Département d'Informatique, Université du Québec à Montréal, Montréal, QC H3C-3P8, Canada.
McGill University and Genome Quebec Innovation Centre, Montreal, QC H3A-0G1, Canada.
Bioinformatics. 2017 Oct 15;33(20):3258-3267. doi: 10.1093/bioinformatics/btx327.
Considerable attention has been paid recently to improve data quality in high-throughput screening (HTS) and high-content screening (HCS) technologies widely used in drug development and chemical toxicity research. However, several environmentally- and procedurally-induced spatial biases in experimental HTS and HCS screens decrease measurement accuracy, leading to increased numbers of false positives and false negatives in hit selection. Although effective bias correction methods and software have been developed over the past decades, almost all of these tools have been designed to reduce the effect of additive bias only. Here, we address the case of multiplicative spatial bias.
We introduce three new statistical methods meant to reduce multiplicative spatial bias in screening technologies. We assess the performance of the methods with synthetic and real data affected by multiplicative spatial bias, including comparisons with current bias correction methods. We also describe a wider data correction protocol that integrates methods for removing both assay and plate-specific spatial biases, which can be either additive or multiplicative.
The methods for removing multiplicative spatial bias and the data correction protocol are effective in detecting and cleaning experimental data generated by screening technologies. As our protocol is of a general nature, it can be used by researchers analyzing current or next-generation high-throughput screens.
The AssayCorrector program, implemented in R, is available on CRAN.
Supplementary data are available at Bioinformatics online.
最近人们对提高高通量筛选(HTS)和高内涵筛选(HCS)技术的数据质量给予了相当多的关注,这些技术在药物开发和化学毒性研究中得到了广泛应用。然而,实验 HTS 和 HCS 筛选中几种由环境和程序引起的空间偏差会降低测量精度,导致命中选择中的假阳性和假阴性增加。尽管过去几十年来已经开发了有效的偏差校正方法和软件,但几乎所有这些工具都旨在减少加性偏差的影响。在这里,我们解决了乘法空间偏差的情况。
我们引入了三种新的统计方法,旨在减少筛选技术中的乘法空间偏差。我们使用受乘法空间偏差影响的合成数据和真实数据来评估方法的性能,包括与当前偏差校正方法的比较。我们还描述了一种更广泛的数据校正协议,该协议集成了用于去除检测和板特异性空间偏差的方法,这些偏差可以是加性的或乘法的。
用于去除乘法空间偏差的方法和数据校正协议可有效检测和清理筛选技术生成的实验数据。由于我们的协议具有通用性,因此可以供分析当前或下一代高通量筛选的研究人员使用。
在 R 中实现的 AssayCorrector 程序可在 CRAN 上获得。
补充数据可在生物信息学在线获得。