ºÚÁÏÍø

News

Search engine for more accurate and fast recognition of metabolites

Potential applications for the machine-learning based method include anti-doping work, drug control by the Customs and crime scene investigation.

Percentage of searches with the correct identification among the top 10 matches. The method developed by Aalto University and the University of Jena is clearly more accurate than its rivals.

Researchers from Aalto University and the University of Jena in Germany have developed a search engine named CSI:FingerID that identifies metabolites from tandem mass spectrometry measurements with an accuracy more than 150 per cent higher than its rivals, which may make the work of researchers in life and medical sciences easier. The study was recently published in the highly regarded PNAS journal. 

Metabolites are small molecules, such as sugars, fatty acids and amino acids that, among other things, serve as sources of energy in the cells and as building materials for cell walls. For researchers they are, as it were, traces of the functioning and status of cells.

The molecular structures it predicts can be used in much the same way as search results from the Google search engine.

‘There are lots of metabolites, from hundreds of thousands to millions, and they all look a bit alike. In our study, we constructed a model that relies on machine learning. The molecular structures it predicts can be used in much the same way as search results from the Google search engine,’ explains Professor Juho Rousu from Aalto University.

Molecule fingerprints

The tandem mass spectrometer used in the study is an instrument that splits molecules into fragments to measure their masses and relative abundances, or their mass spectrum. In the method developed by researchers from Aalto and Jena, a fragmentation tree is first computed from each spectrum included in the training data that describes for each fragment its parent, a larger fragment where it originated. Then, the researchers train the machine learning model using a large number of fragmentation trees and molecular properties or fingerprints that corresponds to each tree. When the spectrum of a new molecule is then given for the model, it predicts its probable fingerprints based on which a set of best-matching molecules is retrieved from the molecule database.

Depending on the type of the molecules, as much as 95 per cent of the searches currently return the correct search result among the top 10 matches. The accuracy of the identification improves as the volume of the data is increased. Currently, approximately 6,000 mass spectra have been used in building up the model. In an ideal situation, the machine-learning based search engine would always suggest the correct molecule as the first match, but this calls for a considerable increase in the data volume and further development of the methods.

The study could benefit researchers in life and medical sciences in particular. Potential future application areas include anti-doping work, drug control by the Customs and crime scene investigation.

Conducted in collaboration with a research group headed by Professor Sebastian Böcker of the University of Jena, the study serves as a good example of Aalto University’s research that combines information technology with digital health.

Further information:

Professor Juho Rousu
Tel. +358 (0)50 415 1702
juho.rousu@aalto.fi

Article:

  • Updated:
  • Published:
Share
URL copied!

Read more news

A person wearing a colourful shirt and brown hat speaks into a microphone with a background of an image of a forest.
Research & Art Published:

Having autonomy in your life is more important in wealthier countries, says new research on well-being

A worldwide analysis reveals a nuanced relationship between happiness, volition and wealth.
Piirroskuva älupuhelinta katsovasta ihmisestä, jonka pään yllä leijuu stressiä kuvaava pilvi.
Research & Art Published:

Retail therapy fail? Online shopping linked to stress, says study

Shopping, social media use and gaming are the most likely online activities to correlate with stress, according to a new study
People sitting at tables with laptops and coffee cups, engaging in conversation.
Research & Art, Studies Published:

Aalto Inventors innovation training coming for hydrogen, quantum and microelectronics researchers this spring

Connect with industry and academic thought-leaders and gain widely applicable skills in communication, intellectual property, and business.
Two people in blue shirts are looking at a laptop screen in an industrial setting.
Cooperation, Research & Art Published:

Seizing opportunities — Vuong Vo’s path led through Aalto University and VTT to build the protein factory of the future

Vuong Vo's path led through Aalto University and VTT to a startup, where he is helping build the protein factory of the future.