Department of Clinical Pharmacology Faculty of Medicine King, Abdulaziz University, 21589, Jeddah, Saudi Arabia.
Centre of Research Excellence for Drug Research and Pharmaceutical Industries, King Abdulaziz University, Jeddah, Saudi Arabia.
Mol Divers. 2024 Aug;28(4):2345-2364. doi: 10.1007/s11030-024-10966-x. Epub 2024 Aug 17.
Cancer is a generic term for a group of disorders defined by uncontrolled cell growth and the potential to invade or spread to other parts of the body. Gene and epigenetic alterations disrupt normal cellular control, leading to abnormal cell proliferation, resistance to cell death, blood vessel development, and metastasis (spread to other organs). One of the several routes that play an important role in the development and progression of cancer is the phosphoinositide 3-kinase (PI3K) signaling pathway. Moreover, the gene PIK3CG encodes the catalytic subunit gamma (p110γ) of phosphoinositide 3-kinase (PI3Kγ), a member of the PI3K family. Therefore, in this study, PIK3CG was targeted to inhibit cancer by identifying a novel inhibitor through computational methods. The study screened 1015 chemical fragments against PIK3CG using machine learning-based binding estimation and docking to select the potential compounds. Later, the analogues were generated from the selected hits, and 414 analogues were selected, which were further screened, and as most potential candidates, three compounds were obtained: (a) 84,332, 190,213, and 885,387. The protein-ligand complex's stability and flexibility were then investigated by dynamic modeling. The 100 ns simulation revealed that 885,387 exhibited the steadiest deviation and constant creation of hydrogen bonds. Compared to the other compounds, 885,387 demonstrated a superior binding free energy (ΔG = -18.80 kcal/mol) with the protein when the MM/GBSA technique was used. The study determined that 885,387 showed significant therapeutic potential and justifies further experimental investigation as a possible inhibitor of the PIK3CG target implicated in cancer.
癌症是一组疾病的通用术语,其特征是不受控制的细胞生长和潜在的侵袭或转移到身体的其他部位。基因和表观遗传改变破坏了正常的细胞控制,导致异常细胞增殖、抵抗细胞死亡、血管生成和转移(扩散到其他器官)。在癌症的发生和发展中起重要作用的途径之一是磷酸肌醇 3-激酶(PI3K)信号通路。此外,PIK3CG 基因编码磷酸肌醇 3-激酶(PI3K)的催化亚基γ(p110γ),它是 PI3K 家族的一员。因此,在这项研究中,通过计算方法鉴定了一种新型抑制剂,靶向 PIK3CG 以抑制癌症。该研究使用基于机器学习的结合估算和对接筛选了 1015 个针对 PIK3CG 的化学片段,以选择潜在的化合物。随后,从选定的命中物中生成了类似物,选择了 414 个类似物,并对其进行了进一步筛选,获得了三种最有潜力的候选化合物:(a)84,332、190,213 和 885,387。然后通过动态建模研究了蛋白质-配体复合物的稳定性和灵活性。100ns 模拟表明,885,387 表现出最稳定的偏离和持续形成氢键。与其他化合物相比,当使用 MM/GBSA 技术时,885,387 与蛋白质的结合自由能(ΔG = -18.80 kcal/mol)更高。该研究表明,885,387 显示出显著的治疗潜力,值得进一步的实验研究,作为一种可能的 PIK3CG 抑制剂,该抑制剂与癌症相关。