Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image

碩士 === 臺北醫學大學 === 醫學資訊研究所 === 94 === Abstract Title of Thesis: Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image Author: Jung Lung Hsu Thesis advised by : Chien-Yeh Hsu Taipei Medical University, Graduate Institute of Medical Informatics Key...

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Main Authors: Jung Lung Hsu, 徐榮隆
Other Authors: Chien-Yeh Hsu Hung-Wen Chiu
Format: Others
Language:en_US
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/63889903441111941332
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description 碩士 === 臺北醫學大學 === 醫學資訊研究所 === 94 === Abstract Title of Thesis: Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image Author: Jung Lung Hsu Thesis advised by : Chien-Yeh Hsu Taipei Medical University, Graduate Institute of Medical Informatics Key words: Medical Image, Independent Component Analysis, ICA, Parkinson’s disease, Cognition, SPECT Background: The emergence of non-invasive recording during the current decade is one of the most important developments in biomedical sciences. As technologies continue to push the boundaries of spatial-temporal resolutions of bio-signal recordings, analytic tools need to keep pace with these advances. However, analytic tools for exploring and modeling the wealth of data collected during functional imaging experiments do not yet capture or model the rapidly shifting dynamics of brain systems during complex cognitive activity. Methods are needed to analyze this wealth of data and to separate out machine noise and physiological artifacts to examine functionally independent physiological systems. Based on a recently developed signal-processing tool, Independent Component Analysis, we can implement methods for linear separation of activity originating in functionally distinct physiological systems by using the relative temporal independence of these activities across sufficient recording time and experimental conditions. This approach has resulted in very promising results in analyzing electroencephalogram (EEG), electrocardiogram (EKG), electromyography (EMG), or functional magnetic resonance imaging (fMRI) data. Materials and Methods: Despite extensive studies in Parkinson’s disease (PD) in recent decades, the neural mechanisms of this common neurodegenerative disease remain incompletely understood. Functional brain imaging technique such as single photon emission computerized tomography has emerged as a tool to help us understand the disease pathophysiology by assessing regional cerebral blood flow (rCBF) changes. We suggest that tools based on decomposition of biomedical time series data into a mixture of temporally or spatially independent components can further provide us more information in the analysis of biomedical image signals. In present study, we collected 27 PD patients in various stage of disease and 24 health controls. Clinical staging and motor symptoms in PD were measured by UPDRS scores (United Kingdom of Parkinson’s Disease Rating Scale) and Hoehn and Yahr stage. 99mTc-HMPAO SPECT (single photon emission computerized tomography) image was arranged for both patients and controls. We applied Independent Component Analysis (ICA) to assess the difference in rCBF between PD patients and healthy controls to identify brain regions involving in PD. Finally, statistic parametric mapping (SPM) tool was use to identified statistic significant regions between PD and controls. We also applied motor part UPDRS score to correlate with these significant regions and find brain areas responsible for clinical scores. Results: After ICA decomposition, 9 independent components were classified as “disease related” subset and 42 as “non-disease related” subset. In “disease-related” subset, SPM revealed many brain areas identified by ICA included the basal ganglia, the brainstem, the cerebellum, and the cerebral cortex. Some of the regions have been largely overlooked in neuroimaging studies using region-of-interest approaches, yet they are consistent with previous pathophysiological reports. Besides, rCBF in limbic system included cingulated gyrus and limbic lobe had demonstrated not only had significant difference between PD and controls, but also had significant correlated with disease symptoms. These had not been reported in previously literatures. Conclusions: Our study had showed that use ICA as image preprocessing step followed by SPM statistic analysis could significant improve image analysis results. However, our patients were on medication and patient number was not large, which should be caution in further interpretation our results. Since ICA has the ability to solve the blind source separation problem of recovering independent source signals after they are linearly mixed by an unknown matrix, we expect that ICA might be valuable to suggest a new alternative and more comprehensive disease and brain circuit models in PD.
