药效团
机制(生物学)
线粒体
虚拟筛选
药物发现
计算生物学
神经科学
粒体自噬
细胞生物学
生物信息学
自噬
生物
生物化学
认识论
哲学
细胞凋亡
作者
Chenglong Xie,Xu‐Xu Zhuang,Zhangming Niu,Ruixue Ai,Sofie Lautrup,Shuangjia Zheng,Yinghui Jiang,Ruiyu Han,Tanima Sen Gupta,Shuqin Cao,Mariá José Lagartos-Donate,Cui-Zan Cai,Liming Xie,Domenica Caponio,Wenwen Wang,Tomas Schmauck‐Medina,Jianying Zhang,Heling Wang,Guofeng Lou,Xianglu Xiao
标识
DOI:10.1038/s41551-021-00819-5
摘要
Abstract A reduced removal of dysfunctional mitochondria is common to aging and age-related neurodegenerative pathologies such as Alzheimer’s disease (AD). Strategies for treating such impaired mitophagy would benefit from the identification of mitophagy modulators. Here we report the combined use of unsupervised machine learning (involving vector representations of molecular structures, pharmacophore fingerprinting and conformer fingerprinting) and a cross-species approach for the screening and experimental validation of new mitophagy-inducing compounds. From a library of naturally occurring compounds, the workflow allowed us to identify 18 small molecules, and among them two potent mitophagy inducers (Kaempferol and Rhapontigenin). In nematode and rodent models of AD, we show that both mitophagy inducers increased the survival and functionality of glutamatergic and cholinergic neurons, abrogated amyloid-β and tau pathologies, and improved the animals’ memory. Our findings suggest the existence of a conserved mechanism of memory loss across the AD models, this mechanism being mediated by defective mitophagy. The computational–experimental screening and validation workflow might help uncover potent mitophagy modulators that stimulate neuronal health and brain homeostasis.
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