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The challenge of understanding and predicting phenotypic diversity in urea cycle disorders.

Roland PossetMatthias ZielonkaFlorian GleichSven F GarbadeGeorg F HoffmannStefan Kölkernull null
Published in: Journal of inherited metabolic disease (2023)
The Urea Cycle Disorders Consortium (UCDC) and the European registry and network for Intoxication type Metabolic Diseases (E-IMD) are the worldwide largest databases for individuals with urea cycle disorders (UCDs) comprising longitudinal data from more than 1,100 individuals with an overall long-term follow-up of approximately 25 years. However, heterogeneity of the clinical phenotype as well as different diagnostic and therapeutic strategies hamper our understanding on the predictors of phenotypic diversity and the impact of disease-immanent and interventional variables (e.g. diagnostic and therapeutic interventions) on the long-term outcome. A new strategy using combined and comparative data analysis helped overcome this challenge. This review presents the mechanisms and relevant principles that are necessary for the identification of meaningful clinical associations by combining data from different data sources, and serves as blueprint for future analyses of rare disease registries. This article is protected by copyright. All rights reserved.
Keyphrases
  • data analysis
  • big data
  • electronic health record
  • physical activity
  • drinking water
  • machine learning
  • artificial intelligence
  • deep learning