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Using interictal seizure-free EEG data to recognise patients with epilepsy based on machine learning of brain functional connectivity

机译:使用嵌入癫痫发作的EEG数据识别基于脑功能连通性机器学习的癫痫患者

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摘要

Most seizures in adults with epilepsy occur rather infrequently and as a result, the interictal EEG plays a crucial role in the diagnosis and classification of epilepsy. However, empirical interpretation, of a first EEG in adult patients, has a very low sensitivity ranging between 29?55 %. Useful EEG information remains buried within the signals in seizure-free EEG epochs, far beyond the observational capabilities of any specialised physician in this field. Unlike most of the existing works focusing on either seizure data or single-variate method, we introduce a multi-variate method to characterise sensor level brain functional connectivity from interictal EEG data to identify patients with generalised epilepsy. A total of 9 connectivity features based on 5 different measures in time, frequency and time-frequency domains have been tested. The solution has been validated by the K-Nearest Neighbour algorithm, classifying an epilepsy group (EG) vs healthy controls (HC) and subsequently with another cohort of patients characterised by non-epileptic attacks (NEAD), a psychogenic type of disorder. A high classification accuracy (97 %) was achieved for EG vs HC while revealing significant spatio-temporal deficits in the frontocentral areas in the beta frequency band. For EG vs NEAD, the classification accuracy was only about 73 %, which might be a reflection of the well-described coexistence of NEAD with epileptic attacks. Our work demonstrates that seizure-free interictal EEG data can be used to accurately classify patients with generalised epilepsy from HC and that more systematic work is required in this direction aiming to produce a clinically useful diagnostic method.
机译:大多数癫痫发作的癫痫癫痫发作相当不常,因此,液滴脑电图在癫痫的诊断和分类中起着至关重要的作用。然而,实证解释,成年患者的第一脑梗死,敏感性非常低,敏感度在29?55%之间。有用的EEG信息仍然埋在癫痫发作的EEG时期的信号内,远远超出了该领域任何专门医师的观察能力。与专注于癫痫发作数据或单变量方法的大多数现有作品不同,我们引入了一种多变化方法,以表征来自Interictal EEG数据的传感器级脑功能连接,以识别广义癫痫患者。已经测试了基于5个不同措施的9个连接特征,频率和时频域已经进行了测试。该解决方案已被K-最近邻域算法验证,分类癫痫组(例如)对健康对照(HC),随后与非癫痫发作(NEAD)的另一种患者组织,一种心动类型的疾病。例如,对VS HC实现了高分类精度(97%),同时揭示了β频带中的额外区域中的显着的时空缺陷。例如,对于Nead,分类准确性仅为73%,这可能反映了Nead与癫痫发作的良好共存。我们的作品表明,无癫痫发作的嵌段脑电图数据可用于准确地对HC进行全面癫痫患者,并且在此方向上需要更加系统的工作,旨在产生临床有用的诊断方法。

著录项

  • 来源
    《Biomedical signal processing and control》 |2021年第5期|102554.1-102554.13|共13页
  • 作者单位

    Cranfield Univ Sch Aerosp Transport & Mfg Cranfield MK43 0AL Beds England;

    Cranfield Univ Sch Aerosp Transport & Mfg Cranfield MK43 0AL Beds England;

    Cranfield Univ Sch Aerosp Transport & Mfg Cranfield MK43 0AL Beds England|Chinese Acad Sci Inst Geol & Geophys Beijing 100029 Peoples R China;

    Cranfield Univ Sch Aerosp Transport & Mfg Cranfield MK43 0AL Beds England;

    Cranfield Univ Sch Aerosp Transport & Mfg Cranfield MK43 0AL Beds England|Chinese Acad Sci Inst Geol & Geophys Beijing 100029 Peoples R China;

    China Med Univ Shengjing Hosp Dept Neurosurg Shenyang Peoples R China;

    China Med Univ Shengjing Hosp Dept Neurosurg Shenyang Peoples R China;

    Sheffield Teaching Hosp NHS Fdn Trust Royal Hallamshire Hosp Dept Neurosci Sheffield S Yorkshire England;

    Sheffield Teaching Hosp NHS Fdn Trust Royal Hallamshire Hosp Dept Neurosci Sheffield S Yorkshire England;

    Sheffield Teaching Hosp NHS Fdn Trust Royal Hallamshire Hosp Dept Neurosci Sheffield S Yorkshire England;

    Sheffield Teaching Hosp NHS Fdn Trust Royal Hallamshire Hosp Dept Neurosci Sheffield S Yorkshire England;

    Sheffield Teaching Hosp NHS Fdn Trust Royal Hallamshire Hosp Dept Neurosci Sheffield S Yorkshire England;

    Royal Devon & Exeter NHS Fdn Trust Exeter EX2 5DW Devon England;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    qEEG; Classification; Brain connectivity; Correlation; Coherence;

    机译:qeeg;分类;脑连接;相关;一致性;

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