深度学习在癫痫神经影像学中的应用。
Deep learning in neuroimaging of epilepsy.
机构信息
Group of Neuroimaging Processing, International Center for Neurological Restoration, Cuba; Department of Clinical Investigations, Center of Isotopes, Cuba.
Department of Neurology, Clínica Universidad de Navarra, Spain; Department of Nuclear Medicine and Molecular Imaging, University of Groningen, University Medical Center Groningen, Hanzeplein 1, 9713 GZ Groningen, the Netherlands.
出版信息
Clin Neurol Neurosurg. 2023 Sep;232:107879. doi: 10.1016/j.clineuro.2023.107879. Epub 2023 Jul 6.
In recent years, artificial intelligence, particularly deep learning (DL), has demonstrated utility in diverse areas of medicine. DL uses neural networks to automatically learn features from the raw data while this is not possible with conventional machine learning. It is helpful for the assessment of patients with epilepsy and whilst most published studies have been aimed at the automatic detection and prediction of seizures from electroencephalographic records, there is a growing number of investigations that use neuroimaging modalities (structural and functional magnetic resonance imaging, diffusion-weighted imaging and positron emission tomography) as input data. We review the application of DL to neuroimaging (sMRI, fMRI, DWI and PET) of focal epilepsy, specifically presurgical evaluation of drug-refractory epilepsy. First, a brief theoretical overview of artificial neural networks and deep learning is presented. Next, we review applications of deep learning to neuroimaging of epilepsy: diagnosis and lateralization, automated detection of lesion, presurgical evaluation and prediction of postsurgical outcome. Finally, the limitations, challenges and possible future directions in the application of these methods in the study of epilepsies are discussed. This approach could become an essential tool in clinical practice, particularly in the evaluation of images considered negative by visual inspection, in individualized treatments, and in the approach to epilepsy as a network disorder. However, greater multicenter collaboration is required to achieve the collection of sufficient data with the required quality together with the open access availability of the developed codes and tools.
近年来,人工智能,尤其是深度学习(DL),在医学的多个领域显示出了实用性。DL 使用神经网络从原始数据中自动学习特征,而这是传统机器学习无法实现的。它有助于评估癫痫患者,虽然大多数已发表的研究旨在从脑电图记录中自动检测和预测癫痫发作,但越来越多的研究使用神经影像学模态(结构和功能磁共振成像、弥散加权成像和正电子发射断层扫描)作为输入数据。我们综述了 DL 在局灶性癫痫神经影像学(sMRI、fMRI、DWI 和 PET)中的应用,特别是耐药性癫痫的术前评估。首先,我们简要介绍了人工神经网络和深度学习的理论概述。接下来,我们综述了深度学习在癫痫神经影像学中的应用:诊断和定位、病变的自动检测、术前评估和术后结果预测。最后,讨论了这些方法在癫痫研究中的应用的局限性、挑战和可能的未来方向。这种方法可能成为临床实践中的重要工具,特别是在评估视觉检查认为阴性的图像、个体化治疗以及将癫痫视为网络障碍方面。然而,需要更多的多中心合作,以便能够以所需的质量收集足够的数据,同时还需要开发的代码和工具的公开访问。