Have you ever felt queasy after eating an  undercooked burger? Or when leftovers from yesterday's dinner were left out of  the fridge a bit too long? There are many different kinds of food poisoning, but  one common cause is the growth of bacteria such as E. coli. Most cases of E.  coli, though unpleasant, can be managed at home with rest and rehydration.  However, in some instances, it can lead to life-threatening infections. If you  have a bacterial infection, antibiotic medication can be a powerful and  effective treatment. But antibiotic resistance, the ability of bacteria to  become strong enough that it does not respond to the medication, is a serious  global concern. If antibiotics are no longer effective, then we will once again  be at risk of serious illness from small injuries and common ailments.  
        Antibiotic resistance, when infection-causing  bacteria evolve so they are no longer affected by typical antibiotics, is a  global concern. New research at the University of Tokyo has mapped the  evolution and process of natural selection of Escherichia coli (E. coli)  bacteria in the lab. These maps, called fitness landscapes, help us better  understand the step-by-step development and characteristics of E. coli  resistance to eight different drugs, including antibiotics. Researchers hope  their results and methods will be useful for predicting and controlling E. coli  and other bacteria in the future.
        "The development of methods that could predict  and control bacterial evolution is crucial to find and suppress the emergence  of resistant bacteria," said researcher Junichiro Iwasawa, a doctoral student  in the Graduate School of Science at the time of the study. "Thus, we have  developed a novel method to predict drug resistance evolution by using data  obtained from laboratory evolution experiments of E. coli."
        The researchers used a method called adaptive  laboratory evolution, or ALE, to "replay the tape" on the evolution of  drug-resistant E. coli to eight different drugs, including antibiotics. The  method enabled the researchers to study the evolution of bacterial strains with  specific observable characteristics (called phenotypes) in the lab. This helped  them gain insight into what changes might occur to the bacteria during the  longer-term process of natural selection.
        "While conventional laboratory evolution experiments  have been labor intensive, we mitigated this problem by using an automated  culture system that was previously developed in our lab. This allowed us to  acquire sufficient data on the phenotypic changes related to drug resistance  evolution," explained Iwasawa. "By analyzing the acquired data, using principal  component analysis (a machine-learning method), we have been able to elucidate  the fitness landscape which underlies the drug resistance evolution of E.  coli."
        Fitness landscapes look like 3D topographic  maps. The mountains and valleys on the map represent an organism's evolution.  Organisms at the peaks have evolved to have better "fitness," or ability to  survive in their environment. Iwasawa explained, "The coordinates of the  fitness landscape represent inner states of the organism, such as gene mutation  patterns (genotypes) or drug resistance profiles (phenotypes), etc. Thus, the  fitness landscape describes the relation between the inner states of the  organism and its corresponding fitness levels. By elucidating the fitness  landscape, the progression of evolution is expected to be predictable." 
        The team believes the fitness landscapes it  has mapped in this study and the methods developed in the process will be  useful for predicting and controlling not only E. coli, but also other forms of  microbial evolution. The researchers hope this will lead to future studies that  can find ways to suppress drug-resistant bacteria and contribute to the  development of useful microbes for bioengineering and agriculture. Iwasawa  concluded that "the next important step is to actually try using the fitness  landscapes to control drug resistance evolution and see how far we can control  it. This can be done by designing laboratory evolution experiments based on the  information from the landscapes. We can't wait to see the upcoming results."
            Reference:
Junichiro Iwasawa, Tomoya Maeda, Atsushi  Shibai, Hazuki Kotani, Masako Kawada, Chikara Furusawa "Analysis of the  evolution of resistance to multiple antibiotics enables prediction of the  Escherichia coli phenotype-based fitness landscape". PLoS Biology. 2022;  20(12): e3001920. https://doi.org/10.1371/journal.pbio.3001920.
 
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