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請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/84118
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dc.contributor.advisor陳永耀(Yung-Yaw Chen)
dc.contributor.authorMeng-Ciao Wuen
dc.contributor.author吳孟橋zh_TW
dc.date.accessioned2023-03-19T22:04:59Z-
dc.date.copyright2022-07-19
dc.date.issued2022
dc.date.submitted2022-07-14
dc.identifier.citationT. Vos and G. Collaborators, 'Golbal, regional, and national incidence, prevalence, and years lived with disability for 301 acute and chronic disease and injuries in 188 countries: a systematic analysis for the Global Burden of Disease Study 2013,' Lancet, vol. 386, no. 9995, pp. 743-800, 2015. L. J. Launer, K. Berger, M. M. Breteler and J. F. Dartigues, 'Prevalence of Parkinson's disease in Europe: A collaborative study of population-based cohorts. Neurologic Diseases in the Ekderly Research Group,' Neurology, vol. 54, no. 11, pp. S21-S23, 2000. J. Jankovic, 'Parkinson's disease: Clinical features and diagnosis,' J.Neurol., Neurosurg. Psychiatry, vol. 79, no. 4, pp. 368-376, 2008. G. Ross, J. Cummings and D. Benson, 'Speech and language alterations in dementia syndromes: Characteristics and treatment,' Aphasiology, no. 4, pp. 339-352, 1990. B. E. Sakar, G. Serbes and C. O. Sakar, 'Analyzing the effectiveness of vocal features in early telediagnosis of Parkinson's disease,' PLoS ONE, vol. 12, no. 8, 2017. C. Thomas, V. Keselj, N. Cercone, K. Rockwood and E. Asp, 'Automatic detection and rating of dementia of Alzheimer type through lexical analysis of spontaneous speech,' IEEE International Conference on Mechatronics and Automation, pp. 1569-1574, 2005. M. A. Little, P. E. McSharry, S. J. Roberts, D. A. Costello and I. M. Moroz, 'Exploiting Nonlinear Recurrence and Fractal Sxaling Properties for Voice Disorder Detection,' BioMedical Engineering OnLine 2007, vol. 6, no. 23, 2007. J. T. Becher, F. Boller, O. L. Lopez, J. Saxton and K. L. McGonigle, 'The natural history of Alzheimer's disease. Description of study cohort and accuracy of diagnosis,' Archives of Neurology, vol. 51, no. 6, pp. 585-594, 1994. N. Thai-Nghe, Z. Gantner and L. Schmidt-Thieme, 'Cost-sensitive learning methods for imbalanced data,' International Joint Conference on Neural Networks, pp. 1-8, 2010. D. J. Gelb, E. Oliver and S. Gilman, 'Diagnostic Criteria for Parkinson Disease,' Arch Neurol, vol. 56, no. 1, pp. 33-39, 1999. A. Suppa, F. Asci, G. Saggio, P. Di Leo, Z. Zarezadeh, G. Ferrazzano, G. Ruoppolo, A. Berardelli and G. Costantini, 'Voice Analysis with Machine Learning: One Step Closer to an Objective Diagnosis of Essential Tremor,' Mov. Disord, no. 36, pp. 1401-1410, 2021. H. Gunduz, 'Deep learning-based Parkinson's disease classification using vocal feature sets,' IEEE Access, vol. 7, pp. 115540-115551, 2019. S. de la Fuente Garcia, C. W. Ritchie and S. Luz, 'Artificial lntelligence, Speech, and Language Processing Approaches to Monitoring Alzheimer's Disease: A Systematic Review,' J Alzheimers Dis, vol. 4, no. 78, pp. 1547-1574, 2020. F. Haider, S. de la Fuente and S. Luz, 'An Assessment of Paralinguistic Acoustic Features for Detection of Alzheimer's Dementia in Spontaneous Speech,' IEEE Journal of Selected Topics in Signal Processing, vol. 14, no. 2, pp. 272-281, Feb 2020. P. Pesini, V. Pérez-Grijalba, I. Monleón and M. Boada, 'Reliable Measurements of the β-Amyloid Pool in Blood Could Help in the Early Diagnosis of AD,' Int J Alzheimers Dis, 16 Aug 2012. S.