Combinatorial responsiveness of single chemosensory neurons to external stimulation of mouse explants revealed by DynamicNeuronTracker.

Jungsik Noh, Wen Mai Wong, Gaudenz Danuser, Julian P Meeks
Author Information
  1. Jungsik Noh: Lyda Hill Department of Bioinformatics, University of Texas Southwestern Medical Center, Dallas, TX, USA.
  2. Wen Mai Wong: Graduate Program in Neuroscience, Department of Neuroscience, University of Texas Southwestern Medical Center, Dallas, TX, USA.
  3. Gaudenz Danuser: Lyda Hill Department of Bioinformatics, University of Texas Southwestern Medical Center, Dallas, TX, USA. ORCID
  4. Julian P Meeks: Departments of Neuroscience and Pediatrics, University of Rochester School of Medicine and Dentistry, Rochester, NY, USA. ORCID

Abstract

Calcium fluorescence imaging enables us to investigate how individual neurons of live animals encode sensory input or drive specific behaviors. Extracting and interpreting large-scale neuronal activity from imaging data are crucial steps in harnessing this information. A significant challenge arises from uncorrectable tissue deformation, which disrupts the effectiveness of existing neuron segmentation methods. Here, we propose an open-source software, DynamicNeuronTracker (DyNT), which generates dynamic neuron masks for deforming and/or incompletely registered 3D calcium imaging data using patch-matching iterations. We demonstrate that DyNT accurately tracks densely populated neurons, whereas a widely used static segmentation method often produces erroneous masks. DyNT also includes automated statistical analyses for interpreting neuronal responses to multiple sequential stimuli. We applied DyNT to analyze the responses of pheromone-sensing neurons in mice to controlled stimulation. We found that four bile acids and four sulfated steroids activated 15 subpopulations of sensory neurons with distinct combinatorial response profiles, revealing a strong bias toward detecting sulfated estrogen and pregnanolone.

Grants

  1. R01 DC017985/NIDCD NIH HHS
  2. K25 EB028854/NIBIB NIH HHS
  3. R35 GM136428/NIGMS NIH HHS
  4. R56 DC015784/NIDCD NIH HHS
  5. F31 DC017661/NIDCD NIH HHS

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