Skip to main content
Home

Search form

  • Home
  • Calendar
  • People
    • Key Personnel
    • Members
    • Collaborators
  • Grants
  • Papers
  • Blogs
  • Wiki
  • Log In
Home / Towards Automatic Quantitative Quality Control for MRI.

Towards Automatic Quantitative Quality Control for MRI.

TitleTowards Automatic Quantitative Quality Control for MRI.
Publication TypeJournal Article
Year of Publication2012
AuthorsLauzon CB, Caffo BC, Landman BA
JournalProc Soc Photo Opt Instrum Eng
Volume8314
Date Published2012 Feb 23
ISSN1018-4732
Abstract

Quality and consistency of clinical and research data collected from Magnetic Resonance Imaging (MRI) scanners may become suspect due to a wide variety of common factors including, experimental changes, hardware degradation, hardware replacement, software updates, personnel changes, and observed imaging artifacts. Standard practice limits quality analysis to visual assessment by a researcher/clinician or a quantitative quality control based upon phantoms which may not be timely, cannot account for differing experimental protocol (e.g. gradient timings and strengths), and may not be pertinent to the data or experimental question at hand. This paper presents a parallel processing pipeline developed towards experiment specific automatic quantitative quality control of MRI data using diffusion tensor imaging (DTI) as an experimental test case. The pipeline consists of automatic identification of DTI scans run on the MRI scanner, calculation of DTI contrasts from the data, implementation of modern statistical methods (wild bootstrap and SIMEX) to assess variance and bias in DTI contrasts, and quality assessment via power calculations and normative values. For this pipeline, a DTI specific power calculation analysis is developed as well as the first incorporation of bias estimates in DTI data to improve statistical analysis.

DOI10.1117/12.910819
Alternate JournalProc Soc Photo Opt Instrum Eng
PubMed ID23087586
PubMed Central IDPMC3474364
Grant ListN01 AG032124 / AG / NIA NIH HHS / United States
T32 EB003817 / EB / NIBIB NIH HHS / United States
T32 EB003817-01 / EB / NIBIB NIH HHS / United States
  • Google Scholar
  • BibTeX

Navigation

  • Statistical methods
    • General
    • Causal Inference
    • Population ICA
    • PVD
    • Testing
    • Prediction / Machine Learning
    • Computation
    • Visualization
    • Structural PCA
  • Scientific areas of interest
    • Brain imaging - Variability
    • Brain Imaging - Prediction
    • Brain Imaging - Clinical
    • Wearable Computing
    • Biosignals
  • Software & Tutorials
  • Social media
  • Logos
© 2012 smart-stats.org