Department of Hematology, The Affiliated Cancer Hospital of Zhengzhou University & Henan Cancer Hospital, Zhengzhou 450008, China.
Hangzhou Institute of Innovative Medicine, College of Pharmaceutical Sciences, Zhejiang University, Hangzhou 310058, China.
J Chem Inf Model. 2024 Jun 24;64(12):4835-4849. doi: 10.1021/acs.jcim.4c00151. Epub 2024 Jun 7.
The lymphocyte-specific protein tyrosine kinase (LCK) plays a crucial role in both T-cell development and activation. Dysregulation of LCK signaling has been demonstrated to drive the oncogenesis of T-cell acute lymphoblastic leukemia (T-ALL), thus providing a therapeutic target for leukemia treatment. In this study, we introduced a sophisticated virtual screening strategy combined with biological evaluations to discover potent LCK inhibitors. Our initial approach involved utilizing the PLANET algorithm to assess and contrast various scoring methodologies suitable for LCK inhibitor screening. After effectively evaluating PLANET, we progressed to devise a virtual screening workflow that synergistically combines the strengths of PLANET with the capabilities of Schrödinger's suite. This integrative strategy led to the efficient identification of four potential LCK inhibitors. Among them, compound 1232030-35-1 stood out as the most promising candidate with an IC of 0.43 nM. Further bioassays revealed that 1232030-35-1 exhibited robust antiproliferative effects on T-ALL cells, which was attributed to its ability to suppress the phosphorylations of key molecules in the LCK signaling pathway. More importantly, 1232030-35-1 treatment demonstrated profound antileukemia efficacy in a human T-ALL xenograft model. In addition, complementary molecular dynamics simulations provided deeper insight into the binding kinetics between 1232030-35-1 and LCK, highlighting the formation of a hydrogen bond with Met319. Collectively, our study established a robust and effective screening strategy that integrates AI-driven and conventional methodologies for the identification of LCK inhibitors, positioning 1232030-35-1 as a highly promising and novel drug-like candidate for potential applications in treating T-ALL.
淋巴细胞特异性蛋白酪氨酸激酶(LCK)在 T 细胞发育和激活中都发挥着至关重要的作用。LCK 信号的失调已被证明会驱动 T 细胞急性淋巴细胞白血病(T-ALL)的发生,从而为白血病治疗提供了一个治疗靶点。在这项研究中,我们引入了一种复杂的虚拟筛选策略,并结合生物学评估来发现有效的 LCK 抑制剂。我们最初的方法是利用 PLANET 算法来评估和对比适用于 LCK 抑制剂筛选的各种评分方法。在有效地评估了 PLANET 之后,我们设计了一种虚拟筛选工作流程,该流程协同结合了 PLANET 的优势和 Schrödinger 套件的功能。这种集成策略导致了四个潜在的 LCK 抑制剂的有效鉴定。其中,化合物 1232030-35-1 是最有前途的候选物,IC 为 0.43 nM。进一步的生物测定显示,1232030-35-1 对 T-ALL 细胞表现出强大的抗增殖作用,这归因于其抑制 LCK 信号通路中关键分子磷酸化的能力。更重要的是,1232030-35-1 治疗在人 T-ALL 异种移植模型中显示出了显著的抗白血病疗效。此外,互补的分子动力学模拟提供了对 1232030-35-1 与 LCK 之间结合动力学的更深入了解,突出了与 Met319 形成氢键。总的来说,我们的研究建立了一种强大而有效的筛选策略,该策略将人工智能驱动和传统方法集成在一起,用于识别 LCK 抑制剂,使 1232030-35-1 成为一种极具潜力的新型候选药物,可潜在应用于治疗 T-ALL。