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Methodological research priorities for data sciences: Report from The International Methodology Consortium for Coded Health Information (IMECCHI)

机译:数据科学的方法论研究重点:国际编码健康信息方法论联合会(IMECCHI)的报告

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ABSTRACT ObjectivesThe vast amount of data produced by healthcare systems both structured and unstructured, termed ‘Big Data’ have the potential to improve the quality of healthcare through supporting a wide range of medical and healthcare functions, including clinical decision support, disease surveillance, and population health management. As the field of big data in healthcare is rapidly expanding, methodology to understand and analyze thereby enhancing and optimizing the use of this data is needed. We present priorities determined for future work in this area. ApproachAn international collaboration of health services researchers who aim to promote the methodological development and use of coded health information to promote quality of care and quality health policy decisions known as IMECCHI –proposes areas of development and future priorities for use of big data in healthcare. Thematic areas were determined through discussion of potential projects related to the use and evaluation of both structured /codeable and unstructured health information, during a recent meeting in October 2015 ResultsSeveral themes were identified. The top priorities included: 1) electronic medical record data exploration and utilization; 2) developing common data models and multimodal /multi-source databases from disparate sources development; 3) data quality assessment including developing indicators, automated logic checks and international comparisons; 4) the translation of ICD-10 to ICD-11 through field-testing 5) Exploration of non-physician produced/coded data; and 6) Patient safety and quality measure development. ConclusionsA list of expert views on critical international priorities for future methodological research relating to big data in healthcare were determined. The consortium's members welcome contacts from investigators involved in research using health data, especially in cross-jurisdictional collaborative studies.
机译:摘要目标医疗保健系统产生的大量结构化和非结构化数据(称为“大数据”)具有通过支持广泛的医疗和保健功能(包括临床决策支持,疾病监测和人群)来提高医疗质量的潜力。健康管理。随着医疗保健中大数据领域的迅速扩展,需要一种了解和分析方法,从而增强和优化此数据的使用。我们提出了为该领域未来工作确定的优先事项。方法卫生服务研究人员的国际合作,旨在促进方法论的发展和编码健康信息的使用,以提高医疗质量和质量卫生政策决策(称为IMECCHI),提出了在医疗领域使用大数据的发展领域和未来优先事项。通过在2015年10月的最近一次会议上讨论与结构化/可编码和非结构化健康信息的使用和评估有关的潜在项目,确定了主题领域。确定了几个主题。首要任务包括:1)电子病历数据的探索和利用; 2)从不同的源代码开发中开发通用数据模型和多模式/多源数据库; 3)数据质量评估,包括制定指标,自动逻辑检查和国际比较; 4)通过现场测试将ICD-10转换为ICD-11。5)探索非医师生产/编码的数据; 6)制定患者安全和质量措施。结论确定了有关医疗领域大数据未来方法学研究的关键国际优先事项的专家意见清单。该联盟的成员欢迎使用健康数据进行研究的研究人员的联系,尤其是跨辖区合作研究。

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