Modulating human brain responses via optimal natural image selection and synthetic image generation.

TitleModulating human brain responses via optimal natural image selection and synthetic image generation.
Publication TypeJournal Article
Year of Publication2023
AuthorsGu Z, Jamison K, Sabuncu MR, Kuceyeski A
JournalArXiv
Date Published2023 Apr 18
ISSN2331-8422
Abstract

Understanding how human brains interpret and process information is important. Here, we investigated the selectivity and inter-individual differences in human brain responses to images via functional MRI. In our first experiment, we found that images predicted to achieve maximal activations using a group level encoding model evoke higher responses than images predicted to achieve average activations, and the activation gain is positively associated with the encoding model accuracy. Furthermore, aTLfaces and FBA1 had higher activation in response to maximal synthetic images compared to maximal natural images. In our second experiment, we found that synthetic images derived using a personalized encoding model elicited higher responses compared to synthetic images from group-level or other subjects' encoding models. The finding of aTLfaces favoring synthetic images than natural images was also replicated. Our results indicate the possibility of using data-driven and generative approaches to modulate macro-scale brain region responses and probe inter-individual differences in and functional specialization of the human visual system.

Alternate JournalArXiv
PubMed ID37131880
PubMed Central IDPMC10153296
Related Institute: 
Brain Health Imaging Institute (BHII)

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065