Large scale text mining for deriving useful insights: A case study focused on microbiome

Abstract

Text mining has been shown to be an auxiliary but key driver for modeling, data harmonization, and interpretation in bio-medicine. Scientific literature holds a wealth of information and embodies cumulative knowledge and remains the core basis on which mechanistic pathways, molecular databases, and models are built and refined. Text mining provides the necessary tools to automatically harness the potential of text. In this study, we show the potential of large-scale text mining for deriving novel insights, with a focus on the growing field of microbiome. We first collected the complete set of abstracts relevant to the microbiome from PubMed and used our text mining and intelligence platform Taxila for analysis. We drive the usefulness of text mining using two case studies. First, we analyze the geographical distribution of research and study locations for the field of microbiome by extracting geo mentions from text. Using this analysis, we were able to draw useful insights on the state of research in microbiome w. r.t geographical distributions and economic drivers. Next, to understand the relationships between diseases, microbiome, and food which are central to the field, we construct semantic relationship networks between these different concepts central to the field of microbiome. We show how such networks can be useful to derive useful insight with no prior knowledge encoded.

Document Details

Document Type
Pub Defense Publication
Publication Date
Aug 31, 2022
Source ID
10.3389/fphys.2022.933069

Entities

People

  • Ayako Yachie
  • Bipin Pradeep Kumar
  • Nishad Bapatdhar
  • Samik Ghosh
  • Sucheendra K. Palaniappan
  • Syed Ashif Jardary Al Ahmed

Organizations

  • Office of Naval Research Global

Tags

Readers

  • Distributed Systems and Data Platform Development
  • Gulf War Illness and Chronic Multisymptom Illness in Veterans.
  • Library and Information Science