Scientific Reports (Apr 2023)

Stereology neuron counts correlate with deep learning estimates in the human hippocampal subregions

  • Jan Oltmer,
  • Emma W. Rosenblum,
  • Emily M. Williams,
  • Jessica Roy,
  • Josué Llamas-Rodriguez,
  • Valentina Perosa,
  • Samantha N. Champion,
  • Matthew P. Frosch,
  • Jean C. Augustinack

DOI
https://doi.org/10.1038/s41598-023-32903-y
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 13

Abstract

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Abstract Hippocampal subregions differ in specialization and vulnerability to cell death. Neuron death and hippocampal atrophy have been a marker for the progression of Alzheimer’s disease. Relatively few studies have examined neuronal loss in the human brain using stereology. We characterize an automated high-throughput deep learning pipeline to segment hippocampal pyramidal neurons, generate pyramidal neuron estimates within the human hippocampal subfields, and relate our results to stereology neuron counts. Based on seven cases and 168 partitions, we vet deep learning parameters to segment hippocampal pyramidal neurons from the background using the open-source CellPose algorithm, and show the automated removal of false-positive segmentations. There was no difference in Dice scores between neurons segmented by the deep learning pipeline and manual segmentations (Independent Samples t-Test: t(28) = 0.33, p = 0.742). Deep-learning neuron estimates strongly correlate with manual stereological counts per subregion (Spearman’s correlation (n = 9): r(7) = 0.97, p < 0.001), and for each partition individually (Spearman’s correlation (n = 168): r(166) = 0.90, p <0 .001). The high-throughput deep-learning pipeline provides validation to existing standards. This deep learning approach may benefit future studies in tracking baseline and resilient healthy aging to the earliest disease progression.