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Dive into the research topics where Timothy O. Laumann is active.

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Featured researches published by Timothy O. Laumann.


NeuroImage | 2014

Methods to detect, characterize, and remove motion artifact in resting state fMRI

Jonathan D. Power; Anish Mitra; Timothy O. Laumann; Abraham Z. Snyder; Bradley L. Schlaggar; Steven E. Petersen

Head motion systematically alters correlations in resting state functional connectivity fMRI (RSFC). In this report we examine impact of motion on signal intensity and RSFC correlations. We find that motion-induced signal changes (1) are often complex and variable waveforms, (2) are often shared across nearly all brain voxels, and (3) often persist more than 10s after motion ceases. These signal changes, both during and after motion, increase observed RSFC correlations in a distance-dependent manner. Motion-related signal changes are not removed by a variety of motion-based regressors, but are effectively reduced by global signal regression. We link several measures of data quality to motion, changes in signal intensity, and changes in RSFC correlations. We demonstrate that improvements in data quality measures during processing may represent cosmetic improvements rather than true correction of the data. We demonstrate a within-subject, censoring-based artifact removal strategy based on volume censoring that reduces group differences due to motion to chance levels. We note conditions under which group-level regressions do and do not correct motion-related effects.


NeuroImage | 2013

Resting-state fMRI in the Human Connectome Project

Stephen M. Smith; Christian F. Beckmann; Jesper Andersson; Edward J. Auerbach; Janine D. Bijsterbosch; Gwenaëlle Douaud; Eugene P. Duff; David A. Feinberg; Ludovica Griffanti; Michael P. Harms; Michael Kelly; Timothy O. Laumann; Karla L. Miller; Steen Moeller; S.E. Petersen; Jonathan D. Power; Gholamreza Salimi-Khorshidi; Avi Snyder; An T. Vu; Mark W. Woolrich; Junqian Xu; Essa Yacoub; Kamil Ugurbil; D. C. Van Essen; Matthew F. Glasser

Resting-state functional magnetic resonance imaging (rfMRI) allows one to study functional connectivity in the brain by acquiring fMRI data while subjects lie inactive in the MRI scanner, and taking advantage of the fact that functionally related brain regions spontaneously co-activate. rfMRI is one of the two primary data modalities being acquired for the Human Connectome Project (the other being diffusion MRI). A key objective is to generate a detailed in vivo mapping of functional connectivity in a large cohort of healthy adults (over 1000 subjects), and to make these datasets freely available for use by the neuroimaging community. In each subject we acquire a total of 1h of whole-brain rfMRI data at 3 T, with a spatial resolution of 2×2×2 mm and a temporal resolution of 0.7s, capitalizing on recent developments in slice-accelerated echo-planar imaging. We will also scan a subset of the cohort at higher field strength and resolution. In this paper we outline the work behind, and rationale for, decisions taken regarding the rfMRI data acquisition protocol and pre-processing pipelines, and present some initial results showing data quality and example functional connectivity analyses.


Cerebral Cortex | 2016

Generation and Evaluation of a Cortical Area Parcellation from Resting-State Correlations

Evan M. Gordon; Timothy O. Laumann; Babatunde Adeyemo; Jeremy F. Huckins; William M. Kelley; Steven E. Petersen

The cortical surface is organized into a large number of cortical areas; however, these areas have not been comprehensively mapped in the human. Abrupt transitions in resting-state functional connectivity (RSFC) patterns can noninvasively identify locations of putative borders between cortical areas (RSFC-boundary mapping; Cohen et al. 2008). Here we describe a technique for using RSFC-boundary maps to define parcels that represent putative cortical areas. These parcels had highly homogenous RSFC patterns, indicating that they contained one unique RSFC signal; furthermore, the parcels were much more homogenous than a null model matched for parcel size when tested in two separate datasets. Several alternative parcellation schemes were tested this way, and no other parcellation was as homogenous as or had as large a difference compared with its null model. The boundary map-derived parcellation contained parcels that overlapped with architectonic mapping of areas 17, 2, 3, and 4. These parcels had a network structure similar to the known network structure of the brain, and their connectivity patterns were reliable across individual subjects. These observations suggest that RSFC-boundary map-derived parcels provide information about the location and extent of human cortical areas. A parcellation generated using this method is available at http://www.nil.wustl.edu/labs/petersen/Resources.html.


