利用不确定性:牛呼吸道疾病的谨慎诊断和预测的深层机理方法。

IF 2.2 2区 农林科学 Q1 VETERINARY SCIENCES Preventive veterinary medicine Pub Date : 2024-10-09 DOI:10.1016/j.prevetmed.2024.106354
Théophile Ghislain Loïc Eyango Tabi , Maud Rouault , Victoria Potdevin , Xavier L’hostis , Sébastien Assié , Sébastien Picault , Nicolas Parisey
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引用次数: 0

摘要

牛呼吸道疾病(BRD)是一种流行的牛呼吸道传染病,由于多种风险因素的复杂相互作用,给准确诊断和预测带来了挑战。常见的方法包括流行病学数学模型和机器学习模型等数据驱动方法,这些方法都面临着参数估计困难或需要所有潜在结果数据等局限性,而这在观察 BRD 过程中存在稀缺性和噪声的情况下具有挑战性。为了应对这些挑战,我们引入了一种称为贝叶斯深度机制方法的新方法。该方法将数据驱动模型与流行病学数学模型结合起来,同时考虑了过程中的不确定性。通过利用法国 9 个农场 163 只动物的 265 个肺部超声波视频作为传感器数据,我们训练了一个贝叶斯深度学习模型来预测整批 12 只动物的感染状态(感染或未感染),并提供相关的置信度。这些预测及其置信度被用于过滤高度不确定的诊断,并将不确定性扩散到数学流行病学模型的参数化中,以预测感染动物的病情发展。我们的研究结果表明,考虑预测的置信度(或不确定性)可增强对 BRD 的诊断和预测。不确定性感知诊断将误差降低到 32%,优于传统的自动诊断。依靠兽医诊断的预测被认为是最有把握的,其误差为 23%,而考虑到诊断不确定性的预测误差接近 27.2%。在不确定性感知的基础上,我们未来的研究可以探索整合多种类型的传感器数据,如视频监控、音频记录和环境参数,以提供动物健康的综合评估,并采用多模式方法处理这些不同的数据。
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Harnessing uncertainty: A deep mechanistic approach for cautious diagnostic and forecast of Bovine Respiratory Disease
Bovine Respiratory Disease (BRD) is a prevalent infectious disease of respiratory tract in cattle, presenting challenges in accurate diagnosis and forecasting due to the complex interactions of multiple risk factors. Common methods, including mathematical epidemiological models and data-driven approaches such as machine learning models, face limitations such as difficult parameter estimation or the need for data across all potential outcomes, which is challenging given the scarcity and noise in observing BRD processes. In response to these challenges, we introduce a novel approach known as the Bayesian Deep Mechanistic method. This method couples a data-driven model with a mathematical epidemiological model while accounting for uncertainties within the processes. By utilising 265 lung ultrasound videos as sensor data from 163 animals across 9 farms in France, we trained a Bayesian deep learning model to predict the infection status (infected or non-infected) of an entire batch of 12 animals, also providing associated confidence levels. These predictions, coupled with their confidence levels, were used to filter out highly uncertain diagnoses and diffuse uncertainties into the parameterisation of a mathematical epidemiological model to forecast the progression of infected animals. Our findings highlight that considering the confidence levels (or uncertainties) of predictions enhances both the diagnosis and forecasting of BRD. Uncertainty-aware diagnosis reduced errors to 32 %, outperforming traditional automatic diagnosis. Forecast relying on veterinarian diagnoses, considered the most confident, had a 23 % error, whilst forecast taking into account diagnosis uncertainties had a close 27.2 % error. Building upon uncertainty-awareness, our future research could explore integrating multiple types of sensor data, such as video surveillance, audio recordings, and environmental parameters, to provide a comprehensive evaluation of animal health, employing multi-modal methods for processing this diverse data.
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来源期刊
Preventive veterinary medicine
Preventive veterinary medicine 农林科学-兽医学
CiteScore
5.60
自引率
7.70%
发文量
184
审稿时长
3 months
期刊介绍: Preventive Veterinary Medicine is one of the leading international resources for scientific reports on animal health programs and preventive veterinary medicine. The journal follows the guidelines for standardizing and strengthening the reporting of biomedical research which are available from the CONSORT, MOOSE, PRISMA, REFLECT, STARD, and STROBE statements. The journal focuses on: Epidemiology of health events relevant to domestic and wild animals; Economic impacts of epidemic and endemic animal and zoonotic diseases; Latest methods and approaches in veterinary epidemiology; Disease and infection control or eradication measures; The "One Health" concept and the relationships between veterinary medicine, human health, animal-production systems, and the environment; Development of new techniques in surveillance systems and diagnosis; Evaluation and control of diseases in animal populations.
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