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A neural cell automated analysis system based on pathological specimens in a gerbil brain ischemia model

Authors :
Eri Katsumata
Abhishek Kumar Ranjan
Yoshihiko Tashima
Takayuki Takahata
Toshiyuki Sato
Motoaki Kobayashi
Masami Ishii
Toyomi Takahashi
Asahi Oda
Momoko Hirano
Yoji Hakamata
Kazuhisa Sugai
Eiji Kobayashi
Source :
Acta Cirúrgica Brasileira, Vol 39 (2024)
Publication Year :
2024
Publisher :
Sociedade Brasileira para o Desenvolvimento da Pesquisa em Cirurgia, 2024.

Abstract

ABSTRACT Purpose: Amid rising health awareness, natural products which has milder effects than medical drugs are becoming popular. However, only few systems can quantitatively assess their impact on living organisms. Therefore, we developed a deep-learning system to automate the counting of cells in a gerbil model, aiming to assess a natural product’s effectiveness against ischemia. Methods: The image acquired from paraffin blocks containing gerbil brains was analyzed by a deep-learning model (fine-tuned Detectron2). Results: The counting system achieved a 79%-positive predictive value and 85%-sensitivity when visual judgment by an expert was used as ground truth. Conclusions: Our system evaluated hydrogen water’s potential against ischemia and found it potentially useful, which is consistent with expert assessment. Due to natural product’s milder effects, large data sets are needed for evaluation, making manual measurement labor-intensive. Hence, our system offers a promising new approach for evaluating natural products.

Details

Language :
English
ISSN :
16782674
Volume :
39
Database :
Directory of Open Access Journals
Journal :
Acta Cirúrgica Brasileira
Publication Type :
Academic Journal
Accession number :
edsdoj.17060aacabaf491db5e514462d3bf179
Document Type :
article
Full Text :
https://doi.org/10.1590/acb394224