Resumen: Due to resource limitations, the COVID-19 pandemic presented substantial challenges for large-scale testing. Traditional approaches often fail to balance detection rates with limited reagents and laboratory capacity. In this work we introduced a machine learning–driven triage framework to stratify individuals by contagion risk and deploy adaptive testing protocols accordingly. We adapted the strategies according to the characteristics of RT-PCR tests, which offer high sensitivity, but they require specialized laboratories, and alternative tests, which trade speed for lower accuracy. We hypothesized that combining risk-based classification with cost-effective testing methods could optimize case detection and resource utilization.
Venue: Sala de Seminarios John Von Neumann del Centro de Modelamiento Matemático (Beauchef 851, Edificio Norte, Piso 7).
Speaker: Maikol Solís
Affiliation: Escuela de Matemática, Centro de Investigación en Matemática Pura y Aplicada (CIMPA), Universidad de Costa Rica.
Coordinator: Héctor Ramírez
Posted on Oct 23, 2025 in Seminars



Noticias en español
