克鲁兹锥虫
恰加斯病
DNA提取
病毒学
生物
连续稀释
塔克曼
血清学
多路复用
滤纸
聚合酶链反应
医学
寄生虫寄主
免疫学
抗体
病理
色谱法
基因
生物信息学
化学
生物化学
替代医学
万维网
计算机科学
作者
J. Medina,Griselda Ballering,Margarita Bisio,RM Ojeda,Jaime Altcheh
出处
期刊:Cold Spring Harbor Laboratory - medRxiv
日期:2020-07-19
标识
DOI:10.1101/2020.07.16.20153916
摘要
Abstract Chagas disease (CD) caused by the parasite Trypanosoma cruzi , belongs to the so-called neglected diseases group. In Argentina about 1,500 children are born with congenital Chagas disease per year. The diagnosis of CD in the newborn relies on the ability to detect parasites in the blood by microscopic observation, as the serological tests are ruled out because of the presence of maternal antibodies. CD treatment is more effective during the acute phase of infection. Early diagnosis and treatment of the disease is thus very important. The Argentinian National Program for early detection of metabolic diseases uses Whatman903 filter paper for blood sampling. This type of sample collection presents many advantages as the use of low blood volumes, minimal biological risk, and easy storage and transportation. The objective of the study was to evaluate the conservation efficiency of blood samples on filter paper in order to access good sensitivity on qPCR results for the detection of T. cruzi . To standardize the procedure, negative samples of blood were infected artificially with serial dilutions of trypomastigotes forms of T. cruzi from the TcVI strain obtained by cell culture in Vero cells. Concentrations between 50000 and 5 parasites/mL were prepared and loaded in filter paper for analysis. DNA extraction was conducted by the QIAamp DNA Mini Kit from QIAGEN. For qPCR, a method based on TaqMan technology was used, with a multiplex reaction for quantification of T. cruzi satellite DNA and an internal amplification control (IAC). The detection limit found from our results was 400 parasites/mL, demonstrating that this method could be a reliable option for the diagnosis of congenital CD by the detection of T. cruzi in blood collected in filter paper.
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