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find Author "王玉平" 10 results
  • 癫痫的神经调控治疗

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  • 青少年肌阵挛癫痫基因的研究

    青少年肌阵挛癫痫(Juvenile myoclonic epilepsy, JME)是特发性癫痫中常见的癫痫综合征, 有明显的遗传和表型的异质性。遗传因素在JME发病中起重要作用, 随着JME相关基因不断被发现, JME在分子层面的发病机制也在不断进展, 基因型与表现型的关系也在进一步研究。目前发现的与青少年肌阵挛癫痫相关的基因有:CACNB4、GABRa1、GABRD、EFHC1、CASR、CPA6、BRD2、Cx-36、ME2。文章主要总结JME基因及其致病机制, 同时介绍基因型和表型关系的研究进展

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  • Clinical electrophysiological features and efficacy of anti-epileptic drugs of patients with Juvenile myoclonic epilepsy

    ObjectiveTo summarize clinical electrophysiological features and efficacy of some of Anti-epileptic drugs(AEDs) of Juvenile myoclonic epilepsy (JME). MethodsClinical electrophysiological information of 101 outpatients with JME observed at Xuanwu Hospital from Jul. 2001 to Sep. 2014 was retrospectively analyzed, including the seizure types, trigger factors, electroencephalogram. We followed some of these patients and compared the efficacy between different AEDs. Result According to different seizure types, there are four subtypes: Myoclonus (MJ) only 11.88%, MJ+generalized tonic-clonic seizure(GTCS) 75.24%, MJ+GTCS+Absence(Abs) 11.88%, MJ+Abs 1.00%. Patients with typical ictal generalized poly-spike and waves (PSW) or spike and waves (SW) or spikes account for 96.80%. And 75.00% of patients have no MJ and 91.80% have no GTCS with valproic acid monotherapy. 65.00% and 88.24% of patients were seizure free of MJ and GTCS recpectively. But the difference of efficacy between these two drugs have no statistically significance. Sleep deprivation was the primary trigger factors, accounting for 16.83%. ConclusionJME has clinical heterogeinety, clinicians should fully understand the whole condition of JME individual, including their clinical manifestation, EEG features, reaction to AEDs, trigger factors, habitual patterns and so on, in order to help making individualized therapy.

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  • 经颅直流电刺激治疗癫痫研究进展

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  • 托吡酯单药治疗青少年肌阵挛性癫痫的系统评价

    Release date:2017-07-26 04:06 Export PDF Favorites Scan
  • 高频刺激人类丘脑前核去同步化癫痫网络的研究

    Release date:2018-09-18 10:17 Export PDF Favorites Scan
  • 2016年国际抗癫痫联盟癫痫发作分类的更新及介绍

    国际抗癫痫联盟(ILAE)提出了癫痫发作类型的操作性修订方案。此修订的目的包括认识到一些发作类型既可以是局灶起源亦可以为全面起源, 允许临床在不能观察到发作起源的情况下进行发作分类, 纳入某些尚不了解的发作类型, 以及采用更加易懂的命名。由于现有知识不足以形成一个科学的分类方案, 2016年的分类方案是在1981年和2010年分类的基础上进行的操作性(实用性)修订。新分类的变化包括: ① "部分性"改为"局灶性"; ②起源未知的癫痫发作也可以归类; ③知觉状态用作局灶性发作的区分因素; ④删除"认知障碍性"、"简单部分性"、"复杂部分性"、"精神性"、"继发全面性"等术语; ⑤认识到局灶性强直、阵挛、失张力、肌阵挛和癫痫性痉挛发作, 这些发作也有双侧性类型; ⑥增加了新的全面性发作类型:伴眼睑肌阵挛的失神发作, 肌阵挛失神发作, 肌阵挛-失张力发作, 阵挛-强直-阵挛发作, 癫痫性痉挛; 癫痫性痉挛可以是局灶性、全面性或起源不明性; ⑦双侧强直阵挛发作取代了继发全面性发作。新的分类方案并未进行根本性的改变, 但可以使癫痫发作类型的命名有较大的灵活性和透明度。

    Release date:2017-01-22 09:09 Export PDF Favorites Scan
  • Prediction of seizures in sleep based on power spectrum

    Seizures during sleep increase the probability of complication and sudden death. Effective prediction of seizures in sleep allows doctors and patients to take timely treatments to reduce the aforementioned probability. Most of the existing methods make use of electroencephalogram (EEG) to predict seizures, which are not specific developed for the sleep. However, EEG during sleep has its characteristics compared with EEG during other states. Therefore, in order to improve the sensitivity and reduce the false alarm rate, this paper utilized the characteristics of EEG to predict seizures during sleep. We firstly constructed the feature vector including the absolute power spectrum, the relative power spectrum and the power spectrum ratio in different frequencies. Secondly, the separation criterion and branch-and-bound method were applied to select features. Finally, support vector machine classifier were trained, which is then employed for online prediction. Compared with the existing method that do not consider the characteristics of sleeping EEG (sensitivity 91.67%, false alarm rate 9.19%), the proposed method was superior in terms of sensitivity (100%) and false alarm rate (2.11%). This method can improve the existing epilepsy prediction methods and has important clinical value.

    Release date:2018-08-23 03:47 Export PDF Favorites Scan
  • A clinical study on the presurgical localization of the epileptogenic zones for patients with insular/peri-insular cortex epilepsy

    ObjectiveTo evaluate the role of several examinations in the presurgical localization of insular/peri-insular cortex epilepsy (IPICE). MethodsThe data of patients with IPICE who were identified by resective surgery from 2011.1 to 2015.4 were retrospectively analyzed. The role of semiology, scalp EEG, MRI and magnetoencephalography (MEG)in the localization of epileptogenic zones for patients with IPICE were evaluated. Results18 patients were selected according to the criteria. The localization of IPICE was supported by semiology in 16 patients, supported by MRI in 6 patients, supported by MEG in 17 patients. In 12 patients with negative MRI, the dipoles were showed in insular/peri-insular area in 11 patients. The localization role of MEG for patients with IPICE is more obvious than that of MRI (P < 0.05). The MEG result played conclusive role in 9 patients. According to result of MEG, the plans of intracranial recording were canceled in 3 patients, and the plans of intracranial electrodes implanting were modified in 5 patients. The resective surgery involving the insular/peri-insular cortex was performed in all the 18 patients. During the follow-up of 12~48 months, seizure-free was reported in 11 patients, although 2 patients were missed. ConclusionThe combination of the results of semiology, scalp EEG, MRI and MEG was helpful in the localization of epileptogenic zones for patients with IPICE, and MEG played a valuable role in this localization.

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  • Brain Function Network Analysis and Recognition for Psychogenic Non-epileptic Seizures Based on Resting State Electroencephalogram

    Studies have shown that the clinical manifestation of patients with neuropsychiatric disorders might be related to the abnormal connectivity of brain functions. Psychogenic non-epileptic seizures (PNES) are different from the conventional epileptic seizures due to the lack of the expected electroencephalographically epileptic changes in central nervous system, but are related to the presence of significant psychological factors. Diagnosis of PNES remains challenging. We found in the present work that the connectivity between the frontal and parieto-occipital in PNES was weaker than that of the controls by using network analysis based on electroencephalogram (EEG) signals. In addition, PNES were recognized by using the network properties as linear discriminant nalysis (LDA) input and classification accuracy was 85%. This study may provide a feasible tool for clinical diagnosis of PNES.

    Release date:2021-06-24 10:16 Export PDF Favorites Scan
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