TY - JOUR
T1 - EXPLAINABLE ARTIFICIAL INTELLIGENCE FOR EARLY PREDICTION OF PRESSURE INJURY RISK
AU - Alderden, Jenny
AU - Johnny, Jace
AU - Brooks, Katie R.
AU - Wilson, Andrew
AU - Yap, Tracey L.
AU - Zhao, Yunchuan
AU - van der Laan, Mark
AU - Kennerly, Susan
N1 - Publisher Copyright:
© 2024 American Association of Critical-Care Nurses.
PY - 2024/9/1
Y1 - 2024/9/1
N2 - Background Hospital-acquired pressure injuries (HAPIs) have a major impact on patient outcomes in intensive care units (ICUs). Effective prevention relies on early and accurate risk assessment. Traditional risk-assessment tools, such as the Braden Scale, often fail to capture ICU-specific factors, limiting their predictive accuracy. Although artificial intelligence models offer improved accuracy, their “black box” nature poses a barrier to clinical adoption. Objective To develop an artificial intelligence–based HAPI risk-assessment model enhanced with an explainable artificial intelligence dashboard to improve interpretability at both the global and individual patient levels. Methods An explainable artificial intelligence approach was used to analyze ICU patient data from the Medical Information Mart for Intensive Care. Predictor variables were restricted to the first 48 hours after ICU admission. Various machine-learning algorithms were evaluated, culminating in an ensemble “super learner” model. The model’s performance was quantified using the area under the receiver operating characteristic curve through 5-fold cross-validation. An explainer dashboard was developed (using synthetic data for patient privacy), featuring interactive visualizations for in-depth model interpretation at the global and local levels. Results The final sample comprised 28 395 patients with a 4.9% incidence of HAPIs. The ensemble super learner model performed well (area under curve = 0.80). The explainer dashboard provided global and patient-level interactive visualizations of model predictions, showing each variable’s influence on the risk-assessment outcome. Conclusion The model and its dashboard provide clinicians with a transparent, interpretable artificial intelligence– based risk-assessment system for HAPIs that may enable more effective and timely preventive interventions.
AB - Background Hospital-acquired pressure injuries (HAPIs) have a major impact on patient outcomes in intensive care units (ICUs). Effective prevention relies on early and accurate risk assessment. Traditional risk-assessment tools, such as the Braden Scale, often fail to capture ICU-specific factors, limiting their predictive accuracy. Although artificial intelligence models offer improved accuracy, their “black box” nature poses a barrier to clinical adoption. Objective To develop an artificial intelligence–based HAPI risk-assessment model enhanced with an explainable artificial intelligence dashboard to improve interpretability at both the global and individual patient levels. Methods An explainable artificial intelligence approach was used to analyze ICU patient data from the Medical Information Mart for Intensive Care. Predictor variables were restricted to the first 48 hours after ICU admission. Various machine-learning algorithms were evaluated, culminating in an ensemble “super learner” model. The model’s performance was quantified using the area under the receiver operating characteristic curve through 5-fold cross-validation. An explainer dashboard was developed (using synthetic data for patient privacy), featuring interactive visualizations for in-depth model interpretation at the global and local levels. Results The final sample comprised 28 395 patients with a 4.9% incidence of HAPIs. The ensemble super learner model performed well (area under curve = 0.80). The explainer dashboard provided global and patient-level interactive visualizations of model predictions, showing each variable’s influence on the risk-assessment outcome. Conclusion The model and its dashboard provide clinicians with a transparent, interpretable artificial intelligence– based risk-assessment system for HAPIs that may enable more effective and timely preventive interventions.
UR - http://www.scopus.com/inward/record.url?scp=85203110091&partnerID=8YFLogxK
U2 - 10.4037/ajcc2024856
DO - 10.4037/ajcc2024856
M3 - Article
C2 - 39217110
AN - SCOPUS:85203110091
SN - 1062-3264
VL - 33
SP - 373
EP - 381
JO - American Journal of Critical Care
JF - American Journal of Critical Care
IS - 5
ER -