| Literature DB >> 27151639 |
Lucas Theis1, Philipp Berens2, Emmanouil Froudarakis3, Jacob Reimer3, Miroslav Román Rosón4, Tom Baden5, Thomas Euler6, Andreas S Tolias7, Matthias Bethge8.
Abstract
A fundamental challenge in calcium imaging has been to infer spike rates of neurons from the measured noisy fluorescence traces. We systematically evaluate different spike inference algorithms on a large benchmark dataset (>100,000 spikes) recorded from varying neural tissue (V1 and retina) using different calcium indicators (OGB-1 and GCaMP6). In addition, we introduce a new algorithm based on supervised learning in flexible probabilistic models and find that it performs better than other published techniques. Importantly, it outperforms other algorithms even when applied to entirely new datasets for which no simultaneously recorded data is available. Future data acquired in new experimental conditions can be used to further improve the spike prediction accuracy and generalization performance of the model. Finally, we show that comparing algorithms on artificial data is not informative about performance on real data, suggesting that benchmarking different methods with real-world datasets may greatly facilitate future algorithmic developments in neuroscience.Entities:
Mesh:
Substances:
Year: 2016 PMID: 27151639 PMCID: PMC4888799 DOI: 10.1016/j.neuron.2016.04.014
Source DB: PubMed Journal: Neuron ISSN: 0896-6273 Impact factor: 17.173