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Quantitative predictions of cerebral arterial labeling employing neural network ensemble orchestrate precise investigation in brain frailty of cerebrovascular disease : Quantitative predictions of cerebral arterial labeling employing neural network ensemble orchestrate precise investigation in brain frailty of cerebrovascular disease

DC Field Value Language
dc.contributor.advisor김상윤-
dc.contributor.advisor서우근(공동지도교수)-
dc.contributor.author홍석우-
dc.date.accessioned2023-06-29T02:37:07Z-
dc.date.available2023-06-29T02:37:07Z-
dc.date.issued2023-
dc.identifier.other000000174130-
dc.identifier.urihttps://hdl.handle.net/10371/194399-
dc.identifier.urihttps://dcollection.snu.ac.kr/common/orgView/000000174130ko_KR
dc.description학위논문(석사) -- 서울대학교대학원 : 자연과학대학 협동과정 뇌과학전공, 2023. 2. 김상윤-
dc.description서우근(공동지도교수).-
dc.description.abstractIdentifying the cerebral arterial branches is essential for undertaking a computational approach to cerebrovascular imaging. However, the complexity and inter-individual differences involved in this process have not been thoroughly studied. We used machine learning to examine the anatomical profile of the cerebral arterial tree. The method is less sensitive to inter-subject and cohort-wise anatomical variations and exhibits robust performance with an unprecedented in-depth vessel range.
We applied machine learning algorithms to disease-free healthy control subjects (n = 42), patients with stroke with intracranial atherosclerosis (ICAS) (n = 46), and patients with stroke mixed with the existing controls (n = 69). We trained and tested 70% and 30% of each study cohort, respectively, incorporating spatial coordinates and geometric vessel feature vectors. Cerebral arterial images were analyzed based on the segmentation-stacking method using magnetic resonance angiography. We precisely classified the cerebral arteries across the exhaustive scope of vessel components using advanced geometric characterization, redefinition of vessel unit conception, and post-processing algorithms. We verified that the neural network ensemble, with multiple joint models as the combined predictor, classified all vessel component types independent of inter-subject variations in cerebral arterial anatomy. The validity of the categorization performance of the model was tested, considering the control, ICAS, and control-blended stroke cohorts, using the area under the receiver operating characteristic (ROC) curve and precision-recall curve.
The classification accuracy rarely fell outside each images 90–99% scope, independent of cohort-dependent cerebrovascular structural variations. The classification ensemble was calibrated with high overall area rates under the ROC curve of 0.99–1.00 [0.97–1.00] in the test set across various study cohorts. Identifying an all-inclusive range of vessel components across controls, ICAS, and stroke patients, the accuracy rates of the prediction were: internal carotid arteries, 91–100%; middle cerebral arteries, 82–98%; anterior cerebral arteries, 88–100%; posterior cerebral arteries, 87–100%; and collections of superior, anterior inferior, and posterior inferior cerebellar arteries, 90–99% in the chunk-level classification. Using a voting algorithm on the queued classified vessel factors and anatomically post-processing the automatically classified results intensified quantitative prediction performance.
We employed stochastic clustering and deep neural network ensembles. Machine intelligence-assisted prediction of vessel structure allowed us to personalize quantitative predictions of various types of cerebral arterial structures, contributing to precise and efficient decisions regarding cerebrovascular disease.
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dc.description.tableofcontentsCHAPTER 1. AUTOMATED IN-DEPTH CEREBRAL ARTERIAL LABELING USING CEREBROVASCULAR VASCULATURE REFRAMING AND DEEP NEURAL NETWORKS 8
1.1. INTRODUCTION 8
1.2.1. Study design and subjects 9
1.2.2. Imaging preparation 11
1.2.2.1. Magnetic resonance machine 11
1.2.2.2. Magnetic resonance sequence 11
1.2.2.3. Region growing 11
1.2.2.4. Feature extraction 11
1.2.3. Reframing hierarchical cerebrovasculature 12
1.2.4. Classification method development 14
1.2.4.1. Two-step modeling 14
1.2.4.2. Validation 16
1.2.4.3. Statistics 16
1.2.4.4. Data availability 16
1.3. RESULTS 16
1.3.1. Subject characteristics 16
1.3.2. Vascular component characteristics 21
1.3.3. Testing the appropriateness of the reframed vascular structure 24
1.3.4. Step 1 modeling: chunk 24
1.3.5. Step 2 modeling: branch 26
1.3.6. Vascular morphological features according to the vascular risk factors 31
1.3.7. The profiles of geometric feature vectors weighted on deep neural networks 31
1.4. DISCUSSION 35
1.4.1. The role of neural networks in this study 36
1.4.2. Paradigm-shifting vascular unit reframing 36
1.4.3. Limitations and future directions 37
1.5. CONCLUSIONS 38
1.6. ACKNOWLEDGEMENTS 38
1.7. FUNDING 39
BIBLIOGRAPHY 40
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dc.format.extent50-
dc.language.isoeng-
dc.publisher서울대학교 대학원-
dc.subjectcerebrovascular disorders-
dc.subjectstroke-
dc.subjectneuropathogenesis-
dc.subjectcomputer reasoning-
dc.subjectmachine intelligence-
dc.subjectpatient-specific modelling-
dc.subjectcomputational biology-
dc.subject.ddc611.81-
dc.titleQuantitative predictions of cerebral arterial labeling employing neural network ensemble orchestrate precise investigation in brain frailty of cerebrovascular disease-
dc.title.alternativeQuantitative predictions of cerebral arterial labeling employing neural network ensemble orchestrate precise investigation in brain frailty of cerebrovascular disease-
dc.typeThesis-
dc.typeDissertation-
dc.contributor.AlternativeAuthorSukWoo Hong-
dc.contributor.department자연과학대학 협동과정 뇌과학전공-
dc.description.degree석사-
dc.date.awarded2023-02-
dc.identifier.uciI804:11032-000000174130-
dc.identifier.holdings000000000049▲000000000056▲000000174130▲-
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