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Robust Estimation of Bioaffinity Assay Fluorescence Signals

机译:生物亲和力测定荧光信号的鲁棒估计

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In this paper, the challenging problem of robust mean-signal estimation of a single-step microparticle bioaffinity assay is investigated. For this purpose, a density estimation-based robust algorithm (DER) was developed. The DER algorithm was comparatively evaluated with four other parameter estimation methods (mean value, median filtering, least square estimation, Welsch robust$m$-estimator). Two important questions were raised and investigated: 1) Which of the five methods can robustly estimate the mean bioaffinity signal? and 2) How many microparticles need to be measured in order to obtain an accurate estimate of the mean signal value? To answer the questions, bootstrap and coefficient of variation (CV) analyses were performed. In the CV analysis, the DER algorithm gave the best results: The CV ranged from 0.8% to 4.9% when the number of microparticles used for the mean signal estimation varied from 800 to 30. In the bootstrap analysis of the standard error, the DER algorithm had the smallest variance. As a conclusion, it can be underlined that: 1) of all methods tested, the DER algorithm gave the most consistent and reproducible results according to the bootstrap and CV analysis; 2) using the DER algorithm accurate estimates could be calculated based on 80–100 particles, corresponding to a typical assay measurement time of 1 min; and 3) the investigated bioaffinity signals contained a large number of outliers (observations that severely deviate from the majority of data) and therefore robust techniques were necessary for the mean signal estimation tasks.
机译:在本文中,研究了单步微粒生物亲和力测定的可靠平均信号估计的挑战性问题。为此目的,开发了基于密度估计的鲁棒算法(DER)。通过其他四个参数估计方法(均值,中值滤波,最小二乘估计,Welsch鲁棒$ m $估计器)对DER算法进行了比较评估。提出并调查了两个重要的问题:1)可以可靠地估计平均生物亲和力信号的五种方法中的哪一种? 2)为了获得对平均信号值的准确估计,需要测量多少个微粒?为了回答这些问题,进行了自举和变异系数(CV)分析。在CV分析中,DER算法给出了最佳结果:当用于平均信号估计的微粒数量从800变为30时,CV范围从0.8%到4.9%。在标准误差的自举分析中,DER该算法具有最小的方差。作为结论,可以强调:1)在所有测试方法中,根据自举和CV分析,DER算法给出了最一致和可重复的结果; 2)使用DER算法,可以基于80–100个粒子计算出准确的估算值,相当于1分钟的典型测定时间; (3)研究的生物亲和力信号包含大量离群值(观察结果严重偏离了大多数数据),因此,对于平均信号估计任务而言,强大的技术必不可少。

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