Neuroimaging Techniques as Potential Tools for Assessment of Angiogenesis and Neuroplasticity Processes after Stroke and Their Clinical Implications for Rehabilitation and Stroke Recovery Prognosis
Abstract
:1. Introduction
2. Neuroimaging Techniques Dedicated to Stroke
3. Stroke Recovery Prognosis Based on Selected Neuroimaging Measurements—Review of Literature
3.1. Potential Angiogenic Biomarkers of Stroke Recovery
3.2. Neuroplastic/Neurogenic Markers of Stroke Recovery
Biomarker | Type of Imaging | Usefulness Depending on the Stroke Phase | References |
---|---|---|---|
MRI-DTI (diffusion tensor imaging) | assess white matter integrity | acute, subacute, chronic | [42,44,45,48] |
Ultra-short echo time MRI angiography | visualize macro- and microvasculature | acute, subacute | [34] |
Steady-state contrast-enhanced MRI | assess vascular reorganization | subacute, chronic | [30] |
Dynamic contrast-enhanced MRI | assess blood-brain barrier integrity | acute, subacute | [31] |
Resting-state functional MRI | functional connectivity | subacute | [57,58] |
Magnetic Resonance Spectroscopy | assess metabolic changes | subacute, chronic | [62,63] |
EEG (electroencephalography) | assess balance between excitatory and inhibitory cortical actions | acute, subacute, chronic | [65,66,67] |
TMS (transcranial magnetic stimulation) with MEP (motor evoked potential) | assess motor corticospinal excitability | subacute, chronic | [71,72] |
TMS with EEG | assess cortical reorganization | subacute | [73] |
4. Future Directions—Multimodal Panels of Neuroimaging Biomarkers and Application of Machine Learning Models
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Włodarczyk, L.; Cichon, N.; Saluk-Bijak, J.; Bijak, M.; Majos, A.; Miller, E. Neuroimaging Techniques as Potential Tools for Assessment of Angiogenesis and Neuroplasticity Processes after Stroke and Their Clinical Implications for Rehabilitation and Stroke Recovery Prognosis. J. Clin. Med. 2022, 11, 2473. https://doi.org/10.3390/jcm11092473
Włodarczyk L, Cichon N, Saluk-Bijak J, Bijak M, Majos A, Miller E. Neuroimaging Techniques as Potential Tools for Assessment of Angiogenesis and Neuroplasticity Processes after Stroke and Their Clinical Implications for Rehabilitation and Stroke Recovery Prognosis. Journal of Clinical Medicine. 2022; 11(9):2473. https://doi.org/10.3390/jcm11092473
Chicago/Turabian StyleWłodarczyk, Lidia, Natalia Cichon, Joanna Saluk-Bijak, Michal Bijak, Agata Majos, and Elzbieta Miller. 2022. "Neuroimaging Techniques as Potential Tools for Assessment of Angiogenesis and Neuroplasticity Processes after Stroke and Their Clinical Implications for Rehabilitation and Stroke Recovery Prognosis" Journal of Clinical Medicine 11, no. 9: 2473. https://doi.org/10.3390/jcm11092473
APA StyleWłodarczyk, L., Cichon, N., Saluk-Bijak, J., Bijak, M., Majos, A., & Miller, E. (2022). Neuroimaging Techniques as Potential Tools for Assessment of Angiogenesis and Neuroplasticity Processes after Stroke and Their Clinical Implications for Rehabilitation and Stroke Recovery Prognosis. Journal of Clinical Medicine, 11(9), 2473. https://doi.org/10.3390/jcm11092473