Complex microbial communities play an important role in numerous fields, from human health to bioremediation. One critical challenge in their data analysis is to separate true biological data from contamination of various sources. While contemporary experimental procedures include various negative controls, a comprehensive statistical approach for their analysis has not been developed. Such a framework would have a far-reaching impact on the field.

Continue reading

Complex microbiomes play an important role in numerous fields. One critical challenge in their data analysis is to separate true biological data from contamination. Contemporary experimental procedures include negative controls from various sources, but their analysis is complicated by “well-to-well” contamination: contamination that associates with the position of samples during experimental procedures. This causes bacteria sampled from a true biological source to appear in nearby control samples, and vice versa. An analytic approach that accounts for this source of contamination would have a far-reaching impact on the field.

Continue reading

Author's picture

Columbia Data Science Institute (DSI) Scholars Program

The DSI Scholars Program is to engage and support undergraduate and master students in participating data science related research with Columbia faculty. The program’s unique enrichment activities will foster a learning and collaborative community in data science at Columbia.

Columbia University DSI

New York, NY