Their paper describes how measures of viral load — the amount of virus in a milliliter of blood drawn in 1989 and 1990 — could have served as effective “surrogate markers” of drug effectiveness.
“One of the cool things about this paper is that we were using the most modern techniques on the oldest data available,” Duke said.
Three decades ago when those samples were drawn, the 72 transplant patients were participating in a clinical trial to test the effectiveness of an antiviral drug, ganciclovir, in preventing or treating CMV infection.
At that time, viral load testing was just beginning to be applied as a way to gauge the health and infectiousness of people infected with HIV, the virus that causes AIDS. It simply was not available to researchers in the cytomegalovirus studies, so drug effectiveness was measured solely by clinical outcomes.
Those outcomes comparing death rates, development of tissue-invasive CMV disease and other complications were tallied over months and years. Modern tests that measure viral load — actually, a handful of tests that comprise a measure called viral load kinetics — can produce answers within days if needed.
These cutting-edge viral load tests were paired with artificial intelligence — also known as machine-learning — and applied to the archived samples retrieved from Fred Hutch freezers. Machine learning is a use of computer programs that can tease out, from huge sets of data, patterns that would otherwise be difficult to detect.
'You put that data in, and it spits out a percentage likelihood that patient will get CMV disease.' — Dr. Elizabeth Duke
The results of the new surrogate marker analyses more or less mirrored the clinical findings made in the early 1990s. Applied to patients today, they can give physicians, in almost real time, important clues how to treat each patient most effectively.
“With machine learning, we are able to predict the outcomes of individuals better,” Duke said.
Using this system, doctors load the data from each patient into a machine-learning algorithm. It might require a person’s viral load, age, and risk factors such transplant complications like graft-vs-host disease, where donor stem cells start attacking the patient’s healthy tissues. The computer then predicts outcomes.
“You put that data in, and it spits out a percentage likelihood that patient will get CMV disease,” Duke said. “That helps the clinician decide, for instance, whom we should test more frequently, who should get prophylactic drugs.”
The Hutch studies produced encouraging results on the use of viral load kinetics to evaluate the effects of ganciclovir in treating patients who have developed CMV disease and for giving it to others deemed at risk, to protect them from developing it.