. Military Space News .
SPACE MEDICINE
Artificial intelligence model finds potential drug molecules a thousand times faster
by Alex Ouyang for MIT News
Boston MA (SPX) Jul 14, 2022

EquiBind (cyan) predicts the ligand that could fit into a protein pocket (green). The true conformation is in pink.

The entirety of the known universe is teeming with an infinite number of molecules. But what fraction of these molecules have potential drug-like traits that can be used to develop life-saving drug treatments? Millions? Billions? Trillions? The answer: novemdecillion, or 1060. This gargantuan number prolongs the drug development process for fast-spreading diseases like Covid-19 because it is far beyond what existing drug design models can compute. To put it into perspective, the Milky Way has about 100 thousand million, or 108, stars.

In a paper that will be presented at the International Conference on Machine Learning (ICML), MIT researchers developed a geometric deep-learning model called EquiBind that is 1,200 times faster than one of the fastest existing computational molecular docking models, QuickVina2-W, in successfully binding drug-like molecules to proteins. EquiBind is based on its predecessor, EquiDock, which specializes in binding two proteins using a technique developed by the late Octavian-Eugen Ganea, a recent MIT Computer Science and Artificial Intelligence Laboratory and Abdul Latif Jameel Clinic for Machine Learning in Health (Jameel Clinic) postdoc, who also co-authored the EquiBind paper.

Before drug development can even take place, drug researchers must find promising drug-like molecules that can bind or "dock" properly onto certain protein targets in a process known as drug discovery. After successfully docking to the protein, the binding drug, also known as the ligand, can stop a protein from functioning. If this happens to an essential protein of a bacterium, it can kill the bacterium, conferring protection to the human body.

However, the process of drug discovery can be costly both financially and computationally, with billions of dollars poured into the process and over a decade of development and testing before final approval from the Food and Drug Administration. What's more, 90 percent of all drugs fail once they are tested in humans due to having no effects or too many side effects. One of the ways drug companies recoup the costs of these failures is by raising the prices of the drugs that are successful.

The current computational process for finding promising drug candidate molecules goes like this: most state-of-the-art computational models rely upon heavy candidate sampling coupled with methods like scoring, ranking, and fine-tuning to get the best "fit" between the ligand and the protein.

Hannes Stark, a first-year graduate student at the MIT Department of Electrical Engineering and Computer Science and lead author of the paper, likens typical ligand-to-protein binding methodologies to "trying to fit a key into a lock with a lot of keyholes." Typical models time-consumingly score each "fit" before choosing the best one. In contrast, EquiBind directly predicts the precise key location in a single step without prior knowledge of the protein's target pocket, which is known as "blind docking."

Unlike most models that require several attempts to find a favorable position for the ligand in the protein, EquiBind already has built-in geometric reasoning that helps the model learn the underlying physics of molecules and successfully generalize to make better predictions when encountering new, unseen data.

The release of these findings quickly attracted the attention of industry professionals, including Pat Walters, the chief data officer for Relay Therapeutics. Walters suggested that the team try their model on an already existing drug and protein used for lung cancer, leukemia, and gastrointestinal tumors. Whereas most of the traditional docking methods failed to successfully bind the ligands that worked on those proteins, EquiBind succeeded.

"EquiBind provides a unique solution to the docking problem that incorporates both pose prediction and binding site identification," Walters says. "This approach, which leverages information from thousands of publicly available crystal structures, has the potential to impact the field in new ways."

"We were amazed that while all other methods got it completely wrong or only got one correct, EquiBind was able to put it into the correct pocket, so we were very happy to see the results for this," Stark says.

While EquiBind has received a great deal of feedback from industry professionals that has helped the team consider practical uses for the computational model, Stark hopes to find different perspectives at the upcoming ICML in July.

"The feedback I'm most looking forward to is suggestions on how to further improve the model," he says. "I want to discuss with those researchers ... to tell them what I think can be the next steps and encourage them to go ahead and use the model for their own papers and for their own methods ... we've had many researchers already reaching out and asking if we think the model could be useful for their problem."

This work was funded, in part, by the Pharmaceutical Discovery and Synthesis consortium; the Jameel Clinic; the DTRA Discovery of Medical Countermeasures Against New and Emerging threats program; the DARPA Accelerated Molecular Discovery program; the MIT-Takeda Fellowship; and the NSF Expeditions grant Collaborative Research: Understanding the World Through Code.

This work is dedicated to the memory of Octavian-Eugen Ganea, who made crucial contributions to geometric machine learning research and generously mentored many students - a brilliant scholar with a humble soul.

