Adaptive EEG spike detection: determination of threshold values based on conditional probability.

Takenao Sugi, Masatoshi Nakamura, Akio Ikeda, Hiroshi Shibasaki
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引用次数: 19

Abstract

Determination of the threshold value for automatic EEG spike detection was investigated adopting conditional probability. An adaptive spike detection method was constructed and evaluated. A discriminant function for detecting spikes was obtained by conditional probability calculated from the EEG spike data. The relationship among false-negatives, false-positives and threshold values for the discriminant function was investigated. An adaptive detection algorithm was developed by combining different threshold values. False-negative and false-positive rates for spike detection depended on the threshold values. The adaptive spike detection algorithm achieved a high detection rate and accuracy. The advantage of the proposed method is to construct an adaptive detection algorithm by combining the threshold values according to the purpose of spike detection. Since the threshold can be easily changed in the proposed method, it is practically effective for clinical use.

自适应脑电图尖峰检测:基于条件概率的阈值确定。
采用条件概率的方法研究了脑电信号自动检测尖峰阈值的确定。构造并评价了一种自适应尖峰检测方法。利用脑电峰值数据计算条件概率,得到检测峰值的判别函数。研究了判别函数的假阴性、假阳性与阈值之间的关系。提出了一种结合不同阈值的自适应检测算法。脉冲检测的假阴性和假阳性率取决于阈值。自适应尖峰检测算法具有较高的检测率和准确率。该方法的优点是根据检测尖峰的目的,将阈值组合在一起,构建自适应检测算法。由于该方法的阈值可以很容易地改变,因此在临床应用中具有实际效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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