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      Targeting Pathogenic Lafora Bodies in Lafora Disease Using an Antibody-Enzyme Fusion

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          Abstract

          Lafora disease (LD) is a fatal childhood epilepsy caused by recessive mutations in either the EPM2A or EPM2B gene. A hallmark of LD is the intracellular accumulation of insoluble polysaccharide deposits known as Lafora bodies (LBs) in the brain and other tissues. In LD mouse models, genetic reduction of glycogen synthesis eliminates LB formation and rescues the neurological phenotype. Therefore LBs have become a therapeutic target for ameliorating LD. Herein, we demonstrate that human pancreatic α-amylase degrades LBs. We fused this amylase to a cell-penetrating antibody fragment, and this antibody-enzyme fusion (VAL-0417) degrades LBs in vitro and dramatically reduces LB loads in vivo in Epm2a−/− mice. Using metabolomics and multivariate analysis we demonstrate that VAL-0417 treatment of Epm2a−/− mice reverses the metabolic phenotype to a wild-type profile. VAL-0417 is a promising drug for the treatment of LD and a putative precision therapy platform for intractable epilepsy. Lafora disease (LD) is a devastating childhood epilepsy caused by intracellular glycogen aggregates called Lafora bodies (LBs) in the brain and other tissues. Herein, Brewer et al. generated a first-in-class antibody-enzyme fusion, VAL-0417, that degrades LBs in vitro and in vivo pre-clinical models, showing promise as a LD drug.

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          Author and article information

          Journal
          Cell Metabolism
          Cell Metabolism
          Elsevier BV
          15504131
          July 2019
          July 2019
          Article
          10.1016/j.cmet.2019.07.002
          6774808
          31353261
          7c6a3d48-f877-4317-8bf6-125761a41b72
          © 2019

          https://www.elsevier.com/tdm/userlicense/1.0/

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