Literature DB >> 26520775

The impact of quality assurance assessment on diffusion tensor imaging outcomes in a large-scale population-based cohort.

David R Roalf1, Megan Quarmley2, Mark A Elliott3, Theodore D Satterthwaite2, Simon N Vandekar4, Kosha Ruparel2, Efstathios D Gennatas2, Monica E Calkins2, Tyler M Moore2, Ryan Hopson2, Karthik Prabhakaran2, Chad T Jackson2, Ragini Verma5, Hakon Hakonarson6, Ruben C Gur7, Raquel E Gur7.   

Abstract

BACKGROUND: Diffusion tensor imaging (DTI) is applied in investigation of brain biomarkers for neurodevelopmental and neurodegenerative disorders. However, the quality of DTI measurements, like other neuroimaging techniques, is susceptible to several confounding factors (e.g., motion, eddy currents), which have only recently come under scrutiny. These confounds are especially relevant in adolescent samples where data quality may be compromised in ways that confound interpretation of maturation parameters. The current study aims to leverage DTI data from the Philadelphia Neurodevelopmental Cohort (PNC), a sample of 1601 youths with ages of 8-21 who underwent neuroimaging, to: 1) establish quality assurance (QA) metrics for the automatic identification of poor DTI image quality; 2) examine the performance of these QA measures in an external validation sample; 3) document the influence of data quality on developmental patterns of typical DTI metrics.
METHODS: All diffusion-weighted images were acquired on the same scanner. Visual QA was performed on all subjects completing DTI; images were manually categorized as Poor, Good, or Excellent. Four image quality metrics were automatically computed and used to predict manual QA status: Mean voxel intensity outlier count (MEANVOX), Maximum voxel intensity outlier count (MAXVOX), mean relative motion (MOTION) and temporal signal-to-noise ratio (TSNR). Classification accuracy for each metric was calculated as the area under the receiver-operating characteristic curve (AUC). A threshold was generated for each measure that best differentiated visual QA status and applied in a validation sample. The effects of data quality on sensitivity to expected age effects in this developmental sample were then investigated using the traditional MRI diffusion metrics: fractional anisotropy (FA) and mean diffusivity (MD). Finally, our method of QA is compared with DTIPrep.
RESULTS: TSNR (AUC=0.94) best differentiated Poor data from Good and Excellent data. MAXVOX (AUC=0.88) best differentiated Good from Excellent DTI data. At the optimal threshold, 88% of Poor data and 91% Good/Excellent data were correctly identified. Use of these thresholds on a validation dataset (n=374) indicated high accuracy. In the validation sample 83% of Poor data and 94% of Excellent data was identified using thresholds derived from the training sample. Both FA and MD were affected by the inclusion of poor data in an analysis of an age, sex and race matched comparison sample. In addition, we show that the inclusion of poor data results in significant attenuation of the correlation between diffusion metrics (FA and MD) and age during a critical neurodevelopmental period. We find higher correspondence between our QA method and DTIPrep for Poor data, but we find our method to be more robust for apparently high-quality images.
CONCLUSION: Automated QA of DTI can facilitate large-scale, high-throughput quality assurance by reliably identifying both scanner and subject induced imaging artifacts. The results present a practical example of the confounding effects of artifacts on DTI analysis in a large population-based sample, and suggest that estimates of data quality should not only be reported but also accounted for in data analysis, especially in studies of development.
Copyright © 2015 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Adolescence; Automated quality assurance; Brain maturation; Diffusion tensor imaging; Motion

Mesh:

Year:  2015        PMID: 26520775      PMCID: PMC4753778          DOI: 10.1016/j.neuroimage.2015.10.068

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  73 in total

1.  Condition number as a measure of noise performance of diffusion tensor data acquisition schemes with MRI.

Authors:  S Skare; M Hedehus; M E Moseley; T Q Li
Journal:  J Magn Reson       Date:  2000-12       Impact factor: 2.229

2.  Improved optimization for the robust and accurate linear registration and motion correction of brain images.

Authors:  Mark Jenkinson; Peter Bannister; Michael Brady; Stephen Smith
Journal:  Neuroimage       Date:  2002-10       Impact factor: 6.556

Review 3.  Advances in functional and structural MR image analysis and implementation as FSL.

Authors:  Stephen M Smith; Mark Jenkinson; Mark W Woolrich; Christian F Beckmann; Timothy E J Behrens; Heidi Johansen-Berg; Peter R Bannister; Marilena De Luca; Ivana Drobnjak; David E Flitney; Rami K Niazy; James Saunders; John Vickers; Yongyue Zhang; Nicola De Stefano; J Michael Brady; Paul M Matthews
Journal:  Neuroimage       Date:  2004       Impact factor: 6.556

4.  Anisotropic phantom measurements for quality assured use of diffusion tensor imaging in clinical practice.

Authors:  Jatta Berberat; Brigitte Eberle; Susanne Rogers; Larissa Boxheimer; Gerd Lutters; Adrian Merlo; Stephan Bodis; Luca Remonda
Journal:  Acta Radiol       Date:  2013-04-30       Impact factor: 1.990

5.  The psychosis spectrum in a young U.S. community sample: findings from the Philadelphia Neurodevelopmental Cohort.

Authors:  Monica E Calkins; Tyler M Moore; Kathleen R Merikangas; Marcy Burstein; Theodore D Satterthwaite; Warren B Bilker; Kosha Ruparel; Rosetta Chiavacci; Daniel H Wolf; Frank Mentch; Haijun Qiu; John J Connolly; Patrick A Sleiman; Hakon Hakonarson; Ruben C Gur; Raquel E Gur
Journal:  World Psychiatry       Date:  2014-10       Impact factor: 49.548

6.  Impact of in-scanner head motion on multiple measures of functional connectivity: relevance for studies of neurodevelopment in youth.

