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Sparse Annotation is Sufficient for Bootstrapping Dense Segmentation. | LitMetric

AI Article Synopsis

  • - Producing accurate 3D models from biological images, especially of complex brain structures, requires extensive human effort to annotate data, which is time-consuming and typically done by experts.
  • - The authors developed a new deep learning method that allows for quick 3D segmentations using minimal 2D annotations, dramatically reducing the time required to create training data.
  • - This innovative approach enables non-experts to generate necessary annotations efficiently, making it easier to study brain circuits and their connections across larger datasets.

Article Abstract

Producing dense 3D reconstructions from biological imaging data is a challenging instance segmentation task that requires significant ground-truth training data for effective and accurate deep learning-based models. Generating training data requires intense human effort to annotate each instance of an object across serial section images. Our focus is on the especially complicated brain neuropil, comprising an extensive interdigitation of dendritic, axonal, and glial processes visualized through serial section electron microscopy. We developed a novel deep learning-based method to generate dense 3D segmentations rapidly from sparse 2D annotations of a few objects on single sections. Models trained on the rapidly generated segmentations achieved similar accuracy as those trained on expert dense ground-truth annotations. Human time to generate annotations was reduced by three orders of magnitude and could be produced by non-expert annotators. This capability will democratize generation of training data for large image volumes needed to achieve brain circuits and measures of circuit strengths.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11601847PMC
http://dx.doi.org/10.21203/rs.3.rs-5339143/v1DOI Listing

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