用于单细胞水平抗癌药物的计算机筛选的深度学习框架。

IF 16.3 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
National Science Review Pub Date : 2024-12-10 eCollection Date: 2025-02-01 DOI:10.1093/nsr/nwae451
Peijing Zhang, Xueyi Wang, Xufeng Cen, Qi Zhang, Yuting Fu, Yuqing Mei, Xinru Wang, Renying Wang, Jingjing Wang, Hongwei Ouyang, Tingbo Liang, Hongguang Xia, Xiaoping Han, Guoji Guo
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引用次数: 0

摘要

肿瘤异质性在肿瘤进展和临床治疗耐药性中起着关键作用。单细胞RNA测序(scRNA-seq)使我们能够探索细胞群内的异质性并识别罕见的细胞类型,从而改进我们的靶向治疗策略设计。在这里,我们使用泛癌症和泛组织单细胞转录景观来揭示恶性细胞,癌前细胞以及癌症相关的基质和内皮细胞内的异质表达模式。我们介绍了一个名为“神农”的深度学习框架,用于针对每个景观细胞簇的抗癌药物的硅筛选。利用神农,我们可以预测个体细胞对药物化合物的反应,评估候选药物的组织损伤作用,并研究其相应的作用机制。神农的预测结果中优先考虑的化合物包括fda批准的目前正在进行新适应症临床试验的药物,以及有抗肿瘤活性的候选药物。此外,组织损伤效应预测与记录的损伤和终止的发现事件一致。这种稳健且可解释的框架有可能加速药物发现过程,提高药物筛选的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning framework for in silico screening of anticancer drugs at the single-cell level.

Tumor heterogeneity plays a pivotal role in tumor progression and resistance to clinical treatment. Single-cell RNA sequencing (scRNA-seq) enables us to explore heterogeneity within a cell population and identify rare cell types, thereby improving our design of targeted therapeutic strategies. Here, we use a pan-cancer and pan-tissue single-cell transcriptional landscape to reveal heterogeneous expression patterns within malignant cells, precancerous cells, as well as cancer-associated stromal and endothelial cells. We introduce a deep learning framework named Shennong for in silico screening of anticancer drugs for targeting each of the landscape cell clusters. Utilizing Shennong, we could predict individual cell responses to pharmacologic compounds, evaluate drug candidates' tissue damaging effects, and investigate their corresponding action mechanisms. Prioritized compounds in Shennong's prediction results include FDA-approved drugs currently undergoing clinical trials for new indications, as well as drug candidates reporting anti-tumor activity. Furthermore, the tissue damaging effect prediction aligns with documented injuries and terminated discovery events. This robust and explainable framework has the potential to accelerate the drug discovery process and enhance the accuracy and efficiency of drug screening.

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来源期刊
National Science Review
National Science Review MULTIDISCIPLINARY SCIENCES-
CiteScore
24.10
自引率
1.90%
发文量
249
审稿时长
13 weeks
期刊介绍: National Science Review (NSR; ISSN abbreviation: Natl. Sci. Rev.) is an English-language peer-reviewed multidisciplinary open-access scientific journal published by Oxford University Press under the auspices of the Chinese Academy of Sciences.According to Journal Citation Reports, its 2021 impact factor was 23.178. National Science Review publishes both review articles and perspectives as well as original research in the form of brief communications and research articles.
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