Saurabh Shivpuje, Dimitris Alevras, et al.
APS Global Physics Summit 2026
In this work, we hypothesized that shifts in the food microbiome can be used as an indicator of unexpected contaminants or environmental changes. To test this hypothesis, we sequenced the total RNA of 31 high protein powder (HPP) samples of poultry meal pet food ingredients. We developed a microbiome analysis pipeline employing a key eukaryotic matrix filtering step that improved microbe detection specificity to >99.96% during in silico validation. The pipeline identified 119 microbial genera per HPP sample on average with 65 genera present in all samples. The most abundant of these were Bacteroides, Clostridium, Lactococcus, Aeromonas, and Citrobacter. We also observed shifts in the microbial community corresponding to ingredient composition differences. When comparing culture-based results for Salmonella with total RNA sequencing, we found that Salmonella growth did not correlate with multiple sequence analyses. We conclude that microbiome sequencing is useful to characterize complex food microbial communities, while additional work is required for predicting specific species’ viability from total RNA sequencing.
Saurabh Shivpuje, Dimitris Alevras, et al.
APS Global Physics Summit 2026
S.S. Brody, M. Brody
Archives of Biochemistry and Biophysics
Aishath Naeem, Filippo Utro, et al.
Blood Adv.
Manuel Ravasqueira, Joao Bettencourt-Silva, et al.
ACS Spring 2026