
doi: 10.1002/jimd.12665
pmid: 37530705
AbstractOrganic acidemias (OA) are a group of rare autosomal recessive disorders of intermediary metabolism that result in a systemic elevation of organic acid. Despite optimal dietary and cofactor therapy, OA patients still suffer from potentially lethal metabolic instability and experience long‐term multisystemic complications. Severely affected patients can benefit from elective liver transplantation, which restores hepatic enzymatic activity, improves metabolic stability, and provides the theoretical basis for the pursuit of gene therapy as a new treatment for patients. Because of the poor outcomes reported in those with OA, especially methylmalonic and propionic acidemia, multiple gene therapy approaches have been explored in relevant animal models. Here, we review the results of gene therapy experiments performed using MMA and PA mouse models to illustrate experimental paradigms that could be applicable for all forms of OA.
Mice, Disease Models, Animal, Propionic Acidemia, Animals, Humans, Genetic Therapy, Amino Acid Metabolism, Inborn Errors, Liver Transplantation, Methylmalonic Acid
Mice, Disease Models, Animal, Propionic Acidemia, Animals, Humans, Genetic Therapy, Amino Acid Metabolism, Inborn Errors, Liver Transplantation, Methylmalonic Acid
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