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AR2 a novel automatic muscle artifact reduction software method for ictal EEG interpretation: Validation and comparison of performance with commercially available software

机译:AR2一种用于眼电EEG解释的新颖的自动减少肌肉伪影的软件方法:与商用软件的性能验证和比较

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摘要

Objective: To develop a novel software method (AR2) for reducing muscle contamination of ictal scalp electroencephalogram (EEG), and validate this method on the basis of its performance in comparison to a commercially available software method (AR1) to accurately depict seizure-onset location. Methods: A blinded investigation used 23 EEG recordings of seizures from 8 patients. Each recording was uninterpretable with digital filtering because of muscle artifact and processed using AR1 and AR2 and reviewed by 26 EEG specialists. EEG readers assessed seizure-onset time, lateralization, and region, and specified confidence for each determination. The two methods were validated on the basis of the number of readers able to render assignments, confidence, the intra-class correlation (ICC), and agreement with other clinical findings. Results: Among the 23 seizures, two-thirds of the readers were able to delineate seizure-onset time in 10 of 23 using AR1, and 15 of 23 using AR2 (p<0.01). Fewer readers could lateralize seizure-onset (p<0.05). The confidence measures of the assignments were low (probable-unlikely), but increased using AR2 (p<0.05). The ICC for identifying the time of seizure-onset was 0.15 (95% confidence interval (CI), 0.11-0.18) using AR1 and 0.26 (95% CI 0.21-0.30) using AR2.  The EEG interpretations were often consistent with behavioral, neurophysiological, and neuro-radiological findings, with left sided assignments correct in 95.9% (CI 85.7-98.9%, n=4) of cases using AR2, and 91.9% (77.0-97.5%) (n=4) of cases using AR1. Conclusions: EEG artifact reduction methods for localizing seizure-onset does not result in high rates of interpretability, reader confidence, and inter-reader agreement. However, the assignments by groups of readers are often congruent with other clinical data. Utilization of the AR2 software method may improve the validity of ictal EEG artifact reduction.
机译:目的:开发一种新的软件方法(AR2)来减少小发作性头皮脑电图(EEG)的肌肉污染,并与可准确描述癫痫发作的市售软件方法(AR1)相比,以其性能为基础对该方法进行验证。位置。方法:盲法调查使用了8例癫痫发作的23个脑电图记录。由于肌肉伪影,每个记录都无法用数字滤波来解释,并使用AR1和AR2处理,并由26名EEG专家进行审查。脑电图阅读器评估癫痫发作的时间,偏侧性和区域,并为每次测定指定置信度。这两种方法均根据能够进行作业分配的读者数量,置信度,组内相关性(ICC)以及与其他临床发现的一致性进行了验证。结果:在23例癫痫发作中,三分之二的读者能够在使用AR1的23名患者中有10名描绘出癫痫发作的时间,而使用AR2描绘的23名患者中有15名(p <0.01)。较少的读者可以使癫痫发作偏向侧面(p <0.05)。分配的置信度低(可能),但使用AR2增强(p <0.05)。使用AR1识别发作发作时间的ICC为0.15(95%置信区间(CI),0.11-0.18),使用AR2识别为0.26(95%CI 0.21-0.30)。脑电图的解释通常与行为,神经生理学和神经放射学结果一致,使用AR2的病例中左侧占95.9%(CI 85.7-98.9%,n = 4),而91.9%(77.0-97.5%)正确(n = 4)个使用AR1的案例。结论:减少癫痫发作的脑电图伪影减少方法不会导致较高的解释率,读者信心和读者之间的认同感。但是,按读者群分配的作业通常与其他临床数据一致。使用AR2软件方法可以提高减少发作性EEG伪影的有效性。

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