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Proliferating cell nuclear antigen (PCNA) allows the automatic identification of follicles in microscopic images of human ovarian tissue

Authors Kelsey T, Caserta B, Castillo L, Wallace WHB, Gonzálvez FC

Published 5 August 2010 Volume 2010:2 Pages 99—105

DOI https://doi.org/10.2147/PLMI.S11116

Review by Single anonymous peer review

Peer reviewer comments 4



Thomas W Kelsey1, Benedicta Caserta2, Luis Castillo2, W Hamish B Wallace3, Francisco Cóppola Gonzálvez4
1School of Computer Science, University of St Andrews, St Andrews, Scotland, UK; 2Pereira Rossell Hospital, ASSE, Ministry of Public Health, Montevideo, Uruguay; 3Division of Child Life and Health, Department of Reproductive and Developmental Sciences, University of Edinburgh, Edinburgh, Scotland, UK; 4Department of Obstetrics and Gynecology C, School of Medicine, University of the Republic, Montevideo, Uruguay

Background: Human ovarian reserve is defined by the population of nongrowing follicles (NGFs) in the ovary. Direct estimation of ovarian reserve involves the identification of NGFs in prepared ovarian tissue. Previous studies involving human tissue have used hematoxylin and eosin (HE) stain, with NGF populations estimated by human examination either of tissue under a microscope, or of images taken of this tissue.

Methods: In this study we replaced HE with proliferating cell nuclear antigen (PCNA), and automated the identification and enumeration of NGFs that appear in the resulting microscopic images. We compared the automated estimates to those obtained by human experts, with the “gold standard” taken to be the average of the conservative and liberal estimates by three human experts.

Results: The automated estimates were within 10% of the “gold standard”, for images at both 100× and 200× magnifications. Automated analysis took longer than human analysis for several hundred images, not allowing for breaks from analysis needed by humans.

Conclusion: Our results both replicate and improve on those of previous studies involving rodent ovaries, and demonstrate the viability of large-scale studies of human ovarian reserve using a combination of immunohistochemistry and computational image analysis techniques.

Keywords: histology, feature detection, ovarian reserve, immunohistochemistry, biological clock

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