完整後設資料紀錄
DC 欄位語言
dc.contributor.author劉康平en_US
dc.contributor.authorLiu, Kang-Pingen_US
dc.contributor.author楊進木en_US
dc.contributor.authorYang, Jinn-Moonen_US
dc.date.accessioned2014-12-12T02:49:31Z-
dc.date.available2014-12-12T02:49:31Z-
dc.date.issued2008en_US
dc.identifier.urihttp://140.113.39.130/cdrfb3/record/nctu/#GT009251506en_US
dc.identifier.urihttp://hdl.handle.net/11536/77487-
dc.description.abstract研究蛋白質-蛋白質之間的交互作用在分子生物的領域中扮演非常重要的任務,一個可行的策略是先辨認及研究蛋白質-蛋白質交互作用的區域,再根據交互作用區域的特性進行分析,並且了解蛋白質的功能。在這篇論文研究中,我們發展了一個適用於預測蛋白質-蛋白質交互作用區域的函式,結合了原子的疏水性以及蛋白質的二級結構的特性,利用高斯演算法進行最佳化後,在測試評量中有不錯的表現。我們使用了104個蛋白質結構進行最佳化函式的訓練,在訓練的資料中我們成功的預測超過半數以上的蛋白質-蛋白質交互作用區域(65.4%)。此外,我們將訓練之後的最佳化函式測試在50個沒有出現在訓練資料內的蛋白質結構中,我們的函式可以成功的預測其中的46%蛋白質-蛋白質交互作用區域,我們相信在函式中使用的參數對於分析蛋白質-蛋白質之間的交互作用是有幫助的,並且可以應用到不同的方法上來預測蛋白質-蛋白質交互作用區域。此外,我們修改著名的蛋白質-配體嵌合工具”GEMDOCK”成為蛋白質-蛋白質嵌合工具,並且使用內建的蛋白質-配體計分程式來計算蛋白質-蛋白質嵌合的結果。我們測試了50個蛋白質結構,並且發現修改後的”GEMDOCK”在搜尋蛋白質-蛋白質嵌合之空間結構仍然保有相當的水準,可是在計算最佳嵌合結構時,原始的蛋白質-配體計分程式對於辨認蛋白質-蛋白質交互作用的情況仍然不足。未來,我們將會整合蛋白質-蛋白質交互作用區塊之預測到”GEMDOCK”中,並且改進蛋白質-配體計分程式成為蛋白質-蛋白質計分程式,以及發展可以改變蛋白質構形的策略,用以解決”unbound”蛋白質-蛋白質嵌合問題。zh_TW
dc.description.abstractProtein-protein interactions play a pivotal role in modern molecular biology. Therefore, identifying the interface between two interacting proteins is a matter of great scientific and practical interest. In this study, we proposed a Gaussian Evolutionary Method (GEM) to optimal atomic and 2nd structure parameters for predicting protein-protein interaction sites. The training set of GEM consist 104 unbound proteins from PDB, and we are able to predict the location of the interface on 65.4%. In addition, we apply trained GEM to testing set of 50 unbound proteins. Our method can predict 98% proteins among whole testing set and have 46% successfully prediction and 42.3% average specificity. A prediction is assumed successful if over half of the predicted continuous interface patch is indeed interface (specificity). The parameters of GEM may be useful for analysis of protein-protein interfaces, and can apply to different methods for interfaces prediction. Furthermore, we have modified famous protein-ligand docking tool “GEMDOCK” for protein-protein docking using original scoring functions. We tested 50 bound protein-protein docking and found that search strategies of GEMDOCK works well in rigid-body protein-protein docking, however, the scoring functions of protein-ligand docking seems poor to identify correct protein-protein binding conformations. In the future, we will combine protein-protein interaction sites prediction into GEMDOCK and improve scoring function of GEMDOCK for protein-protein docking and develop soft-body protein-protein docking strategies for solving unbound-unbound protein docking problems.en_US
dc.language.isoen_USen_US
dc.subject蛋白質-蛋白質交互作用zh_TW
dc.subject交互作用區域zh_TW
dc.subject高斯演算法zh_TW
dc.subjectGEMDOCKzh_TW
dc.subject最佳化zh_TW
dc.subjectProtein-protein interactionsen_US
dc.subjectinterfaceen_US
dc.subjectGaussian Evolutionary Methoden_US
dc.subjectGEMDOCKen_US
dc.subjectoptimalen_US
dc.title以高斯演化方式預測蛋白質-蛋白質嵌合位置zh_TW
dc.titleA Gaussian evolutionary method for predicting protein-protein interaction sitesen_US
dc.typeThesisen_US
dc.contributor.department生物資訊及系統生物研究所zh_TW
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