Using generative AI, researchers design compounds that can kill drug-resistant bacteria

Using generative AI, researchers design compounds that can kill drug-resistant bacteria

2025-08-23Technology
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Tom Banks
Good morning 跑了松鼠好嘛, I'm Tom Banks, and this is Goose Pod for you. Today is Saturday, August 23th.
Mask
And I'm Mask. We're here to discuss a breakthrough: using generative AI, researchers are designing compounds that can kill drug-resistant bacteria.
Tom Banks
Let's get started. Researchers at MIT have developed a truly novel approach to this crisis. They've used artificial intelligence to design new antibiotics from scratch, specifically to fight stubborn infections like MRSA and drug-resistant gonorrhea. It’s a remarkable step forward.
Mask
Remarkable is an understatement. They didn’t just screen a few thousand compounds; they had the AI generate and analyze over 36 million possibilities. We’re now exploring a chemical universe that was completely inaccessible before. This is about rewriting the rules of drug discovery entirely.
Tom Banks
And that’s the key, isn't it? These aren't just slightly better versions of old antibiotics. The AI-designed compounds are structurally unique, and they work in new ways, like by tearing down the bacteria's cell membranes. It’s a fundamentally different strategy.
Mask
Exactly. It has to be different. Incremental improvements are a losing game against exponential bacterial evolution. This is a disruptive leap, creating weapons the enemy has never seen before. We’re finally going on the offensive in the war against superbugs.
Tom Banks
To understand why this is such a big deal, you have to look at the history. After Alexander Fleming discovered penicillin in 1929, we entered a golden age. For decades, it felt like we had a magic bullet for every infection. It was a time of great optimism.
Mask
But it was an arms race from day one. In fact, scientists found a bacteria-produced enzyme that could destroy penicillin back in 1940, before the drug was even widely used! The microbes have always been fighting back, adapting and evolving faster than we could innovate.
Tom Banks
That’s a sobering point. And we inadvertently helped them. The widespread use of antibiotics, not just in hospitals but for promoting growth in farm animals, created this immense selective pressure. We essentially trained bacteria to become stronger, leading to a crisis where 1.27 million people died from resistant infections in 2019 alone.
Mask
And while the bacteria were getting stronger, we got slower. The pipeline for new antibiotics dried up. The low-hanging fruit had been picked, and the economic incentives just weren't there for big pharma. It was a colossal failure of the market and a failure of imagination.
Tom Banks
So we found ourselves in a dangerous lull, where our arsenal was aging and the threat was growing more sophisticated every day. That’s the critical context for why this new AI-driven approach at MIT isn’t just another research paper; it’s a potential lifeline.
Tom Banks
Now, the promise of AI is incredible, but it's not a simple fix. There’s a significant challenge because while AI can model chemistry fairly well, biology is infinitely more complex. Predicting how a compound will interact within a living human body is the real hurdle.
Mask
It's a hurdle, not a wall. Look at the data. Molecules designed with AI support are already showing 80-90% success rates in early clinical trials, compared to the historical average of 40-65%. We are already massively de-risking the process. The complexity of biology is just a data problem we haven't solved yet.
Tom Banks
That might be true, but experts point out that a major bottleneck is the data itself. Often, we aren't collecting the right kind of biological data, or it isn’t organized in a way that can effectively train the AI. You can have the best engine in the world, but it’s useless without the right fuel.
Mask
That’s a temporary infrastructure problem. The smart money knows this. A company like Xaira Therapeutics just launched with a billion dollars in funding to solve this exact issue. The resources are flowing because the potential is undeniable. We will build the engine and the fuel pipeline simultaneously.
Tom Banks
And if we do, the economic impact could be staggering. Estimates suggest generative AI could unlock between 60 to 110 billion dollars in annual value for the pharmaceutical industry. That’s money that can fuel the next wave of life-saving research and development, creating a virtuous cycle.
Mask
It's all about speed and capital efficiency. The old model of taking 12 to 18 years and billions of dollars to bring a drug to market is obsolete. AI can cut discovery timelines in half and slash costs. This isn't just about profit; it’s about compressing the time it takes to save lives.
Tom Banks
That’s the perfect way to put it. For everyone listening, that means when a new resistant bacteria emerges, our response time could be a few years, not a decade or more. The impact on global public health, on our collective sense of security, is truly profound.
Tom Banks
Looking ahead, the immediate next step for these AI-discovered compounds is rigorous human clinical trials. This is where the theory meets reality, and we'll see if this incredible promise translates into safe, effective medicine for people. Everyone is watching with cautious optimism.
Mask
This is bigger than just one or two new drugs. This is the proof-of-concept for a new paradigm. We are moving from an age of accidental discovery to an age of intentional design. AI is setting the stage for us to make biology programmable. It’s a new era.
Tom Banks
That's the end of today's discussion. Researchers are truly opening up a new frontier against superbugs with AI. Thank you for listening to Goose Pod.
Mask
We'll see you tomorrow.

