easyplater: The easy way to generate microplate designs deconvolved from multivariate clinical data
Avigail Taylor, Micah P. Fletcher

TL;DR
easyplater is an R package that simplifies the design of microplates for clinical studies by optimizing sample placement to reduce confounding effects, thereby saving researcher time and improving data quality.
Contribution
It introduces a novel scoring metric, a network-based sample grouping, and an efficient search method to automate and improve microplate design process.
Findings
Outperforms existing methods in plate design quality.
Reduces researcher intervention time.
Enhances data deconvolution in high-throughput studies.
Abstract
Microplate-based 'omic studies of large clinical cohorts can massively accelerate biomedical research, but experimental power and veracity may be negatively impacted when plate positional effects confound clinical variables of interest. Plate designs must therefore deconvolve this technical and biological variation, and several computational approaches now exist to achieve this. However, even the most advanced of these methods requires too much user intervention to ensure designs adhere to spatial constraints. Here, we aim to significantly reduce researcher-hours spent in plate design with three innovations: First, we propose a weighted, multivariate plate design score that uses a novel metric of spatial autocorrelation to reward designs where similar samples are in distal wells, and which also incorporates penalties for local, variable-wise homogeneous regions; Next, we use a…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Genetic Associations and Epidemiology · Statistical Methods in Clinical Trials
