Deep forecasting of translational impact in medical research
Amy PK Nelson, Robert J Gray, James K Ruffle, Henry C Watkins, Daniel, Herron, Nick Sorros, Danil Mikhailov, M. Jorge Cardoso, Sebastien Ourselin,, Nick McNally, Bryan Williams, Geraint E. Rees, Parashkev Nachev

TL;DR
This study demonstrates that content-based models analyzing biomedical publication abstracts and metadata can predict real-world translational impact more accurately than traditional citation metrics, across various domains and over time.
Contribution
The paper introduces high-dimensional content-based models that outperform citation metrics in predicting biomedical research impact on patents, guidelines, and policy inclusion.
Findings
Content models achieve AUROC > 0.9 in impact prediction
Citation metrics are only moderately predictive of impact
Models generalize across time and biomedical domains
Abstract
The value of biomedical research--a $1.7 trillion annual investment--is ultimately determined by its downstream, real-world impact. Current objective predictors of impact rest on proxy, reductive metrics of dissemination, such as paper citation rates, whose relation to real-world translation remains unquantified. Here we sought to determine the comparative predictability of future real-world translation--as indexed by inclusion in patents, guidelines or policy documents--from complex models of the abstract-level content of biomedical publications versus citations and publication meta-data alone. We develop a suite of representational and discriminative mathematical models of multi-scale publication data, quantifying predictive performance out-of-sample, ahead-of-time, across major biomedical domains, using the entire corpus of biomedical research captured by Microsoft Academic Graph…
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Taxonomy
TopicsMeta-analysis and systematic reviews · Explainable Artificial Intelligence (XAI) · scientometrics and bibliometrics research
