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June 5th, 2025
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the First Affiliated Hospital of Xinjiang Medical University
bioinformatics
biorxiv

Structural and temporal dynamics analysis on PANoptosis in sepsis: a bibliometric analysis

Li, Z.Open in Google Scholar•Nie, D.Open in Google Scholar•Yin, L.Open in Google Scholar•Qin, Q.Open in Google Scholar•Yang, C.Open in Google Scholar•Li, R.Open in Google Scholar•Gao, X.Open in Google Scholar•Yu, X.Open in Google Scholar•Wang, Y.Open in Google Scholar

PANoptosis, as a new type of programmed cell death, is characterized by pyroptosis, apoptosis and necroptosis, and is a key mechanism causing a variety of inflammatory diseases. Despite the growing number of studies indicating the crucial role of PANoptosis in sepsis, there has been no bibliometric analysis of the research hotspots and trends in this field. Therefore, this study aims to explore the history, research hotspots and emerging trends of PANoptosis in sepsis related research in the past 20 years from the perspective of structure and temporal dynamics. The articles related to PANoptosis in sepsis were retrieved from the Web of Science Core Collection (WoSCC) database from 2000 to 2024. CiteSpace and HistCite were used to analyse the historical features, the evolution of active topics, and emerging trends about PANoptosis in sepsis. 6165 original articles and reviews on PANoptosis in sepsis were included in the bibliometric analysis. In the last 20 years, the number of published documents is increasing year by year and reaches a peak in 2022. At the same time, many activation themes have emerged at different times, as evidenced by a total of 96 categories, 865 keywords and 629 reference bursts. Keyword clustering anchored eight emerging research subfields, namely 0# oxidative stress, 1#pyroptosis, 2#sepsis-associated encephalopathy, 3#acute kidney injury, 4#immunosuppression, 5#necroptosis, 7#lung injury and 8#extracellular vesicles. The keyword alluvial map shows that the most persistent research concepts in this field are phosphatase. And the emerging keywords are toll_like_receptors, regulatory T cells, recognition, etc. In a timeline visualization based on the time span of the citations, we find five relevant emerging topics, namely 1# immunosuppression, 2# sepsis-induced cardiomyopathy, 3# pyroptosis, 4# acute kidney injury, and 13# COVID-19. Our study provides a comprehensive bibliometric analysis and summary about the current status and trends on PANoptosis in sepsis, which will aid researchers in conducting further scientific research in this field.

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