Phosphorous
magnetic resonance spectroscopic imaging (31P MRSI) has been gaining
attention as an alternative to the well-established MRI. It provides
valuable in vivo information about the energy state, pH and metabolism
of an area of interest, but resolution is limited and signal-to-noise
ratios (SNRs) are low.
With advances in high-field (three Tesla (3T)) scanners and
multi-channel radio frequency receiving coils, numerous applications are
on the horizon. EU-funded scientists set out to develop metrics to
assess the aggressiveness of brain tumours with work on the project
'Phosphorus MR spectroscopic imaging of brain tumours at 3T'
(31P_SPECTRA_3T). They focused on the spectral peaks produced by the
metabolites of interest.
The team compared time-domain and frequency-domain analyses of
clinical scans for accurate quantification of 31P MRSI data of the human
brain at 3T. The low SNRs make this a difficult task. Peak ratio
estimates of the two programmes evaluated (Advanced Method for Accurate,
Robust and Efficient Spectral fitting (AMARES) and open-source
Spectroscopic Imaging, VIsualization and Computing (SIVIC)) were very
similar, although AMARES performed better for noisy spectra.
Having assessed measurement and quantification techniques, the team
turned to application, namely analysing the spatial heterogeneity and
characteristics of brain tumours using 31P MRSI at 3T. Scientists
compared data from 3 healthy volunteers and 11 patients, all of whom
provided legal informed consent.
Despite the small sample size, results supported the ability of two
techniques (support vector machine and logistic regression) to classify
and discriminate brain tumours from normal tissue. Logistic regression
resulted in higher sensitivity, specificity and accuracy.
Finally, researchers processed the spectra from healthy volunteers
and patients using AMARES followed by linear regressions to fit voxel
intensities with a given metabolite ratio. They focused on the ratios
from the previous assessment that were shown to vary between healthy
subjects and patients.
31P_SPECTRA_3T has contributed to greater use of 31P MRSI through
enhanced understanding and metrics. This in turn will improve the
quality of diagnosis and treatment planning as the databases of healthy
and diseased tissues expands.