Hou Bo Kyeng, Ellis Lynda B M, Wackett Lawrence P
Department of Laboratory Medicine and Pathology, University of Minnesota, St Paul, MN 55108, USA.
J Ind Microbiol Biotechnol. 2004 Jul;31(6):261-72. doi: 10.1007/s10295-004-0144-7. Epub 2004 Jul 10.
Prediction of microbial metabolism is important for annotating genome sequences and for understanding the fate of chemicals in the environment. A metabolic pathway prediction system (PPS) has been developed that is freely available on the world wide web (http://umbbd.ahc.umn.edu/predict/), recognizes the organic functional groups found in a compound, and predicts transformations based on metabolic rules. These rules are designed largely by examining reactions catalogued in the University of Minnesota Biocatalysis/Biodegradation Database (UM-BBD) and are generalized based on metabolic logic. The predictive accuracy of the PPS was tested: (1) using a 113-member set of compounds found in the database, (2) against a set of compounds whose metabolism was predicted by human experts, and (3) for consistency with experimental microbial growth studies. First, the system correctly predicted known metabolism for 111 of the 113 compounds containing C and H, O, N, S, P and/or halides that initiate existing pathways in the database, and also correctly predicted 410 of the 569 known pathway branches for these compounds. Second, computer predictions were compared to predictions by human experts for biodegradation of six compounds whose metabolism was not described in the literature. Third, the system predicted reactions liberating ammonia from three organonitrogen compounds, consistent with laboratory experiments showing that each compound served as the sole nitrogen source supporting microbial growth. The rule-based nature of the PPS makes it transparent, expandable, and adaptable.
预测微生物代谢对于注释基因组序列以及理解环境中化学物质的归宿至关重要。现已开发出一种代谢途径预测系统(PPS),该系统可在万维网上免费获取(http://umbbd.ahc.umn.edu/predict/),它能够识别化合物中存在的有机官能团,并依据代谢规则预测转化反应。这些规则主要是通过研究明尼苏达大学生物催化/生物降解数据库(UM - BBD)中编录的反应来设计的,并基于代谢逻辑进行归纳总结。对PPS的预测准确性进行了测试:(1)使用数据库中一组113种化合物进行测试;(2)与一组由人类专家预测其代谢情况的化合物进行对比测试;(3)测试其与微生物生长实验研究结果的一致性。首先,对于数据库中113种含有碳、氢、氧、氮、硫、磷和/或卤化物且启动现有途径的化合物,该系统正确预测了其中111种化合物的已知代谢情况,同时还正确预测了这些化合物569个已知途径分支中的410个。其次,将计算机预测结果与人类专家对六种文献中未描述其代谢情况的化合物的生物降解预测结果进行了比较。第三,该系统预测了三种有机氮化合物释放氨的反应,这与实验室实验结果一致,实验表明每种化合物都可作为支持微生物生长的唯一氮源。PPS基于规则的特性使其具有透明度高、可扩展和适应性强的特点。