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基于人工智能的脑磁图癫痫源自动检测和定位流水线。

An artificial intelligence-based pipeline for automated detection and localisation of epileptic sources from magnetoencephalography.

机构信息

Beijing City Key Laboratory of Medical Physics and Engineering, Institution of Heavy Ion Physics, School of Physics, Peking University, Beijing, People's Republic of China.

Changping Laboratory, Beijing, People's Republic of China.

出版信息

J Neural Eng. 2023 Aug 24;20(4). doi: 10.1088/1741-2552/acef92.

DOI:10.1088/1741-2552/acef92
PMID:37615416
Abstract

Magnetoencephalography (MEG) is a powerful non-invasive diagnostic modality for presurgical epilepsy evaluation. However, the clinical utility of MEG mapping for localising epileptic foci is limited by its low efficiency, high labour requirements, and considerable interoperator variability. To address these obstacles, we proposed a novel artificial intelligence-based automated magnetic source imaging (AMSI) pipeline for automated detection and localisation of epileptic sources from MEG data.To expedite the analysis of clinical MEG data from patients with epilepsy and reduce human bias, we developed an autolabelling method, a deep-learning model based on convolutional neural networks and a hierarchical clustering method based on a perceptual hash algorithm, to enable the coregistration of MEG and magnetic resonance imaging, the detection and clustering of epileptic activity, and the localisation of epileptic sources in a highly automated manner. We tested the capability of the AMSI pipeline by assessing MEG data from 48 epilepsy patients.The AMSI pipeline was able to rapidly detect interictal epileptiform discharges with 93.31% ± 3.87% precision based on a 35-patient dataset (with sevenfold patientwise cross-validation) and robustly rendered accurate localisation of epileptic activity with a lobar concordance of 87.18% against interictal and ictal stereo-electroencephalography findings in a 13-patient dataset. We also showed that the AMSI pipeline accomplishes the necessary processes and delivers objective results within a much shorter time frame (∼12 min) than traditional manual processes (∼4 h).The AMSI pipeline promises to facilitate increased utilisation of MEG data in the clinical analysis of patients with epilepsy.

摘要

脑磁图(MEG)是一种强大的、用于术前癫痫评估的非侵入性诊断方式。然而,MEG 图对于定位癫痫灶的临床应用受到其低效率、高劳动需求和相当大的操作者间变异性的限制。为了解决这些障碍,我们提出了一种新的基于人工智能的自动磁源成像(AMSI)管道,用于从 MEG 数据中自动检测和定位癫痫源。为了加快对癫痫患者的临床 MEG 数据的分析并减少人为偏见,我们开发了一种自动标记方法、一种基于卷积神经网络的深度学习模型以及一种基于感知哈希算法的分层聚类方法,以实现 MEG 和磁共振成像的配准、癫痫活动的检测和聚类以及癫痫源的定位。我们通过评估 48 名癫痫患者的 MEG 数据来测试 AMSI 管道的能力。AMSI 管道能够基于 35 名患者数据集(七倍患者交叉验证)以 93.31%±3.87%的精度快速检测出发作间期癫痫样放电,并在 13 名患者数据集中以 87.18%的外侧一致性稳健地呈现出癫痫活动的准确定位,与发作间期和发作期立体脑电图结果一致。我们还表明,与传统的手动处理(约 4 小时)相比,AMSI 管道在更短的时间内(约 12 分钟)完成必要的处理并提供客观的结果。AMSI 管道有望促进在癫痫患者的临床分析中更多地利用 MEG 数据。

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STIED: a deep learning model for the spatiotemporal detection of focal interictal epileptiform discharges with MEG.STIED:一种用于利用脑磁图进行局灶性发作间期癫痫样放电的时空检测的深度学习模型。
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