Author
Listed:
- Zhuokun Ding
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Paul G. Fahey
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Stelios Papadopoulos
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Eric Y. Wang
(Baylor College of Medicine)
- Brendan Celii
(Baylor College of Medicine
Rice University)
- Christos Papadopoulos
(Baylor College of Medicine)
- Andersen Chang
(Baylor College of Medicine)
- Alexander B. Kunin
(Baylor College of Medicine
Creighton University)
- Dat Tran
(Baylor College of Medicine)
- Jiakun Fu
(Baylor College of Medicine
Salk Institute for Biological Studies)
- Zhiwei Ding
(Baylor College of Medicine)
- Saumil Patel
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Lydia Ntanavara
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Rachel Froebe
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
- Kayla Ponder
(Baylor College of Medicine)
- Taliah Muhammad
(Baylor College of Medicine)
- J. Alexander Bae
(Princeton University
Princeton University)
- Agnes L. Bodor
(Allen Institute for Brain Science)
- Derrick Brittain
(Allen Institute for Brain Science)
- JoAnn Buchanan
(Allen Institute for Brain Science)
- Daniel J. Bumbarger
(Allen Institute for Brain Science)
- Manuel A. Castro
(Princeton University)
- Erick Cobos
(Baylor College of Medicine)
- Sven Dorkenwald
(Princeton University
Princeton University)
- Leila Elabbady
(Allen Institute for Brain Science)
- Akhilesh Halageri
(Princeton University)
- Zhen Jia
(Princeton University
Princeton University)
- Chris Jordan
(Princeton University)
- Dan Kapner
(Allen Institute for Brain Science)
- Nico Kemnitz
(Princeton University)
- Sam Kinn
(Allen Institute for Brain Science)
- Kisuk Lee
(Princeton University
Massachusetts Institute of Technology)
- Kai Li
(Princeton University)
- Ran Lu
(Princeton University)
- Thomas Macrina
(Princeton University
Princeton University)
- Gayathri Mahalingam
(Allen Institute for Brain Science)
- Eric Mitchell
(Princeton University)
- Shanka Subhra Mondal
(Princeton University
Princeton University)
- Shang Mu
(Princeton University)
- Barak Nehoran
(Princeton University
Princeton University)
- Sergiy Popovych
(Princeton University
Princeton University)
- Casey M. Schneider-Mizell
(Allen Institute for Brain Science)
- William Silversmith
(Princeton University)
- Marc Takeno
(Allen Institute for Brain Science)
- Russel Torres
(Allen Institute for Brain Science)
- Nicholas L. Turner
(Princeton University
Princeton University)
- William Wong
(Princeton University)
- Jingpeng Wu
(Princeton University)
- Wenjing Yin
(Allen Institute for Brain Science)
- Szi-chieh Yu
(Princeton University)
- Dimitri Yatsenko
(Baylor College of Medicine
DataJoint)
- Emmanouil Froudarakis
(Baylor College of Medicine
University of Crete
Foundation for Research and Technology Hellas)
- Fabian Sinz
(Baylor College of Medicine
University Tübingen
University Göttingen)
- Krešimir Josić
(University of Houston)
- Robert Rosenbaum
(University of Notre Dame)
- H. Sebastian Seung
(Princeton University
Princeton University)
- Forrest Collman
(Allen Institute for Brain Science)
- Nuno Maçarico Costa
(Allen Institute for Brain Science)
- R. Clay Reid
(Allen Institute for Brain Science)
- Edgar Y. Walker
(University of Washington
University of Washington)
- Xaq Pitkow
(Baylor College of Medicine
Rice University
Rice University
Carnegie Mellon University)
- Jacob Reimer
(Baylor College of Medicine)
- Andreas S. Tolias
(Baylor College of Medicine
Stanford University School of Medicine
Stanford University
Stanford University)
Abstract
Understanding the relationship between circuit connectivity and function is crucial for uncovering how the brain computes. In mouse primary visual cortex, excitatory neurons with similar response properties are more likely to be synaptically connected1–8; however, broader connectivity rules remain unknown. Here we leverage the millimetre-scale MICrONS dataset to analyse synaptic connectivity and functional properties of neurons across cortical layers and areas. Our results reveal that neurons with similar response properties are preferentially connected within and across layers and areas—including feedback connections—supporting the universality of ‘like-to-like’ connectivity across the visual hierarchy. Using a validated digital twin model, we separated neuronal tuning into feature (what neurons respond to) and spatial (receptive field location) components. We found that only the feature component predicts fine-scale synaptic connections beyond what could be explained by the proximity of axons and dendrites. We also discovered a higher-order rule whereby postsynaptic neuron cohorts downstream of presynaptic cells show greater functional similarity than predicted by a pairwise like-to-like rule. Recurrent neural networks trained on a simple classification task develop connectivity patterns that mirror both pairwise and higher-order rules, with magnitudes similar to those in MICrONS data. Ablation studies in these recurrent neural networks reveal that disrupting like-to-like connections impairs performance more than disrupting random connections. These findings suggest that these connectivity principles may have a functional role in sensory processing and learning, highlighting shared principles between biological and artificial systems.
Suggested Citation
Zhuokun Ding & Paul G. Fahey & Stelios Papadopoulos & Eric Y. Wang & Brendan Celii & Christos Papadopoulos & Andersen Chang & Alexander B. Kunin & Dat Tran & Jiakun Fu & Zhiwei Ding & Saumil Patel & L, 2025.
"Functional connectomics reveals general wiring rule in mouse visual cortex,"
Nature, Nature, vol. 640(8058), pages 459-469, April.
Handle:
RePEc:nat:nature:v:640:y:2025:i:8058:d:10.1038_s41586-025-08840-3
DOI: 10.1038/s41586-025-08840-3
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