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Automatic classification of epilepsy types using ontology-based and genetics-based machine learning

机译:使用基于本体和基于遗传学的机器学习对癫痫类型进行自动分类

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摘要

Objectives: In the presurgical analysis for drug-resistant focal epilepsies, the definition of the epilepto-genic zone, which is the cortical area where ictal discharges originate, is usually carried out by using clinical, electrophysiological and neuroimaging data analysis. Clinical evaluation is based on the visual detection of symptoms during epileptic seizures. This work aims at developing a fully automatic classifier of epileptic types and their localization using ictal symptoms and machine learning methods. Methods: We present the results achieved by using two machine learning methods. The first is an ontology-based classification that can directly incorporate human knowledge, while the second is a genetics-based data mining algorithm that learns or extracts the domain knowledge from medical data in implicit form. Results: The developed methods are tested on a clinical dataset of 129 patients. The performance of the methods is measured against the performance of seven clinicians, whose level of expertise is high/very high, in classifying two epilepsy types: temporal lobe epilepsy and extra-temporal lobe epilepsy. When comparing the performance of the algorithms with that of a single clinician, who is one of the seven clinicians, the algorithms show a slightly better performance than the clinician on three test sets generated randomly from 99 patients out of the 129 patients. The accuracy obtained for the two methods and the clinician is as follows: first test set 65.6% and 75% for the methods and 56.3% for the clinician, second test set 66.7% and 76.2% for the methods and 61.9% for the clinician, and third test set 77.8% for the methods and the clinician. When compared with the performance of the whole population of clinicians on the rest 30 patients out of the 129 patients, where the patients were selected by the clinicians themselves, the mean accuracy of the methods (60%) is slightly worse than the mean accuracy of the clinicians (61.6%). Results show that the methods perform at the level of experienced clinicians, when both the methods and the clinicians use the same information. Conclusion: Our results demonstrate that the developed methods form important ingredients for realizing a fully automatic classification of epilepsy types and can contribute to the definition of signs that are most important for the classification.
机译:目的:在耐药性局灶性癫痫的术前分析中,通常通过临床,电生理和神经影像学数据分析来确定癫痫发生区,即癫痫发作的皮层区域。临床评估基于癫痫发作期间的视觉症状检测。这项工作旨在开发一种全自动的癫痫类型分类器,并使用发作症状和机器学习方法对其进行定位。方法:我们介绍通过使用两种机器学习方法获得的结果。第一个是可以直接合并人类知识的基于本体的分类,第二个是基于遗传学的数据挖掘算法,该算法以隐式形式从医学数据中学习或提取领域知识。结果:所开发的方法在129例患者的临床数据集上进行了测试。该方法的性能是根据七名临床医生的性能来衡量的,他们的专业知识水平很高/很高,可以将两种癫痫类型分类:颞叶癫痫和颞叶癫痫。将算法的性能与七名临床医生之一的单个临床医生的性能进行比较时,在从129名患者中的99名患者中随机产生的三个测试集上,该算法的性能略好于临床医生。两种方法和临床医生获得的准确度如下:第一种方法分别为该方法的65.6%和75%和56.3%,第二种方法分别为66.7%和76.2%和61.9%,第三种测试方法和临床医生的使用率为77.8%。与129名患者中其余30名由临床医生自行选择的患者中的全部临床医生的表现相比,该方法的平均准确性(60%)稍差于方法的平均准确性临床医生(61.6%)。结果表明,当方法和临床医生使用相同的信息时,这些方法将在经验丰富的临床医生的水平上执行。结论:我们的结果表明,所开发的方法为实现癫痫类型的全自动分类提供了重要的成分,并且可以有助于定义对于分类最重要的体征。

著录项

  • 来源
    《Artificial intelligence in medicine》 |2014年第2期|79-88|共10页
  • 作者单位

    Fachbereich 3 - Mathematics and Computer Science, University of Bremen, Robert-Hooke-Str. 5, D-28359 Bremen, Germany;

    Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, Piazza Leonardo da Vinci 32, 20133 Milano, Italy;

    Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, Piazza Leonardo da Vinci 32, 20133 Milano, Italy;

    German Research Center for Artificial Intelligence (DFKI), Robotics Innovation Center, Robert-Hooke-Str. 5, D-28359 Bremen, Germany;

    Centro Chirurgia Epilessia 'Claudio Munari', Dipartimento di Neuroscienze, Ospedale Niguarda Ca Granda, Piazza Ospedale Maggiore 3, 20162 Milano, Italy;

    Epilepsy Center, San Paolo Hospital, Via A. Di Rudini 8, 20142 Milan, Italy;

    Department of Experimental Neurophysiology and Epileptology, Istituto Nazionale Neurologico 'C. Besta', Via Celoria 11, 20133 Milano, Italy;

    Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, Piazza Leonardo da Vinci 32, 20133 Milano, Italy;

    Fachbereich 3 - Mathematics and Computer Science, University of Bremen, Robert-Hooke-Str. 5, D-28359 Bremen, Germany,German Research Center for Artificial Intelligence (DFKI), Robotics Innovation Center, Robert-Hooke-Str. 5, D-28359 Bremen, Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Ontology-based classification; Genetics-based classification; Data mining (knowledge discovery) from medical data; Epileptogenic zone identification;

    机译:基于本体的分类;基于遗传学的分类;从医学数据进行数据挖掘(知识发现);癫痫区识别;

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