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A new mathematical approach based on orthogonal operators for the detection of interictal spikes in epileptogenic data.

机译:一种新的基于正交算子的数学方法,用于检测致癫痫数据中的尖峰间隔。

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This study focuses on the design of orthogonal operators based on unique Electroencephalograph (EEG) signal decompositions in order to detect interictal spikes that characterize epileptic seizures in EEG data. The merits of the algorithm are: (a) in elaborating a unique analysis scheme that scrutinizes EEG data through orthogonal operators designed to extract features that best characterize spikes in epileptogenic EEG data; and (b) in establishing mathematical derivations that provide quantitative measures through the designed operators, and characterize and locate the event of an interictal spike. The uniqueness of this algorithm is in its good performance and simplicity of implementation. Clinical experiments involved 31 patients with focal epilepsy. EEG data collected from 10 of these patients were used initially in a training phase to ascertain the reliability of the observable and formulated features that were used in the spike detection process. Spikes were annotated independently by three EEG experts. On evaluation of the algorithm using the 21 remaining patients in the testing phase revealed a Precision (Positive Predictive Value) of 92% and a Sensitivity of 82%. Based on the 20 to 30-minute epochs of continuous EEG recording per subject, the false detection (FD) rate is estimated at 1.8 FD per hour of recorded EEG. These are good results that support further development of this algorithm for EEG diagnosis.
机译:这项研究着重于基于独特的脑电图(EEG)信号分解的正交算子的设计,以检测表征EEG数据中癫痫发作特征的发作期尖峰信号。该算法的优点是:(a)制定了一种独特的分析方案,该方案通过正交算子仔细检查EEG数据,该算子旨在提取出最能表征癫痫性EEG数据中峰值的特征; (b)建立数学推导,该数学推导通过设计的算子提供定量测量,并表征和定位偶发尖峰的事件。该算法的独特之处在于其良好的性能和实现的简便性。临床实验涉及31例局灶性癫痫患者。从这些患者中的10名收集到的EEG数据最初用于训练阶段,以确定在峰值检测过程中使用的可观察特征和制定特征的可靠性。尖峰由三位EEG专家独立注释。在测试阶段使用剩余的21位患者对算法进行评估后,发现精确度(正预测值)为92%,灵敏度为82%。根据每个受试者连续20到30分钟的EEG记录时间,错误检测(FD)速率估计为记录的EEG每小时1.8 FD。这些都是很好的结果,支持该算法进一步开发用于脑电图诊断。

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