Gut microbiome is not associated with mild cognitive impairment in Parkinson's disease.
Journal
NPJ Parkinson's disease
ISSN: 2373-8057
Titre abrégé: NPJ Parkinsons Dis
Pays: United States
ID NLM: 101675390
Informations de publication
Date de publication:
06 Apr 2024
06 Apr 2024
Historique:
received:
20
09
2023
accepted:
15
03
2024
medline:
7
4
2024
pubmed:
7
4
2024
entrez:
6
4
2024
Statut:
epublish
Résumé
Gut microbiome differences between people with Parkinson's disease (PD) and control subjects without Parkinsonism are widely reported, but potential alterations related to PD with mild cognitive impairment (MCI) have yet to be comprehensively explored. We compared gut microbial features of PD with MCI (n = 58) to cognitively unimpaired PD (n = 60) and control subjects (n = 90) with normal cognition. Our results did not support a specific microbiome signature related to MCI in PD.
Identifiants
pubmed: 38582855
doi: 10.1038/s41531-024-00687-1
pii: 10.1038/s41531-024-00687-1
doi:
Types de publication
Journal Article
Langues
eng
Pagination
78Subventions
Organisme : EC | EU Framework Programme for Research and Innovation H2020 | H2020 Priority Excellent Science | H2020 European Research Council (H2020 Excellent Science - European Research Council)
ID : 863664
Investigateurs
Geeta Acharya
(G)
Gloria Aguayo
(G)
Myriam Alexandre
(M)
Muhammad Ali
(M)
Wim Ammerlann
(W)
Giuseppe Arena
(G)
Michele Bassis
(M)
Roxane Batutu
(R)
Katy Beaumont
(K)
Sibylle Béchet
(S)
Guy Berchem
(G)
Alexandre Bisdorff
(A)
Ibrahim Boussaad
(I)
David Bouvier
(D)
Lorieza Castillo
(L)
Gessica Contesotto
(G)
Nancy De Bremaeker
(N)
Brian Dewitt
(B)
Nico Diederich
(N)
Rene Dondelinger
(R)
Nancy E Ramia
(NE)
Angelo Ferrari
(A)
Katrin Frauenknecht
(K)
Joëlle Fritz
(J)
Carlos Gamio
(C)
Manon Gantenbein
(M)
Piotr Gawron
(P)
Laura Georges
(L)
Soumyabrata Ghosh
(S)
Marijus Giraitis
(M)
Enrico Glaab
(E)
Martine Goergen
(M)
Elisa Gómez De Lope
(EG)
Jérôme Graas
(J)
Mariella Graziano
(M)
Valentin Groues
(V)
Anne Grünewald
(A)
Gaël Hammot
(G)
Anne-Marie Hanff
(AM)
Linda Hansen
(L)
Michael Heneka
(M)
Estelle Henry
(E)
Margaux Henry
(M)
Sylvia Herbrink
(S)
Sascha Herzinger
(S)
Alexander Hundt
(A)
Nadine Jacoby
(N)
Sonja Jónsdóttir
(S)
Jochen Klucken
(J)
Olga Kofanova
(O)
Rejko Krüger
(R)
Pauline Lambert
(P)
Roseline Lentz
(R)
Laura Longhino
(L)
Ana Festas Lopes
(AF)
Victoria Lorentz
(V)
Tainá M Marques
(TM)
Guilherme Marques
(G)
Patricia Martins Conde
(PM)
Deborah Mcintyre
(D)
Chouaib Mediouni
(C)
Francoise Meisch
(F)
Alexia Mendibide
(A)
Myriam Menster
(M)
Maura Minelli
(M)
Michel Mittelbronn
(M)
Saïda Mtimet
(S)
Maeva Munsch
(M)
Romain Nati
(R)
Ulf Nehrbass
(U)
Sarah Nickels
(S)
Beatrice Nicolai
(B)
Jean-Paul Nicolay
(JP)
Fozia Noor
(F)
Clarissa P C Gomes
(CPC)
Sinthuja Pachchek
(S)
Claire Pauly
(C)
Laure Pauly
(L)
Lukas Pavelka
(L)
Magali Perquin
(M)
Achilleas Pexaras
(A)
Armin Rauschenberger
(A)
Rajesh Rawal
(R)
Dheeraj Reddy Bobbili
(DR)
Lucie Remark
(L)
Ilsé Richard
(I)
Olivia Roland
(O)
Kirsten Roomp
(K)
Eduardo Rosales
(E)
Stefano Sapienza
(S)
Venkata Satagopam
(V)
Sabine Schmitz
(S)
Reinhard Schneider
(R)
Jens Schwamborn
(J)
Raquel Severino
(R)
Amir Sharify
(A)
Ruxandra Soare
(R)
Ekaterina Soboleva
(E)
Kate Sokolowska
(K)
Maud Theresine
(M)
Hermann Thien
(H)
Elodie Thiry
(E)
Rebecca Ting Jiin Loo
(RTJ)
Johanna Trouet
(J)
Olena Tsurkalenko
(O)
Michel Vaillant
(M)
Carlos Vega
(C)
Liliana Vilas Boas
(LV)
Paul Wilmes
(P)
Evi Wollscheid-Lengeling
(E)
Gelani Zelimkhanov
(G)
Informations de copyright
© 2024. The Author(s).
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