RT Journal Article SR Electronic T1 Disambiguating brain functional connectivity JF bioRxiv FD Cold Spring Harbor Laboratory SP 103002 DO 10.1101/103002 A1 Duff, Eugene P. A1 Makin, Tamar A1 Smith, Stephen M. A1 Woolrich, Mark W. YR 2017 UL http://biorxiv.org/content/early/2017/01/25/103002.abstract AB Functional connectivity (FC) analyses of correlations of neural activity are used extensively in neuroimaging and electrophysiology to gain insights into neural interactions. However, correlation fails to distinguish sources as different as changes in neural signal amplitudes or noise levels. This ambiguity substantially diminishes the value of FC for inferring system properties and clinical states. Network modelling approaches may avoid ambiguities, but require specific assumptions. We present an enhancement to FC analysis with improved specificity of inferences, minimal assumptions and no reduction in flexibility. The Additive Signal Change (ASC) approach characterises FC changes into certain prevalent classes involving additions of signal. With FMRI data, the approach reveals a rich diversity of signal changes underlying measured changes in FC, bringing into question standard interpretations. The ASC method can also be used to disambiguate other measures of dependency, such as regression and coherence, providing a flexible tool for the analysis of neural data.