The Scotsman

Test could predict effective cancer treatment combinatio­ns in days

- By NINA MASSEY newsdeskts@scotsman.com

A new test could take less than two days to predict what drug combinatio­ns might work for cancer patients, a new study suggests.

The cutting-edge technique uses artificial intelligen­ce( ai) to analyse data from tumour samples and can more accurately estimate a patient's response to medication than is currently possible.

The test can be carried out in 24 to 48 hours and the rapid turnaround means it has the potential to help doctors decide which treatment is best.

Researcher­s believe the technology could be crucial in overcoming cancer evolution and treatment resistance by allowing doctors to analyse how drugs work in combinatio­n.

While genetic analysis of tumours can reveal mutations that are fuelling cancer's growth - some of which can be targeted with treatment - this informatio­n alone does not provide sufficient­ly accurate prediction­s to select drug combinatio­ns.

Study leader Udai Banerji, professor of molecular cancer pharmacolo­gy at the institute of Cancer research, l on don(icr) said: "Our test provides proof of concept for using AI to analyse changes in the way informatio­n flows within cancer cells and make prediction­s about how tumours are likely to respond to combinatio­ns of drugs.

"With a rapid turnaround time of less than two days, the test has the potential to guide doctors in their judgments on which treatments are most likely to benefit individual cancer patients.

"It is an important step to move forward from our current focus on using genetic mutations to predict response.

"Our findings show that our innovative approach is feasible, and makes more accurate prediction­s than genetic analysis for patients with non-small cell lung cancer."

Scientists at the ICR tested the new technique on individual cancer cells in the lab and tumour cells taken from lung fluid in people with lung cancer.

They used an algorithm to predict how sensitive cells were to individual cancer drugs, and found the technique could predict individual drug responses more accurately than genetic features.

Researcher­s then used the same approach to predict sensitivit­y to drug combinatio­ns - using 21 different two-drug combinatio­ns.

Of 252 total drug combinatio­ns, 128 showed some level of synergy, meaning their combined effect exceeded the effect of each drug added together.

Of these, the AI test correctly identified the top five ranked combinatio­ns 57 per cent of the time and the top 10 ranked combinatio­ns 83 percent of the time.

Researcher­s were able to confirm the effectiven­ess of previously promising combinatio­ns, as well as identify possible new combinatio­ns.

They suggest this is therefore the first prototype test that can offer personalis­ed prediction­s of which drug combinatio­ns are likely to work in different individual­s.

Their study is published in the journal molecular cancer therapeuti­c sand was funded by the National Institute for Health Research, Wellcome, Cancer Research UK and the ICR.

The new study establishe­s proof of concept but further trials are needed before it can be used in patients.

 ?? ?? ↑ The cutting-edge technique uses artificial intelligen­ce to analyse data from tumour samples
↑ The cutting-edge technique uses artificial intelligen­ce to analyse data from tumour samples

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