Nag Sayan, Uludag Kamil
Department of Medical Biophysics, University of Toronto, Toronto, Ontario, Canada.
Techna Institute & Koerner Scientist in MR Imaging, University Health Network, Toronto, Canada.
Imaging Neurosci (Camb). 2024 Sep 23;2. doi: 10.1162/imag_a_00290. eCollection 2024.
Dynamic Causal Models (DCMs) in functional Magnetic Resonance Imaging (fMRI) decipher causal interactions, known as Effective Connectivity, among neuronal populations. However, their utility is often constrained by computational limitations, restricting analysis to a small subset of interacting brain areas, typically fewer than 10, thus lacking scalability. While the regression DCM (rDCM) has emerged as a faster alternative to traditional DCMs, it is not without its limitations, including the linearization of DCM terms, reliance on a fixed Hemodynamic Response Function (HRF), and an inability to accommodate modulatory influences. In response to these challenges, we propose a novel hybrid approach named Transformer encoder DCM decoder (TREND), which combines a Transformer encoder with state-of-the-art physiological DCM (P-DCM) as decoder. This innovative method addresses the scalability issue while preserving the nonlinearities inherent in DCM equations. Through extensive simulations, we validate TREND's efficacy by demonstrating its ability to accurately predict effective connectivity values with dramatically reduced computational time relative to original P-DCM even in networks comprising up to, for instance, 100 interacting brain regions. Furthermore, we showcase TREND on an empirical fMRI dataset demonstrating the superior accuracy and/or speed of TREND compared with other DCM variants. In summary, by amalgamating P-DCM with Transformer, we introduce and validate a pioneering approach for determining effective connectivity values among brain regions, extending its applicability seamlessly to large-scale brain networks.
功能磁共振成像(fMRI)中的动态因果模型(DCM)可解读神经元群体之间的因果相互作用,即有效连接。然而,其效用常常受到计算限制的约束,分析仅限于一小部分相互作用的脑区,通常少于10个,因此缺乏可扩展性。虽然回归DCM(rDCM)已成为传统DCM的一种更快替代方法,但它也有其局限性,包括DCM项的线性化、对固定血流动力学响应函数(HRF)的依赖以及无法适应调节性影响。针对这些挑战,我们提出了一种名为Transformer编码器DCM解码器(TREND)的新型混合方法,该方法将Transformer编码器与作为解码器的最先进的生理DCM(P-DCM)相结合。这种创新方法在保留DCM方程固有非线性的同时解决了可扩展性问题。通过广泛的模拟,我们验证了TREND的有效性,证明即使在包含多达100个相互作用脑区的网络中,相对于原始P-DCM,它也能以显著减少的计算时间准确预测有效连接值。此外,我们在一个实证fMRI数据集上展示了TREND,证明了TREND与其他DCM变体相比具有更高的准确性和/或速度。总之,通过将P-DCM与Transformer融合,我们引入并验证了一种用于确定脑区之间有效连接值的开创性方法,将其适用性无缝扩展到大规模脑网络。