Literature DB >> 33252007

Deep Learning-Based Spermatogenic Staging Assessment for Hematoxylin and Eosin-Stained Sections of Rat Testes.

Dianne M Creasy1, Satish T Panchal2, Rohit Garg3, Pranab Samanta3.   

Abstract

In preclinical toxicology studies, a "stage-aware" histopathological evaluation of testes is recognized as the most sensitive method to detect effects on spermatogenesis. A stage-aware evaluation requires the pathologist to be able to identify the different stages of the spermatogenic cycle. Classically, this evaluation has been performed using periodic acid-Schiff (PAS)-stained sections to visualize the morphology of the developing spermatid acrosome, but due to the complexity of the rat spermatogenic cycle and the subtlety of the criteria used to distinguish between the 14 stages of the cycle, staging of tubules is not only time consuming but also requires specialized training and practice to become competent. Using different criteria, based largely on the shape and movement of the elongating spermatids within the tubule and pooling some of the stages, it is possible to stage tubules using routine hematoxylin and eosin (H&E)-stained sections, thereby negating the need for a special PAS stain. These criteria have been used to develop an automated method to identify the stages of the rat spermatogenic cycle in digital images of H&E-stained Wistar rat testes. The algorithm identifies the spermatogenic stage of each tubule, thereby allowing the pathologist to quickly evaluate the testis in a stage-aware manner and rapidly calculate the stage frequencies.

Entities:  

Keywords:  automation; deep learning; digital pathology; machine learning; rat; spermatogenesis; staging; testes

Year:  2020        PMID: 33252007     DOI: 10.1177/0192623320969678

Source DB:  PubMed          Journal:  Toxicol Pathol        ISSN: 0192-6233            Impact factor:   1.902


  3 in total

1.  Accurate Quantitative Histomorphometric-Mathematical Image Analysis Methodology of Rodent Testicular Tissue and Its Possible Future Research Perspectives in Andrology and Reproductive Medicine.

Authors:  Réka Eszter Sziva; Júlia Ács; Anna-Mária Tőkés; Ágnes Korsós-Novák; György L Nádasy; Nándor Ács; Péter Gábor Horváth; Anett Szabó; Haoran Ke; Eszter Mária Horváth; Zsolt Kopa; Szabolcs Várbíró
Journal:  Life (Basel)       Date:  2022-01-27

Review 2.  Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives.

Authors:  Shima Mehrvar; Lauren E Himmel; Pradeep Babburi; Andrew L Goldberg; Magali Guffroy; Kyathanahalli Janardhan; Amanda L Krempley; Bhupinder Bawa
Journal:  J Pathol Inform       Date:  2021-11-01

3.  Deep learning-based image-analysis algorithm for classification and quantification of multiple histopathological lesions in rat liver.

Authors:  Taishi Shimazaki; Ameya Deshpande; Anindya Hajra; Tijo Thomas; Kyotaka Muta; Naohito Yamada; Yuzo Yasui; Toshiyuki Shoda
Journal:  J Toxicol Pathol       Date:  2021-11-27       Impact factor: 1.628

  3 in total

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