Modern Management and Information Technology, College of Arts, Media and Technology, Chiang Mai University, 50200, Chiang Mai, Thailand.
Department of Zoology, Faculty of Science, Kasetsart University, 10900, Bangkok, Thailand.
J Comput Aided Mol Des. 2022 Nov;36(11):781-796. doi: 10.1007/s10822-022-00476-z. Epub 2022 Oct 26.
The blood-brain barrier (BBB) is the primary barrier with a highly selective semipermeable border between blood vascular endothelial cells and the central nervous system. Since BBB can prevent drugs circulating in the blood from crossing into the interstitial fluid of the brain where neurons reside, many researchers are working hard on developing drug delivery systems to penetrate the BBB which currently poses a challenge. Thus, blood-brain barrier penetrating peptides (B3PPs) are an alternative neurotherapeutic for brain-related disorder since they can facilitate drug delivery into the brain. In the meanwhile, developing computational methods that are effective for both the identification and characterization of B3PPs in a cost-effective manner plays an important role for basic reach and in the pharmaceutical industry. Even though few computational methods for B3PP identification have been developed, their performance might fail in terms of generalization ability and interpretability. In this study, a novel and efficient scoring card method-based predictor (termed SCMB3PP) is presented for improving B3PP identification and characterization. To overcome the limitation of black-box computational approaches, the SCMB3PP predictor can automatically estimate amino acid and dipeptide propensities to be B3PPs. Both cross-validation and independent tests indicate that SCMB3PP can achieve impressive performance and outperform various popular machine learning-based methods and the existing methods on multiple independent test datasets. Furthermore, SCMB3PP-derived amino acid propensities were utilized to identify informative biophysical and biochemical properties for characterizing B3PPs. Finally, an online user-friendly web server ( http://pmlabstack.pythonanywhere.com/SCMB3PP ) is established to identify novel and potential B3PP cost-effectively. This novel computational approach is anticipated to facilitate the large-scale identification of high potential B3PP candidates for follow-up experimental validation.
血脑屏障(BBB)是血液血管内皮细胞和中枢神经系统之间具有高度选择性半透性边界的主要屏障。由于 BBB 可以防止血液中循环的药物穿过进入神经元所在的脑间质液,许多研究人员正在努力开发穿透 BBB 的药物递送系统,这目前是一个挑战。因此,血脑屏障穿透肽(B3PP)是一种治疗与大脑相关疾病的替代神经治疗方法,因为它们可以促进药物递送到大脑中。同时,开发既有效又具有成本效益的用于识别和表征 B3PP 的计算方法对于基础研究和制药行业都很重要。尽管已经开发了几种用于 B3PP 识别的计算方法,但它们的性能可能在泛化能力和可解释性方面存在不足。在这项研究中,提出了一种新的基于评分卡方法的高效预测器(称为 SCMB3PP),用于改善 B3PP 的识别和表征。为了克服黑盒计算方法的局限性,SCMB3PP 预测器可以自动估计氨基酸和二肽成为 B3PP 的倾向。交叉验证和独立测试表明,SCMB3PP 可以实现令人印象深刻的性能,优于各种流行的基于机器学习的方法和多个独立测试数据集上的现有方法。此外,还利用 SCMB3PP 衍生的氨基酸倾向来识别有信息量的生物物理和生化特性,以表征 B3PP。最后,建立了一个在线用户友好的网络服务器(http://pmlabstack.pythonanywhere.com/SCMB3PP),用于以具有成本效益的方式识别新的和潜在的 B3PP。这种新的计算方法有望促进大规模识别具有高潜力的 B3PP 候选物,以进行后续的实验验证。