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  • Written by Abdullahi Tunde Aborode, Mississippi State University
Fighting antibiotic resistance at the source – using machine learning to identify bacterial resistance genes and the drugs to block them

Antibiotic resistance is a growing public health problem[1] around the world. When bacteria like E. coli no longer respond to antibiotics, infections become harder to treat.

To develop new antibiotics, researchers typically identify the genes[2] that make bacteria resistant. Through laboratory experiments, they observe how bacteria respond to different antibiotics and look for mutations in the genetic makeup of resistant strains that allow them to survive.

While effective, this method can be time-consuming and may not always[3] capture the full picture of how bacteria become resistant. For example, changes in how genes work that don’t involve mutations can still influence resistance. Bacteria can also exchange resistance genes between each other, which may not be detected if only focusing on mutations within a single strain.

My colleagues and I[4] developed a new approach[5] to identify E. coli resistance genes by computer modeling, allowing us to design new compounds that can block these genes and make existing treatments more effective.

Identifying resistance

To predict which genes contribute to resistance, we analyzed the genomes of various E. coli strains to identify genetic patterns and markers[6] associated with resistance. We then used machine learning algorithms trained on existing data to highlight novel genes or mutations shared across resistant strains that might contribute to resistance.

Microscopy image of rod-shaped E. coli, colored orange
E. coli is one of many bacterial species developing resistance to common antibiotics. National Institute of Allergy and Infectious Diseases/National Institutes of Health via Flickr, CC BY-NC[7][8]

After identifying resistance genes, we designed inhibitors[9] that specifically target and block the proteins these genes produce. By analyzing the structure of the proteins these genes code for, we were able to optimize our inhibitors to strongly bind to these specific proteins.

To reduce the likelihood[10] that bacteria would evolve resistance to these inhibitors, we targeted regions of their genome that code for proteins critical to their survival. By interfering with how bacteria carry out important functions, it makes it more difficult for them to develop mechanisms to compensate. We also prioritized compounds that work differently from existing antibiotics to minimize cross-resistance.

Finally, we tested how effectively our inhibitors could overcome antibiotic resistance in E. coli. We used computer simulations to assess how strongly a number of inhibitors bind to target proteins over time. One inhibitor called hesperidin was able to strongly bind to the three genes in E. coli involved in resistance that we identified, suggesting it may be able to help combat antibiotic-resistant strains.

A global threat

The World Health Organization ranks antimicrobial resistance as one of the top 10 threats to global health[11]. In 2019, bacterial antibiotic resistance killed an estimated 4.95 million people[12] worldwide.

By targeting the specific genes responsible for resistance to existing drugs, our approach could lead to treatments for challenging bacterial infections that are not only more effective but also less likely to contribute to further resistance. It can also help researchers keep up with bacterial threats as they evolve.

Some microbes can transfer resistance to other microbes.

Our predictive approach could be adapted to other bacterial strains, allowing for more personalized treatment strategies. In the future, doctors could potentially tailor antibiotic treatments based on the specific genetic makeup of the bacteria causing the infection, potentially leading to better outcomes.

As antibiotic resistance continues to rise globally, our findings may provide a crucial tool in the fight against this threat. Further development is needed before our methods can be used in the clinic. But by staying ahead of bacterial evolution, targeted inhibitors could help preserve the efficacy of existing antibiotics and reduce the spread of resistant strains.

Authors: Abdullahi Tunde Aborode, Mississippi State University

Read more https://theconversation.com/fighting-antibiotic-resistance-at-the-source-using-machine-learning-to-identify-bacterial-resistance-genes-and-the-drugs-to-block-them-237919

Metropolitan republishes selected articles from The Conversation USA with permission

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