-Y. Yang, M.-J. Chiu and H.-E. Horng, 'Detection of Plasma Biomarkers Using Immunomagnetic Reduction: A Promising Method for the Early Diagnosis of Alzheimer's Disease,' Neurol Ther, vol. 6, pp. 37-56, Jul 2017. F. Eyben, M. Wollmer and B. Schuller, 'Opensmile: the munisch versatile and fast open-source audio feature extractor,' in Proceedings of the international conference on Multimedia, Italy, 2020. F. Haider, M. Koutsombogera, O. Conlan, C. Vogel, N. Campbell and S. Luz, 'An Active Data Representation of Videos for Automatic Scoring of Oral Presentation Delivery Skills and Feedback Generation,' Front Comput Sci, 2020. R. Sebastian, 'MLxtend: Providing machine learning and data science utilities and extensions to Python's scientific computing stack,' The Journal of Open Source Software, vol. 3, no. 24, 2018. B.-B. Joesph, W. J. Alex, R. Sebastian and K. A. Leslie, 'Machine Learning to Identify Flexibility Signatures of Class A GPCR Inhibition,' Biomolecules, vol. 10, no. 3, p. 454, 2020.
dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/84118-
dc.description.abstract帕金森氏症和阿茲海默症屬於神經退化性疾病,目前在臨床診斷中沒有良好的預防措施以及不能完全的治療,一般情況中,醫生會依據患者自身的病症開出相對應的藥單,以延緩疾病的惡化,因此早期發現病情變得非常重要。然而,患者經常不知道或不願意承認自己得病,以至於延誤就醫導致病情日漸嚴重,這篇研究的目的是設計一個病情早期偵測的機器學習模型。 本研究提出以語音特徵進行病情早期偵測的機器學習系統。訓練資料集的收案地點為臺灣大學神經內科林靜嫻醫生和邱銘章醫生的門診。在帕金森氏症的研究中,資料有215名帕金森氏症患者和289名正常人,錄音內容來自於短篇文章的朗讀。在阿茲海默症的研究中,資料有68名阿茲海默症患者和23名正常人,錄音內容除了短篇文章還加入餅乾小偷的敘述錄音。聲學和自然語言處理的特徵提取中,不同於過往文獻選用自動化提取特徵模型,而是考慮病人在初期會出現的語音症狀,例如語調變化減少和音量會有漸小的情況,來進行特徵提取並在AI模型上進行訓練。 透過特徵選取後的特徵集對模型做訓練,並利用解釋AI的方式分析特徵在模型預測中影響的情況。實驗結果中包括五種的檢測評分來佐證模型預測的成效,還有利用特徵選取與解釋AI得來的特徵重要性排序,進一步比較在帕金森氏症和阿茲海默症的模型預測中特徵影響的不同。帕金森氏症檢測達到80%的招回率(recall rate),阿茲海默症檢測則達到98%的招回率。zh_TW
dc.description.abstractParkinson’s disease (PD) and Alzheimer’s disease (AD) are progressive neurodegenerative disorder that has no known cure and no known prevention. Doctors prescribe drugs according to the patient’s symptoms to delay the disease's progression in clinical diagnosis. However, patients often don’t know or think they are sick. For this reason, early detection is crucial to slow down the progress. PD data provide 215 patients and 289 controls with the recording of word fluency tasks. AD data provide 68 patients and 23 controls with the recording of word fluency and open description tasks. Feature extraction by applying acoustic and text-based features is essential for disease detection. In the data preprocessing, experimental paradigm, normalization, impute missing value, and feature correlation is also provided. The common classifier, such as support vector machine (SVM), Decision tree, and random forest (RF), is used as the machine learning algorithm using the sequential feature selector method. The models are trained by a subset of input features from the dataset and analyzed by the explainable AI (XAI) method. The experimental results show the five evaluation scores and comparison of the feature importance sequence obtained in PD and AD research. The binary classification performance achieves over 80% recall in PD detection and over 98% in AD detection.en
