Approaches to canine health surveillance.

Canine genetics and epidemiology Pub Date : 2014-04-16 eCollection Date: 2014-01-01 DOI:10.1186/2052-6687-1-2
Dan G O'Neill, David B Church, Paul D McGreevy, Peter C Thomson, Dave C Brodbelt
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Abstract

Effective canine health surveillance systems can be used to monitor disease in the general population, prioritise disorders for strategic control and focus clinical research, and to evaluate the success of these measures. The key attributes for optimal data collection systems that support canine disease surveillance are representativeness of the general population, validity of disorder data and sustainability. Limitations in these areas present as selection bias, misclassification bias and discontinuation of the system respectively. Canine health data sources are reviewed to identify their strengths and weaknesses for supporting effective canine health surveillance. Insurance data benefit from large and well-defined denominator populations but are limited by selection bias relating to the clinical events claimed and animals covered. Veterinary referral clinical data offer good reliability for diagnoses but are limited by referral bias for the disorders and animals included. Primary-care practice data have the advantage of excellent representation of the general dog population and recording at the point of care by veterinary professionals but may encounter misclassification problems and technical difficulties related to management and analysis of large datasets. Questionnaire surveys offer speed and low cost but may suffer from low response rates, poor data validation, recall bias and ill-defined denominator population information. Canine health scheme data benefit from well-characterised disorder and animal data but reflect selection bias during the voluntary submissions process. Formal UK passive surveillance systems are limited by chronic under-reporting and selection bias. It is concluded that active collection systems using secondary health data provide the optimal resource for canine health surveillance.

犬类健康监测方法。
有效的犬类健康监测系统可用于监测普通人群中的疾病、确定战略控制疾病的优先次序和临床研究重点,以及评估这些措施是否成功。支持犬类疾病监测的最佳数据收集系统的关键属性是一般人群的代表性、疾病数据的有效性和可持续性。这些方面的局限性分别表现为选择偏差、分类偏差和系统中断。我们对犬类健康数据来源进行了审查,以确定它们在支持有效的犬类健康监测方面的优缺点。保险数据得益于庞大且定义明确的分母人群,但受限于与索赔临床事件和承保动物有关的选择偏差。兽医转诊临床数据为诊断提供了良好的可靠性,但也受到疾病和动物转诊偏差的限制。初级保健实践数据的优点是能够很好地代表普通犬类群体,并由兽医专业人员在护理点进行记录,但可能会遇到分类错误问题以及与管理和分析大型数据集有关的技术难题。问卷调查速度快、成本低,但可能存在回复率低、数据验证差、回忆偏差和分母人口信息不明确等问题。犬类健康计划数据得益于特征明确的疾病和动物数据,但在自愿提交过程中会出现选择偏差。英国的正式被动监测系统受到长期报告不足和选择偏差的限制。结论是,使用二级健康数据的主动收集系统为犬类健康监测提供了最佳资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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