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Aims and strategy for the implementation of machine learning in evidence synthesis in the Cluster for Reviews and Health Technology Assessments for 2021-2022
2
Zitationen
6
Autoren
2021
Jahr
Abstract
Key messages: In 2020-2021, a team in the Cluster for Reviews and Health Technology Assessments, Division for Health Services at the Norwegian Institute of Public Health (NIPH) ran a project on machine learning (ML) related to the conduct of evidence syntheses. Part of the work involved creating a vision and proposals for expanding ML activities in 2021-2022. This report describes the team’s suggestion for a strategic approach to meeting the continued need for innovation, evaluation, and implementation of ML for health technology assessments, systematic reviews, and other evidence syntheses. We propose a vision and goals, and a novel and flexible team structure. We divide activities into innovation, evaluation, and implementation, and present a risk assessment to inform the roll-out of a future team working on ML activities.
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