O'Brien Janice, McCullough Aliya, Debes Christian, Ruple Audrey
Department of Population Health Sciences, Virginia-Maryland College of Veterinary Medicine, Virginia Tech, Blacksburg, VA, USA.
Fetch Insurance Services, LLC, New York, NY, USA.
Sci Rep. 2025 Apr 25;15(1):14407. doi: 10.1038/s41598-025-99229-9.
Taking a One Health approach to infectious diseases common to both dogs and people, pet insurance claims from 2008 to 2022 in the United States were compared to publicly available CDC-based data on human cases for Lyme disease, giardia, and Valley Fever (coccidioidomycosis). Despite having very different causative agents and etiologies, the disease trends for these three diseases were very similar between people and dogs both geographically and temporally. We furthermore demonstrated that adding dog data as a predictor variable in addition to the human data improves prediction models for those same diseases when investigating incidence over time. With machine learning prediction tools for the pet insurance to predict changes in disease incidence sooner and give public health officials more time to prepare, pet insurance data could be a helpful tool to predict and detect diseases by estimating even earlier the effects of these common exposure diseases on human health. We also show the spatiotemporal distribution of intestinal worm diagnoses in dogs, and while it could not be directly compared to human data because the corresponding disease in humans (soil-transmitted helminths) has not been well monitored recently. However, these data can help inform researchers and public health workers.
采用“同一健康”方法研究狗和人类共患的传染病,将美国2008年至2022年的宠物保险理赔数据与基于美国疾病控制与预防中心(CDC)公开数据的莱姆病、贾第虫病和谷热(球孢子菌病)人类病例数据进行了比较。尽管这三种疾病的病原体和病因截然不同,但在地理和时间上,人与狗的疾病趋势非常相似。我们还证明,在研究随时间变化的发病率时,除人类数据外,将狗的数据作为预测变量加入,可以改进这些疾病的预测模型。借助宠物保险的机器学习预测工具,能够更快地预测疾病发病率的变化,为公共卫生官员争取更多准备时间,通过更早估计这些常见暴露疾病对人类健康的影响,宠物保险数据可能成为预测和检测疾病的有用工具。我们还展示了狗肠道蠕虫诊断的时空分布,虽然由于人类相应疾病(土壤传播蠕虫)最近未得到充分监测,无法直接与人类数据进行比较。然而,这些数据可为研究人员和公共卫生工作者提供参考。