TY - JOUR
T1 - Nursing workload
T2 - use of artificial intelligence to develop a classifier model
AU - Rosa, Ninon Girardon da
AU - Vaz, Tiago Andres
AU - Lucena, Amália de Fátima
N1 - Publisher Copyright:
© 2024, null. All rights reserved.
PY - 2024/7/5
Y1 - 2024/7/5
N2 - OBJECTIVE: to describe the development of a predictive nursing workload classifier model, using artificial intelligence. METHOD: retrospective observational study, using secondary sources of electronic patient records, using machine learning. The convenience sample consisted of 43,871 assessments carried out by clinical nurses using the Perroca Patient Classification System, which served as the gold standard, and clinical data from the electronic medical records of 11,774 patients, which constituted the variables. In order to organize the data and carry out the analysis, the Dataiku® data science platform was used. Data analysis occurred in an exploratory, descriptive and predictive manner. The study was approved by the Ethics and Research Committee of the institution where the study was carried out. RESULTS: the use of artificial intelligence enabled the development of the nursing workload assessment classifier model, identifying the variables that most contributed to its prediction. The algorithm correctly classified 72% of the variables and the area under the Receiver Operating Characteristic curve was 82%. CONCLUSION: a predictive model was developed, demonstrating that it is possible to train algorithms with data from the patient's electronic medical record to predict the nursing workload and that artificial intelligence tools can be effective in automating this activity.
AB - OBJECTIVE: to describe the development of a predictive nursing workload classifier model, using artificial intelligence. METHOD: retrospective observational study, using secondary sources of electronic patient records, using machine learning. The convenience sample consisted of 43,871 assessments carried out by clinical nurses using the Perroca Patient Classification System, which served as the gold standard, and clinical data from the electronic medical records of 11,774 patients, which constituted the variables. In order to organize the data and carry out the analysis, the Dataiku® data science platform was used. Data analysis occurred in an exploratory, descriptive and predictive manner. The study was approved by the Ethics and Research Committee of the institution where the study was carried out. RESULTS: the use of artificial intelligence enabled the development of the nursing workload assessment classifier model, identifying the variables that most contributed to its prediction. The algorithm correctly classified 72% of the variables and the area under the Receiver Operating Characteristic curve was 82%. CONCLUSION: a predictive model was developed, demonstrating that it is possible to train algorithms with data from the patient's electronic medical record to predict the nursing workload and that artificial intelligence tools can be effective in automating this activity.
KW - Artificial Intelligence
KW - ElectronicHealth Records
KW - Machine Learning
KW - Nursing
KW - Nursing Informatics
KW - Workload
UR - http://www.scopus.com/inward/record.url?scp=85198456408&partnerID=8YFLogxK
U2 - 10.1590/1518-8345.7131.4239
DO - 10.1590/1518-8345.7131.4239
M3 - Article
C2 - 38985046
AN - SCOPUS:85198456408
SN - 1518-8345
VL - 32
JO - Revista latino-americana de enfermagem
JF - Revista latino-americana de enfermagem
M1 - e4239
ER -