Early prediction of ventricular peritoneal shunt dependency in aneurysmal subarachnoid haemorrhage patients by recurrent neural network-based machine learning using routine intensive care unit data
Nils Schweingruber(Universität Hamburg), Patrick Czorlich(Universität Hamburg), Marcel S. Woo(Universität Hamburg), Marius Marc-Daniel Mader(Stanford University), Christina Mayer(Universität Hamburg), Jens Gempt(Universität Hamburg), Anton Wiehe(Universität Hamburg), Christian Gerloff(Universität Hamburg), Marlene Fischer(Universität Hamburg), Stefan Kluge(Universität Hamburg), Jan Phillip Bremer(Universität Hamburg), Jörn Grensemann(Universität Hamburg), Götz Thomalla(Universität Hamburg), Jennifer Sauvigny(Universität Hamburg), Fanny Quandt(Universität Hamburg)
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