Cinacalcet use in secondary hyperparathyroidism: a machine learning-based systematic review.

Published
August 04, 2023
Journal
Frontiers in endocrinology
PICOID
7643c242
DOI
Citations
3
Keywords
FGF-23, LDA analysis, bibliometrics, calcimimetics, machine learning
Copyright
Copyright © 2023 Li, Ding and Zhang.
Patients/Population/Participants

Fukagawa, Chertow, Goodman

Intervention

Cinacalcet

Comparison

Secondary Hyperparathyroidism (SHPT)

Outcome

Efficacy and Safety

Abstract

P
I
C
O

This study aimed to systematically review research on cinacalcet and secondary hyperparathyroidism (SHPT) using machine learning-based statistical analyses. Publications indexed in the Web of Science Core Collection database on Cinacalcet and SHPT published between 2000 and 2022 were retrieved. The R package "Bibliometrix," VOSviewer, CiteSpace, meta, and latent Dirichlet allocation (LDA) in Python were used to generate bibliometric and meta-analytical results. A total of 959 articles were included in our bibliometric analysis. In total, 3753 scholars from 54 countries contributed to this field of research. The United States, Japan, and China were found to be among the three most productive countries worldwide. Three Japanese institutions (Showa University, Tokai University, and Kobe University) published the most articles on Cinacalcet and SHPT. Fukagawa, M.; Chertow, G.M.; Goodman W.G. were the three authors who published the most articles in this field. Most articles were published in The number of publications indexed to Cinacalcet and SHPT has increased rapidly over the past 22 years. Literature distribution, research topics, and emerging trends in publications on Cinacalcet and SHPT were analyzed using a machine learning-based bibliometric review. The findings of this meta-analysis provide valuable insights into the efficacy and safety of cinacalcet for the treatment of SHPT, which will be of interest to both clinical and researchers.

Similar article map

CEO: Hwi-yeol YunCOO: Jung-woo ChaeCTO: Sangkeun Jung
Location: 204, W6, Chungnam National University, 99, Daehak-ro, Yuseong-gu, Daejeon, Republic of Korea
Tel: 042-821-7328E-mail: webmaster@lilac-co.kr
Copyright © 2024 by LiLac. All Rights Reserved.