AUTHOR=de Andrade Rodrigues Rafael Saraiva , Heise Eduardo Ferreira José , Hartmann Luis Felipe , Rocha Guilherme Eduardo , Olandoski Marcia , de Araújo Stefani Mariane Martins , Latini Ana Carla Pereira , Soares Cleverson Teixeira , Belone Andrea , Rosa Patrícia Sammarco , de Andrade Pontes Maria Araci , de Sá Gonçalves Heitor , Cruz Rossilene , Penna Maria Lúcia Fernandes , Carvalho Deborah Ribeiro , Fava Vinicius Medeiros , Bührer-Sékula Samira , Penna Gerson Oliveira , Moro Claudia Maria Cabral , Nievola Julio Cesar , Mira Marcelo Távora TITLE=Prediction of the occurrence of leprosy reactions based on Bayesian networks JOURNAL=Frontiers in Medicine VOLUME=10 YEAR=2023 URL=https://www.frontiersin.org/journals/medicine/articles/10.3389/fmed.2023.1233220 DOI=10.3389/fmed.2023.1233220 ISSN=2296-858X ABSTRACT=Introduction

Leprosy reactions (LR) are severe episodes of intense activation of the host inflammatory response of uncertain etiology, today the leading cause of permanent nerve damage in leprosy patients. Several genetic and non-genetic risk factors for LR have been described; however, there are limited attempts to combine this information to estimate the risk of a leprosy patient developing LR. Here we present an artificial intelligence (AI)-based system that can assess LR risk using clinical, demographic, and genetic data.

Methods

The study includes four datasets from different regions of Brazil, totalizing 1,450 leprosy patients followed prospectively for at least 2 years to assess the occurrence of LR. Data mining using WEKA software was performed following a two-step protocol to select the variables included in the AI system, based on Bayesian Networks, and developed using the NETICA software.

Results

Analysis of the complete database resulted in a system able to estimate LR risk with 82.7% accuracy, 79.3% sensitivity, and 86.2% specificity. When using only databases for which host genetic information associated with LR was included, the performance increased to 87.7% accuracy, 85.7% sensitivity, and 89.4% specificity.

Conclusion

We produced an easy-to-use, online, free-access system that identifies leprosy patients at risk of developing LR. Risk assessment of LR for individual patients may detect candidates for close monitoring, with a potentially positive impact on the prevention of permanent disabilities, the quality of life of the patients, and upon leprosy control programs.