IEEE Trans Med Imaging. 2021 Nov;40(11):3205-3216. doi: 10.1109/TMI.2021.3080695. Epub 2021 Oct 27.
Manually labeling neurons from high-resolution but noisy and low-contrast optical microscopy (OM) images is tedious. As a result, the lack of annotated data poses a key challenge when applying deep learning techniques for reconstructing neurons from noisy and low-contrast OM images. While traditional tracing methods provide a possible way to efficiently generate labels for supervised network training, the generated pseudo-labels contain many noisy and incorrect labels, which lead to severe performance degradation. On the other hand, the publicly available dataset, BigNeuron, provides a large number of single 3D neurons that are reconstructed using various imaging paradigms and tracing methods. Though the raw OM images are not fully available for these neurons, they convey essential morphological priors for complex 3D neuron structures. In this paper, we propose a new approach to exploit morphological priors from neurons that have been reconstructed for training a deep neural network to extract neuron signals from OM images. We integrate a deep segmentation network in a generative adversarial network (GAN), expecting the segmentation network to be weakly supervised by pseudo-labels at the pixel level while utilizing the supervision of previously reconstructed neurons at the morphology level. In our morphological-prior-guided neuron reconstruction GAN, named MP-NRGAN, the segmentation network extracts neuron signals from raw images, and the discriminator network encourages the extracted neurons to follow the morphology distribution of reconstructed neurons. Comprehensive experiments on the public VISoR-40 dataset and BigNeuron dataset demonstrate that our proposed MP-NRGAN outperforms state-of-the-art approaches with less training effort.
从高分辨率但噪声大、对比度低的光学显微镜 (OM) 图像中手动标记神经元非常繁琐。因此,在应用深度学习技术从噪声大、对比度低的 OM 图像中重建神经元时,缺乏标注数据是一个关键挑战。虽然传统的跟踪方法为有监督的网络训练提供了一种生成标签的有效方法,但生成的伪标签包含许多噪声和错误的标签,导致性能严重下降。另一方面,公开可用的数据集 BigNeuron 提供了大量使用各种成像范式和跟踪方法重建的单个 3D 神经元。尽管这些神经元的原始 OM 图像不完全可用,但它们传达了用于复杂 3D 神经元结构的重要形态先验。在本文中,我们提出了一种新方法,利用已经为训练深度神经网络而重建的神经元的形态先验来从 OM 图像中提取神经元信号。我们在生成对抗网络 (GAN) 中集成了一个深度分割网络,期望分割网络在像素级受到伪标签的弱监督,同时在形态级受到先前重建神经元的监督。在我们的形态先验引导神经元重建 GAN 中,名为 MP-NRGAN 的分割网络从原始图像中提取神经元信号,而鉴别器网络鼓励提取的神经元遵循重建神经元的形态分布。在公共 VISoR-40 数据集和 BigNeuron 数据集上的综合实验表明,我们提出的 MP-NRGAN 具有更少的训练工作量,优于最先进的方法。