Department of Plant Pathology, North Dakota State University, Fargo, ND 58108, USA.
Mol Plant Pathol. 2012 Jun;13(5):494-507. doi: 10.1111/j.1364-3703.2011.00760.x. Epub 2011 Nov 23.
The goal of this study was to develop a tool specifically designed to identify iterative polyketide synthases (iPKSs) from predicted fungal proteomes. A fungi-based PKS prediction model, specifically for fungal iPKSs, was developed using profile hidden Markov models (pHMMs) based on two essential iPKS domains, the β-ketoacyl synthase (KS) domain and acyltransferase (AT) domain, derived from fungal iPKSs. This fungi-based PKS prediction model was initially tested on the well-annotated proteome of Fusarium graminearum, identifying 15 iPKSs that matched previous predictions and gene disruption studies. These fungi-based pHMMs were subsequently applied to the predicted fungal proteomes of Alternaria brassicicola, Fusarium oxysporum f.sp. lycopersici, Verticillium albo-atrum and Verticillium dahliae. The iPKSs predicted were compared against those predicted by the currently available mixed-kingdom PKS models that include both bacterial and fungal sequences. These mixed-kingdom models have been proven previously by others to be better in predicting true iPKSs from non-iPKSs compared with other available models (e.g. Pfam and TIGRFAM). The fungi-based model was found to perform significantly better on fungal proteomes than the mixed-kingdom PKS model in accuracy, sensitivity, specificity and precision. In addition, the model was capable of predicting the reducing nature of fungal iPKSs by comparison of the bit scores obtained from two separate reducing and nonreducing pHMMs for each domain, which was confirmed by phylogenetic analysis of the KS domain. Biological confirmation of the predictions was obtained by polymerase chain reaction (PCR) amplification of the KS and AT domains of predicted iPKSs from V. dahliae using domain-specific primers and genomic DNA, followed by sequencing of the PCR products. It is expected that the fungi-based PKS model will prove to be a useful tool for the identification and annotation of fungal PKSs from predicted proteomes.
本研究的目的是开发一种专门用于从预测真菌蛋白质组中识别迭代聚酮合酶(iPKS)的工具。我们使用基于两个必需的 iPKS 结构域(β-酮酰基合酶(KS)结构域和酰基转移酶(AT)结构域)的基于真菌的 PKS 预测模型,该模型基于真菌 iPKS 开发了基于轮廓隐马尔可夫模型(pHMM)。该真菌 PKS 预测模型最初在禾谷镰刀菌( Fusarium graminearum )的经过良好注释的蛋白质组上进行了测试,鉴定出了 15 个与先前预测和基因敲除研究相匹配的 iPKS。随后,我们将这些基于真菌的 pHMM 应用于拟南芥( Alternaria brassicicola )、尖孢镰刀菌番茄专化型( Fusarium oxysporum f.sp. lycopersici )、轮枝镰孢菌( Verticillium albo-atrum )和大丽轮枝菌( Verticillium dahliae )的预测真菌蛋白质组。预测的 iPKS 与目前可用的包含细菌和真菌序列的混合域 PKS 模型预测的 iPKS 进行了比较。先前其他人已经证明,与其他可用模型(例如 Pfam 和 TIGRFAM)相比,这些混合域模型在从非 iPKS 中预测真正的 iPKS 方面表现更好。与混合域 PKS 模型相比,该真菌模型在准确性、灵敏度、特异性和精确性方面在真菌蛋白质组上的表现要好得多。此外,通过比较每个结构域的两个单独的还原和非还原 pHMM 获得的位得分,该模型能够预测真菌 iPKS 的还原性质,KS 结构域的系统发育分析证实了这一点。通过使用针对预测的 iPKS 的 KS 和 AT 结构域的特异性引物和基因组 DNA 从 V. dahliae 对预测的 iPKS 的 KS 和 AT 结构域进行聚合酶链反应(PCR)扩增,然后对 PCR 产物进行测序,获得了生物预测的确认。预计基于真菌的 PKS 模型将成为从预测蛋白质组中鉴定和注释真菌 PKS 的有用工具。