Article
SimText: a text mining framework for interactive analysis and visualization of similarities among biomedical entities
Fecha
2021Registro en:
Autor
Macnee, Marie
Pérez Palma, Eduardo
Schumacher-Bass, Sarah
Dalton, Jarrod
Leu, Costin
Blankenberg, Daniel
Lal, Dennis
Institución
Resumen
Literature exploration in PubMed on a large number of biomedical entities (e.g. genes, diseases or experiments) can be time-consuming and challenging, especially when assessing associations between entities. Here, we describe SimText, a user-friendly toolset that provides customizable and systematic workflows for the analysis of similarities among a set of entities based on text. SimText can be used for (i) text collection from PubMed and extraction of words with different text mining approaches, and (ii) interactive analysis and visualization of data using unsupervised learning techniques in an interactive app.