A Statistical Model for Stroke Outcome Prediction and Treatment Planning
classification
📊 stat.AP
cs.LG
keywords
modeloutcomestrokemodelsplanningtreatmenttreatmentsaddress
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Stroke is a major cause of mortality and long--term disability in the world. Predictive outcome models in stroke are valuable for personalized treatment, rehabilitation planning and in controlled clinical trials. In this paper we design a new model to predict outcome in the short-term, the putative therapeutic window for several treatments. Our regression-based model has a parametric form that is designed to address many challenges common in medical datasets like highly correlated variables and class imbalance. Empirically our model outperforms the best--known previous models in predicting short--term outcomes and in inferring the most effective treatments that improve outcome.
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