Deep convolutional neural networks for segmenting 3D in vivo multiphoton images of vasculature in Alzheimer disease mouse models. Academic Article uri icon

Overview

abstract

  • The health and function of tissue rely on its vasculature network to provide reliable blood perfusion. Volumetric imaging approaches, such as multiphoton microscopy, are able to generate detailed 3D images of blood vessels that could contribute to our understanding of the role of vascular structure in normal physiology and in disease mechanisms. The segmentation of vessels, a core image analysis problem, is a bottleneck that has prevented the systematic comparison of 3D vascular architecture across experimental populations. We explored the use of convolutional neural networks to segment 3D vessels within volumetric in vivo images acquired by multiphoton microscopy. We evaluated different network architectures and machine learning techniques in the context of this segmentation problem. We show that our optimized convolutional neural network architecture with a customized loss function, which we call DeepVess, yielded a segmentation accuracy that was better than state-of-the-art methods, while also being orders of magnitude faster than the manual annotation. To explore the effects of aging and Alzheimer's disease on capillaries, we applied DeepVess to 3D images of cortical blood vessels in young and old mouse models of Alzheimer's disease and wild type littermates. We found little difference in the distribution of capillary diameter or tortuosity between these groups, but did note a decrease in the number of longer capillary segments (>75μm) in aged animals as compared to young, in both wild type and Alzheimer's disease mouse models.

publication date

  • March 13, 2019

Research

keywords

  • Alzheimer Disease
  • Cerebral Angiography
  • Cerebral Cortex
  • Imaging, Three-Dimensional
  • Microscopy, Fluorescence, Multiphoton
  • Neural Networks, Computer

Identity

PubMed Central ID

  • PMC6415838

Scopus Document Identifier

  • 85062822223

Digital Object Identifier (DOI)

  • 10.1371/journal.pone.0213539

PubMed ID

  • 30865678

Additional Document Info

volume

  • 14

issue

  • 3