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  1. NTU Theses and Dissertations Repository
  2. 電機資訊學院
  3. 資訊工程學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/74106
完整後設資料紀錄
DC 欄位值語言
dc.contributor.advisor周承復
dc.contributor.authorPo-Wen Chenen
dc.contributor.author陳柏文zh_TW
dc.date.accessioned2021-06-17T08:20:10Z-
dc.date.available2024-08-20
dc.date.copyright2019-08-20
dc.date.issued2019
dc.date.submitted2019-08-13
dc.identifier.citation[1] Siegel, R. L., Miller, K. D. and Jemal, A. (2019), Cancer statistics, 2019. CA A Cancer J Clin, 69: 7-34.
[2] F.Xavier Bosch, Josepa Ribes, Mireia Díaz, Ramon Cléries, Primary liver cancer: Worldwide incidence and trends, Gastroenterology 127 (2004) S5-S16.
[3] Hashem B. El-Serag, Jorge A. Marrero, Lenhard Rudolph, K. Rajender Reddy, Diagnosis and Treatment of Hepatocellular Carcinoma, Gastroenterology 134 (2008) 1752-1763.
[4] Abdalla EK, Vauthey JN, Ellis LM, et al. Recurrence and outcomes following hepatic resection, radiofrequency ablation, and combined resection/ablation for colorectal liver metastases. Ann Surg. 2004;239(6):818–827.
[5] Exarchos KP, Goletsis Y, Fotiadis DI. Multiparametric decision support system for the prediction of oral cancer reoccurrence. IEEE Trans Inf Technol Biomed 2012;16:1127–34.
[6] Kim W, Kim KS, Lee JE, Noh D-Y, Kim S-W, Jung YS, et al. Development of novelbreast cancer recurrence prediction model using support vector machine. J BreastCancer 2012;15:230–8.
[7] Park C, Ahn J, Kim H, Park S. Integrative gene network construction to analyze cancer recurrence using semi-supervised learning. PLoS One 2014;9:e86309.
[8] W.Y. Kao, Y.Y. Chiou, H.H. Hung, Y.H. Chou, C.W. Su, J.C. Wu,T.I. Huo, Y.H. Huang, H.C. Lin, S.D. Lee, Risk factors for long-term prognosis in hepatocellular carcinoma after radiofrequency ablation therapy: the clinical implication of aspartate aminotransferase-platelet ratio index, Eur. J. Gastroenterol. Hepatol. 23 (2011) 528–536.
[9] V.W.T. Lam, K.K.C. Ng, K.S.H. Chok, T.T. Cheung, J. Yuen, H. Tung, W.K. Tso, S.T. Fan, R.T. Poon, Risk factors and prognostic factors of local recurrence after radiofrequency ablation of hepatocellular carcinoma, J. Am. Coll. Surg. 207(2008) 20–29.
[10] Ja-Der Liang, Xiao-Ou Ping, Yi-Ju Tseng, Guan-Tarn Huang, Feipei Lai, Pei-Ming Yang, Recurrence predictive models for patients with hepatocellular carcinoma after radiofrequency ablation using support vector machines with feature selection methods, Computer Methods and Programs in Biomedicine 117 (2014), 425-434.
[11] Ja-Der Liang, “Prediction Model Establishment and Analysis of Post-Treatment Recurrence in Hepatocellular Carcinoma Patients”, Ph.D. dissertation, National Taiwan University, Taipei, Taiwan, 2018.
[12] Xiao-Ou Ping, Yi-Ju Tseng, Yufang Chung, Ya-Lin Wu, Ching-Wei Hsu, Pei-Ming Yang, Guan-Tarn Huang, Feipei Lai, and Ja-Der Liang, Information Extraction for Tracking Liver Cancer Patients' Statuses: From Mixture of Clinical Narrative Report Types, Telemedicine and e-Health 2013 19:9, 704-710.
[13] N. Metropolis, A.W. Rosenbluth, M.N. Rosenbluth, A.H.Teller, E. Teller, Equation of state calculations by fast computing machines, J. Chem. Phys. 21 (1953) 1087.
[14] Breiman, L., Random Forests, Machine Learning (2001) 45: 5.
[15] Hsu, Chih-wei & Chang, Chih-chung & Lin, Chih-Jen. (2003). A Practical Guide to Support Vector Classification Chih-Wei Hsu, Chih-Chung Chang, and Chih-Jen Lin.
[16] Weston, Jason & Mukherjee, Sayan & Chapelle, Olivier & Pontil, Massimiliano & Poggio, Tomaso & Vapnik, Vladimir. (2000). Feature selection for SVMs. Advances in Neural Information Processing Systems. 13. 668-674.
[17] Chen YW., Lin CJ. (2006) Combining SVMs with Various Feature Selection Strategies. In: Guyon I., Nikravesh M., Gunn S., Zadeh L.A. (eds) Feature Extraction. Studies in Fuzziness and Soft Computing, vol 207. Springer, Berlin, Heidelberg.
[18] Martín Abadi et al., TensorFlow: Large-scale machine learning on heterogeneous systems, 2015. Software available from tensorflow.org.
[19] Scikit-learn: Machine Learning in Python, Pedregosa et al., JMLR 12, pp. 2825-2830, 2011.
[20] B.E. Boser, I.M. Guyon, V.N. Vapnik, A training algorithm foroptimal margin classifiers, in: Proceedings of the FifthAnnual Workshop on Computational learning theory, ACM,1992, pp. 144–152.
