Princeton Neuroscience Institute, Princeton University, Princeton, New Jersey, United States of America.
Department of Physics, Princeton University, Princeton, New Jersey, United States of America.
PLoS Comput Biol. 2022 Sep 28;18(9):e1010421. doi: 10.1371/journal.pcbi.1010421. eCollection 2022 Sep.
Imaging neural activity in a behaving animal presents unique challenges in part because motion from an animal's movement creates artifacts in fluorescence intensity time-series that are difficult to distinguish from neural signals of interest. One approach to mitigating these artifacts is to image two channels simultaneously: one that captures an activity-dependent fluorophore, such as GCaMP, and another that captures an activity-independent fluorophore such as RFP. Because the activity-independent channel contains the same motion artifacts as the activity-dependent channel, but no neural signals, the two together can be used to identify and remove the artifacts. However, existing approaches for this correction, such as taking the ratio of the two channels, do not account for channel-independent noise in the measured fluorescence. Here, we present Two-channel Motion Artifact Correction (TMAC), a method which seeks to remove artifacts by specifying a generative model of the two channel fluorescence that incorporates motion artifact, neural activity, and noise. We use Bayesian inference to infer latent neural activity under this model, thus reducing the motion artifact present in the measured fluorescence traces. We further present a novel method for evaluating ground-truth performance of motion correction algorithms by comparing the decodability of behavior from two types of neural recordings; a recording that had both an activity-dependent fluorophore and an activity-independent fluorophore (GCaMP and RFP) and a recording where both fluorophores were activity-independent (GFP and RFP). A successful motion correction method should decode behavior from the first type of recording, but not the second. We use this metric to systematically compare five models for removing motion artifacts from fluorescent time traces. We decode locomotion from a GCaMP expressing animal 20x more accurately on average than from control when using TMAC inferred activity and outperforms all other methods of motion correction tested, the best of which were ~8x more accurate than control.
在行为动物中成像神经活动在某种程度上提出了独特的挑战,部分原因是动物运动产生的运动伪影会干扰荧光强度时间序列,使其难以与感兴趣的神经信号区分开来。一种减轻这些伪影的方法是同时成像两个通道:一个捕获依赖于活动的荧光团,例如 GCaMP,另一个捕获不依赖于活动的荧光团,例如 RFP。由于不依赖于活动的通道包含与依赖于活动的通道相同的运动伪影,但没有神经信号,因此这两个通道可以一起用于识别和去除伪影。然而,现有的这种校正方法,例如取两个通道的比值,并没有考虑到测量荧光中的通道独立噪声。在这里,我们提出了双通道运动伪影校正(TMAC)方法,该方法试图通过指定包含运动伪影、神经活动和噪声的两个通道荧光的生成模型来去除伪影。我们使用贝叶斯推理根据该模型推断潜在的神经活动,从而减少测量荧光痕迹中的运动伪影。我们进一步提出了一种新的方法来评估运动校正算法的地面真实性能,方法是比较两种类型的神经记录的行为解码能力;一种记录既有依赖于活动的荧光团又有不依赖于活动的荧光团(GCaMP 和 RFP),另一种记录两种荧光团都不依赖于活动(GFP 和 RFP)。一个成功的运动校正方法应该可以从第一种记录类型解码行为,但不能从第二种记录类型解码。我们使用这种度量标准系统地比较了从荧光时间迹中去除运动伪影的五种模型。我们使用 TMAC 推断的活动,从表达 GCaMP 的动物中解码运动的准确率平均比对照提高了 20 倍,优于所有测试的其他运动校正方法,其中最好的方法比对照提高了约 8 倍。