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畜牧养殖中的数字表型分析

Digital Phenotyping in Livestock Farming.

作者信息

Neethirajan Suresh, Kemp Bas

机构信息

Adaptation Physiology Group, Department of Animal Sciences, Wageningen University & Research, 6700 AH Wageningen, The Netherlands.

出版信息

Animals (Basel). 2021 Jul 5;11(7):2009. doi: 10.3390/ani11072009.

Abstract

Currently, large volumes of data are being collected on farms using multimodal sensor technologies. These sensors measure the activity, housing conditions, feed intake, and health of farm animals. With traditional methods, the data from farm animals and their environment can be collected intermittently. However, with the advancement of wearable and non-invasive sensing tools, these measurements can be made in real-time for continuous quantitation relating to clinical biomarkers, resilience indicators, and behavioral predictors. The digital phenotyping of humans has drawn enormous attention recently due to its medical significance, but much research is still needed for the digital phenotyping of farm animals. Implications from human studies show great promise for the application of digital phenotyping technology in modern livestock farming, but these technologies must be directly applied to animals to understand their true capacities. Due to species-specific traits, certain technologies required to assess phenotypes need to be tailored efficiently and accurately. Such devices allow for the collection of information that can better inform farmers on aspects of animal welfare and production that need improvement. By explicitly addressing farm animals' individual physiological and mental (affective states) needs, sensor-based digital phenotyping has the potential to serve as an effective intervention platform. Future research is warranted for the design and development of digital phenotyping technology platforms that create shared data standards, metrics, and repositories.

摘要

目前,利用多模态传感器技术在农场收集了大量数据。这些传感器可测量农场动物的活动、饲养条件、采食量和健康状况。采用传统方法时,农场动物及其环境的数据只能间歇性收集。然而,随着可穿戴和非侵入式传感工具的进步,这些测量可以实时进行,以持续定量分析与临床生物标志物、恢复力指标和行为预测因子相关的数据。由于其医学意义,人类数字表型分析最近受到了极大关注,但农场动物的数字表型分析仍需要大量研究。来自人类研究的启示表明,数字表型分析技术在现代畜牧业中的应用前景广阔,但必须将这些技术直接应用于动物,以了解它们的真实能力。由于物种特异性特征,评估表型所需的某些技术需要进行有效且准确的定制。此类设备能够收集信息,从而更好地告知农民动物福利和生产方面需要改进的地方。通过明确满足农场动物的个体生理和心理(情感状态)需求,基于传感器的数字表型分析有潜力成为一个有效的干预平台。未来有必要开展研究,设计和开发数字表型分析技术平台,以创建共享的数据标准、指标和存储库。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b809/8300347/693af93109dc/animals-11-02009-g001.jpg

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