ÄûÃʵ¼º½

News

AI predicts which drug combinations kill cancer cells

A machine learning model can help us treat cancer more effectively
Some medicine capsules and equations
AI methods can help us perfect drug combinations. Credit: Matti Ahlgren, Aalto University

When healthcare professionals treat patients suffering from advanced cancers, they usually need to use a combination of different therapies. In addition to cancer surgery, the patients are often treated with radiation therapy, medication, or both.

Medication can be combined, with different drugs acting on different cancer cells. Combinatorial drug therapies often improve the effectiveness of the treatment and can reduce the harmful side-effects if the dosage of individual drugs can be reduced. However, experimental screening of drug combinations is very slow and expensive, and therefore, often fails to discover the full benefits of combination therapy. With the help of a new machine learning method, one could identify best combinations to selectively kill cancer cells with specific genetic or functional makeup. 

Researchers at Aalto University, University of Helsinki and the University of Turku in Finland developed a machine learning model that accurately predicts how combinations of different cancer drugs kill various types of cancer cells. The new AI model was trained with a large set of data obtained from previous studies, which had investigated the association between drugs and cancer cells. ‘The model learned by the machine is actually a polynomial function familiar from school mathematics, but a very complex one,’ says Professor Juho Rousu from Aalto University.

The research results were published in the , demonstrating that the model found associations between drugs and cancer cells that were not observed previously. ‘The model gives very accurate results. For example, the values ​​of the so-called correlation coefficient were more than 0.9 in our experiments, which points to excellent reliability,’ says Professor Rousu. In experimental measurements, a correlation coefficient of 0.8-0.9 is considered reliable. 

The model accurately predicts how a drug combination selectively inhibits particular cancer cells when the effect of the drug combination on that type of cancer has not been previously tested. ‘This will help cancer researchers to prioritize which drug combinations to choose from thousands of options for further research,’ says researcher Tero Aittokallio from the Institute for Molecular Medicine Finland (FIMM) at the University of Helsinki.

The same machine learning approach could be used for non-cancerous diseases. In this case, the model would have to be re-taught with data related to that disease. For example, the model could be used to study how different combinations of antibiotics affect bacterial infections or how effectively different combinations of drugs kill cells that have been infected by the SARS-Cov-2 coronavirus.

Further information

Heli Julkunen
Project Researcher, Aalto University
heli.julkunen@aalto.fi

Juho Rousu
Professor, Aalto University
Finnish Center for Artificial Intelligence FCAI
juho.rousu@aalto.fi
Tel. +358 50 4151 702

Tero Aittokallio
Group Leader, Institute for Molecular Medicine Finland (FIMM), University of Helsinki
tero.aittokallio@helsinki.fi

Read the full paper

Heli Julkunen, Anna Cichonska, Prson Gautam, Sandor Szedmak, Jane Douat, Tapio Pahikkala, Tero Aittokallio, and Juho Rousu. Leveraging multiway interactions for systematic prediction of pre-clinical drug combination effects. Nature Communications. DOI: 10.1038/s41467-020-19950-z

Link to the research article: 

Read more

FCAI logo

fcai.fi

  • Updated:
  • Published:
Share
URL copied!

Read more news

A collage of nine people in formal and casual attire. Backgrounds vary from office settings to plain walls.
Research & Art Published:

Research Council of Finland establishes a Center of Excellence in Quantum Materials

The Centre, called QMAT, creates new materials to power the quantum technology of coming decades.
Split image: left shows a white truck on a road with plants; right shows digital lines and a partial face. Text: unite! #UniteSeedFund
Awards and Recognition, Cooperation Published:

Two Unite! Seed Fund projects involving Aalto secure top EU funding

Two prestigious EU grants have been awarded to projects that were initially supported with Unite! Seed Funding. Both projects involve Aalto.
arotor adjustable stiffness test setup
Cooperation, Research & Art Published:

Major funding powers development of next-generation machine technology aimed at productivity leap in export sectors

The BEST research project is developing new types of sealing, bearing, and damping technology.
TAIMI-hanke rakentaa tasa-arvoista työelämää. Kuva: Kauppakorkeakoulu Hanken.
Research & Art Published:

The TAIMI project builds an equal working life – a six-year consortium project seeks solutions to recruitment and skill challenges

Artificial intelligence (AI) is changing skill requirements, the population is aging, and the labor shortage is deepening. Meanwhile, the potential of international experts often remains unused in Finland. These challenges in working life are addressed by the six-year TAIMI project funded by the Strategic Research Council, and implemented by a broad consortium.