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Pain Information Model and Its Potential for Predictive Analytics: Applicability of a Big Data Science Framework
Author(s) -
Gaedke Nomura Aline Tsuma,
Abreu Almeida Miriam,
Johnson Steve,
Pruinelli Lisiane
Publication year - 2021
Publication title -
journal of nursing scholarship
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.009
H-Index - 80
eISSN - 1547-5069
pISSN - 1527-6546
DOI - 10.1111/jnu.12648
Subject(s) - big data , predictive analytics , relevance (law) , computer science , health care , data science , analytics , psychological intervention , process (computing) , medicine , data mining , nursing , political science , law , economics , economic growth , operating system
Abstract Purpose To describe the application of a big data science framework to develop a pain information model and to discuss the potential for its use in predictive modeling. Design and Method This is an application of a cross‐industry standard process for a data mining adapted framework (the Applied Healthcare Data Science Framework) to build an information model on pain management and its potential for predictive modeling. Data were derived from electronic health records and were composed of approximately 51,000 records of unique adult patients admitted to clinical and surgical units between July 2015 and June 2019. Findings The application of the Applied Healthcare Data Science Framework steps allowed the development of an information model on pain management, considering pain assessment, interventions, goals, and outcomes. The developed model has the potential to be used for predicting which patients are most likely to be discharged with self‐reported pain. Conclusions Through the application of the framework, it is possible to support health professionals’ decision making on the use of data to improve the effectiveness of pain management. Clinical Relevance In the long term, the framework is intended to guide data science methodologies to personalize treatments, reduce costs, and improve health outcomes.