Title of article :
Applications of machine learning for hemodialysis nursing cares based on a machine learning algorithm
Author/Authors :
Zabihi ، Mohammad Reza Department of Immunology - School of Medicine - Tehran University of Medical Sciences , Rashtiani ، Samira Department of Physiology - School of Medicine - Guilan University of Medical Sciences , Mashayekhi ، Yasaman Department of Physiology - School of Medicine - Guilan University of Medical Sciences , Amirinia ، Fateme Department of Physiology - School of Medicine - Guilan University of Medical Sciences , Gholamkar ، Vahid Student Research Committee, School of Nursing and Midwifery - Golestan University of Medical Sciences , Kor ، Samira Student Research Committee, School of Nursing and Midwifery - Golestan University of Medical Sciences , Akhoondian ، Mohammad Department of Physiology - School of Medicine, Cellular and the Molecular Research Center - Guilan University of Medical Sciences
From page :
4
To page :
9
Abstract :
Nursing care during dialysis involves managing symptoms and preventing complications among patients undergoing hemodialysis or peritoneal dialysis. In this regard, to improve the quality of nursing care during dialysis, several approaches were developed to enhance hemodialysis adequacy and prevent complications; however, machine learning (ML) emerged as a methodological approach for evaluating hemodialysis adequacy and complications. The current study aims to analyze ML approach in predicting and managing hemodialysis by R programming language analysis to provide a therapeutic concept for hemodialysis management in critical nursing care. An R programming language was used to perform the logical analysis of the data. ML algorithms based on usage rate included logistic regression (LR), Support Vector Machine (SVM), Extreme Gradient Boosting (XGBoost), Random Forest (RF), Complement Naive Bayes (CNB), Takagi-Sugeno-Kang fuzzy system (G-TSK-FS), k-nearest neighbors’ classifier (KNN), Stochastic gradient descent (SGD), Linear Discriminant Analysis (LDA), and Multi-adaptive neural-fuzzy system (MANFIS). Also, the use of ML in nursing care during hemodialysis is categorized into three indications for predicting hemodialysis adequacy, complications, and vascular access performance. Using ML in hemodialysis nursing care is a growing research interest. The main application areas are the prediction of hemodialysis adequacy, complications, and vascular access performance. LR and SVM are practical ML algorithms for constructing AI tools to improve hemodialysis management.
Keywords :
Hemodialysis Units , dialysis , nursing care , Machine Learning
Journal title :
Journal of Nursing Reports in Clinical Practice
Journal title :
Journal of Nursing Reports in Clinical Practice
Record number :
2776714
Link To Document :
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