ALOHA: Aggregated local extrema splines for high-throughput dose-response analysis
Autor: | Sarah E. Davidson, Matthew W. Wheeler, Siva Sivaganesan, Mario Medvedovic, Scott S. Auerbach |
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Rok vydání: | 2021 |
Předmět: |
Computer science
Health Toxicology and Mutagenesis Response analysis Bayesian probability Expression (computer science) Toxicology computer.software_genre Article Computer Science Applications Maxima and minima Aloha Parametric model Benchmark (computing) Data mining Biological system Throughput (business) computer Parametric statistics |
Zdroj: | Comput Toxicol |
Popis: | Computational methods for genomic dose-response integrate dose-response modeling with bioinformatics tools to evaluate changes in molecular and cellular functions related to pathogenic processes. These methods use parametric models to describe each gene9s dose-response, but such models may not adequately capture expression changes. Additionally, current approaches do not consider gene co-expression networks. When assessing co-expression networks, one typically does not consider the dose-response relationship, resulting in `co-regulated9 gene sets containing genes having different dose-response patterns. To avoid these limitations, we develop an analysis pipeline called Aggregated Local Extrema Splines for High-throughput Analysis (ALOHA), which computes individual genomic dose-response functions using a flexible class Bayesian shape constrained splines and clusters gene co-regulation based upon these fits. Using splines, we reduce information loss due to parametric lack-of-fit issues, and because we cluster on dose-response relationships, we better identify co-regulation clusters for genes that have co-expressed dose-response patterns from chemical exposure. The clustered pathways can then be used to estimate a dose associated with a pre-specified biological response, i.e., the benchmark dose (BMD), and approximate a point of departure dose corresponding to minimal adverse response in the whole tissue/organism. We compare our approach to current parametric methods and our biologically enriched gene sets to cluster on normalized expression data. Using this methodology, we can more effectively extract the underlying structure leading to more cohesive estimates of gene set potency. Key words: Biological Pathways, Genomic Benchmark Dose, High throughput data, Bayesian Clustering |
Databáze: | OpenAIRE |
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