Annotation-Efficient 3d U-Nets For Brain Plasticity Network Mapping

L. Gjesteby, Tzofi Klinghoffer, Meagan Ash, Matthew A. Melton, K. Otto, Damon G. Lamb, S. Burke, L. Brattain
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Abstract

A fundamental challenge in machine learning-based segmentation of large-scale brain microscopy images is the time and domain expertise required by humans to generate ground truth for model training. Weakly supervised and semi-supervised approaches can greatly reduce the burden of human annotation. Here we present a study of three-dimensional U-Nets with varying levels of supervision to perform neuronal nuclei segmentation in light-sheet microscopy volumes. We leverage automated blob detection with classical algorithms to generate noisy labels on a large volume, and our experiments show that weak supervision, with or without additional fine-tuning, can outperform resource-limited fully supervised learning. These methods are extended to analyze coincidence between multiple fluorescent stains in cleared brain tissue. This is an initial step towards automated whole-brain analysis of plasticity-related gene expression.
脑可塑性网络映射的高效注释3d U-Nets
基于机器学习的大规模脑显微镜图像分割的一个基本挑战是,人类需要时间和领域专业知识来生成模型训练的基础真理。弱监督和半监督方法可以大大减轻人工注释的负担。在这里,我们提出了一项三维U-Nets的研究,具有不同水平的监督,以在薄片显微镜体积中进行神经元核分割。我们利用经典算法的自动斑点检测在大容量上生成噪声标签,我们的实验表明,弱监督,无论是否有额外的微调,都可以胜过资源有限的完全监督学习。这些方法被扩展到分析清除脑组织中多个荧光染色之间的一致性。这是实现对可塑性相关基因表达的全脑自动化分析的第一步。
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