視覚関連ニューロンが迅速に符号を切り替えることを解明(Study Shows Vision-Related Neurons Can Rapidly Switch Codes)

2026-04-22 カリフォルニア工科大学(Caltech)

California Institute of Technologyの研究は、視覚に関わる神経細胞が固定的ではなく、状況に応じて符号化(情報表現)を迅速に切り替えられることを示した。従来は神経活動のコードは比較的安定と考えられていたが、本研究では実験と解析により、同一ニューロンが異なる視覚情報処理に応じて柔軟に応答様式を変化させることを確認した。この柔軟性は効率的な情報処理や環境適応に寄与し、脳の学習・知覚メカニズム理解を大きく前進させる成果である。さらに、人工知能や神経模倣システムの設計にも新たな示唆を与えると期待される。

視覚関連ニューロンが迅速に符号を切り替えることを解明(Study Shows Vision-Related Neurons Can Rapidly Switch Codes)

The top illustration shows how Yuelin Shi (PhD ’26) and a team of researchers saw populations of face cells transition from detection to discrimination by switching from an object-general code to a face-specific one in a very short period of time. On the bottom, the schematic shows the predictions of domain-general (left) and domain-specific (right) models of face processing. If cells use a domain-general mechanism (left), the face and object axes should align. If cells use a domain-specific mechanism (right), the face and object axes should differ.Credit: Adapted from Shi et al. Nature (2026), CC BY 4.0.

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下側頭皮質における神経コードの迅速かつ協調的な切り替え Rapid concerted switching of the neural code in the inferotemporal cortex

Yuelin Shi,Dasheng Bi,Janis K. Hesse,Frank F. Lanfranchi,Shi Chen & Doris Y. Tsao

Nature  Published:25 March 2026

DOI:https://doi.org/10.1038/s41586-026-10267-3

Abstract

A fundamental paradigm in neuroscience is that neurons represent the world through fixed tuning functions, with stable mappings from stimulus features to firing rates1. Here, we report that tuning can instead shift rapidly and coherently across a neural population, enabling a dynamic transition from detecting a broad category to discriminating individual exemplars. We set out to address a longstanding debate in visual neuroscience about whether the inferotemporal cortex uses a specialized code for specific object categories or a general-purpose code that applies to all objects. We found that face-selective cells in macaque inferotemporal cortex initially adopted a general code optimized for face detection. However, after a rapid concerted population event lasting less than 20 ms, the neural code transformed into a face-specific one, with two striking features: response gradients to principal detection-related dimensions reversed direction, and new tuning emerged for multiple higher-dimensional features that support fine face discrimination. These dynamics in face patches were specific to face stimuli and did not occur in response to non-face objects. Thus, for faces, face cells transition from detection to discrimination by switching from an object-general code to a face-specific one. More broadly, our findings indicate that there is a previously unknown mechanism for neural representation: concerted stimulus-dependent switching of the neural code used by a cortical area.

霊長類の側頭葉下部皮質における物体空間の地図 A map of object space in primate inferotemporal cortex

Pinglei Bao,Liang She,Mason McGill & Doris Y. Tsao

Nature  Published:03 June 2020

DOI:https://doi.org/10.1038/s41586-020-2350-5

Abstract

The inferotemporal (IT) cortex is responsible for object recognition, but it is unclear how the representation of visual objects is organized in this part of the brain. Areas that are selective for categories such as faces, bodies, and scenes have been found1,2,3,4,5, but large parts of IT cortex lack any known specialization, raising the question of what general principle governs IT organization. Here we used functional MRI, microstimulation, electrophysiology, and deep networks to investigate the organization of macaque IT cortex. We built a low-dimensional object space to describe general objects using a feedforward deep neural network trained on object classification6. Responses of IT cells to a large set of objects revealed that single IT cells project incoming objects onto specific axes of this space. Anatomically, cells were clustered into four networks according to the first two components of their preferred axes, forming a map of object space. This map was repeated across three hierarchical stages of increasing view invariance, and cells that comprised these maps collectively harboured sufficient coding capacity to approximately reconstruct objects. These results provide a unified picture of IT organization in which category-selective regions are part of a coarse map of object space whose dimensions can be extracted from a deep network.

霊長類の脳における顔認識のコード The Code for Facial Identity in the Primate Brain

Le Chang ∙ Doris Y. Tsao

Cell  Published:Published: June 1, 2017

DOI:https://doi.org/10.1016/j.cell.2017.05.011

Highlights

  • Facial images can be linearly reconstructed using responses of ∼200 face cells
  • Face cells display flat tuning along dimensions orthogonal to the axis being coded
  • The axis model is more efficient, robust, and flexible than the exemplar model
  • Face patches ML/MF and AM carry complementary information about faces

Summary

Primates recognize complex objects such as faces with remarkable speed and reliability. Here, we reveal the brain’s code for facial identity. Experiments in macaques demonstrate an extraordinarily simple transformation between faces and responses of cells in face patches. By formatting faces as points in a high-dimensional linear space, we discovered that each face cell’s firing rate is proportional to the projection of an incoming face stimulus onto a single axis in this space, allowing a face cell ensemble to encode the location of any face in the space. Using this code, we could precisely decode faces from neural population responses and predict neural firing rates to faces. Furthermore, this code disavows the long-standing assumption that face cells encode specific facial identities, confirmed by engineering faces with drastically different appearance that elicited identical responses in single face cells. Our work suggests that other objects could be encoded by analogous metric coordinate systems.

1701物理及び化学
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