Likelihood inference for permuted data with application to gene regulation
成果类型:
Article
署名作者:
Lawrence, C; Reilly, A
署名单位:
State University of New York (SUNY) System; University at Albany, SUNY
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.2307/2291384
发表日期:
1996
页码:
76-85
关键词:
unaligned dna fragments
protein-binding sites
amp receptor protein
multiple alignment
maximum-likelihood
em algorithm
sequence motifs
identification
RECOGNITION
摘要:
Given that all the cells of an individual have the same genetic information stored in their DNA, how can cells be as different as those of the retina and heart? Nature solves this problem through gene regulation, which often involves the binding of regulatory proteins to regulatory sites. These sites are short subsequences of 10 to 20 DNA base pairs whose pattern may be multinomially modeled. These sites usually occur ''upstream'' of the genes they regulate in a segment of a few hundred DNA base pairs called the promoter. But the positions of regulatory sites within promoters vary and are unobservable. This uncertainty in site position misaligns the data and renders the indices of the observations uncertain. Data with uncertain indices arise commonly in experimental biology whenever uncontrolled variability alters unobservable auxiliary identifying information. Current technology breaks the analysis of such data into two steps: alignment and analyses applied to the aligned data. This article proposes a methodology that combines these two steps and thus produces inferences that directly incorporate random alignment errors. The introduction of an index permutation indicator variable, which is treated as missing data, permits the formulation of these problems as novel finite mixtures. Using a missing information approach, we separate the likelihood into components representing variable uncertainty and index uncertainty. An EM algorithm to obtain the maximum likelihood estimates of the parameters for both of these components is also presented. inferences specific to the index permutations stemming from index uncertainty are examined. An application to regulatory sites for a bacterial regulatory protein-cyclic adenosine monophosphate receptor protein (CRP)-is presented.