Predicting individual traits from models of brain dynamics accurately and reliably using the Fisher kernel.

IF 6.4 1区 生物学 Q1 BIOLOGY eLife Pub Date : 2025-01-31 DOI:10.7554/eLife.95125
Christine Ahrends, Mark W Woolrich, Diego Vidaurre
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引用次数: 0

Abstract

Predicting an individual's cognitive traits or clinical condition using brain signals is a central goal in modern neuroscience. This is commonly done using either structural aspects, such as structural connectivity or cortical thickness, or aggregated measures of brain activity that average over time. But these approaches are missing a central aspect of brain function: the unique ways in which an individual's brain activity unfolds over time. One reason why these dynamic patterns are not usually considered is that they have to be described by complex, high-dimensional models; and it is unclear how best to use these models for prediction. We here propose an approach that describes dynamic functional connectivity and amplitude patterns using a Hidden Markov model (HMM) and combines it with the Fisher kernel, which can be used to predict individual traits. The Fisher kernel is constructed from the HMM in a mathematically principled manner, thereby preserving the structure of the underlying model. We show here, in fMRI data, that the HMM-Fisher kernel approach is accurate and reliable. We compare the Fisher kernel to other prediction methods, both time-varying and time-averaged functional connectivity-based models. Our approach leverages information about an individual's time-varying amplitude and functional connectivity for prediction and has broad applications in cognitive neuroscience and personalised medicine.

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利用Fisher核准确可靠地从脑动力学模型中预测个体特征。
利用大脑信号预测个体的认知特征或临床状况是现代神经科学的中心目标。这通常是通过结构方面,如结构连通性或皮层厚度,或随时间平均的大脑活动的汇总测量来完成的。但这些方法都忽略了大脑功能的一个核心方面:个体大脑活动随时间发展的独特方式。通常不考虑这些动态模式的一个原因是,它们必须由复杂的高维模型来描述;目前还不清楚如何最好地利用这些模型进行预测。本文提出了一种使用隐马尔可夫模型(HMM)描述动态功能连通性和振幅模式的方法,并将其与可用于预测个体特征的Fisher核相结合。Fisher核以数学原则的方式从HMM构建,从而保留了底层模型的结构。我们在fMRI数据中显示,HMM-Fisher核方法是准确可靠的。我们将Fisher核与其他预测方法进行了比较,包括时变和时间平均的基于函数连接的模型。我们的方法利用关于个体时变振幅和功能连接的信息进行预测,在认知神经科学和个性化医学中具有广泛的应用。
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来源期刊
eLife
eLife BIOLOGY-
CiteScore
12.90
自引率
3.90%
发文量
3122
审稿时长
17 weeks
期刊介绍: eLife is a distinguished, not-for-profit, peer-reviewed open access scientific journal that specializes in the fields of biomedical and life sciences. eLife is known for its selective publication process, which includes a variety of article types such as: Research Articles: Detailed reports of original research findings. Short Reports: Concise presentations of significant findings that do not warrant a full-length research article. Tools and Resources: Descriptions of new tools, technologies, or resources that facilitate scientific research. Research Advances: Brief reports on significant scientific advancements that have immediate implications for the field. Scientific Correspondence: Short communications that comment on or provide additional information related to published articles. Review Articles: Comprehensive overviews of a specific topic or field within the life sciences.
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