RRC ID 77284
著者 Eom M, Han S, Park P, Kim G, Cho ES, Sim J, Lee KH, Kim S, Tian H, Böhm UL, Lowet E, Tseng HA, Choi J, Lucia SE, Ryu SH, Rózsa M, Chang S, Kim P, Han X, Piatkevich KD, Choi M, Kim CH, Cohen AE, Chang JB, Yoon YG.
タイトル Statistically unbiased prediction enables accurate denoising of voltage imaging data.
ジャーナル Nat Methods
Abstract Here we report SUPPORT (statistically unbiased prediction utilizing spatiotemporal information in imaging data), a self-supervised learning method for removing Poisson-Gaussian noise in voltage imaging data. SUPPORT is based on the insight that a pixel value in voltage imaging data is highly dependent on its spatiotemporal neighboring pixels, even when its temporally adjacent frames alone do not provide useful information for statistical prediction. Such dependency is captured and used by a convolutional neural network with a spatiotemporal blind spot to accurately denoise voltage imaging data in which the existence of the action potential in a time frame cannot be inferred by the information in other frames. Through simulations and experiments, we show that SUPPORT enables precise denoising of voltage imaging data and other types of microscopy image while preserving the underlying dynamics within the scene.
巻・号 20(10)
ページ 1581-1592
公開日 2023-10-1
DOI 10.1038/s41592-023-02005-8
PII 10.1038/s41592-023-02005-8
PMID 37723246
PMC PMC10555843
IF 30.822
リソース情報
ゼブラフィッシュ UAS:GCaMP7a