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Guidelines for Genome-Scale Analysis of Biological Rhythms.

Authors :
Hughes ME
Abruzzi KC
Allada R
Anafi R
Arpat AB
Asher G
Baldi P
de Bekker C
Bell-Pedersen D
Blau J
Brown S
Ceriani MF
Chen Z
Chiu JC
Cox J
Crowell AM
DeBruyne JP
Dijk DJ
DiTacchio L
Doyle FJ
Duffield GE
Dunlap JC
Eckel-Mahan K
Esser KA
FitzGerald GA
Forger DB
Francey LJ
Fu YH
Gachon F
Gatfield D
de Goede P
Golden SS
Green C
Harer J
Harmer S
Haspel J
Hastings MH
Herzel H
Herzog ED
Hoffmann C
Hong C
Hughey JJ
Hurley JM
de la Iglesia HO
Johnson C
Kay SA
Koike N
Kornacker K
Kramer A
Lamia K
Leise T
Lewis SA
Li J
Li X
Liu AC
Loros JJ
Martino TA
Menet JS
Merrow M
Millar AJ
Mockler T
Naef F
Nagoshi E
Nitabach MN
Olmedo M
Nusinow DA
Ptáček LJ
Rand D
Reddy AB
Robles MS
Roenneberg T
Rosbash M
Ruben MD
Rund SSC
Sancar A
Sassone-Corsi P
Sehgal A
Sherrill-Mix S
Skene DJ
Storch KF
Takahashi JS
Ueda HR
Wang H
Weitz C
Westermark PO
Wijnen H
Xu Y
Wu G
Yoo SH
Young M
Zhang EE
Zielinski T
Hogenesch JB
Source :
Journal of biological rhythms [J Biol Rhythms] 2017 Oct; Vol. 32 (5), pp. 380-393. Date of Electronic Publication: 2017 Nov 03.
Publication Year :
2017

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.

Details

Language :
English
ISSN :
1552-4531
Volume :
32
Issue :
5
Database :
MEDLINE
Journal :
Journal of biological rhythms
Publication Type :
Academic Journal
Accession number :
29098954
Full Text :
https://doi.org/10.1177/0748730417728663