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Genetic programming of conventional features to detect seizure precursors

机译:常规特征的遗传编程以检测癫痫发作的前体

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This paper presents an application of genetic programming (GP) to optimally select and fuse conventional features (C-features) for the detection of epileptic waveforms within intracranial electroencephalogram (IEEG) recordings that precede seizures, known as seizure precursors. Evidence suggests that seizure precursors may localize regions important to seizure generation on the IEEG and epilepsy treatment. However, current methods to detect epileptic precursors lack a sound approach to automatically select and combine C-features that best distinguish epileptic events from background, relying on visual review predominantly. This work suggests GP as an optimal alternative to create a single feature after evaluating the performance of a binary detector that uses: (1) genetically programmed features; (2) features selected via GP; (3) forward sequentially selected features; and (4) visually selected features. Results demonstrate that a detector with a genetically programmed feature outperforms the other three approaches, achieving over 78.5% positive predictive value, 83.5% sensitivity, and 93% specificity at the 95% level of confidence.
机译:本文介绍了遗传程序设计(GP)的应用,以最佳选择和融合常规功能(C功能),以检测癫痫发作前颅内脑电图(IEEG)记录中的癫痫波形,称为癫痫发作前体。有证据表明,癫痫发作的前体可能位于对IEEG和癫痫治疗发作重要的区域。但是,当前检测癫痫病前体的方法缺乏可靠的方法来自动选择和组合最能将癫痫事件与背景区分开的C功能,主要依靠视觉检查。这项工作表明,在评估使用以下功能的二进制检测器的性能之后,GP是创建单个功能的最佳替代方案:(1)基因编程功能; (2)通过GP选择的功能; (3)转发顺序选择的功能; (4)视觉选择的特征。结果表明,具有基因编程功能的检测器性能优于其他三种方法,在95%的置信度水平下可实现超过78.5%的阳性预测值,83.5%的灵敏度和93%的特异性。

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