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A fast image registration approach of neural activities in light-sheet fluorescence microscopy images

机译:明光纸荧光显微镜图像中神经活动的快速图像登记方法

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The ability of fast and single-neuron resolution imaging of neural activities enables light-sheet fluorescence microscopy (LSFM) as a powerful imaging technique in functional neural connection applications. The state-of-art LSFM imaging system can record the neuronal activities of entire brain for small animal, such as zebrafish or C. elegans at single-neuron resolution. However, the stimulated and spontaneous movements in animal brain result in inconsistent neuron positions during recording process. It is time consuming to register the acquired large-scale images with conventional method. In this work, we address the problem of fast registration of neural positions in stacks of LSFM images. This is necessary to register brain structures and activities. To achieve fast registration of neural activities, we present a rigid registration architecture by implementation of Graphics Processing Unit (GPU). In this approach, the image stacks were preprocessed on GPU by mean stretching to reduce the computation effort. The present image was registered to the previous image stack that considered as reference. A fast Fourier transform (FFT) algorithm was used for calculating the shift of the image stack. The calculations for image registration were performed in different threads while the preparation functionality was refactored and called only once by the master thread. We implemented our registration algorithm on NVIDIA Quadro K4200 GPU under Compute Unified Device Architecture (CUDA) programming environment. The experimental results showed that the registration computation can speed-up to 550ms for a full high-resolution brain image. Our approach also has potential to be used for other dynamic image registrations in biomedical applications.
机译:神经活性的快速和单神经元分辨率成像的能力使光纸荧光显微镜(LSFM)作为功能神经连接应用中的强大的成像技术。最先进的LSFM成像系统可以记录整个大脑的神经元活动,例如单神经元分辨率的小动物,例如斑马鱼或秀丽隐杆线。然而,在记录过程中,动物脑中的刺激和自发运动导致了神经元位置不一致。使用传统方法注册所获取的大规模图像是耗时的。在这项工作中,我们解决了LSFM图像堆栈中神经位置快速登记的问题。这是注册大脑结构和活动的必要条件。为了实现神经活动的快速注册,我们通过实现图形处理单元(GPU)来提出刚性登记架构。在这种方法中,通过平均拉伸将图像堆叠预处理GPU以减少计算工作。本图像被登记到被认为是参考的先前图像堆栈。快速傅里叶变换(FFT)算法用于计算图像堆栈的偏移。图像配准的计算在不同的线程中执行,而准备功能被重构并仅被主线程调用一次。我们在计算统一设备架构(CUDA)编程环境下在NVIDIA Quadro K4200 GPU上实施了我们的注册算法。实验结果表明,用于全高分辨率脑图像的登记计算可以加速到550ms。我们的方法还具有用于生物医学应用中的其他动态图像注册的可能性。

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