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Identification of Serological Biomarkers for Early Diagnosis of Lung Cancer Using a Protein Array-Based Approach

机译:用基于蛋白质阵列的方法鉴定血清生物标志物血清癌早期诊断

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摘要

Lung cancer (LC) remains the leading cause of mortality from malignant tumors worldwide. Currently, a lack of serological biomarkers for early LC diagnosis is a major roadblock for early intervention and prevention of LC. To undertake this challenge, we employed a two-phase strategy to discover and validate a biomarker panel using a protein array-based approach. In Phase I, we obtained serological autoimmune profiles of 80 LC patients and 20 healthy subjects on HuProt arrays, and identified 170 candidate proteins significantly associated with LC. In Phase II, we constructed a LC focused array with the 170 proteins, and profiled a large cohort, comprised of 352 LC patients, 93 healthy individuals, and 101 patients with lung benign lesions (LBL). The comparison of autoimmune profiles between the early stage LC and the combined group of healthy and LBL allowed us to identify and validate a biomarker panel of p53, HRas, and ETHE1 for diagnosis of early stage LC with 50% sensitivity at >90% specificity. Finally, the performance of this biomarker panel was confirmed in ELISA tests. In summary, this study represents one of the most comprehensive proteome-wide surveys with one of the largest (i.e. 1,101 unique samples) and most diverse (i.e. nine disease groups) cohorts, resulting in a biomarker panel with good performance.
机译:肺癌(LC)仍然是全世界恶性肿瘤死亡率的主要原因。目前,早期LC诊断缺乏血清生物标志物是早期干预和预防LC的主要路障。为了承担这一挑战,我们采用了一种双相策略来使用基于蛋白质阵列的方法来发现和验证生物标志物面板。在I阶段,我们在Huprot阵列上获得了80升患者的血清学自身免疫分布和20名健康受试者,并确定了170名与LC显着相关的候选蛋白。在第二阶段,我们构建了一种具有170次蛋白质的LC聚焦阵列,并分解了由352例LC患者,93名健康个体和101例肺良性病变(LBL)组成的大型队列。早期LC与合并组健康组和LBL之间的自身免疫分布的比较允许我们鉴定和验证P53,HRAS和Ethe1的生物标志物组,用于诊断早期LC,灵敏度为50%的特异性。最后,在ELISA测试中证实了该生物标志物面板的性能。总之,本研究代表了最大(即1,101个独特样品)之一和大多数(即九种疾病群)队列中最全面的蛋白质组织尺寸调查之一,导致生物标志物面板具有良好的性能。

著录项

  • 来源
    《Molecular & cellular proteomics: MCP》 |2017年第12期|共10页
  • 作者单位

    Johns Hopkins Sch Med Dept Ophthalmol Baltimore MD 21205 USA;

    Johns Hopkins Sch Med Dept Pharmacol &

    Mol Sci Baltimore MD 21205 USA;

    Fujian Med Univ Prov Clin Coll Fuzhou 350001 Fujian Peoples R China;

    Fujian Med Univ Prov Clin Coll Fuzhou 350001 Fujian Peoples R China;

    Johns Hopkins Sch Med Dept Pharmacol &

    Mol Sci Baltimore MD 21205 USA;

    CDI Labs Inc Mayaguez PR 00682 USA;

    CDI Labs Inc Mayaguez PR 00682 USA;

    CDI Labs Inc Mayaguez PR 00682 USA;

    CDI Labs Inc Mayaguez PR 00682 USA;

    Johns Hopkins Sch Med Dept Pharmacol &

    Mol Sci Baltimore MD 21205 USA;

    Johns Hopkins Sch Med Dept Ophthalmol Baltimore MD 21205 USA;

    Fujian Med Univ Prov Clin Coll Fuzhou 350001 Fujian Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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