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2005年08月05日

【期刊论文】The impact of very short alternative splicing on protein structures and functions in the human genome☆

李衍达, Fang Wen, *, Fei Li, Huiyu Xia, Xin Lu, , Xuegong Zhang, and Yanda Li

,-0001,():

-1年11月30日

摘要

-loop structure and have an important influence on protein functions, as shown by the predicted 3D structure of human IL-4δ2. The observed VSAS events can be classified into two groups depending on whether they insert new structure domains in the proteins, and they might be of different evolutionary status.

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2005年08月05日

【期刊论文】Directed Variation in Evolution Strategies

李衍达, Qing Zhou, and Yanda Li, Senior Member, IEEE

IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, VOL. 7, NO.4, AUGUST 2003,-0001,():

-1年11月30日

摘要

Biological evolution gives rise to self-organizing phenomena. Inspired by this theory, directed variation is added to the (μ,λ) evolution strategies (ES) algorithm and it is called directed variation ES (DVES). In DVES, some neighboring individuals in the population mutate correlatively according to the distribution of the whole population. Experimental results showed that, with the same number of function evaluations, directed variation ES reached better optimization results for different generally used strategies under the ES framework. Experimental analysis showed that the application of directed variation could increase the expected fitness improvement and the probability of fitness improvement. From a biological perspective, directed variation can be regarded as a result of self-organizing evolution.

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2005年08月05日

【期刊论文】Classifying G-protein coupled receptors with bagging classification tree

李衍达, Ying Huang*, Jun Cai, Liang Ji, Yanda Li

Computational Biology and Chemistry 28(2004)275-280,-0001,():

-1年11月30日

摘要

G-protein coupled receptors (GPCRs) play a key role in different biological processes, such as regulation of growth, death and metabolism of cells. They are major therapeutic targets of numerous prescribed drugs. However, the ligand specificity of many receptors is unknown and there is little structural information available. Bioinformatics may offer one approach to bridge the gap between sequence data and functional knowledge of a receptor. In this paper, we use a bagging classification tree algorithm to predict the type of the receptor based on its amino acid composition. The prediction is performed for GPCR at the sub-family and sub-sub-family level. In a cross-validation test, we achieved an overall predictive accuracy of 91.1% for GPCR sub-family classification, and 82.4% for sub-sub-family classification. These results demonstrate the applicability of this relative simple method and its potential for improving prediction accuracy.

G-protein coupled receptors, Amino acid composition, Bagging classification tree, Proteomics

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2005年08月05日

【期刊论文】AsMamDB: an alternative splice database of mammals

李衍达, Hongkai Ji*, Qing Zhou, Fang Wen, Huiyu Xia, Xin Lu, and Yanda Li

260-263 Nucleic Acids Research, 2001, Vol. 29, No.1,-0001,():

-1年11月30日

摘要

The objective of database AsMamDB is to facilitate the systematic study of alternatively spliced genes of mammals. Version 1.0 of AsMamDB contains 1563 alternatively spliced genes of human, mouse and rat, each associated with a cluster of nucleotide sequences. The main information provided by AsMamDB includes gene alternative splicing patterns, gene structures, locations in chromosomes, products of genes and tissues where they express. Alternative splicing patterns are represented by multiple alignments of various gene transcripts and by graphs of their topological structures. Gene structures are illustrated by exon, intron and various regulatory elements distributions. There are 4204 DNAs, 3977 mRNAs, 8989 CDSs and 126 931 ESTs in the current database. More than 130000 GenBank entries are covered and 4443 MEDLINE records are linked. DNA, mRNA, exon, intron and relevant regulatory element sequences are provided in FASTA format. More information can be obtained by using the web-based multiple alignment tool Asalign and various category lists. AsMamDB can be accessed at http://166.111.30.65/ASMAMDB. html.

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2005年08月05日

【期刊论文】Association study of an SNP combination pattern in the dopaminergic pathway in paranoid schizophrenia: a novel strategy for complex disorders

李衍达, Q Xu, , Y-B Jia, B-Y Zhang, K Zou, Y-B Tao, Y-P Wang, B-Q Qiang, G-Y Wu, Y Shen, H-K Ji, Y Huang, X-Q Sun, L Ji, Y-D Li, Y-B Yuan, L Shu, X Yu, Y-C Shen, Y-Q Yu, G-Z Ju, Chinese Schizophrenia Consortium*

,-0001,():

-1年11月30日

摘要

Schizophrenia is a common mental disorder with a complex pattern of inheritance. Despite a large number of studies in the past decades, its molecular etiology remains unknown. In this study, we proposed a 'system-thinking' strategy in seeking the combined effect of susceptibility genes for a complex disorder by using paranoid schizophrenia as an example. We genotyped 85 reported single-nucleotide polymorphisms (SNPs) present in 23 genes for the dopamine (DA) metabolism pathway among 83 paranoid schizophrenics and 108 normal controls with detailed clinical and genetic information. We developed two novel multilocus approaches-the potential effective SNP combination pattern and potential effective dynamic effects analysis, by which three susceptibility genotype combinations were found to be associated with schizophrenia. These results were also validated in a family-based cohort consisting of 95 family trios of paranoid schizophrenia. The present findings suggest that the COMT and ALDH3 combination may be the most common type involved in predisposing to schizophrenia. Since the combination blocks the whole pathways for the breakdown of DA and noradrenaline, it is very likely to play a central role in developing paranoid schizophrenia.

schizophrenia, complex disorder, susceptibility genotype combinations, single nucleotide polymophism, dopamine metabolic pathway, clinial subgroup, effective SNP combination pattern, potential effective dynamic effects

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    清华大学,北京

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