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Edge Effect Detection for Real-time Cellular Analyzer using Functional Principal Component Analysis

机译:基于功能主成分分析的实时细胞分析仪边缘效应检测

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To detect cytotoxicity of chemicals, many instruments have been developed. One popular tool is real time cellular analyzer (RTCA). Nevertheless, abnormal time-dependent cellular response curves (TCRCs) always occur and disturb experimental results when the wells are at the edge of E-plate. Therefore, a method is proposed to detect edge effect which is detrimental to the experimental quality. In this work, these TCRCs were considered as observations of a random variable on a functional space and we utilized Functional Principal Component Analysis (FPCA) to extract principal components of TCRCs to find unusual curves. The average normalized cell index (NCI) of the inner wells was defined as the standard. Then all TCRCs were analyzed by FPCA to find abnormal TCRCs which would be removed automatically by computer. This approach has never been applied in RTCA system to determine edge effect. Experimental results indicate that the FPCA algorithm achieves a comparable detection rate.
机译:为了检测化学物质的细胞毒性,已经开发了许多仪器。一种流行的工具是实时细胞分析仪(RTCA)。但是,当孔位于E板边缘时,总是会出现异常的时间依赖性细胞反应曲线(TCRC),并干扰实验结果。因此,提出了一种不利于实验质量的边缘效应检测方法。在这项工作中,这些TCRC被视为对功能空间上随机变量的观察,并且我们利用功能主成分分析(FPCA)提取了TCRC的主要成分以查找异常曲线。内孔的平均归一化细胞指数(NCI)被定义为标准。然后,FPCA对所有TCRC进行了分析,以发现异常TCRC,这些异常将由计算机自动删除。该方法从未在RTCA系统中用于确定边缘效应。实验结果表明,FPCA算法可实现可比的检测率。

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