Designing microplate layouts using artificial intelligence

María Andreína Francisco Rodríguez, Jordi Carreras Puigvert, Ola Spjuth
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引用次数: 0

Abstract

Microplates are indispensable in large-scale biomedical experiments but the physical location of samples and controls on the microplate can significantly affect the resulting data and quality metric values. We introduce a new method based on constraint programming for designing microplate layouts that reduces unwanted bias and limits the impact of batch effects after error correction and normalisation. We demonstrate that our method applied to dose-response experiments leads to more accurate regression curves and lower errors when estimating IC50/EC50, and for drug screening leads to increased precision, when compared to random layouts. It also reduces the risk of inflated scores from common microplate quality assessment metrics such as Z factor and SSMD. We make our method available via a suite of tools (PLAID) including a reference constraint model, a web application, and Python notebooks to evaluate and compare designs when planning microplate experiments.

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利用人工智能设计微孔板布局
微孔板在大规模生物医学实验中是必不可少的,但样品和对照物在微孔板上的物理位置会显著影响所得数据和质量度量值。我们介绍了一种基于约束编程的微板布局设计新方法,该方法减少了不必要的偏差,并限制了纠错和归一化后批次效应的影响。我们证明,与随机布局相比,我们的方法应用于剂量反应实验,在估计IC50/EC50时会产生更准确的回归曲线和更低的误差,而药物筛选则会提高精度。它还降低了常见微板质量评估指标(如Z’因子和SSMD)分数膨胀的风险。我们通过一套工具(PLAID)提供了我们的方法,包括参考约束模型、网络应用程序和Python笔记本,以在规划微板实验时评估和比较设计。
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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
自引率
0.00%
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0
审稿时长
15 days
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