Opportunities and challenges to enhance the value and uptake of Chief Nursing Informatics Officer (CNIO) Roles in Canada: A Qualitative Study.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Gillian Strudwick, Brian Lo, Jessica Kemp, Karim Jessa, Tania Tajirian, Peggy White, Lynn Nagle
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Abstract

Clinician informatics leadership has been identified as an essential component of addressing the 'implementation to benefits realization gap' that exists for many digital health technologies. Chief Medical Informatics Officers (CMIOs), and Chief Nursing Informatics Officers (CNIOs) are well-positioned to ensure the success of these initiatives. However, while the CMIO role is fairly well-established in Canada, there is limited uptake of CNIO roles in the country. The main objective of this work is to build on the current progress of the CMIO role and explore how the CNIO role can be best positioned for uptake and value across healthcare organizations in Canada. A qualitative study was conducted. Ten clinician leaders in CMIO, CNIO, and related roles in Canada were interviewed about the value of these roles and strategies for supporting the uptake of the role. This study provides the foundation for future initiatives for supporting and showcasing the value of the CNIO in a digitally enabled healthcare organization.

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在加拿大提高首席护理信息学官(CNIO)角色的价值和使用率的机遇与挑战:定性研究。
临床医生的信息学领导力被认为是解决许多数字医疗技术存在的 "从实施到效益实现差距 "的重要组成部分。首席医疗信息学官(CMIO)和首席护理信息学官(CNIO)完全有能力确保这些举措取得成功。然而,虽然首席医疗信息官(CMIO)的角色在加拿大已相当成熟,但加拿大对首席护理信息官(CNIO)角色的接受程度却很有限。这项工作的主要目的是在 CMIO 角色目前取得的进展基础上,探讨如何为 CNIO 角色进行最佳定位,使其在加拿大的医疗机构中得到广泛应用并发挥价值。我们开展了一项定性研究。十位在加拿大担任 CMIO、CNIO 及相关角色的临床医生领导者接受了访谈,探讨了这些角色的价值以及支持角色应用的策略。这项研究为未来支持和展示 CNIO 在数字化医疗机构中的价值奠定了基础。
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