Science and Research

Detection and segmentation of morphologically complex eukaryotic cells in fluorescence microscopy images via feature pyramid fusion

Detection and segmentation of macrophage cells in fluorescence microscopy images is a challenging problem, mainly due to crowded cells, variation in shapes, and morphological complexity. We present a new deep learning approach for cell detection and segmentation that incorporates previously learned nucleus features. A novel fusion of feature pyramids for nucleus detection and segmentation with feature pyramids for cell detection and segmentation is used to improve performance on a microscopic image dataset created by us and provided for public use, containing both nucleus and cell signals. Our experimental results indicate that cell detection and segmentation performance significantly benefit from the fusion of previously learned nucleus features. The proposed feature pyramid fusion architecture clearly outperforms a state-of-the-art Mask R-CNN approach for cell detection and segmentation with relative mean average precision improvements of up to 23.88% and 23.17%, respectively.

  • Korfhage, N.
  • Muhling, M.
  • Ringshandl, S.
  • Becker, A.
  • Schmeck, B.
  • Freisleben, B.
Publication details
DOI: 10.1371/journal.pcbi.1008179
Journal: PLoS Comput Biol
Pages: e1008179 
Number: 9
Work Type: Original
Location: UGMLC
Disease Area: PLI
Partner / Member: UMR
Access-Number: 32898132
See publication on PubMed

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