PT - JOURNAL ARTICLE AU - Behrad Soleimani AU - Proloy Das AU - I.M. Dushyanthi Karunathilake AU - Stefanie E. Kuchinsky AU - Jonathan Z. Simon AU - Behtash Babadi TI - NLGC: Network Localized Granger Causality with Application to MEG Directional Functional Connectivity Analysis AID - 10.1101/2022.03.09.483683 DP - 2022 Jan 01 TA - bioRxiv PG - 2022.03.09.483683 4099 - http://biorxiv.org/content/early/2022/05/11/2022.03.09.483683.short 4100 - http://biorxiv.org/content/early/2022/05/11/2022.03.09.483683.full AB - Identifying the directed connectivity that underlie networked activity between different cortical areas is critical for understanding the neural mechanisms behind sensory processing. Granger causality (GC) is widely used for this purpose in functional magnetic resonance imaging analysis, but there the temporal resolution is low, making it difficult to capture the millisecond-scale interactions underlying sensory processing. Magnetoencephalography (MEG) has millisecond resolution, but only provides low-dimensional sensor-level linear mixtures of neural sources, which makes GC inference challenging. Conventional methods proceed in two stages: First, cortical sources are estimated from MEG using a source localization technique, followed by GC inference among the estimated sources. However, the spatiotemporal biases in estimating sources propagate into the subsequent GC analysis stage, may result in both false alarms and missing true GC links. Here, we introduce the Network Localized Granger Causality (NLGC) inference paradigm, which models the source dynamics as latent sparse multivariate autoregressive processes and estimates their parameters directly from the MEG measurements, integrated with source localization, and employs the resulting parameter estimates to produce a precise statistical characterization of the detected GC links. We offer several theoretical and algorithmic innovations within NLGC and further examine its utility via comprehensive simulations and application to MEG data from an auditory task involving tone processing from both younger and older participants. Our simulation studies reveal that NLGC is markedly robust with respect to model mismatch, network size, and low signal-to-noise ratio, whereas the conventional two-stage methods result in high false alarms and mis-detections. We also demonstrate the advantages of NLGC in revealing the cortical network-level characterization of neural activity during tone processing and resting state by delineating task- and age-related connectivity changes.Competing Interest StatementThe authors have declared no competing interest.