Gabriel Campos Vieira, João Henrique de Araújo Morais, Débora Medeiros de Oliveira E Cruz, Caroline Dias Ferreira, Wagner Tassinari, Valeria Saraceni, Gislani Mateus Oliveira Aguilar, Oswaldo Gonçalves Cruz
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引用次数: 0
Abstract
Text fields in medical records are a valuable source for Public Health Surveillance but remain underutilized. This study describes the use of natural language processing (NLP) to enhance the identification of suspected cases and monitor disease trends in electronic records from the Urgency and Emergency Network (Rede de Urgência e Emergência - RUE), in the municipality of Rio de Janeiro (MRJ). Texts were pre-processed, and rules were applied to identify individual (measles and rubella) and collective (diarrhea and influenza-like syndrome) events, comparing the results with ICD-10 data from January 2023 to September 2024. A total of 28 suspected measles cases and 33 suspected rubella cases were identified through ICD, while the NLP technique detected an additional 30 suspected cases of measles and 17 of rubella based on patient complaints. Time series of diarrhea and influenza-like syndrome (síndrome gripal - SG), stemming from ICD and complaints, showed a cross-correlation above 0.93 at lag 0. Complaint analysis, particularly after the discontinuation of nonspecific SG ICD codes by RUE management, revealed a greater stability and expanded detection of suspected cases, demonstrating the potential of NLP in epidemiological surveillance in MRJ.
期刊介绍:
Ciência & Saúde Coletiva publishes debates, analyses, and results of research on a Specific Theme considered current and relevant to the field of Collective Health. Its abbreviated title is Ciênc. saúde coletiva, which should be used in bibliographies, footnotes and bibliographical references and strips.