Department of Bone, Huangdao District Central Hospital, Qingdao, People's Republic of China.
Qingdao Key Laboratory of Materials for Tissue Repair and Rehabilitation, School of Rehabilitation Sciences and Engineering, University of Health and Rehabilitation Sciences, Qingdao, People's Republic of China.
Int J Nanomedicine. 2024 Jun 4;19:5213-5226. doi: 10.2147/IJN.S451680. eCollection 2024.
The emergence and rapid spread of multidrug-resistant bacteria (MRB) caused by the excessive use of antibiotics and the development of biofilms have been a growing threat to global public health. Nanoparticles as substitutes for antibiotics were proven to possess substantial abilities for tackling MRB infections via new antimicrobial mechanisms. Particularly, carbon dots (CDs) with unique (bio)physicochemical characteristics have been receiving considerable attention in combating MRB by damaging the bacterial wall, binding to DNA or enzymes, inducing hyperthermia locally, or forming reactive oxygen species.
Herein, how the physicochemical features of various CDs affect their antimicrobial capacity is investigated with the assistance of machine learning (ML) tools.
The synthetic conditions and intrinsic properties of CDs from 121 samples are initially gathered to form the raw dataset, with Minimum inhibitory concentration (MIC) being the output. Four classification algorithms (KNN, SVM, RF, and XGBoost) are trained and validated with the input data. It is found that the ensemble learning methods turn out to be the best on our data. Also, ε-poly(L-lysine) CDs (PL-CDs) were developed to validate the practical application ability of the well-trained ML models in a laboratory with two ensemble models managing the prediction.
Thus, our results demonstrate that ML-based high-throughput theoretical calculation could be used to predict and decode the relationship between CD properties and the anti-bacterial effect, accelerating the development of high-performance nanoparticles and potential clinical translation.
抗生素的过度使用和生物膜的发展导致了多药耐药菌(MRB)的出现和迅速传播,这对全球公共健康构成了越来越大的威胁。纳米粒子作为抗生素的替代品,通过新的抗菌机制被证明具有治疗多药耐药菌感染的巨大能力。特别是具有独特(生物)物理化学特性的碳点(CDs)在通过破坏细菌壁、与 DNA 或酶结合、局部诱导过热或形成活性氧来对抗多药耐药菌方面受到了相当多的关注。
本文借助机器学习(ML)工具研究了各种 CDs 的物理化学特性如何影响其抗菌能力。
最初从 121 个样本中收集了 CDs 的合成条件和内在特性,以形成原始数据集,最小抑菌浓度(MIC)作为输出。用输入数据对四种分类算法(KNN、SVM、RF 和 XGBoost)进行了训练和验证。结果发现,对于我们的数据来说,集成学习方法效果最好。此外,还开发了 ε-聚(L-赖氨酸)碳点(PL-CDs),以验证经过良好训练的 ML 模型在实验室中对实际应用能力的预测,两个集成模型共同进行预测。
因此,我们的结果表明,基于 ML 的高通量理论计算可用于预测和解码 CD 特性与抗菌效果之间的关系,从而加速高性能纳米粒子的开发和潜在的临床转化。