Natural Language Processing to Extract Information from Portuguese-Language Medical Records

Author:

da Rocha Naila1ORCID,Barbosa Abner2ORCID,Schnr Yaron2,Machado-Rugolo Juliana3ORCID,de Andrade Luis2,Corrente José4,de Arruda Silveira Liciana1ORCID

Affiliation:

1. Department of Biostatistics, Institute of Biosciences, Universidade Estadual Paulista (UNESP), Botucatu 18618-970, Brazil

2. Medical School, Universidade Estadual Paulista (UNESP), Botucatu 18618-970, Brazil

3. Health Technology Assessment Center (Clinical Hospital of the Botucatu Medical School), Botucatu 18618-970, Brazil

4. Research Support Office, Fundação para o Desenvolvimento Médico e Hospitalar (FAMESP), Botucatu 18618-687, Brazil

Abstract

Studies that use medical records are often impeded due to the information presented in narrative fields. However, recent studies have used artificial intelligence to extract and process secondary health data from electronic medical records. The aim of this study was to develop a neural network that uses data from unstructured medical records to capture information regarding symptoms, diagnoses, medications, conditions, exams, and treatment. Data from 30,000 medical records of patients hospitalized in the Clinical Hospital of the Botucatu Medical School (HCFMB), São Paulo, Brazil, were obtained, creating a corpus with 1200 clinical texts. A natural language algorithm for text extraction and convolutional neural networks for pattern recognition were used to evaluate the model with goodness-of-fit indices. The results showed good accuracy, considering the complexity of the model, with an F-score of 63.9% and a precision of 72.7%. The patient condition class reached a precision of 90.3% and the medication class reached 87.5%. The proposed neural network will facilitate the detection of relationships between diseases and symptoms and prevalence and incidence, in addition to detecting the identification of clinical conditions, disease evolution, and the effects of prescribed medications.

Publisher

MDPI AG

Subject

Information Systems and Management,Computer Science Applications,Information Systems

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