Detecci\'on Autom\'atica de Patolog\'ias en Notas Cl\'inicas en Espa\~nol Combinando Modelos de Lenguaje y Ontolog\'ias M\'edicos
L\'eon-Paul Schaub Torre, Pelayo Quir\'os, Helena Garc\'ia Mieres

TL;DR
This paper introduces a hybrid approach combining large language models and medical ontologies to automatically detect dermatological pathologies in medical reports, achieving state-of-the-art classification accuracy.
Contribution
It presents a novel hybrid method that leverages language models and ontologies, demonstrating improved accuracy in classifying dermatological conditions from medical texts.
Findings
Precision of 0.84 in pathology classification
Micro F1-score of 0.82
Macro F1-score of 0.75
Abstract
In this paper we present a hybrid method for the automatic detection of dermatological pathologies in medical reports. We use a large language model combined with medical ontologies to predict, given a first appointment or follow-up medical report, the pathology a person may suffer from. The results show that teaching the model to learn the type, severity and location on the body of a dermatological pathology as well as in which order it has to learn these three features significantly increases its accuracy. The article presents the demonstration of state-of-the-art results for classification of medical texts with a precision of 0.84, micro and macro F1-score of 0.82 and 0.75, and makes both the method and the dataset used available to the community. -- En este art\'iculo presentamos un m\'etodo h\'ibrido para la detecci\'on autom\'atica de patolog\'ias dermatol\'ogicas en informes…
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Taxonomy
TopicsNatural Language Processing Techniques
