视觉上明显疾病的流行病学动态:相机捕获和机器学习应用于普通刷尾负鼠的背带。

IF 3.5 1区 生物学 Q1 ZOOLOGY
Elise M Ringwaldt, Jessie C Buettel, Scott Carver, Barry W Brook
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引用次数: 0

摘要

通过摄像机诱捕等被动监测方法,视觉上明显的疾病对于调查和监测野生动物种群中病原体的发生和流行具有重要价值。驼背裤的特点是在腰骶区有明显的毛发断裂和损伤的临床迹象,影响着澳大利亚各地的普通帚尾负鼠(毛鼠)。然而,胸罩的病因尚不清楚,时空因素研究不足。本研究调查了澳大利亚塔斯马尼亚州亚当斯菲尔德普通帚尾负鼠的腰裤流行病学,并预测了腰裤在塔斯马尼亚州的分布。我们从一个为期3年的相机捕获网络中收集了6908只负鼠的内衣临床症状图像,并对其进行了视觉分类。我们的研究结果显示:(1)成年负鼠出现露臀迹象的可能性是年轻负鼠的两倍;(2)随着负鼠相对活动度的增加,背带裤的发生率也随之增加;(3)紧身裤流行率具有季节性,5月最低(3.2%-深秋),12月最高(27.1%-初夏)。总的来说,这些发现表明,内裤的发生可能与密度有关,假定的病原似乎受季节因素或场地使用的影响。此外,基于人工(人类专家)分类的相机陷阱图像,训练卷积神经网络(CNN)自动识别内衣。CNN将训练好的分类器应用于塔斯马尼亚州的38,589张刷尾负鼠图像,预测内裤很普遍,总体流行率为18.6%。本研究为研究内衣流行病学提供了新的见解,并确定了进一步研究这一宿主-病原体系统的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epidemiological Dynamics of a Visually Apparent Disease: Camera Trapping and Machine-Learning Applied to Rumpwear in the Common Brushtail Possum.

Visually apparent diseases are valuable for investigating and monitoring the occurrence and prevalence of pathogens in wildlife populations through passive monitoring methods like camera trapping. Rumpwear, characterized by visible clinical signs of hair breakage and damage on the lumbosacral region, affects common brushtail possums (Trichosurus vulpecula) across Australia. However, the etiology of rumpwear remains unclear, and the spatiotemporal factors are understudied. This study investigated the epidemiology of rumpwear in common brushtail possums at Adamsfield, Tasmania (Australia), and predicted rumpwear distribution across the Tasmanian landscape. We visually classified images of rumpwear clinical signs in 6908 individual possums collected from a 3-year camera trapping network. Our results revealed that: (1) adults were twice as likely to show signs of rumpwear compared to young possums; (2) rumpwear occurrence increased with the relative activity of possums at a site; and (3) prevalence of rumpwear was seasonal, being lowest in May (3.2%-late autumn) and highest in December (27.1%-early summer). Collectively, these findings suggest that the occurrence of rumpwear may be density dependent, the putative etiological agent seems to be influenced by seasonal factors or site use. Additionally, a convolution neural network (CNN) was trained to identify rumpwear automatically based on the manually (human-expert) classified camera trap images. Applying the trained classifier to 38,589 brushtail possum images from across Tasmania, the CNN predicted that rumpwear is widespread, with an overall prevalence of 18.6%. This study provides new insights into rumpwear epidemiology and identified factors for further investigating within this host-pathogen system.

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来源期刊
CiteScore
6.40
自引率
12.10%
发文量
81
审稿时长
>12 weeks
期刊介绍: The official journal of the International Society of Zoological Sciences focuses on zoology as an integrative discipline encompassing all aspects of animal life. It presents a broader perspective of many levels of zoological inquiry, both spatial and temporal, and encourages cooperation between zoology and other disciplines including, but not limited to, physics, computer science, social science, ethics, teaching, paleontology, molecular biology, physiology, behavior, ecology and the built environment. It also looks at the animal-human interaction through exploring animal-plant interactions, microbe/pathogen effects and global changes on the environment and human society. Integrative topics of greatest interest to INZ include: (1) Animals & climate change (2) Animals & pollution (3) Animals & infectious diseases (4) Animals & biological invasions (5) Animal-plant interactions (6) Zoogeography & paleontology (7) Neurons, genes & behavior (8) Molecular ecology & evolution (9) Physiological adaptations
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