Quantitative MRI - PowerPoint PPT Presentation

1 / 24
About This Presentation
Title:

Quantitative MRI

Description:

The Histogram is a frequency ... Curve Fitting for Bimodal Histogram Features. bimodal histograms cannot be well characterizated by unimodal features ... – PowerPoint PPT presentation

Number of Views:181
Avg rating:3.0/5.0
Slides: 25
Provided by: MTL15
Category:

less

Transcript and Presenter's Notes

Title: Quantitative MRI


1
Quantitative MRI
  • Histograms
  • Measuring Subtle Diffuse Disease

Lara Harrison 16.3.2005
2
Introduction
  • The Histogram is a frequency distribution showing
    the number of voxels with particular range of MR
    parameter values
  • Histograms can be made for any MR parameter that
    may be subtly altered by the precence of diffuse
    disease

3
(No Transcript)
4
Introduction
  • Histograms are increasingly being used to
    characterize subtle diffuse disease changes in
    normal appearing white matter tissue (NAWM)
  • MTR most common
  • diffusion weighted (ADC)
  • Focal lesion analysis after placing ROI

5
Histogram analysis
  • no bias or pre-judgement about which parts of the
    brain may be affected by disease
  • placing ROI is not needed
  • no information on the location of abnormalities
  • sensitivity best in diffuse lesions

6
Data Acquisition
  • good practise in obtaining accurate values of MR
    parameter
  • small voxel size -gt partial volume effect ?
  • normal tissue ROI parameter values should be
    checked for accuracy (comparison with published
    data)

7
Data Acquisition
  • Image de-spiking
  • adding random noise to each floating point image
    value before calculating parameter maps
  • makes images pseudo-continuous
  • Parameter maps sufficient resolution
  • scaling before storing

8
Image Segmentation
  • identifying the outline of the tissue that is
    being used to generate the histogram
  • good segmentation process
  • reproducible
  • accurate
  • independent of human judgement as much as possible

9
Image Segmentation
  • edge defining in clear way (anatomy, partial
    volume voxels)
  • image data with different weighting from that
    used to generate the parameter map

10
Generation of Absolute Histogram
  • Bin width ?
  • range of parameter (x-) values is divided up
    reasonable number of bins
  • width ? -gt smoothing ?
  • width ? -gt noise ?, large datasets
  • often the bin width used is unity
  • Range xmin - xmax

11
  • Voxels Per Bin (VPB) histogram (hvpb)
  • absolute histogram, shows voxel counts
  • depend on bin width
  • MPX histogram (hmpx)
  • volume per x-unit (e.g.ml per pu or ml per ms)
  • independent of bin width
  • hmpx hvpb Vvox/?
  • more easily compared between studies

12
Normalized Histogram
  • partly normalized histograms correct for brain
    volume, depend on bin width
  • hi 100 hivpb / (? hivpb)
  • 100 himpx / (? himpx)
  • fully normalized histograms correct for brain
    volume, independ on bin width
  • hi 100 hivpb / (? ? hivpb)
  • 100 himpx / (? ? himpx)

13
Histogram Smoothing
  • High resolution histograms would probably benefit
    from some smoothing
  • Median filtering
  • range of filter ? -gt noise? -gt-gt peak height?
  • if over-used step-like structure to the
    histogram
  • very narrow bins might not respond well

14
Unimodal Histogram Features
  • typical conventional features
  • peak height
  • peak location
  • mean parameter value
  • centile values (x25 etc)

15
(No Transcript)
16
Average magnetisation transfer ratio (MTR)
histograms of normal appearing brain tissue
(right) and of cervical spinal cord (left) from
healthy controls (solid lines) and patients with
secondary progressive MS (dotted lines). Compared
with healthy controls, patients with secondary
progressive MS have a reduction in histogram peak
height and a shift of the histogram to the left,
which indicates the presence of more pixels at
lower MTR. Filippi et al. 2003 The use of
quantitative magnetic-resonance-based techniques
to monitor the evolution of multiple sclerosis
17
Curve Fitting for Bimodal Histogram Features
  • bimodal histograms cannot be well characterizated
    by unimodal features
  • fitting the histogram to the sum of several
    distributions described by analytic functions
    (e.g. gaussians)

18
Curve Fitting for Bimodal Histogram Features
  • each peak has an effective height, location and
    width corresponding to the fitted function
  • analysis less depended on histogram structure at
    the peak bin

19
Global Features
  • MR parameters measured in disease have often
    tested for clinical relevance
  • statistically significant differences between
    diseases and disease subgroups
  • correlations with disease severity
  • (MS Extended Disability Status Scale)

20
Global FeaturesPrinciple Component Analysis (PCA)
  • PCA is widely used in modeling the statistics of
    data sets
  • Dehmeshki et al. PCA optimal for correlation
    with disease severity (MS EDSS), captures
    within-class variance

21
(No Transcript)
22
Global Features Linear Discriminant Analysis
(LDA)
  • LDA maximize the ratio of the between-group
    variance to the within-group variance
  • Dehmeshki et al. LDA optimal for maximizing the
    separation between groups of subjects (MS
    sub-groups), captures between-class variance

23
What can go wrong?
  • Data collection
  • B1 field non-uniformity broaden histogram
  • uncorrected errors in flip angle histogram shif
  • Parameter maps
  • rounding errors
  • Segmentation
  • strategy for dealing partial volume voxels

24
  • Histogram Spikes
  • common in high-resolution histograms
  • mapping error spikes
  • diffusion maps sometimes contain black pixels
  • Bin-location Ambiquity
  • labelling bin by its centre, not left edge
  • Bin width too large
  • peak location shift
  • Interpolation of missing values guessing
Write a Comment
User Comments (0)
About PowerShow.com