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fNIRS reproducibility varies with data quality, analysis pipelines, and researcher experience

Meryem A. Yücel
Robert Luke
Rickson C. Mesquita
Alexander von Lühmann
David M. A. Mehler
Michael Lührs
Jessica Gemignani
Androu Abdalmalak
Franziska Albrecht
Iara de Almeida Ivo
Christina Artemenko
Kira Ashton
Paweł Augustynowicz
Aahana Bajracharya
Elise Bannier
Beatrix Barth
Laurie Bayet
Jacqueline Behrendt
Hadi Borj Khani
Lenaic Borot
Jordan A. Borrell
Sabrina Brigadoi
Kolby Brink
Chiara Bulgarelli
Emmanuel Caruyer
Hsin-Chin Chen
Christopher Copeland
Isabelle Corouge
Simone Cutini
Renata Di Lorenzo
Thomas Dresler
Adam T. Eggebrecht
Ann-Christine Ehlis
Sinem B. Erdoğan
Danielle Evenblij
Talukdar Raian Ferdous
Victoria Fracalossi
Erika Franzén
Anne Gallagher
Christian Gerloff
Judit Gervain
Noy Goldhamer
Louisa K. Gossé
Ségolène M. R. Guérin
Edgar Guevara
SM Hadi Hosseini
Hamish Innes-Brown
Isabell Int-Veen
Sagi Jaffe-Dax
Nolwenn Jégou
Hiroshi Kawaguchi
Caroline Kelsey
Michaela Kent
Roman Kessler
Nadeen Kherbawy
Franziska Klein
Nofar Kochavi
Matthew Kolisnyk
Yogev Koren
Agnes Kroczek
Alexander Kvist
Chen-Hao Paul Lin
Andreas Löw
Siying Luan
Darren Mao
Giovani G. Martins
Eike Middell
Samuel Montero-Hernandez
Murat Can Mutlu
Sergio L. Novi
Natacha Paquette
Ishara Paranawithana
Yisrael Parmet
Jonathan E. Peelle
Ke Peng
Tommy Peng
João Pereira
Paola Pinti
Luca Pollonini
Ali Rahimpour Jounghani
Vanessa Reindl
Wiebke Ringels
Betti Schopp
Alina Schulte
Martin Schulte-Rüther
Ari Segel
Tirdad Seifi Ala
Maureen J. Shader
Hadas Shavit
Arefeh Sherafati
Mojtaba Soltanlou
Bettina Sorger
Emma Speh
Kevin D. Stubbs
Katharina Stute
Eileen F. Sullivan
Sungho Tak
Zeus Tipado
Julie Tremblay
Homa Vahidi
Maaike Van Eeckhoutte
Phetsamone Vannasing
Gregoire Vergotte
Marion A. Vincent
Eileen Weiss
Dalin Yang
Gülnaz Yükselen
Dariusz Zapała & Vit Zemanek

August 04, 2025

As data analysis pipelines grow more complex in brain imaging research, understanding how methodological choices affect results is essential for ensuring reproducibility and transparency. This is especially relevant for functional Near-Infrared Spectroscopy (fNIRS), a rapidly growing technique for assessing brain function in naturalistic settings and across the lifespan, yet one that still lacks standardized analysis approaches. In the fNIRS Reproducibility Study Hub (FRESH) initiative, we asked 38 research teams worldwide to independently analyze the same two fNIRS datasets. Despite using different pipelines, nearly 80% of teams agreed on group-level results, particularly when hypotheses were strongly supported by literature. Teams with higher self-reported analysis confidence, which correlated with years of fNIRS experience, showed greater agreement. At the individual level, agreement was lower but improved with better data quality. The main sources of variability were related to how poor-quality data were handled, how responses were modeled, and how statistical analyses were conducted. These findings suggest that while flexible analytical tools are valuable, clearer methodological and reporting standards could greatly enhance reproducibility. By identifying key drivers of variability, this study highlights current challenges and offers direction for improving transparency and reliability in fNIRS research.