Dowell Anthony, Darlow Ben, Macrae Jayden, Stubbe Maria, Turner Nikki, McBain Lynn
Department of Primary Health Care and General Practice, University of Otago, Wellington, New Zealand.
Datacraft Analytics, Wellington, New Zealand.
BMJ Open. 2017 Aug 1;7(7):e017146. doi: 10.1136/bmjopen-2017-017146.
To identify childhood respiratory tract-related illness presentation rates and service utilisation in primary care by interrogating free text and coded data from electronic medical records.
Retrospective cohort study. Data interrogation used a natural language processing software inference algorithm.
36 primary care practices in New Zealand. Data analysed from January 2008 to December 2013.
The records from 77 582 children enrolled were reviewed over a 6-year period to estimate the presentation of childhood respiratory illness and service utilisation. This cohort represents 268 919 person-years of data and over 650 000 unique consultations.
Childhood respiratory illness presentation rate to primary care practice, with description of seasonal and yearly variation.
Respiratory conditions constituted 46% of all child-general practitioner consultations with a stable year-on-year pattern of seasonal peaks. Upper respiratory tract infection was the most common respiratory category accounting for 21.0% of all childhood consultations, followed by otitis media (12.2%), wheeze-related illness (9.7%), throat infection (7.4%) and lower respiratory tract infection (4.4%). Almost 70% of children presented to their general practitioner with at least one respiratory condition in their first year of life; this reduced to approximately 25% for children aged 10-17.
This is the first study to assess the primary care incidence and service utilisation of childhood respiratory illness in a large primary care cohort by interrogating electronic medical record free text. The study identified the very high primary care workload related to childhood respiratory illness, especially during the first 2 years of life. These data can enable more effective planning of health service delivery. The findings and methodology have relevance to many countries, and the use of primary care 'big data' in this way can be applied to other health conditions.
通过查询电子病历中的自由文本和编码数据,确定儿童呼吸道相关疾病在初级保健中的就诊率和服务利用率。
回顾性队列研究。数据查询使用自然语言处理软件推理算法。
新西兰的36家初级保健机构。分析2008年1月至2013年12月的数据。
对77582名登记儿童的记录进行了为期6年的审查,以估计儿童呼吸道疾病的就诊情况和服务利用率。该队列代表了268919人年的数据和超过650000次的独特会诊。
儿童呼吸道疾病在初级保健机构的就诊率,并描述季节性和年度变化。
呼吸道疾病占所有儿童与全科医生会诊的46%,季节性高峰呈现逐年稳定的模式。上呼吸道感染是最常见的呼吸道疾病类型,占所有儿童会诊的21.0%,其次是中耳炎(12.2%)、喘息相关疾病(9.7%)、咽喉感染(7.4%)和下呼吸道感染(4.4%)。近70%的儿童在其生命的第一年至少因一种呼吸道疾病就诊于全科医生;10至17岁儿童的这一比例降至约25%。
这是第一项通过查询电子病历自由文本评估大型初级保健队列中儿童呼吸道疾病初级保健发病率和服务利用率的研究。该研究发现与儿童呼吸道疾病相关的初级保健工作量非常大,尤其是在生命的前两年。这些数据可以使卫生服务提供计划更加有效。这些发现和方法与许多国家相关,以这种方式使用初级保健“大数据”可应用于其他健康状况。