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提高供应商目录准确性:机器可读目录是否有帮助?

Improving provider directory accuracy: can machine-readable directories help?

机构信息

Faegre Baker Daniels Consulting, 1050 K St, Washington, DC 20001. Email:

出版信息

Am J Manag Care. 2019 May;25(5):241-245.

Abstract

OBJECTIVES

To examine inaccuracies in health plan provider directories and consider whether the machine-readable (MR) formats required of provider directories in the health insurance exchanges are more accurate than conventional directories and have the potential to improve directory accuracy in the future.

STUDY DESIGN

The descriptive study design included qualitative data collection through stakeholder interviews and quantitative data analysis and verification of provider data source accuracy from multiple sources.

METHODS

Four separate sources of provider data from 5 counties were captured and aggregated into an analytic database. Provider data were analyzed through text matching techniques and provider practice phone interviews. Additionally, we interviewed 21 stakeholders.

RESULTS

In quantitative analysis, we found widespread inaccuracy in provider information across directory types. Provider directory phone numbers were more likely to align with Google data than with the directory for the same company's health plans in other markets. It is vastly less expensive to aggregate data from MR files than from conventional directories, which suggests that MR files have potential to be cost-effectively leveraged for data quality improvements. In qualitative analysis, we found that interviewees perceived provider directories as inaccurate, but they differed in their perceptions of the severity of the problem. Interviewees who were familiar with MR directories understood their advantages over conventional directories.

CONCLUSIONS

The MR provider directories are not more accurate than the conventional provider directories. However, there is strong reason to believe that MR technology can be leveraged to increase accuracy. Promising state- and vendor-led initiatives also have the potential to correct widespread provider directory inaccuracy.

摘要

目的

检查健康计划供应商目录中的不准确之处,并考虑医疗保险交易所中要求的供应商目录的机器可读 (MR) 格式是否比传统目录更准确,并且有可能在未来提高目录的准确性。

研究设计

描述性研究设计包括通过利益相关者访谈进行定性数据收集,以及通过从多个来源验证供应商数据源准确性进行定量数据分析。

方法

从 5 个县捕获了四个独立的供应商数据源,并将其汇总到一个分析数据库中。通过文本匹配技术和供应商实践电话访谈对供应商数据进行分析。此外,我们采访了 21 位利益相关者。

结果

在定量分析中,我们发现各种目录类型的供应商信息都存在广泛的不准确。供应商目录电话号码与 Google 数据的匹配度高于与其他市场相同公司健康计划目录的匹配度。从 MR 文件汇总数据比从传统目录汇总数据便宜得多,这表明 MR 文件有可能以具有成本效益的方式用于提高数据质量。在定性分析中,我们发现受访者认为供应商目录不准确,但他们对问题严重程度的看法存在差异。熟悉 MR 目录的受访者理解它们相对于传统目录的优势。

结论

MR 供应商目录并不比传统供应商目录更准确。然而,有充分的理由相信 MR 技术可以被利用来提高准确性。有希望的州和供应商主导的举措也有可能纠正广泛的供应商目录不准确问题。

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