To tackle these challenges, a combined approach using CFD, HPC, and machine learning (ML) will be needed, utilizing both European (m-AIA) and Japanese (CUBE) codes.
Internally, the focus is on supporting surgeons in treating respiratory diseases. An automated surgery planning tool, currently limited, will be improved with European and Japanese resources and techniques. This can help increase the success rate of surgeries, such as those for nasal septum deviation, which currently stands at just 55%. Externally, the focus will be on improving airflow in waiting rooms, including managing the spread of droplets from coughing. The goal is to optimize the environment, such as ventilation design. From the internal perspective, optimization will be enhanced by integrating jointly developed ML algorithms.