医学
Beckwith-Wiedemann综合征
语句(逻辑)
重症监护医学
协商一致会议
梅德林
家庭医学
儿科
内科学
遗传学
法学
政治学
生物
基因
基因表达
DNA甲基化
作者
Frédéric Brioude,Jennifer M. Kalish,Alessandro Mussa,Alison Foster,Jet Bliek,Giovanni Battista Ferrero,Susanne E. Boonen,Trevor Cole,Robert J. Baker,Monica Bertoletti,Guido Cocchi,Carole Coze,Maurizio De Pellegrin,Khalid Hussain,Abdulla Ibrahim,Mark D. Kilby,Małgorzata Krajewska‐Walasek,Christian P. Kratz,E J Ladusans,Pablo Lapunzina
标识
DOI:10.1038/nrendo.2017.166
摘要
Beckwith–Wiedemann syndrome (BWS), a human genomic imprinting disorder, is characterized by phenotypic variability that might include overgrowth, macroglossia, abdominal wall defects, neonatal hypoglycaemia, lateralized overgrowth and predisposition to embryonal tumours. Delineation of the molecular defects within the imprinted 11p15.5 region can predict familial recurrence risks and the risk (and type) of embryonal tumour. Despite recent advances in knowledge, there is marked heterogeneity in clinical diagnostic criteria and care. As detailed in this Consensus Statement, an international consensus group agreed upon 72 recommendations for the clinical and molecular diagnosis and management of BWS, including comprehensive protocols for the molecular investigation, care and treatment of patients from the prenatal period to adulthood. The consensus recommendations apply to patients with Beckwith–Wiedemann spectrum (BWSp), covering classical BWS without a molecular diagnosis and BWS-related phenotypes with an 11p15.5 molecular anomaly. Although the consensus group recommends a tumour surveillance programme targeted by molecular subgroups, surveillance might differ according to the local health-care system (for example, in the United States), and the results of targeted and universal surveillance should be evaluated prospectively. International collaboration, including a prospective audit of the results of implementing these consensus recommendations, is required to expand the evidence base for the design of optimum care pathways.
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