作者
Christian Rubbert, Kaustubh R Patil, Kerim Beseoglu, Christian Mathys, Rebecca May, Marius G Kaschner, Benjamin Sigl, Nikolas A Teichert, Johannes Boos, Bernd Turowski, Julian Caspers
发表日期
2018/12
期刊
European radiology
卷号
28
页码范围
4949-4958
出版商
Springer Berlin Heidelberg
简介
Objectives
The pathogenesis leading to poor functional outcome after aneurysmal subarachnoid haemorrhage (aSAH) is multifactorial and not fully understood. We evaluated a machine learning approach based on easily determinable clinical and CT perfusion (CTP) features in the course of patient admission to predict the functional outcome 6 months after ictus.
Methods
Out of 630 consecutive subarachnoid haemorrhage patients (2008–2015), 147 (mean age 54.3, 66.7% women) were retrospectively included (Inclusion: aSAH, admission within 24 h of ictus, CTP within 24 h of admission, documented modified Rankin scale (mRS) grades after 6 months. Exclusion: occlusive therapy before first CTP, previous aSAH, CTP not evaluable). A random forests model with conditional inference trees was optimised and trained on sex, age, World Federation of …
引用总数
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