三阴性乳腺癌
乳腺癌
药物发现
药品
组学
计算生物学
癌症
上睑下垂
医学
靶向治疗
生物信息学
生物
药理学
遗传学
内科学
细胞凋亡
程序性细胞死亡
作者
Boshu Ouyang,Caihua Shan,Shun-Qing Shen,Xinnan Dai,Qingwang Chen,Xiaomin Su,Yongbin Cao,Xifeng Qin,Ying He,Li Wang,Ruizhe Xu,Ruining Hu,Leming Shi,Tun Lu,Wuli Yang,Shaojun Peng,Jun Zhang,Jianxin Wang,Dongsheng Li,Zhiqing Pang
标识
DOI:10.1038/s41467-024-51980-9
摘要
Due to low success rates and long cycles of traditional drug development, the clinical tendency is to apply omics techniques to reveal patient-level disease characteristics and individualized responses to treatment. However, the heterogeneous form of data and uneven distribution of targets make drug discovery and precision medicine a non-trivial task. This study takes pyroptosis therapy for triple-negative breast cancer (TNBC) as a paradigm and uses data mining of a large TNBC cohort and drug databases to establish a biofactor-regulated neural network for rapidly screening and optimizing compound pyroptosis drug pairs. Subsequently, biomimetic nanococrystals are prepared using the preferred combination of mitoxantrone and gambogic acid for rational drug delivery. The unique mechanism of obtained nanococrystals regulating pyroptosis genes through ribosomal stress and triggering pyroptosis cascade immune effects are revealed in TNBC models. In this work, a target omics-based intelligent compound drug discovery framework explores an innovative drug development paradigm, which repurposes existing drugs and enables precise treatment of refractory diseases.
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