首页> 美国卫生研究院文献>Human Brain Mapping >Prediction of activation patterns preceding hallucinations in patients with schizophrenia using machine learning with structured sparsity
【2h】

Prediction of activation patterns preceding hallucinations in patients with schizophrenia using machine learning with structured sparsity

机译:使用结构化稀疏性的机器学习预测精神分裂症患者幻觉之前的激活模式

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

Despite significant progress in the field, the detection of fMRI signal changes during hallucinatory events remains difficult and time‐consuming. This article first proposes a machine‐learning algorithm to automatically identify resting‐state fMRI periods that precede hallucinations versus periods that do not. When applied to whole‐brain fMRI data, state‐of‐the‐art classification methods, such as support vector machines (SVM), yield dense solutions that are difficult to interpret. We proposed to extend the existing sparse classification methods by taking the spatial structure of brain images into account with structured sparsity using the total variation penalty. Based on this approach, we obtained reliable classifying performances associated with interpretable predictive patterns, composed of two clearly identifiable clusters in speech‐related brain regions. The variation in transition‐to‐hallucination functional patterns not only from one patient to another but also from one occurrence to the next (e.g., also depending on the sensory modalities involved) appeared to be the major difficulty when developing effective classifiers. Consequently, second, this article aimed to characterize the variability within the prehallucination patterns using an extension of principal component analysis with spatial constraints. The principal components (PCs) and the associated basis patterns shed light on the intrinsic structures of the variability present in the dataset. Such results are promising in the scope of innovative fMRI‐guided therapy for drug‐resistant hallucinations, such as fMRI‐based neurofeedback.
机译:尽管该领域取得了重大进展,但在幻觉事件中检测fMRI信号变化仍然困难且耗时。本文首先提出了一种机器学习算法,可以自动识别幻觉之前的静息状态fMRI周期和非幻觉周期。当应用于全脑fMRI数据时,最新的分类方法(例如支持向量机(SVM))会产生难以解释的密集解。我们提议通过使用总变异惩罚将结构化稀疏性考虑在内的脑部图像的空间结构来扩展现有的稀疏分类方法。基于这种方法,我们获得了与可解释的预测模式相关的可靠分类性能,该预测模式由与语音相关的大脑区域中的两个可清晰识别的群集组成。在开发有效的分类器时,不仅要从一位患者到另一位患者,而且要从一个患者到另一个患者(例如,还取决于所涉及的感官方式),从过渡到卤化功能模式的变化似乎是主要的困难。因此,第二,本文旨在利用具有空间约束的主成分分析的扩展来表征前卤化模式内的变异性。主成分(PC)和相关的基本模式阐明了数据集中存在的变异性的内在结构。在基于fMRI的神经反馈等耐药幻觉的创新性fMRI指导治疗的范围内,此类结果很有希望。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

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