[21] N. V. Chawla, K. W. Bowyer, L. O.Hall, W. P. Kegelmeyer, “SMOTE: synthetic minority over-sampling technique,” Journal of artificial intelligence research, 321-357, 2002.
[22] H. Han, W. Wen-Yuan, M. Bing-Huan, “Borderline-SMOTE: a new over-sampling method in imbalanced data sets learning,” Advances in intelligent computing, 878-887, 2005.
[23] James S. Bergstra, R ́emi Bardenet, Yoshua Bengio, and B ́al ́azs K ́egl. Algorithms for hyper-parameter optimization. InAdvances in Neural Information Processing Systems 25. 2011.
[24] Schmidhuber, J. (2015). 'Deep Learning in Neural Networks: An Overview'. Neural Networks. 61: 85–117.
[25] Bengio, Yoshua (2009). 'Learning Deep Architectures for AI' (PDF). Foundations and Trends in Machine Learning. 2 (1): 1–127.
[26] “Dropout: A Simple Way to Prevent Neural Networks from Overfitting” Nitish Srivastava, Geoffrey Hinton, Alex Krizhevsky, Ilya Sutskever, Ruslan Salakhutdinov; 15(Jun):1929−1958, 2014.
dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/74106-
dc.description.abstract肝細胞癌在所有癌症的死亡率中常年位居前列,病患即使有精確診斷出肝癌腫瘤並接受有效治療,術後仍有高機率會復發。因此,透過分析病患術前的檢驗報告並建立復發預測模型,可以幫助進行術後追蹤,以期及早發現腫瘤的復發並加以治療。
本篇論文所使用的資料集是於2007~2013年,接受腫瘤射頻消融術作為第一次肝癌治療的病患。資料樣本數為334筆,其中256筆為術後一年後未復發的病患,78筆為復發的病患。這份資料集取自台大醫院資料庫,曾由一團隊進行研究分析,並發表了數篇研究成果,包含了資料庫建立、特徵提取,以及資料缺值插補等主題,雖然其中有提出復發預測模型的建立,不過僅有使用支援向量機,並未提及不同模型間效能的比較。
本篇論文聚焦於討論支援向量機、隨機森林和深度神經網路在各種實驗環境下的效能,包含了使用不同模型參數、資料標準化,以及資料升採樣的設置。
zh_TW
dc.description.abstractMortality rate of hepatocellular carcinoma (HCC) has been one of the top among all kinds of cancers. Despite receiving accurate diagnosis and effective treatments, the recurrence rate of HCC is still high. Therefore, building recursive model by analyzing preoperative reports is helpful for follow-up and observing recurrence of tumor as soon as possible.
The dataset used in this thesis are patients who received radiofrequency ablation (RFA) as first treatment. The size of the dataset is 334. 256 patients did not have recurrent HCC one year after RFA treatment and the other 78 patients had HCC. This dataset were collected from National Taiwan University Hospital (NTUH). One group in NTUH have done research on this dataset and proposed several papers, including database establishment, feature extraction, and data imputation. Although some of them have proposed an approach for building predictive model, the authors only used support vector machine and did not mention the comparison of performances between different models.
This thesis is focusing on discussion between the performances of support vector machine, random forest, and deep neural network under a variety of experimental environment, including using different parameters of model, data normalizations, and methods of data up-sampling.
en
dc.description.provenanceMade available in DSpace on 2021-06-17T08:20:10Z (GMT). No. of bitstreams: 1
ntu-108-R06922017-1.pdf: 1356133 bytes, checksum: 16ac3dccd1f045a63a6e7fa71e7da871 (MD5)
Previous issue date: 2019
en
dc.description.tableofcontents口試委員會審定書 #
誌謝 i
中文摘要 ii
ABSTRACT iii
CONTENTS v
LIST OF FIGURES vii
LIST OF TABLES ix
Chapter 1 Introduction 1
Chapter 2 Dataset 8
Chapter 3 Experiments 10
3.1 Performance Metrics 10
3.2 Support Vector Machine 11
3.2.1 Simple Test 12
3.2.2 5-Fold Cross Validation 13
3.2.3 Feature Scaling 15
3.2.4 Parameter Optimization 16
3.2.5 Data Up-sampling 17
3.3 Random Forest 19
3.3.1 Simple Test 20
3.3.2 5-Fold Cross Validation 20
3.3.3 Parameter Optimization 21
3.4 Deep Neural Network 25
3.4.1 Simple Test 26
3.4.2 5-Fold Cross Validation 28
3.4.3 Parameter Optimization 29
3.5 Comparison and Discussion 31
Chapter 4 Conclusion 38
REFERENCE 39
dc.language.isoen
dc.subject機器學習zh_TW
dc.subject肝癌zh_TW
dc.subjectMachine learningen
dc.subjectHepatocellular carcinomaen
dc.title基於機器學習演算法的射頻消融術後肝癌復發預測模型zh_TW
dc.titleRecurrence Predictive Models for Patients with Hepatocellular Carcinoma after Radiofrequency Ablation based on Machine Learning Algorithmsen
dc.typeThesis
dc.date.schoolyear107-2
dc.description.degree碩士
dc.contributor.oralexamcommittee梁嘉德,廖婉君,吳曉光,呂政修
dc.subject.keyword肝癌,機器學習,zh_TW
dc.subject.keywordHepatocellular carcinoma,Machine learning,en
dc.relation.page42
dc.identifier.doi10.6342/NTU201903532
dc.rights.note有償授權
dc.date.accepted2019-08-14
dc.contributor.author-college電機資訊學院zh_TW
dc.contributor.author-dept資訊工程學研究所zh_TW
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