Literature DB >> 33397216

Artificial Intelligence in Toxicologic Pathology: Quantitative Evaluation of Compound-Induced Hepatocellular Hypertrophy in Rats.

Hannah Pischon1,2, David Mason3, Bettina Lawrenz4, Olivier Blanck5, Anna-Lena Frisk1,6, Frederic Schorsch5, Valeria Bertani5.   

Abstract

Digital pathology evolved rapidly, enabling more systematic usage of image analysis and development of artificial intelligence (AI) applications. Here, combined AI models were developed to evaluate hepatocellular hypertrophy in rat liver, using commercial AI-based software on hematoxylin and eosin-stained whole slide images. In a first approach, deep learning-based identification of critical tissue zones (centrilobular, midzonal, and periportal) enabled evaluation of region-specific cell size. Mean cytoplasmic area of hepatocytes was calculated via several sequential algorithms including segmentation in microanatomical structures (separation of sinusoids and vessels from hepatocytes), nuclear detection, and area measurements. An increase in mean cytoplasmic area could be shown in groups given phenobarbital, known to induce hepatocellular hypertrophy when compared to control groups, in multiple studies. Quantitative results correlated with the gold standard: observation and grading performed by board-certified veterinary pathologists, liver weights, and gene expression. Furthermore, as a second approach, we introduce for the first time deep learning-based direct detection of hepatocellular hypertrophy with similar results. Cell hypertrophy is challenging to pick up, particularly in milder cases. Additional evaluation of mean cytoplasmic area or direct detection of hypertrophy, combined with histopathological observations and liver weights, is expected to increase accuracy and repeatability of diagnoses and grading by pathologists.

Entities:  

Keywords:  deep learning; digital pathology; gene expression; histopathology; hypertrophy; image analysis; molecular pathology

Year:  2021        PMID: 33397216     DOI: 10.1177/0192623320983244

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


  3 in total

1.  MMO-Net (Multi-Magnification Organ Network): A use case for Organ Identification using Multiple Magnifications in Preclinical Pathology Studies.

Authors:  Citlalli Gámez Serna; Fernando Romero-Palomo; Filippo Arcadu; Jürgen Funk; Vanessa Schumacher; Andrew Janowczyk
Journal:  J Pathol Inform       Date:  2022-07-19

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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