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Summarising trends in AMR research: insights from a machine learning approach

In this week's Spotlight, AMR Centre PhD Student Representative Quentin Leclerc discusses trends in AMR research.
Graphs illustrating the changes in AMR research topics

Antimicrobial research is a vast, constantly evolving field, making it difficult to keep track of trends and new topics. In a recent study, researchers from the Netherlands attempted to overcome this problem by using machine learning to classify more than 150,000 AMR research articles into automatically-generated topics. For today鈥檚 Spotlight, let鈥檚 take quick look at how the AMR world has changed over the last two decades.

In this study, Luz et al used structural topic modelling, which analyses articles and automatically suggest topics to group them into. They automatically processed more than 150,000 AMR research articles between 1999 and 2018 into 88 topics 鈥 think of it like a massive, but very simplified, systematic review. The annual evolution of the top 10 topics in AMR research by total papers published is . The data is also broken down in the header picture of this Spotlight, showing the new articles per topic per year, sorted into thematic groups (clinical, compound鈥).

Let鈥檚 discuss a few insights we can get by staring at these images. Firstly, we see that 鈥淪trategies for emerging resistances and diseases鈥 consistently remains the dominant topic. This is a clear sign that AMR is definitely not an old problem, but rather an evolving one, requiring constant rethinking of how to best tackle it. To echo this, 鈥淣ew compound synthesis鈥 is always in second place of the ranking by total articles published (), reflecting ongoing efforts to address the since 1987.

The other spots in the top 10 list are much more fluctuating. For example, the importance of has increasingly gained recognition in recent years, as can be seen by the exponential increase in new 鈥淪tewardship鈥 articles since 2010 (picture). Similarly, there is a clear recent spike in 鈥淣anoparticles鈥 articles, a sign of the potential of this field to . Based on the trends in numbers of new articles per year (picture) on 鈥淲ater and environment鈥, 鈥淪equencing鈥, and 鈥淗ost microbiota鈥, we can also assume that these topics will claim spots in the top 10 list in upcoming years.

Finally, it鈥檚 important to note that although 鈥淢DR-TB鈥 (multidrug-resistant tuberculosis) entered the top 10 list in 2012 (GIF), the number of new articles per year on that topic has been decreasing since 2016 (picture). This is worrying, as , and the .

Although these observed trends in AMR research are insightful, they come with the usual caveats of machine learning (some arbitrary choices required, risk of misclassification鈥). The authors have tried to minimise this by checking each automatically proposed topic manually, adjusting them if necessary, and discussing with up to five reviewers. Overall, this work is a promising starting point to identify gaps in AMR research and inform future work. The complete dataset if openly available if you want to take a look!

Article discussed: Luz CF, van Niekerk JM, Keizer J, Beerlage-de Jong N, Braakman-Jansen LA, Stein A, Sinha B, van Gemert-Pijnen JE, Glasner C. Mapping twenty years of antimicrobial resistance research trends. Artificial intelligence in medicine. 2022 Jan 1;123:102216.

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