Department of Chemistry, Sapienza - University of Rome, Rome, Italy.
National Centre for the Control and Evaluation of Medicines, Istituto Superiore di Sanità, Rome, Italy.
Talanta. 2020 Nov 1;219:121243. doi: 10.1016/j.talanta.2020.121243. Epub 2020 Jun 24.
In this study, the capability of thermogravimetry in conjuction with a multivariate statistical analysis, was investigated for the screening of Sickle Cell Anemia (SCA), a hereditary disorder of hemoglobin characterized by severe hemolytic anemia with different severe clinical manifestations. SCA results from a mutation in the sixth codon of the beta globin gene, which results in the substitution of glutamic acid for valine and leads to the production of an altered form of hemoglobin, hemoglobin S (HbS). People with this disorder have atypical hemoglobin molecules which tend to aggregate together and form filaments inside the red blood cells. These deformed red blood cells called half-moon or sickle, are rigid and unable to flow inside the small vessels, creating occlusions of the small circulation. Systematic screening for SCA is not a common practice, and diagnosis is usually made when a severe complication occurs. An early and rapid diagnosis is important for patients in order to prevent and treat the painful episodes that can occur when sickled red blood cells, which are stiff and inflexible, get stuck in small blood vessels. A novel test was developed using whole blood samples from patients with congenital defects and analyzed by the TG7 thermobalance (PerkinElmer) without any pretreatment. The resulting TG and DTG curves of blood samples were compared to those typical of healthy individuals and results demonstrated a different thermal behaviour of the anemic patients with respect to healthy individuals as result of the different amounts of water content and corpuscular fraction. The multivariate statistical analysis performed by chemometrics allowed a quick identification of differences between the two population and provided a model of prediction in patients with heterogeneous congenital hematological disorders. The predictive ability of the model was tested by processing patient affected by SCA and with a confirmed diagnosis obtained by the molecular analysis. The model provided for a sensitivity and an accuracy of a 100% and an error of prediction of about 0.1%.
在这项研究中,热重分析结合多元统计分析的能力被用于筛查镰状细胞贫血(SCA),这是一种遗传性血红蛋白疾病,其特征为严重的溶血性贫血和不同的严重临床表现。SCA 是由于β珠蛋白基因第六位密码子的突变引起的,导致谷氨酸被缬氨酸取代,从而产生一种改变的血红蛋白形式,即血红蛋白 S(HbS)。患有这种疾病的人具有异常的血红蛋白分子,这些分子容易聚集并在红细胞内形成纤维。这些变形的红细胞称为半月形或镰状,它们是刚性的,无法在小血管内流动,从而导致小循环的阻塞。系统性筛查 SCA 并不是一种常见的做法,通常在发生严重并发症时才进行诊断。对于患者来说,早期和快速的诊断非常重要,以便预防和治疗镰状红细胞引起的疼痛发作,这些红细胞僵硬且缺乏弹性,容易卡在小血管中。使用来自先天性缺陷患者的全血样本开发了一种新的测试,并在 TG7 热天平(PerkinElmer)上进行分析,无需任何预处理。与健康个体的典型 TG 和 DTG 曲线进行比较,结果表明,由于水分含量和细胞分数的不同,贫血患者的热行为与健康个体不同。化学计量学的多元统计分析允许快速识别两种人群之间的差异,并为具有异质性先天性血液疾病的患者提供预测模型。通过处理患有 SCA 且通过分子分析获得确诊的患者,测试了模型的预测能力。该模型的预测能力为 100%的灵敏度和准确性,预测误差约为 0.1%。