Emerging trends and hot topics in the application of multi-omics in drug discovery: A bibliometric and visualized study

药物发现 化学 数据科学 组学 计算生物学 生物信息学 计算机科学 生物化学 生物
作者
Ziheng Wang,Yang Zhao,Lin Zhang
出处
期刊:Current Pharmaceutical Analysis [Bentham Science Publishers]
卷期号:21 (1): 20-32 被引量:133
标识
DOI:10.1016/j.cpan.2024.12.001
摘要

The application of multi-omics in drug discovery is rapidly advancing, but its trends and hotspots have not been fully analyzed. By reviewing key achievements and research hotspots in this field, the aim is to provide new insights for scholars. Relevant literature on the application of multi-omics in cancer research was obtained from the Web of Science Core Collection, covering the period from 2007 to October 31, 2024. Bibliometric analysis was conducted using CiteSpace, VOSviewer, and R software to evaluate the productivity and details of global research. The analysis included countries, institutions, authors, journals, citations, and keywords to explore future trends and hotspots. The analysis included 1131 publications, showing an upward trend over the past 18 years. China and the United States were the main contributors. The study involved 523 publication sources, with the most publications appearing in the International Journal of Molecular Sciences , Scientific Reports , and Briefings in Bioinformatics . The research showed significant regional differences and limited global cooperation. Hotspots included "personalized medicine," "gut microbiota," "artificial intelligence," and "resistance," making cancer drug discovery a key area for multi-omics. Multi-omics offers significant potential in drug discovery, notably in predicting drug sensitivity. With technological advancements, the potential of multi-omics to transform disease treatment and improve patient survival continues to grow, making it a key target in the ongoing fight against diseases. China's contributions are substantial, but breakthroughs need global collaboration. Integrating artificial intelligence is an emerging trend, and technological advancements will enhance multi-omics applications, necessitating international cooperation.
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