"Forecasting Whole-Brain Neuronal Activity from Volumetric Video", Immer et al. 2025 (with Florian Engert, Jeff Lichtman, Misha Ahrens, Viren Jain and Michal Januszewski)
https://www.arxiv.org/abs/2503.00073

"ZAPBench: a benchmark for whole-brain activity prediction in zebrafish", Lueckmann et al. 2025
https://openreview.net/pdf?id=oCHsDpyawq

#ZAPBench #neuroscience #zebrafish #CalciumImaging #CompNeurosci

Forecasting Whole-Brain Neuronal Activity from Volumetric Video

Large-scale neuronal activity recordings with fluorescent calcium indicators are increasingly common, yielding high-resolution 2D or 3D videos. Traditional analysis pipelines reduce this data to 1D traces by segmenting regions of interest, leading to inevitable information loss. Inspired by the success of deep learning on minimally processed data in other domains, we investigate the potential of forecasting neuronal activity directly from volumetric videos. To capture long-range dependencies in high-resolution volumetric whole-brain recordings, we design a model with large receptive fields, which allow it to integrate information from distant regions within the brain. We explore the effects of pre-training and perform extensive model selection, analyzing spatio-temporal trade-offs for generating accurate forecasts. Our model outperforms trace-based forecasting approaches on ZAPBench, a recently proposed benchmark on whole-brain activity prediction in zebrafish, demonstrating the advantages of preserving the spatial structure of neuronal activity.

arXiv.org

See also: ZAPBench, the Zebrafish Activity Prediction Benchmark software suite.

https://zapbench-release.storage.googleapis.com/landing.html

#ZAPBench #neuroscience #zebrafish

ZAPBench

ZAPBench evaluates how well different models can predict the activity of over 70,000 neurons in a novel larval zebrafish dataset.

ZAPBench ⚡