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Machine Learning Identifies Higher Survival Profile In Extracorporeal Cardiopulmonary Resuscitation.
Critical Care Medicine ( IF 8.8 ) Pub Date : 2024-03-27 , DOI: 10.1097/ccm.0000000000006261
Ruben Crespo-Diaz 1 , Julian Wolfson 2 , Demetris Yannopoulos 3 , Jason A. Bartos 3
Affiliation  

Extracorporeal cardiopulmonary resuscitation (ECPR) has been shown to improve neurologically favorable survival in patients with refractory out-of-hospital cardiac arrest (OHCA) caused by shockable rhythms. Further refinement of patient selection is needed to focus this resource-intensive therapy on those patients likely to benefit. This study sought to create a selection model using machine learning (ML) tools for refractory cardiac arrest patients undergoing ECPR.

中文翻译:

机器学习确定了体外心肺复苏中更高的生存率。

体外心肺复苏 (ECPR) 已被证明可以改善由可电击心律引起的难治性院外心脏骤停 (OHCA) 患者的神经系统生存率。需要进一步细化患者选择,将这种资源密集型治疗集中于那些可能受益的患者。本研究试图使用机器学习 (ML) 工具为接受 ECPR 的难治性心脏骤停患者创建一个选择模型。
更新日期:2024-03-27
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