Researchers unravel cell biology through artificial intelligence

2022-08-20 05:43:21 By : Mr. Jeff Xu

Click here to sign in with or

by Singapore University of Technology and Design

For our cells to proliferate, differentiate or migrate, the nucleus needs the help of its cytoskeleton, the scaffold surrounding the nucleus which provides cells with shape and solid structure. The disruption of this strong coupling, such as the dislocation of the nucleus from its cytoskeleton, is usually a symptom of disease in the body.

However, this relationship between the placement of the nucleus and cytoskeleton organization has never been demonstrated before due to the difficulty in being able to mathematically define the intricate design of the cytoskeleton.

Using conventional scientific methods, a scientist would need to first determine the parameters needed to define and measure the system that is being studied. This human interpretation of reality allows for the measuring of simple systems using well-known parameters such as size, speed and distance. However, for many complex systems, such as the mesh of fibers forming the cytoskeleton, defining the parameters that are important becomes an impossible task.

"Interpreting such complex systems is difficult because we must fit them into our interpretation of reality and its predefined measurables. With the thousands of intermingled spaghetti-like fibers, it would be humanly impossible to tell where one starts and the other ends, let alone figure out the parameters of the study," explained principal investigator Assoc Prof Fernandez from SUTD.

The researchers then decided to disentangle the issue from a completely new perspective, shifting their focus from the system, to the observer instead.

Assoc Prof Javier G. Fernandez and Ph.D. candidate Jyothsna Vasudevan from the Singapore University of Technology and Design (SUTD) collaborated with National University of Singapore and the Nanyang Technological University and successfully demonstrated the correlation between cytoskeleton organization and nuclear position by turning to artificial intelligence. Their study, "From qualitative data to correlation using deep generative networks: Demonstrating the relation of nuclear position with the arrangement of actin filaments," was published in PLOS ONE.

To ensure that the study's parameters would not be limited by human conceptualization, they developed a unique generative algorithm to interpret the cytoskeleton of eukaryotic cells using qualitative data, without telling the system what it was observing and how to measure it.

"We separated the information related to the nucleus and the fibers in independent databases of images, ensuring that there wasn't any information about the nucleus found in the images of the fibers, so that the system couldn't cheat. Then we trained the system to find the location of the nucleus using only information specific to fibers. To do so, the system had to take the qualitative data and figure out on its own if there was a relation between the organization of the fibers and the position of the nucleus. This forced the program to find the parameters defining the system, free from human interpretation and predefined concepts," Assoc Prof Fernandez added.

The algorithm was able to successfully predict the presence and the location of the nuclei in more than 8,000 cells, with almost half of those predictions resulting in a deviation of less than 1 μm from their exact position. This demonstrated, with astounding significance, the hypothesis of a deterministic relation between the arrangements of the actin filaments and the position of the nucleus, one of the most basic relations in cell biology. Assoc Prof Fernandez believes that this has also resulted in an epistemological outcome.

"This study has transformed the way we think about adapting our scientific research methods to allow machine learning to not just be used as a tool to analyze data, but to also interpret reality. For the inherently complex systems in biology, this will undoubtedly accelerate the next technological revolution—the 'biologization' of technology. This will enable the complexities and intricacies of biological systems to be truly unraveled and dominated using machine learning," said Assoc Prof Fernandez. Explore further Cells: Divide and enlarge More information: Jyothsna Vasudevan et al, From qualitative data to correlation using deep generative networks: Demonstrating the relation of nuclear position with the arrangement of actin filaments, PLOS ONE (2022). DOI: 10.1371/journal.pone.0271056 Journal information: PLoS ONE

Provided by Singapore University of Technology and Design Citation: Researchers unravel cell biology through artificial intelligence (2022, August 16) retrieved 20 August 2022 from https://phys.org/news/2022-08-unravel-cell-biology-artificial-intelligence.html This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

More from Biology and Medical

Use this form if you have come across a typo, inaccuracy or would like to send an edit request for the content on this page. For general inquiries, please use our contact form. For general feedback, use the public comments section below (please adhere to guidelines).

Please select the most appropriate category to facilitate processing of your request

Thank you for taking time to provide your feedback to the editors.

Your feedback is important to us. However, we do not guarantee individual replies due to the high volume of messages.

Your email address is used only to let the recipient know who sent the email. Neither your address nor the recipient's address will be used for any other purpose. The information you enter will appear in your e-mail message and is not retained by Phys.org in any form.

Get weekly and/or daily updates delivered to your inbox. You can unsubscribe at any time and we'll never share your details to third parties.

Medical research advances and health news

The latest engineering, electronics and technology advances

The most comprehensive sci-tech news coverage on the web

This site uses cookies to assist with navigation, analyse your use of our services, collect data for ads personalisation and provide content from third parties. By using our site, you acknowledge that you have read and understand our Privacy Policy and Terms of Use.