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Previous issue date: 2022
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dc.description.tableofcontents口試委員會審定書 II 誌謝 III 中文摘要 IV ABSTRACT V CONTENTS VI LIST OF FIGURES VIII LIST OF TABLES XI CHAPTER 1 INTRODUCTION 1 1.1 BACKGROUND 4 1.2 PROBLEM STATEMENTS 6 1.2.1 Recording samples 6 1.2.2 Speech analysis 6 1.3 AIMS OF THE THESIS 7 1.4 THESIS STRUCTURE 9 CHAPTER 2 LITERATURE REVIEWS 10 2.1 VOICE ANALYSIS FOR DIAGNOSIS OF ESSENTIAL TREMOR 10 2.2 DEEP LEARNING-BASED FOR PD CLASSIFICATION 11 2.3 SPEECH PROCESSING APPROACHES TO MONITORING AD 14 2.4 CLINICAL DETECTION METHODS 17 2.5 SUMMARY OF LITERATURE REVIEWS 19 2.5.1 Speech recording 19 2.5.2 Early speech symptoms of PD 19 2.5.3 Early speech symptoms of AD 20 2.5.4 Combination of acoustic and NLP features. 20 CHAPTER 3 METHODOLOGY 21 3.1 DATA SET 21 3.2 FEATURE GENERATION 23 3.3 MACHINE LEARNING ARCHITECTURE 26 3.3.1 Data preprocessing 26 3.3.2 Feature selection 28 3.3.3 ML classifiers 30 CHAPTER 4 RESULTS AND DISCUSSION 31 4.1 EXPERIMENTAL RESULTS 31 4.1.1 Feature correlation. 36 4.1.2 Feature selection 38 4.1.3 Evaluation metrics 45 4.2 EXPLAINABLE AI (XAI) 61 4.2.1 Sequence similarity 74 CHAPTER 5 CONCLUSIONS AND FUTURE WORK 77 CONSIDER EARLY SYMPTOMS OF NEURODEGENERATIVE DISEASE 77 COMPARE NEURODEGENERATIVE DISEASE RESULTS FROM SPEECH 77 FUTURE WORK 78 BIBLIOGRAPHY 79
dc.language.isoen
dc.subject解釋AIzh_TW
dc.subject帕金森氏症zh_TW
dc.subject阿茲海默症zh_TW
dc.subject早期偵測zh_TW
dc.subject語音症狀zh_TW
dc.subject聲學特徵zh_TW
dc.subject文本特徵zh_TW
dc.subject機器學習zh_TW
dc.subject特徵選取zh_TW
dc.subjectParkinson's diseaseen
dc.subjectfeature selectionen
dc.subjecttext-based featureen
dc.subjectacoustic featureen
dc.subjectspeech impairmenten
dc.subjectearly detectionen
dc.subjectAlzheimer's diseaseen
dc.subjectXAIen
dc.title以機器學習方法利用語音資料對帕金森氏症和阿茲海默症患者進行病情偵測zh_TW
dc.titleDisease Detection of Patients with Parkinson's Disease and Alzheimer's Disease by Using Machine Learning Models from Speech Dataen
dc.typeThesis
dc.date.schoolyear110-2
dc.description.degree碩士
dc.contributor.coadvisor張智星(Jyh-Shing Roger Jang)
dc.contributor.oralexamcommittee林靜嫻(Chin-Hsien Lin)
dc.subject.keyword帕金森氏症,阿茲海默症,早期偵測,語音症狀,聲學特徵,文本特徵,機器學習,特徵選取,解釋AI,zh_TW
dc.subject.keywordParkinson's disease,Alzheimer's disease,early detection,speech impairment,acoustic feature,text-based feature,feature selection,XAI,en
dc.relation.page81
dc.identifier.doi10.6342/NTU202201176
dc.rights.note同意授權(限校園內公開)
dc.date.accepted2022-07-15
dc.contributor.author-college電機資訊學院zh_TW
dc.contributor.author-dept電機工程學研究所zh_TW
dc.date.embargo-lift2022-07-19-
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