Journal article

Genome-Wide Inference of Essential Genes in Dirofilaria immitis Using Machine Learning

TL Campos, PK Korhonen, ND Young, SB Sumanam, W Bullard, JM Harrington, J Song, BCH Chang, RJ Marhöfer, PM Selzer, RB Gasser

International Journal of Molecular Sciences | MDPI AG | Published : 2025

Abstract

The filarioid nematode Dirofilaria immitis is the causative agent of heartworm disease, a major parasitic infection of canids, felids and occasionally humans. Current prevention relies on macrocyclic lactone-based chemoprophylaxis, but the emergence of drug resistance highlights the need for new intervention strategies. Here, we applied a machine learning (ML)-based framework to predict and prioritise essential genes in D. immitis in silico, using genomic, transcriptomic and functional datasets from the model organisms Caenorhabditis elegans and Drosophila melanogaster. With a curated set of 26 predictive features, we trained and evaluated multiple ML models and, using a defined threshold, w..

View full abstract