TY - JOUR
T1 - Electronic Health Data Predict Outcomes After Aneurysmal Subarachnoid Hemorrhage
AU - Zafar, Sahar F.
AU - Postma, Eva N.
AU - Biswal, Siddharth
AU - Fleuren, Lucas
AU - Boyle, Emily J.
AU - Bechek, Sophia
AU - O’Connor, Kathryn
AU - Shenoy, Apeksha
AU - Jonnalagadda, Durga
AU - Kim, Jennifer
AU - Shafi, Mouhsin S.
AU - Patel, Aman B.
AU - Rosenthal, Eric S.
AU - Westover, M. Brandon
N1 - Publisher Copyright:
© 2017, Springer Science+Business Media, LLC.
PY - 2018/4/1
Y1 - 2018/4/1
N2 - Backgroud: Using electronic health data, we sought to identify clinical and physiological parameters that in combination predict neurologic outcomes after aneurysmal subarachnoid hemorrhage (aSAH). Methods: We conducted a single-center retrospective cohort study of patients admitted with aSAH between 2011 and 2016. A set of 473 predictor variables was evaluated. Our outcome measure was discharge Glasgow Outcome Scale (GOS). For laboratory and physiological data, we computed the minimum, maximum, median, and variance for the first three admission days. We created a penalized logistic regression model to determine predictors of outcome and a multivariate multilevel prediction model to predict poor (GOS 1–2), intermediate (GOS 3), or good (GOS 4–5) outcomes. Results: One hundred and fifty-three patients met inclusion criteria; most were discharged with a GOS of 3. Multivariate analysis predictors of mortality (AUC 0.9198) included APACHE II score, Glasgow Come Scale (GCS), white blood cell (WBC) count, mean arterial pressure, variance of serum glucose, intracranial pressure (ICP), and serum sodium. Predictors of death/dependence versus independence (GOS 4–5)(AUC 0.9456) were levetiracetam, mechanical ventilation, WBC count, heart rate, ICP variance, GCS, APACHE II, and epileptiform discharges. The multiclass prediction model selected GCS, admission APACHE II, periodic discharges, lacosamide, and rebleeding as significant predictors; model performance exceeded 80% accuracy in predicting poor or good outcome and exceeded 70% accuracy for predicting intermediate outcome. Conclusions: Variance in early physiologic data can impact patient outcomes and may serve as targets for early goal-directed therapy. Electronically retrievable features such as ICP, glucose levels, and electroencephalography patterns should be considered in disease severity and risk stratification scores.
AB - Backgroud: Using electronic health data, we sought to identify clinical and physiological parameters that in combination predict neurologic outcomes after aneurysmal subarachnoid hemorrhage (aSAH). Methods: We conducted a single-center retrospective cohort study of patients admitted with aSAH between 2011 and 2016. A set of 473 predictor variables was evaluated. Our outcome measure was discharge Glasgow Outcome Scale (GOS). For laboratory and physiological data, we computed the minimum, maximum, median, and variance for the first three admission days. We created a penalized logistic regression model to determine predictors of outcome and a multivariate multilevel prediction model to predict poor (GOS 1–2), intermediate (GOS 3), or good (GOS 4–5) outcomes. Results: One hundred and fifty-three patients met inclusion criteria; most were discharged with a GOS of 3. Multivariate analysis predictors of mortality (AUC 0.9198) included APACHE II score, Glasgow Come Scale (GCS), white blood cell (WBC) count, mean arterial pressure, variance of serum glucose, intracranial pressure (ICP), and serum sodium. Predictors of death/dependence versus independence (GOS 4–5)(AUC 0.9456) were levetiracetam, mechanical ventilation, WBC count, heart rate, ICP variance, GCS, APACHE II, and epileptiform discharges. The multiclass prediction model selected GCS, admission APACHE II, periodic discharges, lacosamide, and rebleeding as significant predictors; model performance exceeded 80% accuracy in predicting poor or good outcome and exceeded 70% accuracy for predicting intermediate outcome. Conclusions: Variance in early physiologic data can impact patient outcomes and may serve as targets for early goal-directed therapy. Electronically retrievable features such as ICP, glucose levels, and electroencephalography patterns should be considered in disease severity and risk stratification scores.
KW - EEG
KW - Machine learning
KW - Neurologic outcomes
KW - Predictive analytics
KW - Subarachnoid hemorrhage
UR - http://www.scopus.com/inward/record.url?scp=85030724089&partnerID=8YFLogxK
U2 - 10.1007/s12028-017-0466-8
DO - 10.1007/s12028-017-0466-8
M3 - Article
C2 - 28983801
AN - SCOPUS:85030724089
SN - 1541-6933
VL - 28
SP - 184
EP - 193
JO - Neurocritical Care
JF - Neurocritical Care
IS - 2
ER -