Neuron | 2015

Functional System and Areal Organization of a Highly Sampled Individual Human Brain

Timothy O. Laumann; Evan M. Gordon; Babatunde Adeyemo; Abraham Z. Snyder; Sung Jun Joo; Mei Yen Chen; Adrian W. Gilmore; Kathleen B. McDermott; Steven M. Nelson; Nico U.F. Dosenbach; Bradley L. Schlaggar; Jeanette A. Mumford; Russell A. Poldrack; Steven E. Petersen

Resting state functional MRI (fMRI) has enabled description of group-level functional brain organization at multiple spatial scales. However, cross-subject averaging may obscure patterns of brain organization specific to each individual. Here, we characterized the brain organization of a single individual repeatedly measured over more than a year. We report a reproducible and internally valid subject-specific areal-level parcellation that corresponds with subject-specific task activations. Highly convergent correlation network estimates can be derived from this parcellation if sufficient data are collected-considerably more than typically acquired. Notably, within-subject correlation variability across sessions exhibited a heterogeneous distribution across the cortex concentrated in visual and somato-motor regions, distinct from the pattern of intersubject variability. Further, although the individuals systems-level organization is broadly similar to the group, it demonstrates distinct topological features. These results provide a foundation for studies of individual differences in cortical organization and function, especially for special or rare individuals. VIDEO ABSTRACT.


Frontiers in Neuroinformatics | 2011

Informatics and Data Mining Tools and Strategies for the Human Connectome Project

Daniel S. Marcus; John W. Harwell; Timothy R. Olsen; Michael R. Hodge; Matthew F. Glasser; Fred W. Prior; Mark Jenkinson; Timothy O. Laumann; Sandra W. Curtiss; David C. Van Essen

The Human Connectome Project (HCP) is a major endeavor that will acquire and analyze connectivity data plus other neuroimaging, behavioral, and genetic data from 1,200 healthy adults. It will serve as a key resource for the neuroscience research community, enabling discoveries of how the brain is wired and how it functions in different individuals. To fulfill its potential, the HCP consortium is developing an informatics platform that will handle: (1) storage of primary and processed data, (2) systematic processing and analysis of the data, (3) open-access data-sharing, and (4) mining and exploration of the data. This informatics platform will include two primary components. ConnectomeDB will provide database services for storing and distributing the data, as well as data analysis pipelines. Connectome Workbench will provide visualization and exploration capabilities. The platform will be based on standard data formats and provide an open set of application programming interfaces (APIs) that will facilitate broad utilization of the data and integration of HCP services into a variety of external applications. Primary and processed data generated by the HCP will be openly shared with the scientific community, and the informatics platform will be available under an open source license. This paper describes the HCP informatics platform as currently envisioned and places it into the context of the overall HCP vision and agenda.


NeuroImage | 2013

Resting state network estimation in individual subjects.

Carl D. Hacker; Timothy O. Laumann; Nicholas Szrama; Antonello Baldassarre; Abraham Z. Snyder; Eric C. Leuthardt; Maurizio Corbetta

Resting state functional magnetic resonance imaging (fMRI) has been used to study brain networks associated with both normal and pathological cognitive functions. The objective of this work is to reliably compute resting state network (RSN) topography in single participants. We trained a supervised classifier (multi-layer perceptron; MLP) to associate blood oxygen level dependent (BOLD) correlation maps corresponding to pre-defined seeds with specific RSN identities. Hard classification of maps obtained from a priori seeds was highly reliable across new participants. Interestingly, continuous estimates of RSN membership retained substantial residual error. This result is consistent with the view that RSNs are hierarchically organized, and therefore not fully separable into spatially independent components. After training on a priori seed-based maps, we propagated voxel-wise correlation maps through the MLP to produce estimates of RSN membership throughout the brain. The MLP generated RSN topography estimates in individuals consistent with previous studies, even in brain regions not represented in the training data. This method could be used in future studies to relate RSN topography to other measures of functional brain organization (e.g., task-evoked responses, stimulation mapping, and deficits associated with lesions) in individuals. The multi-layer perceptron was directly compared to two alternative voxel classification procedures, specifically, dual regression and linear discriminant analysis; the perceptron generated more spatially specific RSN maps than either alternative.


NeuroImage | 2014

An approach for parcellating human cortical areas using resting-state correlations.

Gagan S. Wig; Timothy O. Laumann; Steven E. Petersen

Resting State Functional Connectivity (RSFC) reveals properties related to the brains underlying organization and function. Features related to RSFC signals, such as the locations where the patterns of RSFC exhibit abrupt transitions, can be used to identify putative boundaries between cortical areas (RSFC-Boundary Mapping). The locations of RSFC-based area boundaries are consistent across independent groups of subjects. RSFC-based parcellation converges with parcellation information from other modalities in many locations, including task-evoked activity and probabilistic estimates of cellular architecture, providing evidence for the ability of RSFC to parcellate brain structures into functionally meaningful units. We not only highlight a collection of these observations, but also point out several limitations and observations that mandate careful consideration in using and interpreting RSFC for the purposes of parcellating the brains cortical and subcortical structures.


