Biology Department, Boston College, Chestnut Hill, MA, 02467, USA.
Department of Molecular Biology and Microbiology, Tufts University School of Medicine, Boston, MA, 02111, USA.
Nat Commun. 2020 Aug 31;11(1):4365. doi: 10.1038/s41467-020-18134-z.
Current approaches explore bacterial genes that change transcriptionally upon stress exposure as diagnostics to predict antibiotic sensitivity. However, transcriptional changes are often specific to a species or antibiotic, limiting implementation to known settings only. While a generalizable approach, predicting bacterial fitness independent of strain, species or type of stress, would eliminate such limitations, it is unclear whether a stress-response can be universally captured. By generating a multi-stress and species RNA-Seq and experimental evolution dataset, we highlight the strengths and limitations of existing gene-panel based methods. Subsequently, we build a generalizable method around the observation that global transcriptional disorder seems to be a common, low-fitness, stress response. We quantify this disorder using entropy, which is a specific measure of randomness, and find that in low fitness cases increasing entropy and transcriptional disorder results from a loss of regulatory gene-dependencies. Using entropy as a single feature, we show that fitness and quantitative antibiotic sensitivity predictions can be made that generalize well beyond training data. Furthermore, we validate entropy-based predictions in 7 species under antibiotic and non-antibiotic conditions. By demonstrating the feasibility of universal predictions of bacterial fitness, this work establishes the fundamentals for potentially new approaches in infectious disease diagnostics.
目前的方法探索了细菌基因,这些基因在受到压力时会发生转录变化,可作为诊断指标来预测抗生素敏感性。然而,转录变化通常是特定于物种或抗生素的,这限制了其仅在已知环境中实施。虽然一种具有普遍性的方法,即独立于菌株、物种或压力类型预测细菌适应性,可消除这些限制,但尚不清楚是否可以普遍捕捉到应激反应。通过生成多应激和多物种 RNA-Seq 和实验进化数据集,我们突出了基于基因面板的现有方法的优缺点。随后,我们围绕这样一个观察结果构建了一种具有普遍性的方法,即全局转录紊乱似乎是一种常见的、低适应性的应激反应。我们使用熵来量化这种紊乱,熵是衡量随机性的特定指标,并且发现,在低适应性的情况下,熵和转录紊乱的增加是由于失去了调节基因的依赖性。使用熵作为单一特征,我们表明可以进行适应性和定量抗生素敏感性的预测,这些预测具有很好的泛化能力,超出了训练数据。此外,我们在 7 个物种中验证了基于熵的预测,这些物种在抗生素和非抗生素条件下都得到了验证。通过证明细菌适应性的普遍预测的可行性,这项工作为传染病诊断的潜在新方法奠定了基础。