Knowledge-Based Avoidance of Drug-Resistant HIV Mutants

Lathrop, Richard H., Steffen, Nicholas R., Raphael, Miriam P., Deeds-Rubin, Sophia, Cimoch, Paul J., See, Darryl M., Tilles, Jeremiah G.

AI Magazine 

We describe an AI system (CTSHIV) that connects the scientific AIDS literature describing specific human immunodeficiency virus (HIV) drug resistances directly to the customized treatment strategy of a specific HIV patient. Rules in the CTSHIV knowledge base encode knowledge about sequence mutations in the HIV genome that have been found to result in drug resistance to the HIV virus. Rules are applied to the actual HIV sequences of the virus strains infecting the specific patient undergoing clinical treatment to infer current drug resistance. A rule-directed search through mutation sequence space identifies nearby drug-resistant mutant strains that might arise.