학술논문

Guidelines for Genome-Scale Analysis of Biological Rhythms
Document Type
article
Author
Hughes, Michael EAbruzzi, Katherine CAllada, RaviAnafi, RonArpat, Alaaddin BulakAsher, GadBaldi, Pierrede Bekker, CharissaBell-Pedersen, DeborahBlau, JustinBrown, SteveCeriani, M FernandaChen, ZhengChiu, Joanna CCox, JuergenCrowell, Alexander MDeBruyne, Jason PDijk, Derk-JanDiTacchio, LucianoDoyle, Francis JDuffield, Giles EDunlap, Jay CEckel-Mahan, KristinEsser, Karyn AFitzGerald, Garret AForger, Daniel BFrancey, Lauren JFu, Ying-HuiGachon, FrédéricGatfield, Davidde Goede, PaulGolden, Susan SGreen, CarlaHarer, JohnHarmer, StaceyHaspel, JeffHastings, Michael HHerzel, HanspeterHerzog, Erik DHoffmann, ChristyHong, ChristianHughey, Jacob JHurley, Jennifer Mde la Iglesia, Horacio OJohnson, CarlKay, Steve AKoike, NobuyaKornacker, KarlKramer, AchimLamia, KatjaLeise, TanyaLewis, Scott ALi, JiajiaLi, XiaodongLiu, Andrew CLoros, Jennifer JMartino, Tami AMenet, Jerome SMerrow, MarthaMillar, Andrew JMockler, ToddNaef, FelixNagoshi, EmiNitabach, Michael NOlmedo, MariaNusinow, Dmitri APtáček, Louis JRand, DavidReddy, Akhilesh BRobles, Maria SRoenneberg, TillRosbash, MichaelRuben, Marc DRund, Samuel SCSancar, AzizSassone-Corsi, PaoloSehgal, AmitaSherrill-Mix, ScottSkene, Debra JStorch, Kai-FlorianTakahashi, Joseph SUeda, Hiroki RWang, HanWeitz, CharlesWestermark, Pål OWijnen, HermanXu, YingWu, GangYoo, Seung-HeeYoung, MichaelZhang, Eric ErquanZielinski, TomaszHogenesch, John B
Source
Journal of Biological Rhythms. 32(5)
Subject
Biological Sciences
Bioinformatics and Computational Biology
Human Genome
Networking and Information Technology R&D (NITRD)
Genetics
Generic health relevance
Biostatistics
Circadian Rhythm
Computational Biology
Genome
Genomics
Humans
Metabolomics
Proteomics
Software
Statistics as Topic
Systems Biology
circadian rhythms
diurnal rhythms
computational biology
functional genomics
systems biology
guidelines
biostatistics
RNA-seq
ChIP-seq
proteomics
metabolomics
Physiology
Neurosciences
Medical Physiology
Neurology & Neurosurgery
Zoology
Biological psychology
Language
Abstract
Genome biology approaches have made enormous contributions to our understanding of biological rhythms, particularly in identifying outputs of the clock, including RNAs, proteins, and metabolites, whose abundance oscillates throughout the day. These methods hold significant promise for future discovery, particularly when combined with computational modeling. However, genome-scale experiments are costly and laborious, yielding "big data" that are conceptually and statistically difficult to analyze. There is no obvious consensus regarding design or analysis. Here we discuss the relevant technical considerations to generate reproducible, statistically sound, and broadly useful genome-scale data. Rather than suggest a set of rigid rules, we aim to codify principles by which investigators, reviewers, and readers of the primary literature can evaluate the suitability of different experimental designs for measuring different aspects of biological rhythms. We introduce CircaInSilico, a web-based application for generating synthetic genome biology data to benchmark statistical methods for studying biological rhythms. Finally, we discuss several unmet analytical needs, including applications to clinical medicine, and suggest productive avenues to address them.