首页> 外文期刊>BMC Medical Research Methodology >Potential application of item-response theory to interpretation of medical codes in electronic patient records
【24h】

Potential application of item-response theory to interpretation of medical codes in electronic patient records

机译:项目响应理论在电子病历中医学代码解释中的潜在应用

获取原文
           

摘要

Background Electronic patient records are generally coded using extensive sets of codes but the significance of the utilisation of individual codes may be unclear. Item response theory (IRT) models are used to characterise the psychometric properties of items included in tests and questionnaires. This study asked whether the properties of medical codes in electronic patient records may be characterised through the application of item response theory models. Methods Data were provided by a cohort of 47,845 participants from 414 family practices in the UK General Practice Research Database (GPRD) with a first stroke between 1997 and 2006. Each eligible stroke code, out of a set of 202 OXMIS and Read codes, was coded as either recorded or not recorded for each participant. A two parameter IRT model was fitted using marginal maximum likelihood estimation. Estimated parameters from the model were considered to characterise each code with respect to the latent trait of stroke diagnosis. The location parameter is referred to as a calibration parameter, while the slope parameter is referred to as a discrimination parameter. Results There were 79,874 stroke code occurrences available for analysis. Utilisation of codes varied between family practices with intraclass correlation coefficients of up to 0.25 for the most frequently used codes. IRT analyses were restricted to 110 Read codes. Calibration and discrimination parameters were estimated for 77 (70%) codes that were endorsed for 1,942 stroke patients. Parameters were not estimated for the remaining more frequently used codes. Discrimination parameter values ranged from 0.67 to 2.78, while calibration parameters values ranged from 4.47 to 11.58. The two parameter model gave a better fit to the data than either the one- or three-parameter models. However, high chi-square values for about a fifth of the stroke codes were suggestive of poor item fit. Conclusion The application of item response theory models to coded electronic patient records might potentially contribute to identifying medical codes that offer poor discrimination or low calibration. This might indicate the need for improved coding sets or a requirement for improved clinical coding practice. However, in this study estimates were only obtained for a small proportion of participants and there was some evidence of poor model fit. There was also evidence of variation in the utilisation of codes between family practices raising the possibility that, in practice, properties of codes may vary for different coders.
机译:背景技术通常使用大量代码集对电子病历进行编码,但是使用单个代码的重要性可能不清楚。项目反应理论(IRT)模型用于表征测试和问卷中项目的心理计量特性。这项研究询问是否可以通过项目响应理论模型来表征电子病历中医疗代码的属性。方法数据由1997年至2006年间在英国全科医学研究数据库(GPRD)中来自414个家庭实践的47845名参与者提供,其首次卒中。在202 OXMIS和Read编码中,每个合格的卒中代码为为每个参与者编码为已记录或未记录。使用边际最大似然估计拟合两个参数的IRT模型。考虑到来自模型的估计参数,以针对中风诊断的潜在特征表征每个代码。位置参数称为校准参数,而斜率参数称为辨别参数。结果共有79,874个笔画代码可供分析。在家庭实践之间,代码的使用情况有所不同,对于最常用的代码,类内相关系数最高为0.25。 IRT分析仅限于110个读取代码。估计有77个(70%)代码的校准和鉴别参数得到了1,942名卒中患者的认可。没有为剩余的更频繁使用的代码估计参数。鉴别参数值的范围为0.67至2.78,而校准参数值的范围为4.47至11.58。与一参数或三参数模型相比,二参数模型对数据的拟合更好。但是,大约五分之一的笔画代码的高卡方值表明项目拟合度较差。结论项目响应理论模型在编码的电子病历中的应用可能有助于识别辨别力差或校准率低的医学编码。这可能表明需要改进的编码集或需要改进的临床编码实践。但是,在这项研究中,仅针对一小部分参与者获得了估计值,并且有一些证据表明模型拟合较差。还有证据表明,家庭实践之间代码使用的差异,增加了在实践中,代码性质可能因不同编码者而异的可能性。

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