Literature DB >> 33287654

A Workflow for the Performance of the Differential Ovarian Follicle Count Using Deep Neuronal Networks.

Eleonora Carboni1, Heike Marxfeld1, Hanati Tuoken1, Christian Klukas1, Till Eggers1, Sibylle Gröters1, Bennard van Ravenzwaay1.   

Abstract

In order to automate the counting of ovarian follicles required in multigeneration reproductive studies performed in the rat according to Organization for Economic Co-operation and Development guidelines 443 and 416, the application of deep neural networks was tested. The manual evaluation of the differential ovarian follicle count is a tedious and time-consuming task that requires highly trained personnel. In this regard, deep learning outputs provide overlay pictures for a more detailed documentation, together with an increased reproducibility of the counts. To facilitate the planned good laboratory practice (GLP) validation a workflow was set up using MLFlow to make all steps from generating of scans, training of the neural network, uploading of study images to the neural network, generation and storage of the results in a compliant manner controllable and reproducible. PyTorch was used as main framework to build the Faster region-based convolutional neural network for the training. We compared the performances of different depths of ResNet models with specific regard to the sensitivity, specificity, accuracy of the models. In this paper, we describe all steps from data labeling, training of networks, and the performance metrics chosen to evaluate different network architectures. We also make recommendation on steps, which should be taken into consideration when GLP validation is aimed for.

Entities:  

Keywords:  PyTorch; ResNet; artificial intelligence; convolutional neuronal network; differential ovarian follicle count; digital pathology; object recognition

Year:  2020        PMID: 33287654     DOI: 10.1177/0192623320969130

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


  3 in total

1.  Artificial Intelligence-Assisted Image Analysis of Acetaminophen-Induced Acute Hepatic Injury in Sprague-Dawley Rats.

Authors:  Eun Bok Baek; Ji-Hee Hwang; Heejin Park; Byoung-Seok Lee; Hwa-Young Son; Yong-Bum Kim; Sang-Yeop Jun; Jun Her; Jaeku Lee; Jae-Woo Cho
Journal:  Diagnostics (Basel)       Date:  2022-06-16

2.  Digital workflows for pathological assessment of rat estrous cycle stage using images of uterine horn and vaginal tissue.

Authors:  Shinichi Onishi; Riku Egami; Yuya Nakamura; Yoshinobu Nagashima; Kaori Nishihara; Saori Matsuo; Atsuko Murai; Shuji Hayashi; Yoshifumi Uesumi; Atsuhiko Kato; Hiroyuki Tsunoda; Masaki Yamazaki; Hideaki Mizuno
Journal:  J Pathol Inform       Date:  2022-06-29

Review 3.  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 in total

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