Auto-STEED: A data mining tool for automated extraction of experimental parameters and risk of bias items from in vivo publications

Author:

Zürrer Wolfgang Emanuel1,Cannon Amelia Elaine1,Ewing Ewoud2,Brüschweiler David1,Bugajska Julia1,Hild Bernard Friedrich1,Rosso Marianna1,Reich Daniel S.3,Ineichen Benjamin Victor1

Affiliation:

1. University of Zurich

2. Karolinska University Hospital, Karolinska Institute

3. National Institutes of Health

Abstract

Abstract Background: Systematic reviews, i.e., research summaries that address focused questions in a structured and reproducible manner, are a cornerstone of evidence-based medicine and research. However, certain systematic review steps such as data extraction are labour-intensive which hampers their applicability, not least with the rapidly expanding body of biomedical literature. To bridge this gap, we aimed at developing a data mining tool in the R programming environment to automate data extraction from neuroscience in vivo publications. The function was trained on a literature corpus (n=45 publications) of animal motor neuron disease studies and tested in two validation corpora (motor neuron diseases, n=31 publications; multiple sclerosis, n=244 publications). Results: Our data mining tool Auto-STEED (Automated and STructured Extraction of Experimental Data) was able to extract key experimental parameters such as animal models and species as well as risk of bias items such as randomization or blinding from in vivo studies. Sensitivity and specificity were over 85 and 80%, respectively, for most items in both validation corpora. Accuracy and F-scores were above 90% and 0.9 for most items in the validation corpora. Time savings were above 99%. Conclusions: Our developed text mining tool Auto-STEED that can extract key experimental parameters and risk of bias items from the neuroscience in vivoliterature. With this, the tool can be deployed to probe a field in a research improvement context or to replace one human reader during data extraction resulting in substantial time-savings and contribute towards automation of syste99matic reviews. The function is available on Github.

Publisher

Research Square Platform LLC

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