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A Bayesian averaged response-driven multinomial model for lateralization of temporal lobe epilepsy

机译:贝叶斯平均响应驱动的多项式颞叶癫痫发作的侧向化模型

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Purpose: To develop a Bayesian averaged multinomial model for lateralization of epileptogenicity in temporal lobe epilepsy (TLE) patients based upon features extracted from preoperative T1-weighted and FLAIR imaging. Methods: A retrospective cohort of seventy-six TLE patients with surgical outcome of Engel class I was quantitatively analyzed to extract hippocampi volumetrics and FLAIR intensity. Using multinomial logistic regression, single response-driven models were estimated. Based on Bayesian model averaging (BMA), a model was developed and its performance was compared with the single response models. Results: The Bayesian averaged model achieved a lateralization rate of 84.2% for TLE patients that was higher than any single response model. Out of the thirty-four patients who underwent phase II intracranial monitoring, the epileptogenic side was correctly lateralized in nineteen cases. Conclusion: The proposed response-driven model can improve the decision-making for surgical resection and may reduce the need for implantation of intracranial monitoring electrodes.
机译:目的:基于术前T1加权和FLAIR影像提取的特征,开发一种贝叶斯平均多项式模型,用于颞叶癫痫(TLE)患者的致癫痫性侧化。方法:回顾性分析76例患有Engel I类手术结局的TLE患者的回顾性队列,以提取海马体积和FLAIR强度。使用多项逻辑回归,估计了单个响应驱动的模型。基于贝叶斯模型平均(BMA),开发了一个模型,并将其性能与单响应模型进行了比较。结果:贝叶斯平均模型对TLE患者的偏侧化率为84.2%,高于任何单一反应模型。在接受II期颅内监测的34例患者中,有19例正确地将致癫痫侧偏侧。结论:提出的响应驱动模型可以改善手术切除的决策,并可以减少颅内监测电极植入的需要。

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