An integrated approach for rare disease detection and classification in Spanish pediatric medical reports

Rare disease detection and classification is one of the most significant challenges in the application of Natural Language Processing techniques to the analysis and extraction of information from biomedical texts. In this paper, we present a novel research focused on the detection and classification...

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Detalhes bibliográficos
Autores: Duque Fernández, Andrés, Araujo Serna, M. Lourdes, Martínez Romo, Juan, Esteban Vasallo, María D., Domínguez Berjón, María Felicitas, Malillos Pérez, David
Tipo de documento: artigo
Data de publicação:2025
País:España
Recursos:Universidad Nacional de Educación a Distancia
Repositório:e-spacio. Repositorio Institucional de la UNED
Idioma:espanhol
OAI Identifier:oai:e-spacio.uned.es:20.500.14468/31577
Acesso em linha:https://hdl.handle.net/20.500.14468/31577
Access Level:Acceso aberto
Palavra-chave:1203 Ciencia de los ordenadores
32 Ciencias Médicas
Rare disease detection
Natural language processing
Spanish medical reports
Large language models
Keyphrase-based information extraction
Descrição
Resumo:Rare disease detection and classification is one of the most significant challenges in the application of Natural Language Processing techniques to the analysis and extraction of information from biomedical texts. In this paper, we present a novel research focused on the detection and classification of rare diseases in clinical notes extracted from a cohort of pediatric patients from the Community of Madrid in Spain. From a set of collected and anonymized medical records, we propose a semi-supervised, keyphrase-based system to perform an initial detection of mentions of rare diseases, which is then validated and refined by experts to build a consolidated dataset concerning a subset of different rare diseases. Based on this dataset, we carry out a series of experiments for rare disease classification using both a semi-supervised technique and state-of-the-art supervised systems based on both discriminative and generative models. A detailed case analysis provides insights on which systems excel in specific scenarios and why. The validated dataset contains a total of 1900 annotated texts containing mentions to rare diseases. Experiments on this dataset show that the best supervised models improve the performance of the semi-supervised system by more than 10% (78.74% vs 67.37% micro-average F-Measure), individually enhancing the classification of a significant number of diseases in the dataset. State-of-the-art supervised systems are able to offer promising results on the detection and classification of rare diseases in clinical texts, even in cases for which the amount of annotated information is low. On the other hand, semi-supervised models present interesting capabilities for dealing with limited information and data in the field.