Engineering the gut microbiota to treat hyperammonemia

Ting‐Chin David Shen(University of Pennsylvania), Lindsey Albenberg(Children's Hospital of Philadelphia), Kyle Bittinger(University of Pennsylvania), Christel Chehoud(University of Pennsylvania), Yingyu Chen(University of Pennsylvania), Colleen Judge-Golden(Children's Hospital of Philadelphia), Lillian Chau(University of Pennsylvania), Josephine Ni(University of Pennsylvania), Quan Z. Sheng(University of Pennsylvania), Andrew Lin(University of Pennsylvania), Benjamin J. Wilkins, Elizabeth L. Buza(University of Pennsylvania), James D. Lewis(University of Pennsylvania), Yevgeny Daikhin, Ilana Nissim, Marc Yudkoff, Frederic D. Bushman(University of Pennsylvania), Gary D. Wu(University of Pennsylvania)
Journal of Clinical Investigation
June 21, 2015
Cited by 177Open Access
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Abstract

Increasing evidence indicates that the gut microbiota can be altered to ameliorate or prevent disease states, and engineering the gut microbiota to therapeutically modulate host metabolism is an emerging goal of microbiome research. In the intestine, bacterial urease converts host-derived urea to ammonia and carbon dioxide, contributing to hyperammonemia-associated neurotoxicity and encephalopathy in patients with liver disease. Here, we engineered murine gut microbiota to reduce urease activity. Animals were depleted of their preexisting gut microbiota and then inoculated with altered Schaedler flora (ASF), a defined consortium of 8 bacteria with minimal urease gene content. This protocol resulted in establishment of a persistent new community that promoted a long-term reduction in fecal urease activity and ammonia production. Moreover, in a murine model of hepatic injury, ASF transplantation was associated with decreased morbidity and mortality. These results provide proof of concept that inoculation of a prepared host with a defined gut microbiota can lead to durable metabolic changes with therapeutic utility.


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