用明场和荧光显微镜收集的图像,并对它们进行分析以提取有用的信息。执行两个并行步骤,其中使用数学环形霍夫变换(CHT)检测液滴,同时通过一系列步骤定义单个颜色边界的单个步骤(或其他轮廓)检测单个单元格(或其他轮廓),包括边界检测,扩张和腐蚀。这些特征检测步骤通过细分和半径/区域阈值得到加强,以精确检测和消除误报。单独检测到的液滴和轮廓中心图会重叠,以获得封装信息,以供进一步分析。 FluoroCellTrack证明与手动分析的平均相似度为〜92–99%,与整个手动分析所需的20 h相比,分析整个队列的分析时间显着减少了30分钟。

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