A comprehensive update of genotype–phenotype correlations in PMM2-CDG: insights from molecular and structural analyses

  • Tiago Oliveira
  • , Ricardo Ferraz
  • , Luísa Azevedo
  • , Dulce Quelhas
  • , João Carneiro
  • , Jaak Jaeken
  • , Sérgio F. Sousa*
  • *Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

3 Citations (Scopus)

Abstract

PMM2-CDG (phosphomannomutase 2-deficiency) is the most prevalent N-glycosylation disorder and results from impairments of PMM2 activity. This disease presents a large variety of pathogenic variants, which cause a wide phenotypical spectrum. This diversity, together with the low number of affected patients, raises the challenge of determining genotype–phenotype correlations in PMM2-CDG. This type of correlation could be highly significant in determining disease progression, prognosis, severity and in developing genome-personalized therapies. Structural analyses offer a valuable approach for assessing the pathogenic mechanisms within the PMM2 protein structure at a molecular level. Such an approach can reveal novel insights into the consequences of missense variants and their relationship with patients'phenotype. In this comprehensive review, we evaluate at a structural level 41 missense mutations in PMM2-CDG, examining their phenotypical characteristics and clinical severity, protein properties and interference at the enzymatic level. This work broadens the understanding of the intricate relationships between genotype and clinical manifestations of PMM2-CDG.
Original languageEnglish
Article number207
Number of pages17
JournalOrphanet Journal of Rare Diseases
Volume20
Issue number1
DOIs
Publication statusPublished - Dec 2025
Externally publishedYes

Keywords

  • PMM2
  • PMM2-CDG
  • Genotype–phenotype correlations
  • Molecular analysis
  • Missense variants

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