Background:
Personalized
prediction of the risk of symptomatic intracerebral hemorrhage (sICH)
after stroke thrombolysis is clinically useful. Machine-learning-based
modeling may provide the personalized prediction of the risk of sICH
after stroke thrombolysis.
Methods:
We
identified 2578 thrombolysis-treated ischemic stroke patients between
January 2013 and December 2016 from a multicenter database, where 70%
were used to train models and the remaining 30% were used as the nominal
test sets. Another 136 consecutive tissue plasminogen-activated-treated
patients between January 2017 and December 2017 from our institute were
enrolled as the independent test sets for clinical usability
evaluation. Five machine-learning models were developed to predict the
risk of sICH after stroke thrombolysis, and the receiving operating
characteristic (ROC) was used to compare the prediction performance.
Results:
In
total, 2237 cases were included in our study, of which 102 had sICH
transformation (4.56%). Finally, the three-layer neuro network was
selected with the best performance on nominal test sets (AUC = 0.82).
The probability of the model score was further categorized into three
risk ranks (18.97%, 5.63%, and 0.81%) according to the risk
distribution. Implementing our system in clinical practice was
associated with reduced computed tomography (CT)-to-treatment time (CTT;
41 min
versus 52 min,
p < 0.001). All sICH patients were correctly predicted to be within the high-sICH risk rank.
Conclusions:
The
machine-learning-based modeling is feasible for providing personalized
risk prediction of sICH after stroke thrombolysis, and is able to reduce
the CTT. More data are needed to further optimize the model and improve
the accuracy of prediction.
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