Das Gourab, Das Troyee, Ghosh Zhumur
Department of Biological Sciences, Bose Institute, Unified Academic Campus, Kolkata 700 091, West Bengal, India.
Brief Bioinform. 2025 Jul 2;26(4). doi: 10.1093/bib/bbaf432.
Long noncoding RNA (lncRNA)-protein Interaction (LPI) across diverse biological systems, directly and indirectly, regulates various cellular processes. Experimental assays to recognize the protein binding partners of lncRNAs are highly time-consuming and expensive. In silico predictive approaches involving pattern recognition techniques provide a promising alternative to it by reducing the search space. Our work identifies such hidden patterns within the cross-linking immunoprecipitation sequencing (CLIP-Seq) data, which aid in overcoming the problem of obtaining a real negative dataset and thus offer a state-of-the-art machine learning (ML)-based prediction algorithm to predict LPI. The initial phase of this work involves preparing the training dataset, and the next phase is devoted towards developing an ML-based model to perform prediction operations. To demonstrate the efficacy of our model, its performance has been compared to that of contemporary prediction tools, with the result clearly showing the outperformance of our model. Moreover, it also provides the segments of interaction within the lncRNA loci, which act as a roadmap for the precise design of the validation experiment. The LncPTPred tool has been provided in terms of a web server as well as a standalone version on GitHub. Web server Link: http://bicresources.jcbose.ac.in/zhumur/lncptpred/. Github Link: https://github.com/zglabDIB/lncptpred.git.
跨多种生物系统的长链非编码RNA(lncRNA)-蛋白质相互作用(LPI)直接或间接地调节各种细胞过程。识别lncRNA蛋白质结合伙伴的实验方法既耗时又昂贵。涉及模式识别技术的计算机预测方法通过减少搜索空间为其提供了一种有前景的替代方案。我们的工作在交联免疫沉淀测序(CLIP-Seq)数据中识别出此类隐藏模式,这有助于克服获取真实阴性数据集的问题,从而提供一种基于机器学习(ML)的先进预测算法来预测LPI。这项工作的初始阶段涉及准备训练数据集,下一阶段致力于开发基于ML的模型以执行预测操作。为了证明我们模型的有效性,已将其性能与当代预测工具的性能进行比较,结果清楚地表明我们的模型表现更优。此外,它还提供了lncRNA基因座内的相互作用片段,可作为验证实验精确设计的路线图。LncPTPred工具已通过网络服务器以及GitHub上的独立版本提供。网络服务器链接:http://bicresources.jcbose.ac.in/zhumur/lncptpred/。GitHub链接:https://github.com/zglabDIB/lncptpred.git。