果酱视频

Published:

果酱视频 math professor crunches numbers to catch cancer at its onset.

While organ transplants save lives, they come with their own risks. Transplant recipients develop certain cancers at a rate up to 1,000 times higher than the general population. Why? The very drugs that enable the body to accept a donor organ also suppress the immunities essential to fighting cancer.

Because the types of cancers that develop in transplant recipients vary widely, posttransplant patients would theoretically have to withstand frequent, invasive and hugely expensive screenings from the moment they recover until the end of their lives. But new research shows that doctors should increase cancer checks over time, not soon after transplants, sparing patients extra procedures and medical expenses.

Josh Hiller, Ph.D., assistant professor of math at 果酱视频, helped create the mathematical model that predicts the incidences of cancer in transplant patients. Last July, he co-authored an article about risk prediction in carcinogenesis in the Bulletin of Mathematical Biology.

The article examined risk in lung cancer patients as well as transplant recipients. Dr. Hiller and his national research team posited that lung cancer patients who stopped smoking faced the greatest risk of recurrence in the first five years after quitting tobacco. These patients鈥攊n direct contrast to transplant patients鈥攏eed close monitoring at the beginning of their recovery rather than further on.

The article demonstrates the way mathematics can be used to find patterns in data and shows how modeling can help transform cancer treatment and prevention.

鈥淚 was always into biology, but my interest increased when I was in graduate school and my father developed cancer,鈥 Dr. Hiller said. 鈥淚 became interested in mathematics and oncology and started focusing on that.鈥 Working with his adviser鈥攚ho would become a co-author on his papers鈥擠r. Hiller used his math and statistical acumen to develop more accurately predictive models.

Dr. Hiller first established a foothold in the field of mathematical carcinogenesis more than two years ago with a co-authored paper that analyzed patterns of cancer incidence. Published in the journal Progress in Biophysics & Molecular Biology, the article refines a classic statistical model of carcinogenesis, known as the 鈥淎rmitage鈥揇oll model鈥 after the two scientists who first proposed it in 1954. The model suggests that a sequence of multiple distinct genetic events precede the onset of cancer.

鈥淥ur research team looked at more than 1,200 global cancer studies published over 60 years to fine-tune the Doll model,鈥 Dr. Hiller said. 鈥淲e found that the risk of developing cancer is negligible at birth and increases until age 75, then hits a downward slope statistically. What surprised us is that there didn鈥檛 seem to be a good model to explain the decrease in cancer risk.鈥

Cancer incidence is fairly easy to study, Dr. Hiller added, because 鈥測ou look at the total population and divide it by cancers people develop at any given ages. But the model becomes much harder to create when you鈥檙e looking at relative risk of cancers.鈥 Relative risk shows the connection between a risk factor and a particular type of cancer. Scientists compare the number of cancers in a group of people who have a particular trait with the number of cancers in a group of people who lack that trait. For instance, they might compare the relative lung cancer risk for people who smoke with the relative lung cancer risk in a similar group of people who don鈥檛 smoke.

Using age as the 鈥渞elative risk鈥 of cancer onset, Dr. Hiller鈥檚 team created a mathematical model showing that incidence of cancer slows after age 75. Because cells in older people begin reproducing more slowly, cancers have less opportunity to form, accounting for the drop in cancer rates in people over 75.

Now, Dr. Hiller is taking the lessons learned from these models and using them in a very different context, working with a newly formed team to find ways for the model to predict deforestation. 鈥淚鈥檓 currently investigating deforestation policies in Argentina and what effect those policies will have on the local biosphere,鈥 he said.

This research is also applicable in the classroom, where Dr. Hiller teaches courses on statistics and data analysis. He wants students to regard mathematical modeling as a creative endeavor that goes beyond formulas and theories and across disciplines. 鈥淚t鈥檚 totally counterintuitive that a mathematical model that works in cancer epidemiology will work in deforestation prediction,鈥 Dr. Hiller said. 鈥淏ut that鈥檚 the beauty of the field.鈥


Josh Hiller, Ph.D., is an assistant professor of mathematics and听computer science. His research focuses on stochastic processes,听mathematical biology (including mathematical epidemiology,听models of deforestation and carcinogenesis), algebraic听combinatorics and graph theory. He received his Ph.D.听in mathematics from the University of Florida.


For further information, please contact:

Todd Wilson
Strategic Communications Director
p 鈥 516.237.8634
e 鈥 twilson@adelphi.edu

Contact
Phone Number
More Info
Location
Levermore Hall, 205
Search Menu