Departamento de Inteligencia Artificial, Universidad Politécnica de Madrid, Boadilla del Monte, Madrid, Spain.
PLoS One. 2013 Apr 30;8(4):e62819. doi: 10.1371/journal.pone.0062819. Print 2013.
Epilepsy surgery is effective in reducing both the number and frequency of seizures, particularly in temporal lobe epilepsy (TLE). Nevertheless, a significant proportion of these patients continue suffering seizures after surgery. Here we used a machine learning approach to predict the outcome of epilepsy surgery based on supervised classification data mining taking into account not only the common clinical variables, but also pathological and neuropsychological evaluations. We have generated models capable of predicting whether a patient with TLE secondary to hippocampal sclerosis will fully recover from epilepsy or not. The machine learning analysis revealed that outcome could be predicted with an estimated accuracy of almost 90% using some clinical and neuropsychological features. Importantly, not all the features were needed to perform the prediction; some of them proved to be irrelevant to the prognosis. Personality style was found to be one of the key features to predict the outcome. Although we examined relatively few cases, findings were verified across all data, showing that the machine learning approach described in the present study may be a powerful method. Since neuropsychological assessment of epileptic patients is a standard protocol in the pre-surgical evaluation, we propose to include these specific psychological tests and machine learning tools to improve the selection of candidates for epilepsy surgery.
癫痫手术在减少发作的次数和频率方面是有效的,特别是在颞叶癫痫(TLE)中。然而,这些患者中有相当一部分在手术后仍继续发作。在这里,我们使用机器学习方法,基于监督分类数据挖掘,考虑到不仅是常见的临床变量,还有病理和神经心理学评估,来预测癫痫手术的结果。我们已经生成了能够预测继发于海马硬化的 TLE 患者是否能够完全摆脱癫痫的模型。机器学习分析表明,使用一些临床和神经心理学特征,可以预测结果,估计准确率接近 90%。重要的是,并非所有特征都需要进行预测;其中一些被证明与预后无关。人格类型被发现是预测结果的关键特征之一。尽管我们检查的病例相对较少,但所有数据都验证了这些发现,表明本研究中描述的机器学习方法可能是一种强大的方法。由于对癫痫患者进行神经心理学评估是术前评估的标准方案,我们建议将这些特定的心理测试和机器学习工具纳入其中,以提高癫痫手术候选者的选择。