Here's a comprehensive summary of the MIT News article, "Using generative AI, researchers design compounds that can kill drug-resistant bacteria": ## MIT Researchers Leverage Generative AI to Design Novel Antibiotics Against Drug-Resistant Bacteria **News Title:** Using generative AI, researchers design compounds that can kill drug-resistant bacteria **Publisher:** MIT News **Author:** Anne Trafton | MIT News **Publication Date:** August 14, 2025 ### Executive Summary MIT researchers have successfully employed generative artificial intelligence (AI) to design novel antibiotic compounds capable of combating two challenging drug-resistant bacterial infections: **drug-resistant *Neisseria gonorrhoeae*** and **multi-drug-resistant *Staphylococcus aureus* (MRSA)**. This groundbreaking approach, detailed in the journal *Cell*, significantly expands the chemical space accessible for antibiotic discovery, moving beyond existing drug structures and exploring new mechanisms of action. The project has yielded promising drug candidates, **NG1** and **DN1**, which have demonstrated efficacy in laboratory tests and animal models, offering a new avenue to address the growing global crisis of antibiotic resistance. ### Key Findings and Conclusions * **AI-Driven Discovery of Novel Antibiotics:** Generative AI algorithms were used to design and computationally screen over **36 million** potential compounds. * **Structurally Distinct and Novel Mechanisms:** The identified top candidates are structurally different from existing antibiotics and appear to work by disrupting bacterial cell membranes through novel mechanisms. * **Targeting Difficult Infections:** The research successfully identified compounds effective against drug-resistant *Neisseria gonorrhoeae* and MRSA. * **Expanding Chemical Space:** This AI-driven approach allows researchers to explore and generate theoretical compounds that have never been synthesized or discovered before, vastly increasing the potential for finding new drugs. * **Potential for Broader Application:** The researchers aim to apply this methodology to identify and design compounds active against other bacterial pathogens, including *Mycobacterium tuberculosis* and *Pseudomonas aeruginosa*. ### Key Statistics and Metrics * **Total Compounds Designed:** Over **36 million** possible compounds were designed. * **Initial Fragment Library:** Approximately **45 million** known chemical fragments were assembled for the *N. gonorrhoeae* study. * **Fragments Screened for *N. gonorrhoeae*:** Nearly **4 million** fragments were initially screened. * **Candidates Filtered for *N. gonorrhoeae*:** Approximately **1 million** candidates remained after filtering for cytotoxicity, chemical liabilities, and similarity to existing antibiotics. * **Candidates Generated with F1 Fragment:** About **7 million** candidates containing the F1 fragment were generated. * **Compounds Selected for Synthesis (*N. gonorrhoeae*):** **80** compounds were selected for synthesis testing. * **Synthesized Compounds (*N. gonorrhoeae*):** Only **2** compounds could be synthesized, with **NG1** showing significant efficacy. * **Total Compounds Designed (Unconstrained):** Over **29 million** compounds were generated in the unconstrained design phase for *S. aureus*. * **Candidates Filtered for *S. aureus*:** Approximately **90** compounds were narrowed down. * **Synthesized and Tested Compounds (*S. aureus*):** **22** molecules were synthesized and tested. * **Compounds with Strong Activity (*S. aureus*):** **Six** molecules showed strong antibacterial activity. * **Global Impact of Drug-Resistant Infections:** Estimated to cause nearly **5 million** deaths per year. ### Important Recommendations and Future Directions * **Further Preclinical Development:** Phare Bio, a collaborator, is working on modifying NG1 and DN1 for further preclinical testing and advancing the best candidates through medicinal chemistry. * **Application to Other Pathogens:** The developed AI platforms will be applied to other significant bacterial pathogens like *Mycobacterium tuberculosis* and *Pseudomonas aeruginosa*. ### Significant Trends and Changes * **Shift in Antibiotic Discovery:** The research marks a significant shift from modifying existing antibiotics to designing entirely new classes of compounds using AI. * **Exploiting Inaccessible Chemical Spaces:** AI enables exploration of vast chemical spaces that were previously inaccessible through traditional methods. ### Notable Risks or Concerns * **Antibiotic Resistance Crisis:** The research directly addresses the escalating global threat of drug-resistant bacterial infections, which cause millions of deaths annually. * **Challenges in Synthesis:** The process highlighted that not all theoretically designed compounds can be successfully synthesized, indicating a practical hurdle in drug development. ### Material Financial Data * The research was funded, in part, by: * The U.S. Defense Threat Reduction Agency * The National Institutes of Health * The Audacious Project * Flu Lab * The Sea Grape Foundation * Rosamund Zander and Hansjorg Wyss for the Wyss Foundation * An anonymous donor ### Key Personnel * **Senior Author:** James Collins, Termeer Professor of Medical Engineering and Science at MIT. * **Lead Authors:** Aarti Krishnan (MIT postdoc), Melis Anahtar (former postdoc), and Jacqueline Valeri (PhD ’23). ### Contextual Interpretation The article highlights a critical advancement in the fight against antibiotic resistance, a major global health threat. The **36 million** compounds designed represent a massive computational effort to explore novel molecular structures. The fact that the top candidates are **structurally distinct** and work via **novel mechanisms** is crucial, as it means bacteria are less likely to have pre-existing resistance to these new drugs. The success in identifying **NG1** against *N. gonorrhoeae* and **DN1** against MRSA, and their demonstrated efficacy in mouse models, provides strong evidence for the potential of this AI-driven approach. The **nearly 5 million deaths per year** statistic underscores the urgency and importance of this research. The collaboration with Phare Bio and the intention to apply the platform to other pathogens like *Mycobacterium tuberculosis* (a leading cause of infectious disease mortality) and *Pseudomonas aeruginosa* (known for its multidrug resistance) indicate a strategic and comprehensive approach to tackling the antibiotic resistance crisis.