Nature Communications | 2015

Long-term neural and physiological phenotyping of a single human

Russell A. Poldrack; Timothy O. Laumann; Oluwasanmi Koyejo; Brenda Gregory; Ashleigh M. Hover; Mei Yen Chen; Krzysztof J. Gorgolewski; Jeffrey J. Luci; Sung Jun Joo; Ryan L. Boyd; Scott Hunicke-Smith; Zack B. Simpson; Thomas Caven; Vanessa Sochat; James M. Shine; Evan M. Gordon; Abraham Z. Snyder; Babatunde Adeyemo; Steven E. Petersen; David C. Glahn; D. Reese McKay; Joanne E. Curran; Harald H H Göring; Melanie A. Carless; John Blangero; Robert F. Dougherty; Alexander Leemans; Daniel A. Handwerker; Laurie Frick; Edward M. Marcotte

Psychiatric disorders are characterized by major fluctuations in psychological function over the course of weeks and months, but the dynamic characteristics of brain function over this timescale in healthy individuals are unknown. Here, as a proof of concept to address this question, we present the MyConnectome project. An intensive phenome-wide assessment of a single human was performed over a period of 18 months, including functional and structural brain connectivity using magnetic resonance imaging, psychological function and physical health, gene expression and metabolomics. A reproducible analysis workflow is provided, along with open access to the data and an online browser for results. We demonstrate dynamic changes in brain connectivity over the timescales of days to months, and relations between brain connectivity, gene expression and metabolites. This resource can serve as a testbed to study the joint dynamics of human brain and metabolic function over time, an approach that is critical for the development of precision medicine strategies for brain disorders.


NeuroImage | 2017

Sources and implications of whole-brain fMRI signals in humans.

Jonathan D. Power; Mark Plitt; Timothy O. Laumann; Alex Martin

Abstract Whole‐brain fMRI signals are a subject of intense interest: variance in the global fMRI signal (the spatial mean of all signals in the brain) indexes subject arousal, and psychiatric conditions such as schizophrenia and autism have been characterized by differences in the global fMRI signal. Further, vigorous debates exist on whether global signals ought to be removed from fMRI data. However, surprisingly little research has focused on the empirical properties of whole‐brain fMRI signals. Here we map the spatial and temporal properties of the global signal, individually, in 1000+ fMRI scans. Variance in the global fMRI signal is strongly linked to head motion, to hardware artifacts, and to respiratory patterns and their attendant physiologic changes. Many techniques used to prepare fMRI data for analysis fail to remove these uninteresting kinds of global signal fluctuations. Thus, many studies include, at the time of analysis, prominent global effects of yawns, breathing changes, and head motion, among other signals. Such artifacts will mimic dynamic neural activity and will spuriously alter signal covariance throughout the brain. Methods capable of isolating and removing global artifactual variance while preserving putative “neural” variance are needed; this paper adopts no position on the topic of global signal regression. HighlightsDemonstrates brain‐wide (global) fMRI signals, individually, in 1000+ scans from 8 sites.Global signals often reflect artifact caused by head motion, respiration, or hardware problems.Most existing fMRI denoising methods do not adequately remove global artifacts.Global artifacts mimic dynamic neural activity and modulate signal correlations.Studies reporting global fMRI signal effects must carefully account for artifact.


Cerebral Cortex | 2014

Parcellating an Individual Subject's Cortical and Subcortical Brain Structures Using Snowball Sampling of Resting-State Correlations

Gagan S. Wig; Timothy O. Laumann; Alexander L. Cohen; Jonathan D. Power; Steven M. Nelson; Matthew F. Glasser; Francis M. Miezin; Abraham Z. Snyder; Bradley L. Schlaggar; Steven E. Petersen

We describe methods for parcellating an individual subjects cortical and subcortical brain structures using resting-state functional correlations (RSFCs). Inspired by approaches from social network analysis, we first describe the application of snowball sampling on RSFC data (RSFC-Snowballing) to identify the centers of cortical areas, subdivisions of subcortical nuclei, and the cerebellum. RSFC-Snowballing parcellation is then compared with parcellation derived from identifying locations where RSFC maps exhibit abrupt transitions (RSFC-Boundary Mapping). RSFC-Snowballing and RSFC-Boundary Mapping largely complement one another, but also provide unique parcellation information; together, the methods identify independent entities with distinct functional correlations across many cortical and subcortical locations in the brain. RSFC parcellation is relatively reliable within a subject scanned across multiple days, and while the locations of many area centers and boundaries appear to exhibit considerable overlap across subjects, there is also cross-subject variability—reinforcing the motivation to parcellate brains at the level of individuals. Finally, examination of a large meta-analysis of task-evoked functional magnetic resonance imaging data reveals that area centers defined by task-evoked activity exhibit correspondence with area centers defined by RSFC-Snowballing. This observation provides important evidence for the ability of RSFC to parcellate broad expanses of an individuals brain into functionally meaningful units.

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Steven E. Petersen

Washington University in St. Louis

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Evan M. Gordon

Georgetown University Medical Center

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Abraham Z. Snyder

Washington University in St. Louis

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Bradley L. Schlaggar

Washington University in St. Louis

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Babatunde Adeyemo

Washington University in St. Louis

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Steven M. Nelson

University of Texas at Dallas

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Nico U.F. Dosenbach

Washington University in St. Louis

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Caterina Gratton

Washington University in St. Louis

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Deanna J. Greene

Washington University in St. Louis

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