非模式生物组织学病变的自动识别:重振环境科学

IF 8.9 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Pierre Liboureau*, Philip Tanabe, Enrico Riccardi, Daniel Schlenk, Kristy Forsgren and Daniela M. Pampanin*, 
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引用次数: 0

摘要

对污染物的响应,组织形态和功能的改变可以反映生态系统的健康状况,并且是不可逆的。传统的评估需要训练有素的人员,在成本和时间上都没有效率,而且产生的主观、定性的结果容易产生偏差。自动化数字组织学旨在解决这些挑战,同时减轻病理学家的负担,增加结果的意义和可重复性。在过去的几年中,图像识别技术的进步促进了对人类健康的内容密集的组织学图像的分析。在此,我们将这些进步应用于环境科学,并测试了自动化数字组织学,以识别石油和天然气平台附近两种鱼类(Gadus morhua和Limanda Limanda)肝脏中的病变(脂肪变性、黑素巨噬细胞聚集、白细胞浸润和肉芽肿)。使用由专业组织病理学家评分的图像对苏木精和伊红染色的整张幻灯片图像训练机器学习模型。自动数字检测与传统评估(在85%到95%之间)相吻合,但需要的专业知识更少,速度更快。我们的研究结果为快速、经济、准确地对环境和生态毒理学样本进行数字化组织学分析提供了一条完整、自动化的工作流程。高效、可获取的数字组织学模型将促进对正在发生的环境变化的理解,并加强对未来的准备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Identification of Histological Lesions in Nonmodel Organisms: Reinvigorating Environmental Science

In response to contaminants, alterations of tissue morphology and function can reflect ecosystem health and be irreversible. Traditional assessments require highly trained personnel, are cost- and time-ineffective and produce subjective, qualitative results susceptible to bias. Automated digital histology aims to address these challenges while relieving the burden on pathologists and increasing the meaningfulness and reproducibility of findings. Over the past few years, technological advances in image recognition facilitated the analysis of content-dense histological images for human health. Herein, we applied such advancements to environmental science, and automated digital histology was tested for the identification of lesions (steatosis, melano-macrophage aggregates, leucocyte infiltration, and granuloma) in livers from two fish species (Gadus morhua and Limanda limanda) sampled near oil and gas platforms. Images scored by professional histopathologists were used to train a machine learning model on hematoxylin and eosin-stained whole slide images. The automated digital detections corresponded well with traditional assessments (between 85% and 95%) but required less expertise and were faster. Our results demonstrate a viable path toward a complete, automated workflow for fast, cost-effective and accurate digital histology analysis of environmental and ecotoxicology samples. Efficient, accessible digital histology models will advance understanding of ongoing environmental changes and enhance future preparedness.

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来源期刊
Environmental Science & Technology Letters Environ.
Environmental Science & Technology Letters Environ. ENGINEERING, ENVIRONMENTALENVIRONMENTAL SC-ENVIRONMENTAL SCIENCES
CiteScore
17.90
自引率
3.70%
发文量
163
期刊介绍: Environmental Science & Technology Letters serves as an international forum for brief communications on experimental or theoretical results of exceptional timeliness in all aspects of environmental science, both pure and applied. Published as soon as accepted, these communications are summarized in monthly issues. Additionally, the journal features short reviews on emerging topics in environmental science and technology.
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