Using generative AI, researchers design compounds that can kill drug-resistant bacteria

Read original at MIT News

With help from artificial intelligence, MIT researchers have designed novel antibiotics that can combat two hard-to-treat infections: drug-resistant Neisseria gonorrhoeae and multi-drug-resistant Staphylococcus aureus (MRSA).Using generative AI algorithms, the research team designed more than 36 million possible compounds and computationally screened them for antimicrobial properties.

The top candidates they discovered are structurally distinct from any existing antibiotics, and they appear to work by novel mechanisms that disrupt bacterial cell membranes.This approach allowed the researchers to generate and evaluate theoretical compounds that have never been seen before — a strategy that they now hope to apply to identify and design compounds with activity against other species of bacteria.

“We’re excited about the new possibilities that this project opens up for antibiotics development. Our work shows the power of AI from a drug design standpoint, and enables us to exploit much larger chemical spaces that were previously inaccessible,” says James Collins, the Termeer Professor of Medical Engineering and Science in MIT’s Institute for Medical Engineering and Science (IMES) and Department of Biological Engineering.

Collins is the senior author of the study, which appears today in Cell. The paper’s lead authors are MIT postdoc Aarti Krishnan, former postdoc Melis Anahtar ’08, and Jacqueline Valeri PhD ’23.Exploring chemical spaceOver the past 45 years, a few dozen new antibiotics have been approved by the FDA, but most of these are variants of existing antibiotics.

At the same time, bacterial resistance to many of these drugs has been growing. Globally, it is estimated that drug-resistant bacterial infections cause nearly 5 million deaths per year.In hopes of finding new antibiotics to fight this growing problem, Collins and others at MIT’s Antibiotics-AI Project have harnessed the power of AI to screen huge libraries of existing chemical compounds.

