Classifying intracranial stenosis disease severity from functional MRI data using machine learning. Issue 4 (April 2020)
- Record Type:
- Journal Article
- Title:
- Classifying intracranial stenosis disease severity from functional MRI data using machine learning. Issue 4 (April 2020)
- Main Title:
- Classifying intracranial stenosis disease severity from functional MRI data using machine learning
- Authors:
- Waddle, Spencer L
Juttukonda, Meher R
Lants, Sarah K
Davis, Larry T
Chitale, Rohan
Fusco, Matthew R
Jordan, Lori C
Donahue, Manus J - Abstract:
- Translation of many non-invasive hemodynamic MRI methods to cerebrovascular disease patients has been hampered by well-known artifacts associated with delayed blood arrival times and reduced microvascular compliance. Using machine learning and support vector machine (SVM) algorithms, we investigated whether arrival time-related artifacts in these methods could be exploited as novel contrast sources to discriminate angiographically confirmed stenotic flow territories. Intracranial steno-occlusive moyamoya patients ( n = 53; age = 45 ± 14.2 years; sex = 43 F) underwent (i) catheter angiography, (ii) anatomical MRI, (iii) cerebral blood flow (CBF)-weighted arterial spin labeling, and (iv) cerebrovascular reactivity (CVR)-weighted hypercapnic blood-oxygenation-level-dependent MRI. Mean, standard deviation (std), and 99th percentile of CBF, CVR, CVRDelay, and CVRMax were calculated in major anterior and posterior flow territories perfused by vessels with vs. without stenosis (≥70%) confirmed by catheter angiography. These and demographic variables were input into SVMs to evaluate discriminatory capacity for stenotic flow territories using k-fold cross-validation and receiver-operating-characteristic-area-under-the-curve to quantify variable combination relevance. Anterior circulation CBF-std, attributable to heterogeneous endovascular signal and prolonged arterial transit times, was the best performing single variable and CVRDelay -mean and CBF-std, both reflective of delayedTranslation of many non-invasive hemodynamic MRI methods to cerebrovascular disease patients has been hampered by well-known artifacts associated with delayed blood arrival times and reduced microvascular compliance. Using machine learning and support vector machine (SVM) algorithms, we investigated whether arrival time-related artifacts in these methods could be exploited as novel contrast sources to discriminate angiographically confirmed stenotic flow territories. Intracranial steno-occlusive moyamoya patients ( n = 53; age = 45 ± 14.2 years; sex = 43 F) underwent (i) catheter angiography, (ii) anatomical MRI, (iii) cerebral blood flow (CBF)-weighted arterial spin labeling, and (iv) cerebrovascular reactivity (CVR)-weighted hypercapnic blood-oxygenation-level-dependent MRI. Mean, standard deviation (std), and 99th percentile of CBF, CVR, CVRDelay, and CVRMax were calculated in major anterior and posterior flow territories perfused by vessels with vs. without stenosis (≥70%) confirmed by catheter angiography. These and demographic variables were input into SVMs to evaluate discriminatory capacity for stenotic flow territories using k-fold cross-validation and receiver-operating-characteristic-area-under-the-curve to quantify variable combination relevance. Anterior circulation CBF-std, attributable to heterogeneous endovascular signal and prolonged arterial transit times, was the best performing single variable and CVRDelay -mean and CBF-std, both reflective of delayed vascular compliance, were a high-performing two-variable combination (specificity = 0.67; sensitivity = 0.75). Findings highlight the relevance of hemodynamic imaging and machine learning for identifying cerebrovascular impairment. … (more)
- Is Part Of:
- Journal of cerebral blood flow & metabolism. Volume 40:Issue 4(2020)
- Journal:
- Journal of cerebral blood flow & metabolism
- Issue:
- Volume 40:Issue 4(2020)
- Issue Display:
- Volume 40, Issue 4 (2020)
- Year:
- 2020
- Volume:
- 40
- Issue:
- 4
- Issue Sort Value:
- 2020-0040-0004-0000
- Page Start:
- 705
- Page End:
- 719
- Publication Date:
- 2020-04
- Subjects:
- Stroke -- cerebral blood flow -- cerebrovascular disease -- moyamoya -- cerebrovascular reactivity -- machine learning
Cerebral circulation -- Periodicals
Brain -- Metabolism -- Periodicals
Brain -- Blood-vessels -- Periodicals
Cerebrovascular disease -- Periodicals
612.824 - Journal URLs:
- http://jcb.sagepub.com/ ↗
http://136.142.56.160/ovidweb/ovidweb.cgi?T=JS&MODE=ovid&NEWS=N&PAGE=toc&D=ovid%5fovft&AN=00004647-000000000-00000 ↗
http://www.jcbfm.com ↗
http://www.nature.com/jcbfm/index.html ↗
http://www.nature.com/ ↗ - DOI:
- 10.1177/0271678X19848098 ↗
- Languages:
- English
- ISSNs:
- 0271-678X
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 4955.110000
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