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Fingerprinting cities: differentiating subway microbiome functionality

机译:指纹城市:区分地铁微生物功能

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摘要

Accumulating evidence suggests that the human microbiome impacts individual and public health. City subway systems are human-dense environments, where passengers often exchange microbes. The MetaSUB project participants collected samples from subway surfaces in different cities and performed metagenomic sequencing. Previous studies focused on taxonomic composition of these microbiomes and no explicit functional analysis had been done till now. As a part of the 2018 CAMDA challenge, we functionally profiled the available ~?400 subway metagenomes and built predictor for city origin. In cross-validation, our model reached 81% accuracy when only the top-ranked city assignment was considered and 95% accuracy if the second city was taken into account as well. Notably, this performance was only achievable if the similarity of distribution of cities in the training and testing sets was similar. To assure that our methods are applicable without such biased assumptions we balanced our training data to account for all represented cities equally well. After balancing, the performance of our method was slightly lower (76/94%, respectively, for one or two top ranked cities), but still consistently high. Here we attained an added benefit of independence of training set city representation. In testing, our unbalanced model thus reached (an over-estimated) performance of 90/97%, while our balanced model was at a more reliable 63/90% accuracy. While, by definition of our model, we were not able to predict the microbiome origins previously unseen, our balanced model correctly judged them to be NOT-from-training-cities over 80% of the time. Our function-based outlook on microbiomes also allowed us to note similarities between both regionally close and far-away cities. Curiously, we identified the depletion in mycobacterial functions as a signature of cities in New Zealand, while photosynthesis related functions fingerprinted New York, Porto and Tokyo. We demonstrated the power of our high-speed function annotation method, mi-faser, by analysing ~?400 shotgun metagenomes in 2?days, with the results recapitulating functional signals of different city subway microbiomes. We also showed the importance of balanced data in avoiding over-estimated performance. Our results revealed similarities between both geographically close (Ofa and Ilorin) and distant (Boston and Porto, Lisbon and New York) city subway microbiomes. The photosynthesis related functional signatures of NYC were previously unseen in taxonomy studies, highlighting the strength of functional analysis.
机译:积累证据表明人类微生物组影响了个人和公共卫生。城市地铁系统是人类密集的环境,乘客经常交换微生物。 Metasub项目参与者从不同城市的地铁表面收集样品,并进行了均衡测序。以前的研究侧重于这些微生物瘤的分类组成,直到现在没有明确的功能分析。作为2018年Camda挑战的一部分,我们在功能上探讨了可用的〜?400个地铁的梅泰群体和建造城市起源的预测因素。在交叉验证时,我们的模型达到了81%的准确性,只有在考虑排名排名的城市分配和95%的准确性时,如果第二个城市也被考虑在内。值得注意的是,如果培训和检测集的城市分布的相似性相似,这种表现才可实现。确保我们的方法适用,没有这种偏见的假设,我们平衡了我们的培训数据,以考虑所有代表的城市。平衡后,我们的方法的性能略低(分别为76/94%,分别为一个或两个最高的城市),但仍然始终如一。在这里,我们达到了独立培训城市代表的额外好处。在测试中,我们的不平衡模型达到(过度估计)性能为90/97%,而我们的平衡模型以更可靠的63/90%的精度。虽然,根据我们的模型的定义,我们无法预测以前看不见的微生物组起源,我们的平衡模型正确地判断它们不会超过80%的时间。我们的基于功能的微生物研究景观也允许我们注意到区间关闭和远处城市之间的相似性。奇怪的是,我们确定了在新西兰城市签名的分枝杆菌功能的枯竭,而光合作用相关职能指纹纽约,波尔图和东京。我们展示了我们的高速函数注释方法,Mi-蒲席,通过分析了2?天的〜400次霰弹枪的力量,结果重新制造了不同城市地铁微生物的功能信号。我们还表明了均衡数据在避免过度估计的性能方面的重要性。我们的结果揭示了地理上关闭(OFA和ILORIN)和遥远(波士顿和波尔图,里斯本和纽约)城市地铁微生物体之间的相似之处。纽约的光合作用相关功能签名以前在分类学研究中看不见,突出了功能分析的强度。

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