【24h】

Machine learning to detect brain lesions in focal epilepsy

机译:机器学习检测局灶性癫痫中的脑病变

获取原文

摘要

PURPOSE: Identifying areas of abnormality on MRI brain scans in individuals with focal epilepsy is fundamental to the diagnosis and treatment of the condition. However, in about a third of patients with focal epilepsy, brain scans appear to be normal (MRI-negative) as human observers cannot detect any abnormality with current imaging technology. The objective of this paper is to provide a novel approach in presenting localization using machine learning in order to locate areas of abnormality on patients with focal epilepsy on a pcr-voxel basis by comparing them with healthy controls. As a proof-of-concept, the technique is first applied to patients with visible lesions providing a ground truth (MRI-positive), but future work will extend this to MRI-negative subjects. METHODS: Our data consists of multi-modal brain MR images from 62 healthy control subjects and 44 MRI-positive patients with focal epilepsy. We utilized a support vector machine (SVM) as our probabilistic classifier and train it, with two classes of data. We generate probability maps applying our machine learning classifier on all voxels of a test subjects to visualize the predictions. Overlap scores are used to evaluate the classifier performance in MRI-positive patients. RESULTS: Our model reached 83% specificity, 91% sensitivity, and an Area Under the Curve (AUC) of 0.896 for the task of voxel-based classification of normal versus abnormal voxels. In addition, Dice scores of up to 0.66 were achieved for the overlap measure of lesion probability map and the ground truth labels annotated by a neurologist. CONCLUSION: We demonstrated a novel approach in presenting localization using machine learning techniques to localize focal epilepsy lesions from multi-modal MR images.
机译:目的:鉴定局灶性癫痫的个体MRI脑扫描的异常区域是诊断和治疗条件的基础。然而,在大约三分之一的局灶性癫痫患者中,随着人类观察者无法检测到具有当前成像技术的任何异常,脑扫描似乎是正常的(MRI-阴性)。本文的目的是提供一种新颖的方法,即使用机器学习呈现本地化,以便通过与健康对照进行比较局灶性癫痫患者对局灶性癫痫患者的异常领域。作为概念验证,首先将该技术应用于可见病变的患者,提供基础真理(MRI阳性),但未来的工作将向MRI-Digal科目延伸至MRI-Digal科目。方法:我们的数据包括来自62名健康对策和44名MRI阳性患者的多模态脑MR图像和局灶性癫痫患者。我们利用支持向量机(SVM)作为我们的概率分类器并使用两类数据培训。我们生成在测试对象的所有体素上应用我们的机器学习分类器的概率图以可视化预测。重叠分数用于评估MRI阳性患者的分类器性能。结果:我们的型号达到83%的特异性,91%的灵敏度和0.896的曲线(AUC)的面积,用于正常与异常体素的voxel的分类任务。此外,对于损伤概率图的重叠度量和神经科医生注释的地面真理标签,实现了高达0.66的骰子得分。结论:我们展示了一种使用机器学习技术呈现本地化的新方法,从多模态MR图像本地化局灶性癫痫病变。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号