Department of Microbiology II, Faculty of Pharmacy, Complutense University of Madrid and Ramón y Cajal Institute of Health Research (IRYCIS), Madrid, Spain.
Mol Cell Proteomics. 2011 Jan;10(1):M110.004010. doi: 10.1074/mcp.M110.004010. Epub 2010 Sep 21.
Better prognostic predictors for invasive candidiasis (IC) are needed to tailor and individualize therapeutic decision-making and minimize its high morbidity and mortality. We investigated whether molecular profiling of IgG-antibody response to the whole soluble Candida proteome could reveal a prognostic signature that may serve to devise a clinical-outcome prediction model for IC and contribute to known IC prognostic factors. By serological proteome analysis and data-mining procedures, serum 31-IgG antibody-reactivity patterns were examined in 45 IC patients randomly split into training and test sets. Within the training cohort, unsupervised two-way hierarchical clustering and principal-component analyses segregated IC patients into two antibody-reactivity subgroups with distinct prognoses that were unbiased by traditional IC prognostic factors and other patients-related variables. Supervised discriminant analysis with leave-one-out cross-validation identified a five-IgG antibody-reactivity signature as the most simplified and accurate IC clinical-outcome predictor, from which an IC prognosis score (ICPS) was derived. Its robustness was confirmed in the test set. Multivariate logistic-regression and receiver-operating-characteristic curve analyses demonstrated that the ICPS was able to accurately discriminate IC patients at high risk for death from those at low risk and outperformed conventional IC prognostic factors. Further validation of the five-IgG antibody-reactivity signature on a multiplexed immunoassay supported the serological proteome analysis results. The five IgG antibodies incorporated in the ICPS made biologic sense and were associated either with good-prognosis and protective patterns (those to Met6p, Hsp90p, and Pgk1p, putative Candida virulence factors and antiapoptotic mediators) or with poor-prognosis and risk patterns (those to Ssb1p and Gap1p/Tdh3p, potential Candida proapoptotic mediators). We conclude that the ICPS, with additional refinement in future larger prospective cohorts, could be applicable to reliably predict patient clinical-outcome for individualized therapy of IC. Our data further provide insights into molecular mechanisms that may influence clinical outcome in IC and uncover potential targets for vaccine design and immunotherapy against IC.
需要更好的侵袭性念珠菌病 (IC) 预后预测指标,以定制和个体化治疗决策,并最大限度地降低其高发病率和死亡率。我们研究了全可溶性念珠菌蛋白质组 IgG 抗体反应的分子谱是否可以揭示预后特征,从而有助于制定 IC 的临床结果预测模型,并为已知的 IC 预后因素做出贡献。通过血清蛋白质组分析和数据挖掘程序,在随机分为训练集和测试集的 45 名 IC 患者中检查了血清 31-IgG 抗体反应模式。在训练队列中,无监督双向层次聚类和主成分分析将 IC 患者分为具有不同预后的两个抗体反应亚组,这些亚组不受传统 IC 预后因素和其他患者相关变量的影响。具有留一法交叉验证的监督判别分析确定了五个 IgG 抗体反应特征作为最简化和准确的 IC 临床结果预测指标,从中得出了 IC 预后评分 (ICPS)。在测试集中验证了其稳健性。多变量逻辑回归和接收者操作特征曲线分析表明,ICPS 能够准确区分死亡风险高的 IC 患者和死亡风险低的患者,并且优于传统的 IC 预后因素。在多重免疫测定上对五个 IgG 抗体反应特征的进一步验证支持了血清蛋白质组分析结果。纳入 ICPS 的五个 IgG 抗体具有生物学意义,与良好预后和保护模式(针对 Met6p、Hsp90p 和 Pgk1p 的抗体,潜在的念珠菌毒力因子和抗凋亡介质)或不良预后和风险模式(针对 Ssb1p 和 Gap1p/Tdh3p 的抗体,潜在的念珠菌促凋亡介质)相关。我们得出结论,ICPS 可以在未来更大的前瞻性队列中进一步完善,可用于可靠地预测患者的临床结果,以进行个体化 IC 治疗。我们的数据还进一步深入了解了可能影响 IC 临床结果的分子机制,并揭示了针对 IC 的疫苗设计和免疫治疗的潜在靶点。