International collaboration was at the heart of the PANGAIA project’s success. Through researcher exchanges (known as secondments), the project brought together experts from different countries and disciplines to tackle major challenges in genomic research and precision medicine.
By working together, PANGAIA researchers addressed key questions related to human health. These included understanding and combating antimicrobial resistance, describing genetic diversity across human populations, identifying genetic variants linked to disease risk, improving non-invasive diagnostic methods based on DNA sequencing, and understanding how tumors evolve over time in patients.
One of the main outcomes of the project was the development of software tools that are now widely used by the scientific community. These tools can:
Represent the genetic diversity of many related genomes using compact and efficient graph-based models
Identify previously hidden genetic variations, particularly in complex regions of the human genome that may be linked to rare diseases
Use machine learning to discover new genes associated with specific diseases
Detect and classify plasmids responsible for antimicrobial resistance
Reconstruct the evolutionary history of tumors
Together, this work has significantly advanced our understanding of genome analysis and has resulted in 118 peer-reviewed open-access publications (74 journal articles and 44 conference papers). Below, we highlight some representative studies.
In a study published in Nature Methods, PANGAIA researchers applied a novel algorithm to analyze “long” variants, which are particularly difficult to detect and can span several hundred consecutive nucleotides. This method achieved a major advance by detecting 10% more long variants than existing approaches.
In a study published in Genome Research, the PANGAIA team developed a novel method aimed at reconstructing viral genome sequences with greater precision. This is particularly important because viral variants—such as those of SARS-CoV-2—often differ only in minute details that can nonetheless significantly affect viral behavior.
In a study published in Nature Machine Intelligence, PANGAIA researchers advanced the understanding of the genetic architecture of Amyotrophic Lateral Sclerosis (ALS). Using disease capsule networks, research groups identified genes relevant to ALS.
In a study published in Bioinformatics, PANGAIA researchers developed a tool for analyzing bacterial isolates to detect plasmids that play a key role in the spread of antimicrobial resistance.
Another major goal of PANGAIA was to build a strong international research network and to raise awareness of the computer science challenges underlying computational pan-genomics. Equally important was training the next generation of researchers in this emerging field and supporting their career development.
These objectives were achieved through extensive secondments involving both early-career and senior researchers. The project connected nine European partners from academia and industry—including a small enterprise and a leading sequencing technology company—with six institutions outside the EU, in countries such as China, Japan, and the United States. Seconded researchers worked closely with international experts, gaining invaluable experience in both academic and industrial environments. As a result, they developed a unique and versatile skill set spanning algorithms and data structures, software development, big-data analysis, statistics, machine learning, and genomics.
Overall, more than 60 researchers from European institutions spent a combined total of 248 months working in partner institutions outside the EU, strengthening international collaboration and leaving a lasting impact on the field of computational pan-genomics. In addition, PANGAIA organized four PhD schools on pangenomics, attended by PhD students from around the world, with several of the field’s most influential researchers serving as lecturers.