Target identification of natural products in cancer with chemical proteomics and artificial intelligence approaches.

IF 5.6 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Guohua Li, Qian Shi, Qibiao Wu, Xinbing Sui
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Abstract

Natural products (NPs) have long been recognized for their therapeutic potential, especially in cancer treatment, due to an ability to interact with multiple cellular pathways. The identification of molecular targets for NPs is a critical step in understanding anticancer mechanisms, with chemical proteomics emerging as a powerful approach. Both label-based and -free proteomic techniques have been utilized to identify these targets, each with their own advantages and limitations. While label-based methods provide high specificity through chemical tagging, the requirement for labeling can be a limitation, potentially altering NP natural properties. Conversely, label-free techniques allow for the detection of NP-protein interactions without structural modification but may struggle with transient interactions or low-abundance targets. Recent advances in artificial intelligence (AI) have further enhanced the field by improving target prediction and streamlining data analysis. AI-driven models, especially machine learning algorithms, have proven effective in processing complex proteomic data and predicting potential NP-protein interactions. The integration of AI with chemical proteomics accelerates target identification and deepens our understanding of the molecular mechanisms underlying the anticancer effects of NPs. This review explores the application of chemical proteomics and AI in the identification of cancer-related targets for NPs, highlighting current challenges and future directions for clinical translation.

利用化学蛋白质组学和人工智能方法鉴定癌症天然产物的靶标。
天然产物(NPs)由于能够与多种细胞途径相互作用,长期以来一直被认为具有治疗潜力,特别是在癌症治疗中。鉴定NPs的分子靶点是了解抗癌机制的关键一步,化学蛋白质组学是一种强有力的方法。基于标签和自由的蛋白质组学技术都被用于识别这些靶标,每种技术都有自己的优点和局限性。虽然基于标记的方法通过化学标记提供了高特异性,但对标记的要求可能是一个限制,可能会改变NP的自然属性。相反,无标记技术允许在没有结构修饰的情况下检测np蛋白相互作用,但可能难以检测瞬时相互作用或低丰度靶标。人工智能(AI)的最新进展通过改进目标预测和简化数据分析进一步增强了该领域。人工智能驱动的模型,特别是机器学习算法,已被证明在处理复杂的蛋白质组学数据和预测潜在的np -蛋白质相互作用方面是有效的。人工智能与化学蛋白质组学的结合加速了靶标识别,加深了我们对NPs抗癌作用的分子机制的理解。本文综述了化学蛋白质组学和人工智能在NPs癌症相关靶点鉴定中的应用,重点介绍了NPs临床转化的当前挑战和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cancer Biology & Medicine
Cancer Biology & Medicine Medicine-Oncology
CiteScore
9.80
自引率
3.60%
发文量
1143
审稿时长
12 weeks
期刊介绍: Cancer Biology & Medicine (ISSN 2095-3941) is a peer-reviewed open-access journal of Chinese Anti-cancer Association (CACA), which is the leading professional society of oncology in China. The journal quarterly provides innovative and significant information on biological basis of cancer, cancer microenvironment, translational cancer research, and all aspects of clinical cancer research. The journal also publishes significant perspectives on indigenous cancer types in China.
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