首页> 外文期刊>JMIR Medical Informatics >Industry and Occupation in the Electronic Health Record: An Investigation of the National Institute for Occupational Safety and Health Industry and Occupation Computerized Coding System
【24h】

Industry and Occupation in the Electronic Health Record: An Investigation of the National Institute for Occupational Safety and Health Industry and Occupation Computerized Coding System

机译:电子病历中的行业和职业:美国国家职业安全与健康研究院及其职业计算机编码系统的调查

获取原文
           

摘要

Background Inclusion of information about a patient’s work, industry, and occupation, in the electronic health record (EHR) could facilitate occupational health surveillance, better health outcomes, prevention activities, and identification of workers’ compensation cases. The US National Institute for Occupational Safety and Health (NIOSH) has developed an autocoding system for “industry” and “occupation” based on 1990 Bureau of Census codes; its effectiveness requires evaluation in conjunction with promoting the mandatory addition of these variables to the EHR. Objective The objective of the study was to evaluate the intercoder reliability of NIOSH’s Industry and Occupation Computerized Coding System (NIOCCS) when applied to data collected in a community survey conducted under the Affordable Care Act; to determine the proportion of records that are autocoded using NIOCCS. Methods Standard Occupational Classification (SOC) codes are used by several federal agencies in databases that capture demographic, employment, and health information to harmonize variables related to work activities among these data sources. There are 359 industry and occupation responses that were hand coded by 2 investigators, who came to a consensus on every code. The same variables were autocoded using NIOCCS at the high and moderate criteria level. Results Kappa was .84 for agreement between hand coders and between the hand coder consensus code versus NIOCCS high confidence level codes for the first 2 digits of the SOC code. For 4 digits, NIOCCS coding versus investigator coding ranged from kappa=.56 to .70. In this study, NIOCCS was able to achieve production rates (ie, to autocode) 31%-36% of entered variables at the “high confidence” level and 49%-58% at the “medium confidence” level. Autocoding (production) rates are somewhat lower than those reported by NIOSH. Agreement between manually coded and autocoded data are “substantial” at the 2-digit level, but only “fair” to “good” at the 4-digit level. Conclusions This work serves as a baseline for performance of NIOCCS by investigators in the field. Further field testing will clarify NIOCCS effectiveness in terms of ability to assign codes and coding accuracy and will clarify its value as inclusion of these occupational variables in the EHR is promoted.
机译:背景技术在电子健康记录(EHR)中包含有关患者的工作,行业和职业的信息,可以促进职业健康监测,改善健康状况,开展预防活动以及确定工人的赔偿案件。美国国家职业安全与健康研究所(NIOSH)根据1990年的人口普查局代码开发了一种用于“行业”和“职业”的自动编码系统。其有效性需要结合促进将这些变量强制添加到EHR中进行评估。目的本研究的目的是评估NIOSH的工业和职业计算机编码系统(NIOCCS)的编码器可靠性,该编码器应用于根据《可负担医疗法案》进行的社区调查中收集的数据;确定使用NIOCCS自动编码的记录的比例。方法几个联邦机构在数据库中使用标准职业分类(SOC)代码来捕获人口统计,就业和健康信息,以在这些数据源之间协调与工作活动相关的变量。共有359位行业和职业反馈,由2位调查人员手工编码,他们对每种法规都达成了共识。使用NIOCCS在高和中等标准级别对相同的变量进行自动编码。结果对于手动编码器之间以及手动编码器共识代码与SOC代码的前两位数字的NIOCCS高置信度代码之间的一致性,Kappa为.84。对于4位数字,NIOCCS编码与研究人员编码的范围为kappa = .56至.70。在这项研究中,NIOCCS能够在“高置信度”水平上实现输入变量的31%-36%(即自动编码)的生产率,在“中置信度”水平上实现49%-58%的生产率。自动编码(生产)速率略低于NIOSH报告的速率。手动编码数据和自动编码数据之间的一致性在2位数级别上是“实质性”,但在4位数级别上只有“一般”至“良好”。结论这项工作为该领域的研究人员提供了NIOCCS性能的基线。进一步的现场测试将在分配代码和编码准确性的能力方面阐明NIOCCS的有效性,并在促进将这些职业变量纳入EHR中的同时阐明其价值。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号