Characterizing the discriminability of visual categorical information in strongly connected voxels

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Characterizing the discriminability of visual categorical information in strongly connected voxels. / Walbrin, Jon; Downing, Paul; Sotero, Filipa Dourado et al.
In: Neuropsychologia, Vol. 195, 108815, 12.03.2024.

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Walbrin J, Downing P, Sotero FD, Almeida J. Characterizing the discriminability of visual categorical information in strongly connected voxels. Neuropsychologia. 2024 Mar 12;195:108815. Epub 2024 Feb 2. doi: 10.1016/j.neuropsychologia.2024.108815

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Walbrin, Jon ; Downing, Paul ; Sotero, Filipa Dourado et al. / Characterizing the discriminability of visual categorical information in strongly connected voxels. In: Neuropsychologia. 2024 ; Vol. 195.

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TY - JOUR

T1 - Characterizing the discriminability of visual categorical information in strongly connected voxels

AU - Walbrin, Jon

AU - Downing, Paul

AU - Sotero, Filipa Dourado

AU - Almeida, Jorge

PY - 2024/3/12

Y1 - 2024/3/12

N2 - Functional brain responses are strongly influenced by connectivity. Recently, we demonstrated a major example of this: category discriminability within occipitotemporal cortex (OTC) is enhanced for voxel sets that share strong functional connectivity to distal brain areas, relative to those that share lesser connectivity. That is, within OTC regions, sets of ‘most-connected’ voxels show improved multivoxel pattern discriminability for tool-, face-, and place stimuli relative to voxels with weaker connectivity to the wider brain. However, understanding whether these effects generalize to other domains (e.g. body perception network), and across different levels of the visual processing streams (e.g. dorsal as well as ventral stream areas) is an important extension of this work. Here, we show that this so-called connectivity-guided decoding (CGD) effect broadly generalizes across a wide range of categories (tools, faces, bodies, hands, places). This effect is robust across dorsal stream areas, but less consistent in earlier ventral stream areas. In the latter regions, category discriminability is generally very high, suggesting that extraction of category-relevant visual properties is less reliant on connectivity to downstream areas. Further, CGD effects are primarily expressed in a category-specific manner: For example, within the network of tool regions, discriminability of tool information is greater than non-tool information. The connectivity-guided decoding approach shown here provides a novel demonstration of the crucial relationship between wider brain connectivity and complex local-level functional responses at different levels of the visual processing streams. Further, this approach generates testable new hypotheses about the relationships between connectivity and local selectivity.

AB - Functional brain responses are strongly influenced by connectivity. Recently, we demonstrated a major example of this: category discriminability within occipitotemporal cortex (OTC) is enhanced for voxel sets that share strong functional connectivity to distal brain areas, relative to those that share lesser connectivity. That is, within OTC regions, sets of ‘most-connected’ voxels show improved multivoxel pattern discriminability for tool-, face-, and place stimuli relative to voxels with weaker connectivity to the wider brain. However, understanding whether these effects generalize to other domains (e.g. body perception network), and across different levels of the visual processing streams (e.g. dorsal as well as ventral stream areas) is an important extension of this work. Here, we show that this so-called connectivity-guided decoding (CGD) effect broadly generalizes across a wide range of categories (tools, faces, bodies, hands, places). This effect is robust across dorsal stream areas, but less consistent in earlier ventral stream areas. In the latter regions, category discriminability is generally very high, suggesting that extraction of category-relevant visual properties is less reliant on connectivity to downstream areas. Further, CGD effects are primarily expressed in a category-specific manner: For example, within the network of tool regions, discriminability of tool information is greater than non-tool information. The connectivity-guided decoding approach shown here provides a novel demonstration of the crucial relationship between wider brain connectivity and complex local-level functional responses at different levels of the visual processing streams. Further, this approach generates testable new hypotheses about the relationships between connectivity and local selectivity.

KW - Ventral temporal cortex

KW - category-selectivity

KW - functional connectivity

KW - fMRI

KW - Classification

U2 - 10.1016/j.neuropsychologia.2024.108815

DO - 10.1016/j.neuropsychologia.2024.108815

M3 - Article

VL - 195

JO - Neuropsychologia

JF - Neuropsychologia

SN - 0028-3932

M1 - 108815

ER -