RNA-NRD: a non-redundant RNA structural dataset for benchmarking and functional analysis

Autor: Nabila Shahnaz Khan, Md Mahfuzur Rahaman, Shahidul Islam, Shaojie Zhang
Rok vydání: 2023
Předmět:
Zdroj: NAR Genomics and Bioinformatics. 5
ISSN: 2631-9268
Popis: The significance of RNA functions and their role in evolution and disease control have remarkably increased the research scope in the field of RNA science. Though the availability of RNA structure data in PBD has been growing tremendously, maintaining their quality and integrity has become the greater challenge. Since the data available in PDB are results of different independent research, they might contain redundancy. As a result, there remains a possibility of data bias for both protein and RNA chains. Quite a few studies have been conducted to remove the redundancy of protein structures by introducing high-quality representatives. However, the amount of research done to remove the redundancy of RNA structures is still very low. To remove RNA chain redundancy in PDB, we have introduced RNA-NRD, a non-redundant dataset of RNA chains based on sequence and 3D structural similarity. We compared RNA-NRD with the existing non-redundant RNA structure dataset RS-RNA and showed that it has better-formed clusters of redundant RNA chains with lower average RMSD and higher average PSI, thus improving the overall quality of the dataset.
Databáze: OpenAIRE