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OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†.

Publication ,  Journal Article
Folts, L; Martinez, AS; Williams, JA; Bunce, C; Capel, B; McKey, J
Published in: Biol Reprod
November 14, 2025

The number and distribution of follicles in each growth stage provide a reliable readout of ovarian health and function. Leveraging techniques for three-dimensional imaging of ovaries in toto has the potential to uncover total, accurate ovarian follicle counts. Due to the size and holistic nature of these images, counting oocytes is time consuming and difficult. The advent of machine-learning algorithms has allowed for the development of ultra-fast, automated methods to analyze microscopy images. In recent years, these pipelines have become more accessible to non-specialists. We used these tools to create OoCount, a high-throughput, open-source method for automatic oocyte segmentation and classification from fluorescent three-dimensional microscopy images of whole mouse ovaries using a deep-learning convolutional neural network-based approach. We developed a fast tissue-clearing and imaging protocol to obtain three-dimensional images of whole-mount mouse ovaries. Fluorescently labeled oocytes from three-dimensional images were manually annotated in Napari to develop a training dataset. This dataset was used to retrain StarDist using a convolutional neural network within DL4MicEverywhere to automatically label all oocytes in the ovary. In a second phase, we utilize Accelerated Pixel and Object Classification, a Napari plugin, to sort oocytes into growth stages. Here, we provide an end-to-end pipeline for producing high-quality three-dimensional images of mouse ovaries and obtaining follicle counts and staging. We demonstrate how to customize OoCount to fit images produced in any lab. Using OoCount, we obtain oocyte counts from each growth stage in the perinatal and adult ovary, improving our ability to study ovarian function and fertility.

Duke Scholars

Published In

Biol Reprod

DOI

EISSN

1529-7268

Publication Date

November 14, 2025

Volume

113

Issue

5

Start / End Page

1083 / 1101

Location

United States

Related Subject Headings

  • Ovarian Follicle
  • Oocytes
  • Obstetrics & Reproductive Medicine
  • Mice
  • Machine Learning
  • Imaging, Three-Dimensional
  • Female
  • Cell Count
  • Animals
  • 3215 Reproductive medicine
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Folts, L., Martinez, A. S., Williams, J. A., Bunce, C., Capel, B., & McKey, J. (2025). OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†. Biol Reprod, 113(5), 1083–1101. https://doi.org/10.1093/biolre/ioaf023
Folts, Lillian, Anthony S. Martinez, Jaelyn A. Williams, Corey Bunce, Blanche Capel, and Jennifer McKey. “OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†.Biol Reprod 113, no. 5 (November 14, 2025): 1083–1101. https://doi.org/10.1093/biolre/ioaf023.
Folts L, Martinez AS, Williams JA, Bunce C, Capel B, McKey J. OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†. Biol Reprod. 2025 Nov 14;113(5):1083–101.
Folts, Lillian, et al. “OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†.Biol Reprod, vol. 113, no. 5, Nov. 2025, pp. 1083–101. Pubmed, doi:10.1093/biolre/ioaf023.
Folts L, Martinez AS, Williams JA, Bunce C, Capel B, McKey J. OoCount: a machine-learning-based approach to mouse ovarian follicle counting and classification†. Biol Reprod. 2025 Nov 14;113(5):1083–1101.
Journal cover image

Published In

Biol Reprod

DOI

EISSN

1529-7268

Publication Date

November 14, 2025

Volume

113

Issue

5

Start / End Page

1083 / 1101

Location

United States

Related Subject Headings

  • Ovarian Follicle
  • Oocytes
  • Obstetrics & Reproductive Medicine
  • Mice
  • Machine Learning
  • Imaging, Three-Dimensional
  • Female
  • Cell Count
  • Animals
  • 3215 Reproductive medicine