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An Artificial Intelligence Approach to Support Detection of Neonatal Adverse Drug Reactions Based on Severity and Probability Scores: A New Risk Score as Web-Tool.
- Source :
- Children; Dec2022, Vol. 9 Issue 12, p1826, 10p
- Publication Year :
- 2022
-
Abstract
- Background: Critically ill neonates are at greater risk for adverse drug reactions (ADRs). The differentiation of ADRs from reactions associated with organ dysfunction/immaturity or genetic variability is difficult. Methods: In this prospective cohort study, each ADR was assessed using newborn-specific severity and probability scales by the clinical pharmacist. Subsequently, a machine learning-based risk score was designed to predict ADR presence in neonates. Results: In 98/412 (23.8%) of (56.3%; male) neonates included, 187 ADRs (0.42 ADR/patient) were determined related to 49 different drugs (37.12%). Drugs identified as high risk were enoxaparin, dexmedetomidine, vinblastine, dornase alfa, etoposide/carboplatin and prednisolone. The independent variables included in the risk score to predict ADR presence, according to the random forest importance criterion, were: systemic hormones (2 points), cardiovascular drugs (3 points), diseases of the circulatory system (1 point), nervous system drugs (1 point), and parenteral nutrition treatment (1 point), (cut-off value: 3 points). This risk score correctly classified 91.1% of the observations in the test set (c-index: 0.914). Conclusions: Using the high-performing risk score specific to neonates, it is expected that high-risk neonatal ADRs can be determined and prevented before they occur. Moreover, the awareness of clinicians of these drugs can be improved with this web-tool, and mitigation strategies (change of drug, dose, treatment duration, etc.) can be considered, based on a benefit-harm relationship for suspected drugs with a newborn-centered approach. [ABSTRACT FROM AUTHOR]
- Subjects :
- DECISION trees
ENOXAPARIN
ETOPOSIDE
REFERENCE values
FLUID therapy
CARBOPLATIN
PREDNISOLONE
HORMONES
NEONATAL intensive care
CONFIDENCE intervals
CRITICALLY ill
ARTIFICIAL intelligence
PATIENTS
MACHINE learning
RANDOM forest algorithms
NEUROTRANSMITTERS
NEONATAL intensive care units
RISK assessment
SEVERITY of illness index
DECISION support systems
IMIDAZOLES
CARDIOVASCULAR agents
LOW-molecular-weight heparin
DRUGS
HEALTH care teams
DESCRIPTIVE statistics
DRUG side effects
PREDICTION models
VINBLASTINE
VASCULAR diseases
PARENTERAL feeding
DATA analysis software
STATISTICAL sampling
ODDS ratio
PROBABILITY theory
LONGITUDINAL method
ANTIBIOTICS
CHILDREN
Subjects
Details
- Language :
- English
- ISSN :
- 22279067
- Volume :
- 9
- Issue :
- 12
- Database :
- Complementary Index
- Journal :
- Children
- Publication Type :
- Academic Journal
- Accession number :
- 160958127
- Full Text :
- https://doi.org/10.3390/children9121826