This work has yielded several promising drug candidates, including halicin and abaucin.To build on that progress, Collins and his colleagues decided to expand their search into molecules that can’t be found in any chemical libraries. By using AI to generate hypothetically possible molecules that don’t exist or haven’t been discovered, they realized that it should be possible to explore a much greater diversity of potential drug compounds.

In their new study, the researchers employed two different approaches: First, they directed generative AI algorithms to design molecules based on a specific chemical fragment that showed antimicrobial activity, and second, they let the algorithms freely generate molecules, without having to include a specific fragment.

For the fragment-based approach, the researchers sought to identify molecules that could kill N. gonorrhoeae, a Gram-negative bacterium that causes gonorrhea. They began by assembling a library of about 45 million known chemical fragments, consisting of all possible combinations of 11 atoms of carbon, nitrogen, oxygen, fluorine, chlorine, and sulfur, along with fragments from Enamine’s REadily AccessibLe (REAL) space.

Then, they screened the library using machine-learning models that Collins’ lab has previously trained to predict antibacterial activity against N. gonorrhoeae. This resulted in nearly 4 million fragments. They narrowed down that pool by removing any fragments predicted to be cytotoxic to human cells, displayed chemical liabilities, and were known to be similar to existing antibiotics.

This left them with about 1 million candidates.“We wanted to get rid of anything that would look like an existing antibiotic, to help address the antimicrobial resistance crisis in a fundamentally different way. By venturing into underexplored areas of chemical space, our goal was to uncover novel mechanisms of action,” Krishnan says.

Through several rounds of additional experiments and computational analysis, the researchers identified a fragment they called F1 that appeared to have promising activity against N. gonorrhoeae. They used this fragment as the basis for generating additional compounds, using two different generative AI algorithms.

One of those algorithms, known as chemically reasonable mutations (CReM), works by starting with a particular molecule containing F1 and then generating new molecules by adding, replacing, or deleting atoms and chemical groups. The second algorithm, F-VAE (fragment-based variational autoencoder), takes a chemical fragment and builds it into a complete molecule.

It does so by learning patterns of how fragments are commonly modified, based on its pretraining on more than 1 million molecules from the ChEMBL database.Those two algorithms generated about 7 million candidates containing F1, which the researchers then computationally screened for activity against N.

gonorrhoeae. This screen yielded about 1,000 compounds, and the researchers selected 80 of those to see if they could be produced by chemical synthesis vendors. Only two of these could be synthesized, and one of them, named NG1, was very effective at killing N. gonorrhoeae in a lab dish and in a mouse model of drug-resistant gonorrhea infection.

Additional experiments revealed that NG1 interacts with a protein called LptA, a novel drug target involved in the synthesis of the bacterial outer membrane. It appears that the drug works by interfering with membrane synthesis, which is fatal to cells.Unconstrained designIn a second round of studies, the researchers explored the potential of using generative AI to freely design molecules, using Gram-positive bacteria, S.

aureus as their target.Again, the researchers used CReM and VAE to generate molecules, but this time with no constraints other than the general rules of how atoms can join to form chemically plausible molecules. Together, the models generated more than 29 million compounds. The researchers then applied the same filters that they did to the N.

gonorrhoeae candidates, but focusing on S. aureus, eventually narrowing the pool down to about 90 compounds.They were able to synthesize and test 22 of these molecules, and six of them showed strong antibacterial activity against multi-drug-resistant S. aureus grown in a lab dish. They also found that the top candidate, named DN1, was able to clear a methicillin-resistant S.

aureus (MRSA) skin infection in a mouse model. These molecules also appear to interfere with bacterial cell membranes, but with broader effects not limited to interaction with one specific protein.Phare Bio, a nonprofit that is also part of the Antibiotics-AI Project, is now working on further modifying NG1 and DN1 to make them suitable for additional testing.

“In a collaboration with Phare Bio, we are exploring analogs, as well as working on advancing the best candidates preclinically, through medicinal chemistry work,” Collins says. “We are also excited about applying the platforms that Aarti and the team have developed toward other bacterial pathogens of interest, notably Mycobacterium tuberculosis and Pseudomonas aeruginosa.

”The research was funded, in part, by the U.S. Defense Threat Reduction Agency, the National Institutes of Health, the Audacious Project, Flu Lab, the Sea Grape Foundation, Rosamund Zander and Hansjorg Wyss for the Wyss Foundation, and an anonymous donor.

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