利用领域知识提高显微镜图像分割与提升多切割

Constantin Pape, A. Matskevych, A. Wolny, Julian Hennies, Giulia Mizzon, Marion Louveaux, J. Musser, A. Maizel, D. Arendt, A. Kreshuk
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引用次数: 21

摘要

近年来,电子显微镜的通量显著增加,可以详细分析细胞形态和超微结构。单突触分辨率的神经回路分析仍然是这项技术的主要目标,但在细胞和发育生物学上的应用也开始大规模出现。在这些研究中获得的大量数据使得人工实例分割(许多分析管道的基本步骤)变得不可能。虽然由于采用了卷积神经网络,自动分割方法有了很大的改进,但它们的准确性仍然落后于人工注释,并且需要额外的人工校对。进一步改进的一个主要障碍是分割网络的有限视野,阻止它们利用预期的细胞形态或其他先前的生物知识,人类使用这些知识来通知他们的分割决策。在本文中,我们展示了如何利用这些特定于领域的信息,方法是将其表示为被称为提升多切分问题的图划分问题中的远程交互。使用该公式,我们证明了在神经科学和细胞生物学的三个具有挑战性的EM分割问题上,分割精度的显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Domain Knowledge to Improve Microscopy Image Segmentation With Lifted Multicuts
The throughput of electron microscopes has increased significantly in recent years, enabling detailed analysis of cell morphology and ultrastructure. Analysis of neural circuits at single-synapse resolution remains the flagship target of this technique, but applications to cell and developmental biology are also starting to emerge at scale. The amount of data acquired in such studies makes manual instance segmentation, a fundamental step in many analysis pipelines, impossible. While automatic segmentation approaches have improved significantly thanks to the adoption of convolutional neural networks, their accuracy still lags behind human annotations and requires additional manual proof-reading. A major hindrance to further improvements is the limited field of view of the segmentation networks preventing them from exploiting the expected cell morphology or other prior biological knowledge which humans use to inform their segmentation decisions. In this contribution, we show how such domain-specific information can be leveraged by expressing it as long-range interactions in a graph partitioning problem known as the lifted multicut problem. Using this formulation, we demonstrate significant improvement in segmentation accuracy for three challenging EM segmentation problems from neuroscience and cell biology.
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