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Identification of diagnostic markers for tuberculosis by proteomic fingerprinting of serum.

机译:通过血清蛋白质组指纹图谱鉴定结核病诊断标志物。

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BACKGROUND: We investigated the potential of proteomic fingerprinting with mass spectrometric serum profiling, coupled with pattern recognition methods, to identify biomarkers that could improve diagnosis of tuberculosis. METHODS: We obtained serum proteomic profiles from patients with active tuberculosis and controls by surface-enhanced laser desorption ionisation time of flight mass spectrometry. A supervised machine-learning approach based on the support vector machine (SVM) was used to obtain a classifier that distinguished between the groups in two independent test sets. We used k-fold cross validation and random sampling of the SVM classifier to assess the classifier further. Relevant mass peaks were selected by correlational analysis and assessed with SVM. We tested the diagnostic potential of candidate biomarkers, identified by peptide mass fingerprinting, by conventional immunoassays and SVM classifiers trained on these data. FINDINGS: Our SVM classifier discriminated the proteomic profile of patients with active tuberculosis from that of controls with overlapping clinical features. Diagnostic accuracy was 94% (sensitivity 93.5%, specificity 94.9%) for patients with tuberculosis and was unaffected by HIV status. A classifier trained on the 20 most informative peaks achieved diagnostic accuracy of 90%. From these peaks, two peptides (serum amyloid A protein and transthyretin) were identified and quantitated by immunoassay. Because these peptides reflect inflammatory states, we also quantitated neopterin and C reactive protein. Application of an SVM classifier using combinations of these values gave diagnostic accuracies of up to 84% for tuberculosis. Validation on a second, prospectively collected testing set gave similar accuracies using the whole proteomic signature and the 20 selected peaks. Using combinations of the four biomarkers, we achieved diagnostic accuracies of up to 78%. INTERPRETATION: The potential biomarkers for tuberculosis that we identified through proteomic fingerprinting and pattern recognition have a plausible biological connection with the disease and could be used to develop new diagnostic tests.
机译:摘要背景:我们研究了蛋白质组指纹图谱与质谱血清谱分析结合模式识别方法的潜力,以鉴定可改善结核病诊断的生物标志物。方法:我们通过表面增强激光解吸电离飞行时间质谱技术从活动性结核病患者和对照中获得了血清蛋白质组学特征。使用基于支持向量机(SVM)的有监督的机器学习方法来获得分类器,以区分两个独立测试集中的组。我们使用了SVM分类器的k倍交叉验证和随机抽样来进一步评估分类器。通过相关分析选择相关的质谱峰,并用SVM进行评估。我们通过在这些数据上训练的常规免疫测定和SVM分类器,测试了通过肽质量指纹图谱鉴定的候选生物标志物的诊断潜力。结果:我们的SVM分类器将活动性结核病患者的蛋白质组学特征与具有重叠临床特征的对照组区别开来。结核病患者的诊断准确度为94%(敏感性93.5%,特异性94.9%),不受HIV状况的影响。在20个最有用的峰上进行训练的分类器实现了90%的诊断准确性。从这些峰中,鉴定出两种肽(血清淀粉样蛋白A蛋白和运甲状腺素蛋白)并通过免疫测定进行定量。因为这些肽反映了炎症状态,所以我们还定量了新蝶呤和C反应蛋白。通过结合使用这些值的SVM分类器,可以得到高达84%的结核病诊断准确性。使用完整的蛋白质组学特征和20个选定的峰,对第二个预期收集的测试集进行的验证得出了相似的准确度。使用四种生物标志物的组合,我们实现了高达78%的诊断准确性。解释:我们通过蛋白质组指纹图谱和模式识别识别出的潜在结核病生物标志物与该疾病具有合理的生物学联系,可用于开发新的诊断测试。

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