2018
DOI: 10.3389/fneur.2018.00717
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A Machine Learning Approach to Perfusion Imaging With Dynamic Susceptibility Contrast MR

Abstract: Background: Dynamic susceptibility contrast (DSC) MR perfusion is a frequently-used technique for neurovascular imaging. The progress of a bolus of contrast agent through the tissue of the brain is imaged via a series of T2*-weighted MRI scans. Clinically relevant parameters such as blood flow and Tmax can be calculated by deconvolving the contrast-time curves with the bolus shape (arterial input function). In acute stroke, for instance, these parameters may help distinguish between the likely salvageable tiss… Show more

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Cited by 38 publications
(24 citation statements)
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“…There were 3 general methods used to assess the effect of sample size on model performance, which we term “performance-testing procedures” (PTPs), illustrated in Figure 3. The NxSubsampling (Figure 3A) scheme was employed in 8 studies [16–23]. Typically, a random subsample consisting of Y number of images was drawn from a large image pool and used to train an ML model.…”
Section: Resultsmentioning
confidence: 99%
“…There were 3 general methods used to assess the effect of sample size on model performance, which we term “performance-testing procedures” (PTPs), illustrated in Figure 3. The NxSubsampling (Figure 3A) scheme was employed in 8 studies [16–23]. Typically, a random subsample consisting of Y number of images was drawn from a large image pool and used to train an ML model.…”
Section: Resultsmentioning
confidence: 99%
“…Second, a custom software tool was used to measure the pre-treatment PWI and DWI lesion volumes based on Tmax and ADC thresholds, for the target mismatch assessment. ML-based methods for lesion volume estimation may be alternative tools for mismatch evaluation [29,30]. Third, only ADC and rTTP were used for the ML model development in the present study.…”
Section: Discussionmentioning
confidence: 99%
“…It only took seconds for the ML model to generate an FFR solution, which is a dramatic reduction of computation time compared with the several hours required for mathematical modeling. McKinley et al [18] reproduced the perfusion maps of the brain using supervised ML techniques. They trained various ML models with various set and patch sizes to determine the effects of these parameters.…”
Section: Applications Of Machine Learning To Physiomic Simulationsmentioning
confidence: 99%