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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

維度縮減應用於蛋白質質譜儀資料 / Dimension Reduction on Protein Mass Spectrometry Data

黃靜文, Huang, Ching-Wen Unknown Date (has links)
本文應用攝護腺癌症蛋白質資料庫,是經由表面強化雷射解吸電離飛行質譜技術的血清蛋白質強度資料,藉此資料判斷受測者是否罹患癌症。此資料庫之受測者包含正常、良腫、癌初和癌末四種類別,其中包括兩筆資料,一筆為包含約48000個區間資料(變數)之原始資料,另一筆為經由人工變數篩選後,僅剩餘779區間資料(變數)之人工處理資料,此兩筆皆為高維度資料,皆約有650個觀察值。高維度資料因變數過多,除了分析不易外,亦造成運算時間較長。故本研究目的即探討在有效的維度縮減方式下,找出最小化分錯率的方法。 本研究先比較分類方法-支持向量機、類神經網路和分類迴歸樹之優劣,再將較優的分類方法:支持向量機和類神經網路,應用於維度縮減資料之分類。本研究採用之維度縮減方法,包含離散小波分析、主成份分析和主成份分析網路。根據分析結果,離散小波分析和主成份分析表現較佳,而主成份分析網路差強人意。 本研究除探討以上維度縮減方法對此病例資料庫分類之成效外,亦結合線性維度縮減-主成份分析,非線性維度縮減-主成份分析網路,希望能藉重疊法再改善僅做單一維度縮減方法之病例篩檢分錯率,根據分析結果,重疊法對原始資料改善效果不明顯,但對人工處理資料卻有明顯的改善效果。 / In this paper, we study the serum protein data set of prostate cancer, which acquired by Surface-Enhanced Laser Desorption/Ionization Time-of-Flight Mass Spectrometry (SELDI-TOF-MS) technique. The data set, with four populations of prostate cancer patients, includes both raw data and preprocessed data. There are around 48000 variables in raw data and 779 variables in preprocessed data. The sample size of each data is around 650. Because of the high dimensionality, this data set provokes higher level of difficulty and computation time. Therefore, the goal of this study is to search efficient dimension reduction methods. We first compare three classification methods: support vector machine, artificial neural network, and classification and regression tree. And, we use discrete wavelet transform, principal component analysis and principal component analysis networks to reduce the data dimension. Then, we discuss the dimension reduction methods and propose overlap method that combines the linear dimension reduction method-principal component analysis, and the nonlinear dimension reduction method-principal component analysis networks to improve the classification result. We find that the improvement of overlap method is significant in the preprocessed data, but not significant in the raw data.
2

住院病人病種費用及其影響因素分析 / Diagnosis related groups payment and its impact analysis for inpatients

姚驥如 January 2010 (has links)
University of Macau / Institute of Chinese Medical Sciences
3

重疊法應用於蛋白質質譜儀資料 / Overlap Technique on Protein Mass Spectrometry Data

徐竣建, Hsu, Chun-Chien Unknown Date (has links)
癌症至今已連續蟬聯並高居國人十大死因之首,由於癌症初期病患接受適時治療的存活率較高,因此若能「早期發現,早期診斷,早期治療」則可降低死亡率。本文所引用的資料庫,是經由「表面強化雷射解吸電離飛行質譜技術」(SELDI-TOF-MS)所擷取建置的蛋白質質譜儀資料,包括兩筆高維度資料:一筆為攝護腺癌症,另一筆則為頭頸癌症。然而蛋白質質譜儀資料常因維度變數繁雜眾多,對於資料的存取容量及運算時間而言,往往造成相當沉重的負擔與不便;有鑑於此,本文之目的即在探討將高維度資料經由維度縮減後,找出分錯率最小化之分析方法,希冀提高癌症病例資料分類的準確性。 本研究分為實驗組及對照組兩部分,實驗組是以主成份分析(Principal Component Analysis,PCA)進行維度縮減,再利用支持向量機(Support Vector Machine,SVM)予以分類,最後藉由重疊法(Overlap)以期改善分類效果;對照組則是以支持向量機直接進行分類。分析結果顯示,重疊法對於攝護腺癌症具有顯著的改善效果,但對於頭頸癌症的改善效果卻不明顯。此外,本研究也探討關於蛋白質質譜儀資料之質量範圍,藉以確認專家學者所建議的質量範圍是否與分析結果相互一致。在攝護腺癌症中的原始資料,專家學者所建議的質量範圍以外,似乎仍隱藏著重要的相關資訊;在頭頸癌症中的原始資料,專家學者所建議的質量範圍以外,對於研究分析而言則並沒有實質上的幫助。 / Cancer has been the number one leading cause of death in Taiwan for the past 24 years. Early detection of this disease would significantly reduce the mortality rate. The database adopted in this study is from the Protein Mass Spectrometry Data Sets acquired and established by “Surface-Enhanced Laser Desorption/Ionization Time-of-Flight Mass Spectrometry” (SELDI-TOF-MS) technique, including the Prostate Cancer and Head/Neck Cancer Data Sets. However, because of its high dimensionality, dealing the analysis of the raw data is not easy. Therefore, the purpose of this thesis is to search a feasible method, putting the dimension reduction and minimizing classification errors in the same time. The data sets are separated into the experimental and controlled groups. The first step of the experimental group is to use dimension reduction by Principal Component Analysis (PCA), following by Support Vector Machine (SVM) for classification, and finally Overlap Method is used to reduce classification errors. For comparison, the controlled group uses SVM for classification. The empirical results indicate that the improvement of Overlap Method is significant in the Prostate Cancer case, but not in that of the Head/Neck case. We also study data range suggested according to the expert opinions. We find that there is information hidden outside the data range suggested by the experts in the Prostate Cancer case, but not in the Head/Neck case.

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