色色啦

News

Thousands of algorithms trained for predicting the treatment efficacy of rheumatoid arthritis

Best performance in the research was achieved by clinic instead of combined clinic and genetic information.

Rheumatoid arthritis is a chronic inflammatory autoimmune disorder affecting millions of people worldwide. Anti-TNF treatment is a widely used treatment blocking the inflammatory cytokine, but it fails in approximately 1/3 of the patients.

The objective of the wide crowdsourced study was to use algorithms in assessing the efficacy of anti-TNF treatment based on clinic and genetic data, or in identifying the non-responders before the treatment. 73 research teams, altogether hundreds of researchers, worldwide competed in an open challenge using the most comprehensive data available of more than 2700 patients and using a wide range of state-of-the-art modeling methodologies.

Leaderboard of the crowdsourced research challenge initial phase, Team MI ranking 3rd.

The eight teams with the best predictive performances were invited to the final phase. Team MI of Aalto University and Helsinki University Institute for Molecular Medicine Finland (FIMM) were among those eight teams.

鈥淲e used both sparse linear regression model and multiple kernel learning model to predict the treatment response based on the genetic and clinic information, describes Lu Cheng,鈥 Postdoctoral Researcher at the Department of Computer Science.

Team Outlier, the winner in the final phase, did not use any genetic information in the final round. As a conclusion the currently collected genetic data did not significantly contribute to the prediction of treatment response above the clinical predictors including sex, age and medical information.

鈥淚f a limited amount of genetic variants would explain the failure of the treatment in some of the patients, we would have had the prediction model as a result of a vast study like this. Either the amount of the genetic variants is much bigger and their effects respectively much smaller, or the missing heritability is better explained by genetic variants not included in the study, such as rare variants,鈥 tells University Lecturer Pekka Marttinen.

Over the course of the 16-week algorithm training period, 73 teams submitted a total of 4874 predictions for evaluation. The research results have been published in Nature Communications.

More information:

Lu Cheng
Postdoctoral Researcher
Aalto University
lu.cheng@aalto.fi
+358 50 430 1459

Pekka Marttinen
University Lecturer
Aalto University
pekka.marttinen@aalto.fi
+358 50 512 4362

Article:

  • Updated:
  • Published:
Share
URL copied!

Read more news

Four students in colourful hoodies sit indoors talking, two facing camera, two with back turned
Campus Published:

Show your school colours: new hoodies and tote bags now available

The Aalto University Shop launched a new line of school-specific hoodies and tote bags for students, staff, and alumni
Research & Art Published:

ACRIS service restored

The ACRIS research information management system is now open following the planned service break on 13鈥20 April 2026.
Close-up of rainbow-coloured oil slick swirling on dark, dirty water surface with floating specks
Cooperation, Studies, University Published:

Join a summer school on environmental contaminants, held in the French Alps

Explore environmental contaminants through expert-led lectures, hands-on workshops, and international collaboration鈥 with selected students receiving funding for travel and accommodation.
Aalto-HUS PdP project students and intensive care nurse
Cooperation Published:

Collaborating to Revolutionalize Critical Care

A collaboration across Design Factory, HUS, Biodesign Finland, and Aalto students brings urine monitoring into the 21st century