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Ranking cancer cells for treatment
Dr. John Dick, (L), is a Senior Scientist at Princess Margaret Cancer Centre and a Professor in the Department of Molecular Genetics at the University of Toronto. Andy Zeng is an MD/PhD student at the University of Toronto and first author of the study. Photo: UHN StRIDe Team

A study published in Nature Medicine from researchers at the Princess Margaret Cancer Centre reveals a potential way to tailor acute myeloid leukemia (AML) therapies to individual patients.

Currently chemotherapy remains the main treatment for individuals with AML. Despite this one-size-fits-all approach, cancer cells in AML are not all the same. Despite being abnormal, cancer cells still represent a caricature of normal blood development.

However, the process whereby cancer develops is individualistic, so each patient reflects its own distinct caricature. This means that there are distinct populations of cancer cells present in AML and the proportions of these cells differ between individual patients. Because of this, patients respond differently to therapy.

While there has been an emergence of new AML therapies into the clinic that target different cancer cell vulnerabilities, it is still difficult to predict which therapy would be best suited for each patient.

To address this, a team of researchers led by Senior Scientist Dr. John Dick developed an approach that can help predict a cancer's response to therapy in a biologically intuitive way.

"In our approach, we considered the identity of all the leukemic cells present in a particular patient and asked how each type of leukemia cell compares to a normal blood hierarchy," says Andy Zeng, an MD/PhD candidate in Dr. Dick's lab and first author of the study. "In this way, we created a description of each patients cellular hierarchy.

"This personalized description of the leukemic hierarchy, which comprises different cancer cells that are present in different proportions, represents a type of 'fingerprint' that we can use to compare to any clinical property including how an individual's cancer will respond to therapy."

In the study, the team characterized the personalized cellular hierarchies of more than 1000 AML patient samples using genomic sequencing data from leukemic cell types that ranged from stem cells to mature cells. Gene expression was used to estimate the abundance of each cell type within a patient's hierarchy.

They found that these personalized hierarchies could be grouped together, resulting into four main classes, where each class varies in how they respond to experimental drugs. They also identified a panel of seven genes that can be used to classify patient hierarchies and then predict how each particular AML sample will respond to over 100 experimental drugs.

"These new insights address a long-standing clinical challenge in AML – one that has prevented us from predicting survival outcomes and relapse following chemotherapy," says Dr. Dick, who is also a Professor in the Department of Molecular Genetics at the University of Toronto. "By looking at the cell hierarchies in these cancers, we can now identify which drugs can best target them.

"These insights are now enabling us to begin to explore how therapies can be tailored to individuals, so that the right patient gets the right treatment when they need it the most.

"We think this approach we developed for AML might be applicable to many other types of cancer."

This work was supported by the Canadian Institutes of Health Research, the Ontario Institute for Cancer Research, the International Development Research Centre, the Canadian Cancer Society, the Terry Fox Research Institute, the University of Toronto's Medicine by Design, the Government of Ontario and The Princess Margaret Cancer Foundation. Dr. John Dick holds a Tier 1 Canada Research Chair in Stem Cell Biology.

Read more about the study.

This story first appeared on UHN News.

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