Bennett Grace M, Starczewski Julia, Dela Cerna Mark Vincent C
Department of Biochemistry, Chemistry, and Physics, Georgia Southern University, Savannah, GA, 31419, USA.
Biochem Biophys Rep. 2024 Jul 1;39:101767. doi: 10.1016/j.bbrep.2024.101767. eCollection 2024 Sep.
Protein tyrosine phosphatases (PTP) have emerged as targets in diseases characterized by aberrant phosphorylations such as cancers. The activity of the phosphatase of regenerating liver 3, PRL3, has been linked to several oncogenic and metastatic pathways, particularly in breast, ovarian, colorectal, and blood cancers. Development of small molecules that directly target PRL3, however, has been challenging. This is partly due to the lack of structural information on how PRL3 interacts with its inhibitors. Here, computational methods are used to bridge this gap by evaluating the druggability of PRL3. In particular, web-based pocket prediction tools, DoGSite3 and FTMap, were used to identify binding pockets using structures of PRL3 currently available in the Protein Data Bank. Druggability assessment by molecular dynamics simulations with probes was also performed to validate these results and to predict the strength of binding in the identified pockets. While several druggable pockets were identified, those in the closed conformation show more promise given their volume and depth. These two pockets flank the active site loops and roughly correspond to pockets predicted by molecular docking in previous papers. Notably, druggability simulations predict the possibility of low nanomolar affinity inhibitors in these sites implying the potential to identify highly potent small molecule inhibitors for PRL3. Putative pockets identified here can be leveraged for high-throughput virtual screening to further accelerate the drug discovery against PRL3 and development of PRL3-directed therapeutics.
蛋白质酪氨酸磷酸酶(PTP)已成为以异常磷酸化特征的疾病(如癌症)中的靶点。再生肝脏3磷酸酶(PRL3)的活性与多种致癌和转移途径有关,尤其是在乳腺癌、卵巢癌、结直肠癌和血癌中。然而,开发直接靶向PRL3的小分子具有挑战性。部分原因是缺乏关于PRL3如何与其抑制剂相互作用的结构信息。在此,通过评估PRL3的可成药性,使用计算方法来弥补这一差距。具体而言,基于网络的口袋预测工具DoGSite3和FTMap,利用蛋白质数据库中当前可用的PRL3结构来识别结合口袋。还通过使用探针的分子动力学模拟进行可成药性评估,以验证这些结果并预测在已识别口袋中的结合强度。虽然识别出了几个可成药口袋,但处于闭合构象的口袋因其体积和深度而更具潜力。这两个口袋位于活性位点环两侧,大致对应于先前论文中通过分子对接预测的口袋。值得注意的是,可成药性模拟预测在这些位点存在低纳摩尔亲和力抑制剂的可能性,这意味着有可能识别出针对PRL3的高效小分子抑制剂。此处识别出的假定口袋可用于高通量虚拟筛选,以进一步加速针对PRL3的药物发现以及PRL3导向疗法的开发。