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Lazers shine in mirrors.

Beaver-inspired journal cover art showcases Oregon State chemistry research

By Hannah Ashton

When scientists use ultrafast spectroscopy to observe molecular processes that occur in trillionths of a second or less, they rely on computational methods to interpret complex datasets. A new study from the laboratory of chemist Chong Fang provides a rigorous way to determine how much confidence researchers can place in those analyses.

Published as the cover article in the latest issue of Precision Chemistry, the study introduces a statistical framework for characterizing uncertainty in global analysis, a widely used method for analyzing spectroscopy data. The researchers found that, for typical spectral datasets with reasonable signal-to-noise ratios across a broad wavelength region, uncertainty in fitted patterns is generally well below 10%, supporting the robustness of conclusions drawn from global analysis.

The interdisciplinary project brought together expertise in mathematics, statistics, physics, chemistry and biology. The research team used Markov Chain Monte Carlo sampling, a Bayesian statistical approach that repeatedly explores possible solutions to map parameter uncertainty and probability distributions. Unlike conventional fitting approaches that focus on identifying a single best-fit solution, MCMC sampling provides a more complete picture of the range of plausible parameter values.

A journal cover showing a beaver.

The research featured on the cover of the March 2026 Precision Chemistry came from Chong Fangs laboratory in the Department of Chemistry.

Lead author Sullivan Bailey-Darland, an Oregon State alumnus and Honors Scholar now pursuing graduate studies at Cornell University, collaborated with doctoral candidate Logan Lancaster, postdoctoral scholar Taylor Krueger, research associate Cheng Chen and Fang on the study.

The journal selected artwork by Lancaster and Fang for the issue’s cover. The illustration uses Oregon State’s beaver mascot to represent MCMC sampling, depicting two beavers exploring a multidimensional planet landscape to recover underlying probability distributions. Different pathways and shadows symbolize the process of identifying kinetic parameters and quantifying uncertainty in ultrafast spectroscopy data, as the beaver astronaut reaches the apex flag.

The researchers have made their computational code and representative datasets openly available through GitHub, enabling other scientists to build upon the method and apply it to a wide range of data-analysis challenges for broader applications.

This research was supported by the National Science Foundation and OSU Patricia Valian Reser Faculty Scholar Endowment Fund in Science.


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