Authors:  Theodore D Satterthwaite; Daniel H Wolf; James Loughead; Kosha Ruparel; Mark A Elliott; Hakon Hakonarson; Ruben C Gur; Raquel E Gur
Journal:  Neuroimage       Date:  2012-01-02       Impact factor: 6.556

7.  Diffusion imaging with prospective motion correction and reacquisition.

Authors:  Thomas Benner; André J W van der Kouwe; A Gregory Sorensen
Journal:  Magn Reson Med       Date:  2011-02-24       Impact factor: 4.668

8.  Real-time optical motion correction for diffusion tensor imaging.

Authors:  Murat Aksoy; Christoph Forman; Matus Straka; Stefan Skare; Samantha Holdsworth; Joachim Hornegger; Roland Bammer
Journal:  Magn Reson Med       Date:  2011-03-22       Impact factor: 4.668

Review 9.  FSL.

Authors:  Mark Jenkinson; Christian F Beckmann; Timothy E J Behrens; Mark W Woolrich; Stephen M Smith
Journal:  Neuroimage       Date:  2011-09-16       Impact factor: 6.556

10.  A robust post-processing workflow for datasets with motion artifacts in diffusion kurtosis imaging.

Authors:  Xianjun Li; Jian Yang; Jie Gao; Xue Luo; Zhenyu Zhou; Yajie Hu; Ed X Wu; Mingxi Wan
Journal:  PLoS One       Date:  2014-04-11       Impact factor: 3.240

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  91 in total

1.  Sex differences in network controllability as a predictor of executive function in youth.

Authors:  Eli J Cornblath; Evelyn Tang; Graham L Baum; Tyler M Moore; Azeez Adebimpe; David R Roalf; Ruben C Gur; Raquel E Gur; Fabio Pasqualetti; Theodore D Satterthwaite; Danielle S Bassett
Journal:  Neuroimage       Date:  2018-12-01       Impact factor: 6.556

2.  Associations between Neighborhood SES and Functional Brain Network Development.

Authors:  Ursula A Tooley; Allyson P Mackey; Rastko Ciric; Kosha Ruparel; Tyler M Moore; Ruben C Gur; Raquel E Gur; Theodore D Satterthwaite; Danielle S Bassett
Journal:  Cereb Cortex       Date:  2020-01-10       Impact factor: 5.357

3.  Diffusion-weighted tractography in the common marmoset monkey at 9.4T.

Authors:  David J Schaeffer; Ramina Adam; Kyle M Gilbert; Joseph S Gati; Alex X Li; Ravi S Menon; Stefan Everling
Journal:  J Neurophysiol       Date:  2017-06-14       Impact factor: 2.714

4.  Amygdala Functional and Structural Connectivity Predicts Individual Risk Tolerance.

Authors:  Wi Hoon Jung; Sangil Lee; Caryn Lerman; Joseph W Kable
Journal:  Neuron       Date:  2018-04-05       Impact factor: 17.173

5.  Head motion: the dirty little secret of neuroimaging in psychiatry

Authors:  Carolina Makowski; Martin Lepage; Alan C. Evans
Journal:  J Psychiatry Neurosci       Date:  2019-01-01       Impact factor: 6.186

6.  Development of a computerized adaptive screening tool for overall psychopathology ("p").

Authors:  Tyler M Moore; Monica E Calkins; Theodore D Satterthwaite; David R Roalf; Adon F G Rosen; Ruben C Gur; Raquel E Gur
Journal:  J Psychiatr Res       Date:  2019-06-01       Impact factor: 4.791

Review 7.  A quantitative meta-analysis of olfactory dysfunction in mild cognitive impairment.

Authors:  David R Roalf; Madelyn J Moberg; Bruce I Turetsky; Laura Brennan; Sushila Kabadi; David A Wolk; Paul J Moberg
Journal:  J Neurol Neurosurg Psychiatry       Date:  2016-12-30       Impact factor: 10.154

8.  White matter microstructural deficits in 22q11.2 deletion syndrome.

Authors:  David R Roalf; J Eric Schmitt; Simon N Vandekar; Theodore D Satterthwaite; Russell T Shinohara; Kosha Ruparel; Mark A Elliott; Karthik Prabhakaran; Donna M McDonald-McGinn; Elaine H Zackai; Ruben C Gur; Beverly S Emanuel; Raquel E Gur
Journal:  Psychiatry Res Neuroimaging       Date:  2017-08-24       Impact factor: 2.376

Review 9.  Understanding the Emergence of Neuropsychiatric Disorders With Network Neuroscience.

Authors:  Danielle S Bassett; Cedric Huchuan Xia; Theodore D Satterthwaite
Journal:  Biol Psychiatry Cogn Neurosci Neuroimaging       Date:  2018-04-05

Review 10.  Functional brain imaging in neuropsychology over the past 25 years.

Authors:  David R Roalf; Ruben C Gur
Journal:  Neuropsychology       Date:  2017-11       Impact factor: 3.295

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