窗口期
医学
乙型肝炎病毒
病毒学
背景(考古学)
神秘的
输血
纳特
传输(电信)
核酸检测
乙型肝炎
血清转化
抗体
免疫学
血清学
病毒
内科学
生物
疾病
病理
传染病(医学专业)
古生物学
计算机网络
替代医学
2019年冠状病毒病(COVID-19)
计算机科学
电气工程
工程类
作者
M. Spreafico,Alessandra Berzuini,Barbara Foglieni,Daniel Candotti,L. Raffaele,I. Guarnori,Agostino Colli,F. Fumagalli Maldini,Jean‐Pierre Allain,Daniele Prati
标识
DOI:10.1016/j.jhep.2015.06.016
摘要
In Italy, DNA screening of blood donations for hepatitis B virus (HBV) was introduced to prevent the transmission of window period and occult HBV infection. Anti-HBc screening is not recommended in order to avoid shortage of the blood supply. To contain costs, donor samples are generally pooled before testing. We evaluated the safety of this national policy using a prospective repository of donors/recipient pairs.We used highly sensitive nucleic acid testing (NAT) assays to test repository and follow-up samples from donors who were initially classified as negative by minipool NAT assays (6-MP), but were later found to carry occult HBV DNA. When available, we also analysed recipients' pre- and post-transfusion samples, collected in the context of a repository financed by the European Commission (the BOTIA project).Between 2008 and 2011 6-MP NAT assays identified 18 carriers of occult HBV infection among 12,695 donors; 28 samples from previous donations were available from 13 of these carriers. Highly sensitive HBV DNA detection methods showed that 6-MP HBV DNA screening failed to identify 14/28 (50%) viraemic donations, that were released for transfusion. HBV marker testing of such blood product recipients revealed two cases of transfusion transmitted HBV infection, documented by donor-recipient sequence identity.Viraemic blood donations from occult HBV infection carriers remain undetected by current minipool HBV DNA screening, and transfusion transmission of HBV continues to occur in susceptible patients. More effective individual HBV DNA screening and/or tests for antibodies to HBV core antigen should be considered to improve blood safety.
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