Zubler Frederic, Tzovara Athina
Department of Neurology, Spitalzentrum Biel, University of Bern, Biel/Bienne, Switzerland.
Institute of Computer Science, University of Bern, Bern, Switzerland.
Front Neurol. 2023 Jul 24;14:1183810. doi: 10.3389/fneur.2023.1183810. eCollection 2023.
Outcome prognostication in comatose patients after cardiac arrest (CA) remains to date a challenge. The major determinant of clinical outcome is the post-hypoxic/ischemic encephalopathy. Electroencephalography (EEG) is routinely used to assess neural functions in comatose patients. Currently, EEG-based outcome prognosis relies on visual evaluation by medical experts, which is time consuming, prone to subjectivity, and oblivious to complex patterns. The field of deep learning has given rise to powerful algorithms for detecting patterns in large amounts of data. Analyzing EEG signals of coma patients with deep neural networks with the goal of assisting in outcome prognosis is therefore a natural application of these algorithms. Here, we provide the first narrative literature review on the use of deep learning for prognostication after CA. Existing studies show overall high performance in predicting outcome, relying either on spontaneous or on auditory evoked EEG signals. Moreover, the literature is concerned with algorithmic interpretability, and has shown that largely, deep neural networks base their decisions on clinically or neurophysiologically meaningful features. We conclude this review by discussing considerations that the fields of artificial intelligence and neurology will need to jointly address in the future, in order for deep learning algorithms to break the publication barrier, and to be integrated in clinical practice.
心脏骤停(CA)后昏迷患者的预后预测至今仍是一项挑战。临床结果的主要决定因素是缺氧/缺血性脑病。脑电图(EEG)通常用于评估昏迷患者的神经功能。目前,基于EEG的预后预测依赖于医学专家的视觉评估,这既耗时,又容易主观,且会忽略复杂的模式。深度学习领域催生了强大的算法,用于检测大量数据中的模式。因此,使用深度神经网络分析昏迷患者的EEG信号以辅助预后预测是这些算法的自然应用。在此,我们首次对深度学习在CA后预后预测中的应用进行叙述性文献综述。现有研究表明,无论是基于自发EEG信号还是听觉诱发电位EEG信号,在预测结果方面总体表现良好。此外,文献关注算法的可解释性,并且表明,在很大程度上,深度神经网络的决策基于具有临床或神经生理学意义的特征。我们通过讨论人工智能和神经学领域未来需要共同解决的问题来结束本综述,以便深度学习算法突破发表障碍,并融入临床实践。