- Lipkin, Benjamin;
- Tuckute, Greta;
- Affourtit, Josef;
- Small, Hannah;
- Mineroff, Zachary;
- Kean, Hope;
- Jouravlev, Olessia;
- Rakocevic, Lara;
- Pritchett, Brianna;
- Siegelman, Matthew;
- Hoeflin, Caitlyn;
- Pongos, Alvincé;
- Blank, Idan A;
- Struhl, Melissa Kline;
- Ivanova, Anna;
- Shannon, Steven;
- Sathe, Aalok;
- Hoffmann, Malte;
- Nieto-Castañón, Alfonso;
- Fedorenko, Evelina
Two analytic traditions characterize fMRI language research. One relies on averaging activations across individuals. This approach has limitations: because of inter-individual variability in the locations of language areas, any given voxel/vertex in a common brain space is part of the language network in some individuals but in others, may belong to a distinct network. An alternative approach relies on identifying language areas in each individual using a functional 'localizer'. Because of its greater sensitivity, functional resolution, and interpretability, functional localization is gaining popularity, but it is not always feasible, and cannot be applied retroactively to past studies. To bridge these disjoint approaches, we created a probabilistic functional atlas using fMRI data for an extensively validated language localizer in 806 individuals. This atlas enables estimating the probability that any given location in a common space belongs to the language network, and thus can help interpret group-level activation peaks and lesion locations, or select voxels/electrodes for analysis. More meaningful comparisons of findings across studies should increase robustness and replicability in language research.