Fast and Accurate Motion Correction for Two-Photon Ca 2+ Imaging in Behaving Mice

Two-photon Ca imaging is a widely used technique for investigating brain functions across multiple spatial scales. However, the recording of neuronal activities is affected by movement of the brain during tasks in which the animal is behaving normally. Although post-hoc image registration is the com...

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Veröffentlicht in:Frontiers in neuroinformatics 2022, Vol.16, p.851188
Hauptverfasser: Liu, Weiyi, Pan, Junxia, Xu, Yuanxu, Wang, Meng, Jia, Hongbo, Zhang, Kuan, Chen, Xiaowei, Li, Xingyi, Liao, Xiang
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container_start_page 851188
container_title Frontiers in neuroinformatics
container_volume 16
creator Liu, Weiyi
Pan, Junxia
Xu, Yuanxu
Wang, Meng
Jia, Hongbo
Zhang, Kuan
Chen, Xiaowei
Li, Xingyi
Liao, Xiang
description Two-photon Ca imaging is a widely used technique for investigating brain functions across multiple spatial scales. However, the recording of neuronal activities is affected by movement of the brain during tasks in which the animal is behaving normally. Although post-hoc image registration is the commonly used approach, the recent developments of online neuroscience experiments require real-time image processing with efficient motion correction performance, posing new challenges in neuroinformatics. We propose a fast and accurate image density feature-based motion correction method to address the problem of imaging animal during behaviors. This method is implemented by first robustly estimating and clustering the density features from two-photon images. Then, it takes advantage of the temporal correlation in imaging data to update features of consecutive imaging frames with efficient calculations. Thus, motion artifacts can be quickly and accurately corrected by matching the features and obtaining the transformation parameters for the raw images. Based on this efficient motion correction strategy, our algorithm yields promising computational efficiency on imaging datasets with scales ranging from dendritic spines to neuronal populations. Furthermore, we show that the proposed motion correction method outperforms other methods by evaluating not only computational speed but also the quality of the correction performance. Specifically, we provide a powerful tool to perform motion correction for two-photon Ca imaging data, which may facilitate online imaging experiments in the future.
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However, the recording of neuronal activities is affected by movement of the brain during tasks in which the animal is behaving normally. Although post-hoc image registration is the commonly used approach, the recent developments of online neuroscience experiments require real-time image processing with efficient motion correction performance, posing new challenges in neuroinformatics. We propose a fast and accurate image density feature-based motion correction method to address the problem of imaging animal during behaviors. This method is implemented by first robustly estimating and clustering the density features from two-photon images. Then, it takes advantage of the temporal correlation in imaging data to update features of consecutive imaging frames with efficient calculations. Thus, motion artifacts can be quickly and accurately corrected by matching the features and obtaining the transformation parameters for the raw images. 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title Fast and Accurate Motion Correction for Two-Photon Ca 2+ Imaging in Behaving Mice
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