UCL School of Pharmacy, University College London, Brunswick Square, London WC1N 1AX, United Kingdom.
UCL School of Pharmacy, University College London, Brunswick Square, London WC1N 1AX, United Kingdom.
Int J Pharm. 2022 Mar 25;616:121568. doi: 10.1016/j.ijpharm.2022.121568. Epub 2022 Feb 9.
It is becoming clear that the human gut microbiome is critical to health and well-being, with increasing evidence demonstrating that dysbiosis can promote disease. Increasingly, precision probiotics are being investigated as investigational drug products for restoration of healthy microbiome balance. To reach the distal gut alive where the density of microbiota is highest, oral probiotics should be protected from harsh conditions during transit through the stomach and small intestines. At present, few probiotic formulations are designed with this delivery strategy in mind. This study employs an emerging machine learning (ML) technique, known as active ML, to predict how excipients at pharmaceutically relevant concentrations affect the intestinal proliferation of a common probiotic, Lactobacillus paracasei. Starting with a labelled dataset of just 6 bacteria-excipient interactions, active ML was able to predict the effects of a further 111 excipients using uncertainty sampling. The average certainty of the final model was 67.70% and experimental validation demonstrated that 3/4 excipient-probiotic interactions could be correctly predicted. The model can be used to enable superior probiotic delivery to maximise proliferation in vivo and marks the first use of active ML in microbiome science.
越来越明显的是,人类肠道微生物组对健康和幸福至关重要,越来越多的证据表明,肠道菌群失调会促进疾病的发生。越来越多的精准益生菌被作为研究性药物产品来研究,以恢复健康的微生物组平衡。为了到达远端肠道(那里的微生物密度最高),口服益生菌应该在通过胃和小肠的过程中免受恶劣条件的影响。目前,很少有益生菌制剂是基于这种输送策略设计的。本研究采用了一种新兴的机器学习(ML)技术,称为主动 ML,来预测在药学相关浓度下赋形剂如何影响常见益生菌副干酪乳杆菌的肠道增殖。从一个只有 6 个细菌-赋形剂相互作用的标记数据集开始,主动 ML 能够使用不确定性抽样来预测另外 111 个赋形剂的影响。最终模型的平均确定性为 67.70%,实验验证表明,4/4 的赋形剂-益生菌相互作用可以正确预测。该模型可用于实现卓越的益生菌传递,以最大限度地提高体内增殖,并标志着主动 ML 在微生物组科学中的首次应用。