Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images
In this dissertation we present a new approach to estimate the volume of ischermic stroke lesions using magnetic resonance imagery (MRI). The approach is hierarchical, regularized, and guided by statistical theory, resulting in a confidence map for the lesion itself and a confidence interval for the...
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ndltd-UMASS-oai-scholarworks.umass.edu-dissertations-35902020-12-02T14:30:01Z Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images Stein, Benjamin Reece In this dissertation we present a new approach to estimate the volume of ischermic stroke lesions using magnetic resonance imagery (MRI). The approach is hierarchical, regularized, and guided by statistical theory, resulting in a confidence map for the lesion itself and a confidence interval for the lesion volume. We test the procedure on synthetic data and real MRI, with estimates to within 6% of the volumes from physicians' hand segmentations. These results compare favorably to those from other Bayesian-based methods. Also, we present a formulation of the free induction decay signal for several MR pulse sequences, which allow for the classification of distinct tissue types in MRI. 2001-01-01T08:00:00Z text https://scholarworks.umass.edu/dissertations/AAI3027260 Doctoral Dissertations Available from Proquest ENG ScholarWorks@UMass Amherst Statistics|Biomedical research|Radiology |
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ENG |
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Statistics|Biomedical research|Radiology |
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Statistics|Biomedical research|Radiology Stein, Benjamin Reece Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
description |
In this dissertation we present a new approach to estimate the volume of ischermic stroke lesions using magnetic resonance imagery (MRI). The approach is hierarchical, regularized, and guided by statistical theory, resulting in a confidence map for the lesion itself and a confidence interval for the lesion volume. We test the procedure on synthetic data and real MRI, with estimates to within 6% of the volumes from physicians' hand segmentations. These results compare favorably to those from other Bayesian-based methods. Also, we present a formulation of the free induction decay signal for several MR pulse sequences, which allow for the classification of distinct tissue types in MRI. |
author |
Stein, Benjamin Reece |
author_facet |
Stein, Benjamin Reece |
author_sort |
Stein, Benjamin Reece |
title |
Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
title_short |
Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
title_full |
Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
title_fullStr |
Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
title_full_unstemmed |
Signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
title_sort |
signal formulation, segmentation, and lesion volume estimation in magnetic resonance images |
publisher |
ScholarWorks@UMass Amherst |
publishDate |
2001 |
url |
https://scholarworks.umass.edu/dissertations/AAI3027260 |
work_keys_str_mv |
AT steinbenjaminreece signalformulationsegmentationandlesionvolumeestimationinmagneticresonanceimages |
_version_ |
1719363831987175424 |