Multilingual Medical Question Answering and Information Retrieval for Rural Health Intelligence Access
Vishal Vinod, Susmit Agrawal, Vipul Gaurav, Pallavi R, Savita, Choudhary

TL;DR
This paper presents a multilingual, low-resource NLP pipeline leveraging recent machine learning advances to provide preliminary medical information and support healthcare access in rural regions of developing countries.
Contribution
The paper introduces a comprehensive NLP pipeline for multilingual medical question answering and information retrieval tailored for rural health access, including novel integration of various NLP tasks.
Findings
Promising results in NLP pipeline components
Preliminary success in electronic health record analysis
Effective multilingual question answering performance
Abstract
In rural regions of several developing countries, access to quality healthcare, medical infrastructure, and professional diagnosis is largely unavailable. Many of these regions are gradually gaining access to internet infrastructure, although not with a strong enough connection to allow for sustained communication with a medical practitioner. Several deaths resulting from this lack of medical access, absence of patient's previous health records, and the unavailability of information in indigenous languages can be easily prevented. In this paper, we describe an approach leveraging the phenomenal progress in Machine Learning and NLP (Natural Language Processing) techniques to design a model that is low-resource, multilingual, and a preliminary first-point-of-contact medical assistant. Our contribution includes defining the NLP pipeline required for named-entity-recognition,…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Biomedical Text Mining and Ontologies
