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Advisor(s)
Abstract(s)
Conservative practices, such as manual registry have limited scope regarding preoperative, intraoperative and post operative decision making, knowledge discovery, analytical techniques and knowledge integration into patient care.
To maximize quality and value, perioperative care is changing through new technological developments. In this
context, knowledge management practices will enable future transformation and enhancements in healthcare services.
By performing a data science and knowledge management research in the perioperative department at Hospital Dr.
Nélio Mendonça between 2013 and 2015, this paper describes its principal results. This study showed perioperative
decision-making improvement by integrating data science tools on the perioperative electronic system (PES). Before
the PES implementation only 1,2% of the nurses registered the preoperative visit and after 87,6% registered it.
Regarding the patient features it was possible to assess anxiety and pain levels. A future conceptual model for
perioperative decision support systems grounded on data science should be considered as a knowledge management
tool.
Description
Keywords
Perioperative data science Knowledge management Clinical decision support systems Hospital information systems . Escola Superior de Saúde
Citation
Baptista, M., Vasconcelos, J. B., Rocha, Á., Silva, R., Carvalho, J. V., Jardim, H. G., & Quintal, A. (2019). The impact of perioperative data science in hospital knowledge management. Journal of Medical Systems, 43(2), 1-7. https://doi.org/10.1007/s10916-019-1162-3
Publisher
Springer