Research Report:"EquiBind: Geometric Deep Learning for Drug Binding Structure Prediction"


Related Links
Computer Science and Artificial Intelligence Laboratory (CSAIL)
Space Medicine Technology and Systems


Thanks for being here;
We need your help. The Space Media Network continues to grow but revenues have never been harder to maintain.

With the rise of Ad Blockers, and Facebook - our traditional revenue sources via quality network advertising continues to decline. And unlike so many other news sites, we don't have a paywall - with those annoying usernames and passwords.

Our news coverage takes time and effort to publish 365 days a year.

If you find our news sites informative and useful then please consider becoming a regular supporter or for now make a one off contribution.
SpaceMediaNetwork Contributor
$5 Billed Once


credit card or paypal
SpaceMediaNetwork Monthly Supporter
$5 Billed Monthly


paypal only


SPACE MEDICINE
UCLA scientists develop durable material for flexible artificial muscles
Menlo Park CA (SPX) Jul 11, 2022
UCLA materials scientists and colleagues at the nonprofit scientific research institute SRI International have developed a new material and manufacturing process for creating artificial muscles that are stronger and more flexible than their biological counterparts. "Creating an artificial muscle to enable work and detect force and touch has been one of the grand challenges of science and engineering," said Qibing Pei, a professor of materials science and engineering at the UCLA Samueli School of E ... read more

Comment using your Disqus, Facebook, Google or Twitter login.



Share this article via these popular social media networks
del.icio.usdel.icio.us DiggDigg RedditReddit GoogleGoogle

SPACE MEDICINE
Canada announces new Arctic air, missile defenses with US

Belarus buys S-400, Iskander missiles from Russia: Lukashenko

Turkey says still talking to Russia about missile deliveries

Lockheed Martin to produce 8th THAAD Battery for US Govt

SPACE MEDICINE
Lockheed Martin Delivers First Modernized M270A2 To US Army

North Korea fires suspected rocket launchers: Seoul

US announces more Himars precision rocket systems for Ukraine

Northrop Grumman Achieves 100th Coyote Target Vehicle Launch

SPACE MEDICINE
Lithuania to send Ukraine crowdfunded combat drone

Thermal drones seek survivors after deadly Italy glacier collapse

Integrating drones in urban airspaces - European demonstration program begins at Cranfield

Key milestones achieved in Manned-Unmanned Teaming for future air power

SPACE MEDICINE
SKYNET 6A satellite passes Critical Design Review

Airbus to provide 42 satellite platforms and services to Northrop Grumman for the US Space Development Agency program

Northrop Grumman runs Laser Communication Demonstration for Tranche 1 constellation

Raytheon Intelligence and Space conducts Troposcatter comms test for US Army

SPACE MEDICINE
US announces more missiles, ammunition for Ukraine

Raytheon Technologies awarded next phase for US Army TITAN program

Kyiv mayor pleads for more weapons at NATO summit

Slovakia to buy 152 Swedish combat vehicles

SPACE MEDICINE
EU creates Moldova hub to stem arms trade from Ukraine

Russia claims Ukraine arms spreading to Middle East, black market

Spain govt bitterly split over upping military spend

Britain boosts military aid to Ukraine; Norway sends rocket launchers

SPACE MEDICINE
China says SE Asia nations should avoid becoming 'chess pieces'

US, China top diplomats hold 'constructive' first talks in months

Lavrov walks out of G20 talks as West presses Moscow on Ukraine

West presses Russia at G20 with call to end Ukraine war

SPACE MEDICINE
Towards stable, sustained Raman imaging of large samples at the nanoscale

A mirror tracks a tiny particle

New silicon nanowires can really take the heat

Cooling speeds up electrons in bacterial nanowires









The content herein, unless otherwise known to be public domain, are Copyright 1995-2024 - Space Media Network. All websites are published in Australia and are solely subject to Australian law and governed by Fair Use principals for news reporting and research purposes. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA news reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. All articles labeled "by Staff Writers" include reports supplied to Space Media Network by industry news wires, PR agencies, corporate press officers and the like. Such articles are individually curated and edited by Space Media Network staff on the basis of the report's information value to our industry and professional readership. Advertising does not imply endorsement, agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. General Data Protection Regulation (GDPR) Statement Our advertisers use various cookies and the like to deliver the best ad banner available at one time. All network advertising suppliers have GDPR policies (Legitimate Interest) that conform with EU regulations for data collection. By using our websites you consent to cookie based advertising. If you do not agree with this then you must stop using the websites from May 25, 2018. Privacy Statement. Additional information can be found here at About Us.