An explainable machine learning model for predicting the outcome of ischemic stroke after mechanical thrombectomy
Conclusions
Using ML and readily available features, we developed an ML model that can potentially be used in clinical practice to generate real-time, accurate predictions of the outcome of patients with AIS treated with MT.
Source: Journal of NeuroInterventional Surgery - Category: Neurosurgery Authors: Yao, Z., Mao, C., Ke, Z., Xu, Y. Tags: Open access, Clinical neurology Source Type: research
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