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arXiv 提交日期: 2026-03-31
📄 Abstract - Toward Generalizable Whole Brain Representations with High-Resolution Light-Sheet Data

Unprecedented visual details of biological structures are being revealed by subcellular-resolution whole-brain 3D microscopy data, enabled by recent advances in intact tissue processing and light-sheet fluorescence microscopy (LSFM). These volumetric data offer rich morphological and spatial cellular information, however, the lack of scalable data processing and analysis methods tailored to these petabyte-scale data poses a substantial challenge for accurate interpretation. Further, existing models for visual tasks such as object detection and classification struggle to generalize to this type of data. To accelerate the development of suitable methods and foundational models, we present CANVAS, a comprehensive set of high-resolution whole mouse brain LSFM benchmark data, encompassing six neuronal and immune cell-type markers, along with cell annotations and a leaderboard. We also demonstrate challenges in generalization of baseline models built on existing architectures, especially due to the heterogeneity in cellular morphology across phenotypes and anatomical locations in the brain. To the best of our knowledge, CANVAS is the first and largest LSFM benchmark that captures intact mouse brain tissue at subcellular level, and includes extensive annotations of cells throughout the brain.

顶级标签: biology medical computer vision
详细标签: benchmark dataset light-sheet microscopy whole-brain imaging cell annotation 3d microscopy 或 搜索:

迈向具有高分辨率光片数据的可泛化全脑表征 / Toward Generalizable Whole Brain Representations with High-Resolution Light-Sheet Data


1️⃣ 一句话总结

本研究发布了一个名为CANVAS的高分辨率全脑光片显微成像基准数据集,旨在解决现有AI模型难以分析和泛化这类海量、复杂脑数据的问题,以推动相关基础模型的发展。

源自 arXiv: 2603.29842