Definition:
'Spectral diffusion analysis
' is an advanced MRI-based computational method that decomposes diffusion-weighted signals into frequency components to estimate tissue-specific microstructural properties.
This technique allows quantification of compartmentalized diffusion behaviors—such as intracellular, interstitial, and restricted diffusion—by analyzing the diffusion spectrum rather than assuming a single apparent diffusion coefficient (ADC).
Purpose and Utility:
Estimates surrogate markers for:
Interstitial fluid volume fraction (Fint)
Interstitial diffusivity (Dint)
Differentiates between tissue compartments (cellular vs. extracellular)
Detects subtle alterations in microstructural water dynamics
Enhances diagnostic sensitivity in conditions like:
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Methodological Principles:
Uses multi-b-value and/or multi-diffusion time datasets
Applies Fourier or inverse Laplace transforms to diffusion signals
Generates a diffusion spectrum, characterizing signal contributions from various mobility ranges
Allows non-invasive inference of tissue complexity and fluid dynamics
Advantages:
More sensitive than conventional ADC to subtle microstructural changes
Enables modeling of fluid mobility and volume fraction in interstitial compartments
Provides physiologically interpretable parameters
Limitations:
Requires high-quality multi-shell or multi-tensor diffusion MRI
Computationally intensive
Interpretation may depend on model assumptions
Clinical Relevance:
In iNPH, increased Fint and altered Dint may reflect glymphatic dysfunction and extracellular space expansion
Helps in evaluating response to shunt surgery or fluid clearance impairment