By Matt Cahill
51情报站 and the U.S. Department of Energy's Thomas Jefferson National Accelerator Facility share a bond that goes back nearly 40 years, to the lab鈥檚 founding in 1984. Now, they鈥檙e taking their partnership to a new level.
The fellow research institutions are launching a unique joint institute that will leverage Jefferson Lab鈥檚 specialties in data science and computing in an effort to tackle the most pressing problems and disparities at the intersection of health and the environment in Hampton Roads.
鈥淭oday, we make an announcement that takes a bold step forward in our historic partnership,鈥 51情报站 President Brian O. Hemphill, Ph.D., said during Friday鈥檚 State of the University Address at Chartway Arena in Norfolk. 鈥淭his joint institute brings together interdisciplinary expertise to address critical scientific questions in medicine, public health and climate in the context of the broader environment.鈥
The Joint Institute on Advanced Computing for Environmental Studies 鈥 or ACES, for short 鈥 is a center for enterprise research that will be housed within 51情报站鈥檚 new School of Data Science. It is cofounded and co-directed by Heather Richter, an 51情报站 research associate professor who also serves as the interim executive director of the Hampton Roads Biomedical Research Consortium, and Malachi Schram, who leads Jefferson Lab鈥檚 Data Science Department.
ACES has assembled a team of scientists and university faculty from diverse fields such as public health, geography, environmental health, computer science and physics. They鈥檒l work together through joint appointments and shared research staff聽 鈥 while also training students.
鈥淔or students, it鈥檚 a significant opportunity because of the world-class faculty and researchers that they are going to have opportunity to learn from and work with,鈥 Hemphill said after the address.
But it鈥檚 not purely an academic pursuit. The aim is to provide real solutions to complex, regional problems such as the systems that drive disease and rapid environmental changes.
鈥淥ur health outcomes reinforce the way we experience the environment,鈥 Richter said. 鈥淓ssentially, there are social determinants of health and there are physical, environmental determinants. We are interested in understanding how those come together to make sense of the underlying distribution of disease in a population so that we can find ways to intervene.鈥
This will be done by applying data science and advanced computational approaches such as machine learning (ML) and generative artificial intelligence (AI).
鈥淭he Department of Energy has an impressive legacy of tackling really difficult problems,鈥 Richter said, 鈥渁nd in bringing in some of the leading scientists in the world to do that.鈥
Partners already on board include the Hampton Roads Sanitation District, Children鈥檚 Hospital of The King鈥檚 Daughters and Eastern Virginia Medical School.
Another big piece of the puzzle is public participation in the research.
鈥淭he goal is to apply to the most advanced and innovative analytics we have available to come up with better, more effective solutions for well-being,鈥 Richter said. 鈥淧art of what will make us successful is being able to engage the community.鈥
Jefferson Lab鈥檚 role
Weeks before the launch of ACES, the DOE announced Jefferson Lab would become the home of a new computational resource 鈥 the High Performance Data Facility hub.
The $300+ million HPDF is still years from fruition, but the joint institute鈥檚 team is already thinking of ways to incorporate the new user facility鈥檚 potential into their plans. In the meantime, ACES will rely on the wealth of computational and data resources already existing at the lab.
Schram is a nuclear physicist who specializes in data science, with expertise in ML and AI. These approaches can be used to model complex and high-dimensional systems, such as flooding and air quality, that are impacted by climate change. In addition, advanced ML-based computer vision can help analyze medical images for faster diagnosis.
鈥淚t's a question of how we apply these techniques, these advances in computer science and data science, to help with regional topics,鈥 Schram said. 鈥淚t's definitely already grown well beyond what we expected.鈥
But it鈥檚 more than just crunching numbers. Simply collecting all that information and finding quality data is a challenge in and of itself. Meanwhile, understanding and interpreting the data may lead to mistakes.
鈥淭he other thing is unintentional bias,鈥 Schram said. 鈥淚f I start making an analysis and assume everything is statistically equal, then I'm going to get a wrong answer. I'm going to have some intrinsic biases since the sampling method might be biased.鈥
And sometimes, the machine learning models themselves can鈥檛 be trusted.
鈥淥ne of the focuses of Jefferson Lab is uncertainty quantification,鈥 said Diana McSpadden, a data scientist working with Schram and Richter on the ACES team. 鈥淪ay we trained on data from one particular population or set of environmental characteristics, but now you're asking for prediction on a population that we were not trained on. So, you give a corresponding uncertainty for this prediction. It's a particular expertise that we can bring.鈥
Meanwhile, 51情报站 and the other ACES partners provide further resources and knowledge in environmental, health and social sciences.
鈥淭hat legacy of excellence and the creativity to explore different ways of doing things is the special blend here,鈥 Richter said. 鈥淭hat鈥檚 why this is a cool opportunity for both sides.鈥
This story originally appeared on Jefferson Lab's .听