A reference map of potential determinants for the human serum metabolome.
Adult
Bread
Cohort Studies
Diet
Female
Gastrointestinal Microbiome
/ physiology
Healthy Volunteers
Humans
Life Style
Machine Learning
Male
Metabolome
/ genetics
Metabolomics
Middle Aged
Non-alcoholic Fatty Liver Disease
/ genetics
Oxygenases
/ genetics
Reference Standards
Reproducibility of Results
Seasons
Serum
/ metabolism
Journal
Nature
ISSN: 1476-4687
Titre abrégé: Nature
Pays: England
ID NLM: 0410462
Informations de publication
Date de publication:
12 2020
12 2020
Historique:
received:
23
01
2019
accepted:
29
09
2020
pubmed:
13
11
2020
medline:
7
2
2021
entrez:
12
11
2020
Statut:
ppublish
Résumé
The serum metabolome contains a plethora of biomarkers and causative agents of various diseases, some of which are endogenously produced and some that have been taken up from the environment
Identifiants
pubmed: 33177712
doi: 10.1038/s41586-020-2896-2
pii: 10.1038/s41586-020-2896-2
doi:
Substances chimiques
Oxygenases
EC 1.13.-
PHYHD1 protein, human
EC 1.13.-
Types de publication
Journal Article
Randomized Controlled Trial
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
135-140Subventions
Organisme : Medical Research Council
ID : MR/M004422/1
Pays : United Kingdom
Organisme : European Research Council
Pays : International
Investigateurs
Henrik Vestergaard
(H)
Manimozhiyan Arumugam
(M)
Torben Hansen
(T)
Kristine Allin
(K)
Tue Hansen
(T)
Mun-Gwan Hong
(MG)
Jochen Schwenk
(J)
Ragna Haussler
(R)
Matilda Dale
(M)
Toni Giorgino
(T)
Marianne Rodriquez
(M)
Mandy Perry
(M)
Rachel Nice
(R)
Timothy McDonald
(T)
Andrew Hattersley
(A)
Angus Jones
(A)
Ulrike Graefe-Mody
(U)
Patrick Baum
(P)
Rolf Grempler
(R)
Cecilia Engel Thomas
(CE)
Federico De Masi
(F)
Caroline Anna Brorsson
(CA)
Gianluca Mazzoni
(G)
Rosa Allesøe
(R)
Simon Rasmussen
(S)
Valborg Gudmundsdóttir
(V)
Agnes Martine Nielsen
(AM)
Karina Banasik
(K)
Konstantinos Tsirigos
(K)
Birgitte Nilsson
(B)
Helle Pedersen
(H)
Søren Brunak
(S)
Tugce Karaderi
(T)
Agnete Troen Lundgaard
(AT)
Joachim Johansen
(J)
Ramneek Gupta
(R)
Peter Wad Sackett
(PW)
Joachim Tillner
(J)
Thorsten Lehr
(T)
Nina Scherer
(N)
Christiane Dings
(C)
Iryna Sihinevich
(I)
Heather Loftus
(H)
Louise Cabrelli
(L)
Donna McEvoy
(D)
Andrea Mari
(A)
Roberto Bizzotto
(R)
Andrea Tura
(A)
Leen 't Hart
(L)
Koen Dekkers
(K)
Nienke van Leeuwen
(NV)
Roderick Slieker
(R)
Femke Rutters
(F)
Joline Beulens
(J)
Giel Nijpels
(G)
Anitra Koopman
(A)
Sabine van Oort
(SV)
Lenka Groeneveld
(L)
Leif Groop
(L)
Petra Elders
(P)
Ana Viñuela
(A)
Anna Ramisch
(A)
Emmanouil Dermitzakis
(E)
Beate Ehrhardt
(B)
Christopher Jennison
(C)
Philippe Froguel
(P)
Mickaël Canouil
(M)
Amélie Boneford
(A)
Ian McVittie
(I)
Dianne Wake
(D)
Francesca Frau
(F)
Hans-Henrik Staerfeldt
(HH)
Kofi Adragni
(K)
Melissa Thomas
(M)
Han Wu
(H)
Imre Pavo
(I)
Birgit Steckel-Hamann
(B)
Henrik Thomsen
(H)
Giuseppe Nicola Giordano
(GN)
Hugo Fitipaldi
(H)
Martin Ridderstråle
(M)
Azra Kurbasic
(A)
Naeimeh Atabaki Pasdar
(NA)
Hugo Pomares-Millan
(H)
Pascal Mutie
(P)
Robert Koivula
(R)
Nicky McRobert
(N)
Mark McCarthy
(M)
Agata Wesolowska-Andersen
(A)
Anubha Mahajan
(A)
Moustafa Abdalla
(M)
Juan Fernandez
(J)
Reinhard Holl
(R)
Alison Heggie
(A)
Harshal Deshmukh
(H)
Anita Hennige
(A)
Susanna Bianzano
(S)
Barbara Thorand
(B)
Sapna Sharma
(S)
Harald Grallert
(H)
Jonathan Adam
(J)
Martina Troll
(M)
Andreas Fritsche
(A)
Anita Hill
(A)
Claire Thorne
(C)
Michelle Hudson
(M)
Teemu Kuulasmaa
(T)
Jagadish Vangipurapu
(J)
Markku Laakso
(M)
Henna Cederberg
(H)
Tarja Kokkola
(T)
Yunlong Jiao
(Y)
Stephen Gough
(S)
Neil Robertson
(N)
Helene Verkindt
(H)
Violeta Raverdi
(V)
Robert Caiazzo
(R)
Francois Pattou
(F)
Margaret White
(M)
Louise Donnelly
(L)
Andrew Brown
(A)
Colin Palmer
(C)
David Davtian
(D)
Adem Dawed
(A)
Ian Forgie
(I)
Ewan Pearson
(E)
Hartmut Ruetten
(H)
Petra Musholt
(P)
Jimmy Bell
(J)
Elizabeth Louise Thomas
(EL)
Brandon Whitcher
(B)
Mark Haid
(M)
Claudia Nicolay
(C)
Miranda Mourby
(M)
Jane Kaye
(J)
Nisha Shah
(N)
Harriet Teare
(H)
Gary Frost
(G)
Bernd Jablonka
(B)
Mathias Uhlen
(M)
Rebeca Eriksen
(R)
Josef Vogt
(J)
Avirup Dutta
(A)
Anna Jonsson
(A)
Line Engelbrechtsen
(L)
Annemette Forman
(A)
Nadja Sondertoft
(N)
Nathalie de Preville
(N)
Tania Baltauss
(T)
Mark Walker
(M)
Johann Gassenhuber
(J)
Maria Klintenberg
(M)
Margit Bergstrom
(M)
Jorge Ferrer
(J)
Commentaires et corrections
Type : CommentIn
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