ºÚÁÏÍø

News

New LOLS machine learning approach facilitates molecular conformer search in complex molecules

A new method based on machine learning yields promising results when searching for molecular conformers even in large molecules
Schematic showing molecules

CEST researchers developed a new machine learning approach based on a low-energy latent space (LOLS) and density functional theory (DFT) to search for molecular conformers.

Molecular conformer search is a topic of great importance in computational chemistry, drug design and material science. The challenge is to identify low-energy conformers in the first place. This difficulty arises from the high complexity of search spaces, as well as the computational cost associated with accurate quantum chemical methods. In the past, conformer search would take up considerable time and computational resources.

A person standing by water
Photo showing Xiaomi Guo

To address this challenge, visiting doctoral student Xiaomi Guo, together with other CEST researchers Lincan Fang, Prof. Patrick RinkeDr. Xi Chen, and Prof. Milica Todorovic (University of Turku) explored the possibility of performing the molecular conformer search in a low-dimensional latent space. This method uses a generative model variational auto-encoder (VAE) and biases the VAE towards low-energy molecular configurations to generate more informative data. In this way, the model can effectively learn the low-energy potential surface and hence identify the related molecular conformers. The CEST teams calls their new method low-energy latent space (LOLS) conformer search.

In a recent publication the authors tested this new LOLS procedure on amino acids and peptides with 5–9 searching dimensions. The new results agree well with previous studies. The team found that for small molecules such as cysteine, it is more efficient to sample data in real space; however, LOLS turns out to be more suitable for larger molecules such as peptides. The authors now plan to extend their structure search methods to more complex materials beyond molecules.

This research paper is published in The Journal of Chemical Theory and Computation under .

The code used in this work can be found at .

For more details contact

Xi Chen

Academy Research Fellow
  • Updated:
  • Published:
Share
URL copied!

Read more news

A woman in white stands in a theatrical dressing room with violet walls, a lit vanity mirror, and hanging clothes.
Cooperation, Research & Art Published:

Hämeenlinna Art Museum’s exhibition brings artworks to life through film

Hämeenlinna Art Museum will open a new exhibition Kehyskertomuksia: 24 fps / Reframing Cinema, produced in collaboration with the Aalto University Department of Film ELO.
Open Access Week 2025 poster with nine images behind the open access symbol and event details.
Research & Art Published:

Publishing Research Data Alongside Research Articles

Data availability statements are increasingly required by scientific journals. They include information on what data are available, where they can be found, and any applicable access terms
Open Access Week 2025 poster with nine images behind the open access symbol and event details.
Research & Art Published:

Who publishes our open access publications?

Researchers at Aalto and Helsinki Universities favor open access journals with author fees published by large publishers. Popular journals without author fees are often published by universities or societies.
Bioinspired film, leek. Photo by Maija Vaara and Mithila Mohan, Aalto University
Research & Art Published:

Learning, growing, and exploring: a path through doctoral studies at Aalto

Hamidreza Daghigh Shirazi reflects on his doctoral journey at Aalto University