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Data-driven extraction of relative reasoning rules to limit combinatorial explosion in biodegradation pathway prediction

机译:数据驱动的相关推理规则提取,以限制生物降解途径预测中的组合爆炸

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摘要

Motivation: The University of Minnesota Pathway Prediction System (UM-PPS) is a rule-based expert system to predict plausible biodegradation pathways for organic compounds. However, iterative application of these rules to generate biodegradation pathways leads to combinatorial explosion. We use data from known biotransformation pathways to rationally determine biotransformation priorities (relative reasoning rules) to limit this explosion. Results: A total of 112 relative reasoning rules were identified and implemented. In one prediction step, i.e. as per one generation predicted, the use of relative reasoning decreases the predicted biotransformations by over 25% for 50 compounds used to generate the rules and by about 15% for an external validation set of 47 xenobiotics, including pesticides, biocides and pharmaceuticals. The percentage of correctly predicted, experimentally known products remains at 75% when relative reasoning is used. The set of relative reasoning rules identified, therefore, effectively reduces the number of predicted transformation products without compromising the quality of the predictions. Availability: The UM-PPS server is freely available on the web to all users at the time of submission of this manuscript and will be available following publication at http://umbbd.msi.umn.edu/predict/. Contact: kathrin.fenner@eawag.ch Supplementary information: Supplementary data are available at Bioinformatics online
机译:动机:明尼苏达大学的途径预测系统(UM-PPS)是一个基于规则的专家系统,可以预测有机化合物可能的生物降解途径。但是,这些规则的迭代应用以生成生物降解途径会导致组合爆炸。我们使用来自已知生物转化途径的数据合理确定生物转化优先级(相对推理规则)以限制这种爆炸。结果:共确定并实施了112条相对推理规则。在一个预测步骤中,即按照每一代的预测,相对推理的使用将用于生成规则的50种化合物的预测生物转化降低了25%以上,对于包含农药在内的47种外源生物的外部验证集,其预测转化率降低了约15%,杀菌剂和药品。使用相对推理时,正确预测的,实验已知产品的百分比仍为75%。因此,识别出的一组相对推理规则可以有效地减少预测的转换产物的数量,而不会影响预测的质量。可用性:提交本手稿时,UM-PPS服务器可在网上免费提供给所有用户,并且在http://umbbd.msi.umn.edu/predict/发布后即可使用。联系人:kathrin.fenner@eawag.ch补充信息:补充数据可从在线生物信息学获得

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