个性化神经调节模型:个体大脑功能架构的精确和可推广的制图

Ma Feilong, Samuel A. Nastase, Guo Jiahui, Yaroslav O. Halchenko, M. Ida Gobbini, James V. Haxby
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引用次数: 4

摘要

量化大脑功能结构在人与人之间的差异是人类神经科学的一个关键挑战。目前大脑功能组织的个性化模型是基于大脑区域和网络的,限制了它们在研究细粒度顶点水平差异方面的应用。在这项工作中,我们提出了个性化神经调谐(INT)模型,这是一种精细的大脑功能组织个性化模型。INT模型被设计为具有顶点级粒度,以捕获表征和地形差异,并模拟刺激-一般神经调节。通过一系列分析,我们证明:(a)我们的INT模型提供了一个可靠的细粒度大脑功能组织的个性化测量,(b)它准确地预测了个性化的大脑对新刺激的反应模式,(c)对于许多基准测试,它只需要10-20分钟的数据就可以获得良好的性能。我们的INT模型具有高可靠性、特异性、精确性和通用性,为基于自然神经成像范式构建基于大脑的生物标志物提供了新的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Individualized Neural Tuning Model: Precise and generalizable cartography of functional architecture in individual brains
Abstract Quantifying how brain functional architecture differs from person to person is a key challenge in human neuroscience. Current individualized models of brain functional organization are based on brain regions and networks, limiting their use in studying fine-grained vertex-level differences. In this work, we present the Individualized Neural Tuning (INT) model, a fine-grained individualized model of brain functional organization. The INT model is designed to have vertex-level granularity, to capture both representational and topographic differences, and to model stimulus-general neural tuning. Through a series of analyses, we demonstrate that (a) our INT model provides a reliable individualized measure of fine-grained brain functional organization, (b) it accurately predicts individualized brain response patterns to new stimuli, and (c) for many benchmarks, it requires only 10–20 minutes of data for good performance. The high reliability, specificity, precision, and generalizability of our INT model affords new opportunities for building brain-based biomarkers based on naturalistic neuroimaging paradigms.
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