author2 Chien-Yeh Hsu Hung-Wen Chiu
author_facet Chien-Yeh Hsu Hung-Wen Chiu
Jung Lung Hsu
徐榮隆
author Jung Lung Hsu
徐榮隆
spellingShingle Jung Lung Hsu
徐榮隆
Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
author_sort Jung Lung Hsu
title Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
title_short Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
title_full Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
title_fullStr Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
title_full_unstemmed Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image
title_sort assessing rcbf changes in parkinson’s disease using independent component analysis on spect image
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/63889903441111941332
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spelling ndltd-TW-094TMC006740042015-10-13T10:37:49Z http://ndltd.ncl.edu.tw/handle/63889903441111941332 Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image 以獨立元件分析方式評估巴金森病之腦血流異常 Jung Lung Hsu 徐榮隆 碩士 臺北醫學大學 醫學資訊研究所 94 Abstract Title of Thesis: Assessing rCBF Changes in Parkinson’s Disease Using Independent Component Analysis on SPECT Image Author: Jung Lung Hsu Thesis advised by : Chien-Yeh Hsu Taipei Medical University, Graduate Institute of Medical Informatics Key words: Medical Image, Independent Component Analysis, ICA, Parkinson’s disease, Cognition, SPECT Background: The emergence of non-invasive recording during the current decade is one of the most important developments in biomedical sciences. As technologies continue to push the boundaries of spatial-temporal resolutions of bio-signal recordings, analytic tools need to keep pace with these advances. However, analytic tools for exploring and modeling the wealth of data collected during functional imaging experiments do not yet capture or model the rapidly shifting dynamics of brain systems during complex cognitive activity. Methods are needed to analyze this wealth of data and to separate out machine noise and physiological artifacts to examine functionally independent physiological systems. Based on a recently developed signal-processing tool, Independent Component Analysis, we can implement methods for linear separation of activity originating in functionally distinct physiological systems by using the relative temporal independence of these activities across sufficient recording time and experimental conditions. This approach has resulted in very promising results in analyzing electroencephalogram (EEG), electrocardiogram (EKG), electromyography (EMG), or functional magnetic resonance imaging (fMRI) data. Materials and Methods: Despite extensive studies in Parkinson’s disease (PD) in recent decades, the neural mechanisms of this common neurodegenerative disease remain incompletely understood. Functional brain imaging technique such as single photon emission computerized tomography has emerged as a tool to help us understand the disease pathophysiology by assessing regional cerebral blood flow (rCBF) changes. We suggest that tools based on decomposition of biomedical time series data into a mixture of temporally or spatially independent components can further provide us more information in the analysis of biomedical image signals. In present study, we collected 27 PD patients in various stage of disease and 24 health controls. Clinical staging and motor symptoms in PD were measured by UPDRS scores (United Kingdom of Parkinson’s Disease Rating Scale) and Hoehn and Yahr stage. 99mTc-HMPAO SPECT (single photon emission computerized tomography) image was arranged for both patients and controls. We applied Independent Component Analysis (ICA) to assess the difference in rCBF between PD patients and healthy controls to identify brain regions involving in PD. Finally, statistic parametric mapping (SPM) tool was use to identified statistic significant regions between PD and controls. We also applied motor part UPDRS score to correlate with these significant regions and find brain areas responsible for clinical scores. Results: After ICA decomposition, 9 independent components were classified as “disease related” subset and 42 as “non-disease related” subset. In “disease-related” subset, SPM revealed many brain areas identified by ICA included the basal ganglia, the brainstem, the cerebellum, and the cerebral cortex. Some of the regions have been largely overlooked in neuroimaging studies using region-of-interest approaches, yet they are consistent with previous pathophysiological reports. Besides, rCBF in limbic system included cingulated gyrus and limbic lobe had demonstrated not only had significant difference between PD and controls, but also had significant correlated with disease symptoms. These had not been reported in previously literatures. Conclusions: Our study had showed that use ICA as image preprocessing step followed by SPM statistic analysis could significant improve image analysis results. However, our patients were on medication and patient number was not large, which should be caution in further interpretation our results. Since ICA has the ability to solve the blind source separation problem of recovering independent source signals after they are linearly mixed by an unknown matrix, we expect that ICA might be valuable to suggest a new alternative and more comprehensive disease and brain circuit models in PD. Chien-Yeh Hsu Hung-Wen Chiu 徐建業 邱泓文 2006 學位論文 ; thesis 52 en_US