Nature Methods, Journal Year: 2021, Volume and Issue: 18(5), P. 551 - 556
Published: Feb. 11, 2021
Language: Английский
Nature Methods, Journal Year: 2021, Volume and Issue: 18(5), P. 551 - 556
Published: Feb. 11, 2021
Language: Английский
Nature Methods, Journal Year: 2018, Volume and Issue: 16(1), P. 67 - 70
Published: Dec. 4, 2018
Language: Английский
Citations
1715Nature Methods, Journal Year: 2019, Volume and Issue: 16(12), P. 1233 - 1246
Published: May 27, 2019
Language: Английский
Citations
10372022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), Journal Year: 2019, Volume and Issue: unknown, P. 2124 - 2132
Published: June 1, 2019
The field of image denoising is currently dominated by discriminative deep learning methods that are trained on pairs noisy input and clean target images. Recently it has been shown such can also be without targets. Instead, independent images used, in an approach known as Noise2Noise (N2N). Here, we introduce Noise2Void (N2V), a training scheme takes this idea one step further. It does not require pairs, nor Consequently, N2V allows us to train directly the body data denoised therefore applied when other cannot. Especially interesting application biomedical data, where acquisition targets, or noisy, frequently possible. We compare performance approaches have either and/or available. Intuitively, cannot expected outperform more information available during training. Still, observe drops moderation compares favorably training-free methods.
Language: Английский
Citations
1019Nature, Journal Year: 2020, Volume and Issue: 588(7836), P. 39 - 47
Published: Dec. 2, 2020
Language: Английский
Citations
727Nature Reviews Methods Primers, Journal Year: 2021, Volume and Issue: 1(1)
Published: June 3, 2021
Single-molecule localization microscopy (SMLM) describes a family of powerful imaging techniques that dramatically improve spatial resolution over standard, diffraction-limited and can image biological structures at the molecular scale. In SMLM, individual fluorescent molecules are computationally localized from sequences localizations used to generate super-resolution or time course images, define trajectories. this Primer, we introduce basic principles SMLM before describing main experimental considerations when performing including labelling, sample preparation, hardware requirements acquisition in fixed live cells. We then explain how low-resolution processed reconstruct images and/or extract quantitative information, highlight selection discoveries enabled by closely related methods. discuss some limitations potential artefacts as well ways alleviate them. Finally, present an outlook on advanced promising new developments fast-evolving field SMLM. hope Primer will be useful reference for both newcomers practitioners
Language: Английский
Citations
661Nature Methods, Journal Year: 2018, Volume and Issue: 15(11), P. 917 - 920
Published: Sept. 6, 2018
Language: Английский
Citations
467eLife, Journal Year: 2019, Volume and Issue: 8
Published: Oct. 1, 2019
Quantitative behavioral measurements are important for answering questions across scientific disciplines-from neuroscience to ecology. State-of-the-art deep-learning methods offer major advances in data quality and detail by allowing researchers automatically estimate locations of an animal's body parts directly from images or videos. However, currently available animal pose estimation have limitations speed robustness. Here, we introduce a new easy-to-use software toolkit, DeepPoseKit, that addresses these problems using efficient multi-scale model, called Stacked DenseNet, fast GPU-based peak-detection algorithm estimating keypoint with subpixel precision. These improve processing >2x no loss accuracy compared methods. We demonstrate the versatility our multiple challenging tasks laboratory field settings-including groups interacting individuals. Our work reduces barriers advanced tools measuring behavior has broad applicability sciences.
Language: Английский
Citations
464Nature Communications, Journal Year: 2021, Volume and Issue: 12(1)
Published: April 15, 2021
Abstract Deep Learning (DL) methods are powerful analytical tools for microscopy and can outperform conventional image processing pipelines. Despite the enthusiasm innovations fuelled by DL technology, need to access compatible resources train networks leads an accessibility barrier that novice users often find difficult overcome. Here, we present ZeroCostDL4Mic, entry-level platform simplifying leveraging free, cloud-based computational of Google Colab. ZeroCostDL4Mic allows researchers with no coding expertise apply key perform tasks including segmentation (using U-Net StarDist), object detection YOLOv2), denoising CARE Noise2Void), super-resolution Deep-STORM), image-to-image translation Label-free prediction - fnet, pix2pix CycleGAN). Importantly, provide suitable quantitative each network evaluate model performance, allowing optimisation. We demonstrate application study multiple biological processes.
Language: Английский
Citations
447Nature Methods, Journal Year: 2019, Volume and Issue: 16(12), P. 1215 - 1225
Published: July 8, 2019
Language: Английский
Citations
425Cell, Journal Year: 2022, Volume and Issue: 185(16), P. 2899 - 2917.e31
Published: July 31, 2022
Language: Английский
Citations
353