Burke J, Davison D, Hide W
Pangea Systems, Oakland, California 94612, USA. jburke@pangeasystems. com
Genome Res. 1999 Nov;9(11):1135-42. doi: 10.1101/gr.9.11.1135.
Several efforts are under way to condense single-read expressed sequence tags (ESTs) and full-length transcript data on a large scale by means of clustering or assembly. One goal of these projects is the construction of gene indices where transcripts are partitioned into index classes (or clusters) such that they are put into the same index class if and only if they represent the same gene. Accurate gene indexing facilitates gene expression studies and inexpensive and early partial gene sequence discovery through the assembly of ESTs that are derived from genes that have yet to be positionally cloned or obtained directly through genomic sequencing. We describe d2_cluster, an agglomerative algorithm for rapidly and accurately partitioning transcript databases into index classes by clustering sequences according to minimal linkage or "transitive closure" rules. We then evaluate the relative efficiency of d2_cluster with respect to other clustering tools. UniGene is chosen for comparison because of its high quality and wide acceptance. It is shown that although d2_cluster and UniGene produce results that are between 83% and 90% identical, the joining rate of d2_cluster is between 8% and 20% greater than UniGene. Finally, we present the first published rigorous evaluation of under and over clustering (in other words, of type I and type II errors) of a sequence clustering algorithm, although the existence of highly identical gene paralogs means that care must be taken in the interpretation of the type II error. Upper bounds for these d2_cluster error rates are estimated at 0.4% and 0.8%, respectively. In other words, the sensitivity and selectivity of d2_cluster are estimated to be >99.6% and 99.2%.
目前正在进行多项工作,通过聚类或组装大规模浓缩单读表达序列标签(EST)和全长转录本数据。这些项目的一个目标是构建基因索引,将转录本划分为索引类别(或簇),使得当且仅当它们代表相同基因时才被放入同一索引类别。准确的基因索引有助于基因表达研究,并通过组装来自尚未定位克隆或直接通过基因组测序获得的基因的EST,实现廉价且早期的部分基因序列发现。我们描述了d2_cluster,这是一种凝聚算法,用于根据最小连锁或“传递闭包”规则对序列进行聚类,从而快速准确地将转录本数据库划分为索引类别。然后我们评估了d2_cluster相对于其他聚类工具的相对效率。选择UniGene进行比较是因为其高质量和广泛接受度。结果表明,尽管d2_cluster和UniGene产生的结果有83%至90%相同,但d2_cluster的合并率比UniGene高8%至20%。最后,我们首次发表了对序列聚类算法的聚类不足和过度聚类(即I型和II型错误)的严格评估,尽管高度相同的基因旁系同源物的存在意味着在解释II型错误时必须谨慎。这些d2_cluster错误率的上限分别估计为0.4%和0.8%。换句话说,d2_cluster的灵敏度和选择性估计分别大于99.6%和99.2%。