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整合深度学习用于热休克蛋白90(Hsp90)上的翻译后修饰串扰及药物结合研究

Integrating deep learning for post-translational modifications crosstalk on Hsp90 and drug binding.

作者信息

Heritz Jennifer A, Meluni Katherine A, Backe Sarah J, Cayaban Sara J, Wengert Laura A, Kunz Meik, Woodford Mark R, Bourboulia Dimitra, Mollapour Mehdi

机构信息

Department of Urology, SUNY Upstate Medical University, Syracuse, New York, USA; Department of Biochemistry and Molecular Biology, SUNY Upstate Medical University, Syracuse, New York, USA; Upstate Cancer Center, SUNY Upstate Medical University, Syracuse, New York, USA.

Department of Urology, SUNY Upstate Medical University, Syracuse, New York, USA; Upstate Cancer Center, SUNY Upstate Medical University, Syracuse, New York, USA.

出版信息

J Biol Chem. 2025 Jul 25;301(9):110519. doi: 10.1016/j.jbc.2025.110519.

Abstract

Post-translational modification (PTM) of proteins regulates cellular proteostasis by expanding protein functional diversity. This naturally leads to increased proteome complexity as a result of PTM crosstalk. Here, we used the molecular chaperone protein, Heat shock protein-90 (Hsp90), which is subject to a plethora of PTMs, to investigate this concept. Hsp90 is at the hub of proteostasis and cellular signaling networks in cancer and is, therefore, an attractive therapeutic target in cancer. We demonstrated that deletion of histone deacetylase 3 (HDAC3) and histone deacetylase 8 (HDAC8) in human cells led to increased binding of Hsp90 to both ATP and its ATP-competitive inhibitor, Ganetespib. When bound to this inhibitor, Hsp90 from both HDAC3 and HDAC8 knock-out human cells exhibited similar PTMs, mainly phosphorylation and acetylation, and created a common proteomic network signature. We used both a deep-learning artificial intelligence (AI) prediction model and data based on mass spectrometry analysis of Hsp90 isolated from the mammalian cells bound to its drugs to decipher PTM crosstalk. The alignment of data from both methods demonstrates that the deep-learning prediction model offers a highly efficient and rapid approach for deciphering PTM crosstalk on complex proteins such as Hsp90.

摘要

蛋白质的翻译后修饰(PTM)通过扩展蛋白质功能多样性来调节细胞蛋白质稳态。由于PTM的相互作用,这自然会导致蛋白质组复杂性增加。在这里,我们使用了分子伴侣蛋白热休克蛋白90(Hsp90)来研究这一概念,该蛋白会经历大量的PTM。Hsp90处于癌症中蛋白质稳态和细胞信号网络的核心,因此是癌症中一个有吸引力的治疗靶点。我们证明,在人类细胞中删除组蛋白脱乙酰酶3(HDAC3)和组蛋白脱乙酰酶8(HDAC8)会导致Hsp90与ATP及其ATP竞争性抑制剂Ganetespib的结合增加。当与这种抑制剂结合时,来自HDAC3和HDAC8基因敲除人类细胞的Hsp90表现出相似的PTM,主要是磷酸化和乙酰化,并产生了一个共同的蛋白质组网络特征。我们使用深度学习人工智能(AI)预测模型和基于对与药物结合的哺乳动物细胞中分离出的Hsp90进行质谱分析的数据来解读PTM的相互作用。两种方法的数据比对表明,深度学习预测模型为解读Hsp90等复杂蛋白质上的PTM相互作用提供了一种高效、快速的方法。

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