4.7 Article

Interactive alkaptonuria database: investigating clinical data to improve patient care in a rare disease

期刊

FASEB JOURNAL
卷 33, 期 11, 页码 12696-12703

出版社

WILEY
DOI: 10.1096/fj.201901529R

关键词

precision medicine; machine learning; biomarkers

资金

  1. Telethon Italy [GGP10058]
  2. Toscana Life Sciences Orphan_1 Project
  3. Associazione Italiana Malati di Alkaptonuria Alkaptonuria [ORPHA263402]
  4. Tuscany Region Pegaso Ph.D. School in Biochemistry and Molecular Biology (Fondazione Vita Its Probits) [113195]

向作者/读者索取更多资源

Alkaptonuria (AKU) is an ultrarare autosomal recessive disorder (MIM 203500) that is caused byby a complex set of mutations in homogentisate 1,2-dioxygenasegene and consequent accumulation of homogentisic acid (HGA), causing a significant protein oxidation. A secondary form of amyloidosis was identified in AKU and related to high circulating serum amyloid A (SAA) levels, which are linked with inflammation and oxidative stress and might contribute to disease progression and patients' poor quality of life. Recently, we reported that inflammatory markers (SAA and chitotriosidase) and oxidative stress markers (protein thiolation index) might be disease activity markers in AKU. Thanks to an international network, we collected genotypic, phenotypic, and clinical data from more than 200 patients with AKU. These data are currently stored in our AKU database, named ApreciseKUre. In this work, we developed an algorithm able to make predictions about the oxidative status trend of each patient with AKU based on 55 predictors, namely circulating HGA, body mass index, total cholesterol, SAA, and chitotriosidase. Our general aim is to integrate the data of apparently heterogeneous patients with AKUAKU by using specific bioinformatics tools, in order to identify pivotal mechanisms involved in AKU for a preventive, predictive, and personalized medicine approach to AKU.

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