Information and Scientific Impact of Advanced Therapies in the Age of Mass Media: Altmetrics-Based Analysis of Tissue Engineering
Metadatos
Mostrar el registro completo del ítemAutor
Santisteban Espejo, Antonio Leopoldo; Martín Piedra, Miguel Ángel; Campos Muñoz, Antonio JesúsEditorial
JMIR
Materia
Advanced therapies Tissue engineering Scientometrics Altmetrics Online Web Communication of science
Fecha
2021-11-26Referencia bibliográfica
Santisteban-Espejo A... [et al.]. Information and Scientific Impact of Advanced Therapies in the Age of Mass Media: Altmetrics-Based Analysis of Tissue Engineering J Med Internet Res 2021;23(11):e25394 URL: https://www.jmir.org/2021/11/e25394 DOI: [10.2196/25394]
Patrocinador
CTS-115 (Tissue Engineering Research Group, University of Granada) from Junta de Andalucia, Spain; Spanish Government PID2019-105381GA-I00/AEI/10.13039/501100011033; Andalusia Health System RH-0145-2020; European Union Fondo Europeo de Desarrollo Regional para la Inversion Territorial Integrada Grant for Cadiz Province PI-0032-2017Resumen
Background: Tissue engineering (TE) constitutes a multidisciplinary field aiming to construct artificial tissues to regenerate
end-stage organs. Its development has taken place since the last decade of the 20th century, entailing a clinical revolution. TE
research groups have worked and shared relevant information in the mass media era. Thus, it would be interesting to study the
online dimension of TE research and to compare it with traditional measures of scientific impact.
Objective: The objective of this study was to evaluate the online dimension of TE documents from 2012 to 2018 using metadata
obtained from the Web of Science (WoS) and Altmetric and to develop a prediction equation for the impact of TE documents
from altmetric scores.
Methods: We analyzed 10,112 TE documents through descriptive and statistical methods. First, the TE temporal evolution was
exposed for WoS and 15 online platforms (news, blogs, policy, Twitter, patents, peer review, Weibo, Facebook, Wikipedia,
Google, Reddit, F1000, Q&A, video, and Mendeley Readers). The 10 most cited TE original articles were ranked according to
the normalized WoS citations and the normalized Altmetric Attention Score. Second, to better comprehend the TE online
framework, correlation and factor analyses were performed based on the suitable results previously obtained for the Bartlett
sphericity and Kaiser–Meyer–Olkin tests. Finally, the linear regression model was applied to elucidate the relation between
academics and online media and to construct a prediction equation for TE from altmetrics data.
Results: TE dynamic shows an upward trend in WoS citations, Twitter, Mendeley Readers, and Altmetric Scores. However,
WoS and Altmetric rankings for the most cited documents clearly differ. When compared, the best correlation results were
obtained for Mendeley Readers and WoS (ρ=0.71). In addition, the factor analysis identified 6 factors that could explain the
previously observed differences between academic institutions and the online platforms evaluated. At this point, the mathematical
model constructed is able to predict and explain more than 40% of TE WoS citations from Altmetric scores.
Conclusions: Scientific information related to the construction of bioartificial tissues increasingly reaches society through
different online media. Because the focus of TE research importantly differs when the academic institutions and online platforms are compared, basic and clinical research groups, academic institutions, and health politicians should make a coordinated effort
toward the design and implementation of adequate strategies for information diffusion and population health education.