基于信念匹配损失的CNN-Transformer六中心评估在脑电图患者独立癫痫检测中的应用。

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Neural Systems Pub Date : 2023-03-01 DOI:10.1142/S0129065723500120
Wei Yan Peh, Prasanth Thangavel, Yuanyuan Yao, John Thomas, Yee-Leng Tan, Justin Dauwels
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引用次数: 6

摘要

神经科医生通常通过视觉检查从脑电图(eeg)中识别癫痫发作。这个过程通常很耗时,特别是对于持续数小时或数天的脑电图记录。为了加快这一过程,一个可靠的、自动化的、独立于患者的癫痫检测器是必不可少的。然而,开发一种独立于患者的癫痫发作检测器是具有挑战性的,因为癫痫发作在患者和记录设备之间表现出不同的特征。在这项研究中,我们提出了一种独立于患者的癫痫发作检测器,用于自动检测头皮脑电图和颅内脑电图(iEEG)的癫痫发作。首先,我们部署了一个带有变压器和信念匹配损失的卷积神经网络来检测单通道脑电图片段的癫痫发作。接下来,我们从通道级输出中提取区域特征来检测多通道脑电图片段中的癫痫发作。最后,我们将后处理滤波器应用于段级输出,以确定多通道脑电图中癫痫发作的开始和结束点。最后,我们引入了最小重叠评估评分作为一个评估指标,它考虑了检测和缉获之间的最小重叠,改进了现有的评估指标。我们在天普大学医院癫痫发作(TUH-SZ)数据集上训练癫痫检测器,并在五个独立的脑电图数据集上对其进行评估。我们用以下指标评估系统:灵敏度(SEN)、精度(PRE)、每小时平均和中位数假阳性率(aFPR/h和mFPR/h)。在4个成人头皮EEG和iEEG数据集中,我们得到SEN为0.617-1.00,PRE为0.534-1.00,aFPR/h为0.425-2.002,mFPR/h为0-1.003。所提出的癫痫发作检测器可以检测成人脑电图中的癫痫发作,30分钟的脑电图只需不到15秒。因此,该系统可以帮助临床医生可靠地快速识别癫痫发作,分配更多的时间来制定适当的治疗方案。
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Six-Center Assessment of CNN-Transformer with Belief Matching Loss for Patient-Independent Seizure Detection in EEG.

Neurologists typically identify epileptic seizures from electroencephalograms (EEGs) by visual inspection. This process is often time-consuming, especially for EEG recordings that last hours or days. To expedite the process, a reliable, automated, and patient-independent seizure detector is essential. However, developing a patient-independent seizure detector is challenging as seizures exhibit diverse characteristics across patients and recording devices. In this study, we propose a patient-independent seizure detector to automatically detect seizures in both scalp EEG and intracranial EEG (iEEG). First, we deploy a convolutional neural network with transformers and belief matching loss to detect seizures in single-channel EEG segments. Next, we extract regional features from the channel-level outputs to detect seizures in multi-channel EEG segments. At last, we apply post-processing filters to the segment-level outputs to determine seizures' start and end points in multi-channel EEGs. Finally, we introduce the minimum overlap evaluation scoring as an evaluation metric that accounts for minimum overlap between the detection and seizure, improving upon existing assessment metrics. We trained the seizure detector on the Temple University Hospital Seizure (TUH-SZ) dataset and evaluated it on five independent EEG datasets. We evaluate the systems with the following metrics: sensitivity (SEN), precision (PRE), and average and median false positive rate per hour (aFPR/h and mFPR/h). Across four adult scalp EEG and iEEG datasets, we obtained SEN of 0.617-1.00, PRE of 0.534-1.00, aFPR/h of 0.425-2.002, and mFPR/h of 0-1.003. The proposed seizure detector can detect seizures in adult EEGs and takes less than 15[Formula: see text]s for a 30[Formula: see text]min EEG. Hence, this system could aid clinicians in reliably identifying seizures expeditiously, allocating more time for devising proper treatment.

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来源期刊
International Journal of Neural Systems
International Journal of Neural Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
28.80%
发文量
116
审稿时长
24 months
期刊介绍: The International Journal of Neural Systems is a monthly, rigorously peer-reviewed transdisciplinary journal focusing on information processing in both natural and artificial neural systems. Special interests include machine learning, computational neuroscience and neurology. The journal prioritizes innovative, high-impact articles spanning multiple fields, including neurosciences and computer science and engineering. It adopts an open-minded approach to this multidisciplinary field, serving as a platform for novel ideas and enhanced understanding of collective and cooperative phenomena in computationally capable systems.
期刊最新文献
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