Author:
Štajduhar Andrija,Lipić Tomislav,Lončarić Sven,Judaš Miloš,Sedmak Goran
Abstract
AbstractThe complexity of the cerebral cortex underlies its function and distinguishes us as humans. Here, we present a principled veridical data science methodology for quantitative histology that shifts focus from image-level investigations towards neuron-level representations of cortical regions, with the neurons in the image as a subject of study, rather than pixel-wise image content. Our methodology relies on the automatic segmentation of neurons across whole histological sections and an extensive set of engineered features, which reflect the neuronal phenotype of individual neurons and the properties of neurons’ neighborhoods. The neuron-level representations are used in an interpretable machine learning pipeline for mapping the phenotype to cortical layers. To validate our approach, we created a unique dataset of cortical layers manually annotated by three experts in neuroanatomy and histology. The presented methodology offers high interpretability of the results, providing a deeper understanding of human cortex organization, which may help formulate new scientific hypotheses, as well as to cope with systematic uncertainty in data and model predictions.
Funder
European Regional Development Fund
Canada First Research Excellence Fund
Publisher
Springer Science and Business Media LLC
Reference45 articles.
1. Brodmann, K. Vergleichende Lokalisationslehre der Grosshirnrinde in ihren Prinzipien dargestellt auf Grund des Zellenbaues (Barth, 1909).
2. Judaš, M., Cepanec, M. & Sedmak, G. Brodmann’s map of the human cerebral cortex-or Brodmann’s maps?. Transl. Neurosci. 3, 67–74 (2012).
3. von Economo, C. F. & Koskinas, G. N. Die cytoarchitektonik der hirnrinde des erwachsenen menschen (Springer, 1925).
4. Kaas, J. H. The functional organization of somatosensory cortex in primates. Ann. Anat. Anatomischer Anzeiger 175, 509–518 (1993).
5. Lutnick, B. et al. An integrated iterative annotation technique for easing neural network training in medical image analysis. Nat. Mach. Intell. 1, 112–119 (2019).
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