Last updated on 5-11-2025 by Steven Van Borm
Peer reviewed scientific article
English
SCIENSANO
Authors
Franzo, Giovanni; Fusaro, Alice; Snoeck, Chantal J; Dodovski, Aleksandar; Steven Van Borm; Mieke Steensels; Christodoulou, Vasiliki; Onita, Iuliana; Burlacu, Raluca; Sánchez, Azucena Sánchez; Chvala, Ilya A; Torchetti, Mia Kim; Shittu, Ismaila; Olabode, Mayowa; Pastori, Ambra; Schivo, Alessia; Salomoni, Angela; Maniero, Silvia; Zambon, Ilaria; Bonfante, Francesco; Monne, Isabella; Cecchinato, Mattia; Bortolami, AlessioKeywords
Abstract:
Newcastle disease virus (NDV) continues to present a significant challenge for vaccination due to its rapid evolution and the emergence of new variants. Although molecular and sequence data are now quickly and inexpensively produced, genetic distance rarely serves as a good proxy for cross-protection, while experimental studies to assess antigenic differences are time consuming and resource intensive. In response to these challenges, this study explores and compares several machine learning (ML) methods to predict the antigenic distance between NDV strains as determined by hemagglutination-…
