A Systematic Evaluation of Interneuron Morphology Representations for Cell Type Discrimination.

Journal: Neuroinformatics
PMID:

Abstract

Quantitative analysis of neuronal morphologies usually begins with choosing a particular feature representation in order to make individual morphologies amenable to standard statistics tools and machine learning algorithms. Many different feature representations have been suggested in the literature, ranging from density maps to intersection profiles, but they have never been compared side by side. Here we performed a systematic comparison of various representations, measuring how well they were able to capture the difference between known morphological cell types. For our benchmarking effort, we used several curated data sets consisting of mouse retinal bipolar cells and cortical inhibitory neurons. We found that the best performing feature representations were two-dimensional density maps, two-dimensional persistence images and morphometric statistics, which continued to perform well even when neurons were only partially traced. Combining these feature representations together led to further performance increases suggesting that they captured non-redundant information. The same representations performed well in an unsupervised setting, implying that they can be suitable for dimensionality reduction or clustering.

Authors

  • Sophie Laturnus
    Institute for Ophthalmic Research, University of Tübingen, Tübingen, Germany.
  • Dmitry Kobak
    Champalimaud Neuroscience Program, Champalimaud Centre for the Unknown, Lisbon, Portugal.
  • Philipp Berens
    Hertie Institute for AI in Brain Health, University of Tübingen, Tübingen, Germany.