肺癌诊断的免疫标记:蛋白质微阵列数据规范化策略的评估。

Stefanie Brezina, Regina Soldo, Roman Kreuzhuber, Philipp Hofer, Andrea Gsur, Andreas Weinhaeusel
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引用次数: 13

摘要

迫切需要新的微创诊断方法来早期发现肺癌。众所周知,免疫系统对肿瘤的反应是产生肿瘤自身抗体。蛋白质微阵列是一种适合用于肿瘤相关抗原(TAA)自身抗体特征识别的高度多路平台。这些微阵列可以用从10µL血浆中纯化的0.1 mg免疫球蛋白G (IgG)进行探针检测。我们使用了一个由来自15417个cDNA克隆的重组蛋白组成的微阵列来筛选100个肺癌样本,包括25个肺癌主要组织学实体样本和100个对照组。由于这个数量的样本不能一次处理,因此由于“批效应”,所得数据显示出非生物差异。我们的目的是评估分位数归一化、“距离加权辨别”(DWD)和“战斗”在数据预处理中阐明诊断性免疫特征的有效性。“战斗”数据调整优于其他方法,使我们能够识别所有肺癌病例与对照以及小细胞、鳞状细胞、大细胞和肺腺癌的分类器,准确率分别为85%、94%、96%、92%和83%(灵敏度分别为0.85、0.92、0.96、0.88、0.83;特异性分别为0.85、0.96、0.96、0.96、0.83)。这些有希望的数据将成为进一步使用靶向自身抗体测试验证的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Immune-Signatures for Lung Cancer Diagnostics: Evaluation of Protein Microarray Data Normalization Strategies.

Immune-Signatures for Lung Cancer Diagnostics: Evaluation of Protein Microarray Data Normalization Strategies.

Immune-Signatures for Lung Cancer Diagnostics: Evaluation of Protein Microarray Data Normalization Strategies.

Immune-Signatures for Lung Cancer Diagnostics: Evaluation of Protein Microarray Data Normalization Strategies.

New minimal invasive diagnostic methods for early detection of lung cancer are urgently needed. It is known that the immune system responds to tumors with production of tumor-autoantibodies. Protein microarrays are a suitable highly multiplexed platform for identification of autoantibody signatures against tumor-associated antigens (TAA). These microarrays can be probed using 0.1 mg immunoglobulin G (IgG), purified from 10 µL of plasma. We used a microarray comprising recombinant proteins derived from 15,417 cDNA clones for the screening of 100 lung cancer samples, including 25 samples of each main histological entity of lung cancer, and 100 controls. Since this number of samples cannot be processed at once, the resulting data showed non-biological variances due to "batch effects". Our aim was to evaluate quantile normalization, "distance-weighted discrimination" (DWD), and "ComBat" for their effectiveness in data pre-processing for elucidating diagnostic immune‑signatures. "ComBat" data adjustment outperformed the other methods and allowed us to identify classifiers for all lung cancer cases versus controls and small-cell, squamous cell, large-cell, and adenocarcinoma of the lung with an accuracy of 85%, 94%, 96%, 92%, and 83% (sensitivity of 0.85, 0.92, 0.96, 0.88, 0.83; specificity of 0.85, 0.96, 0.96, 0.96, 0.83), respectively. These promising data would be the basis for further validation using targeted autoantibody tests.

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来源期刊
自引率
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审稿时长
11 weeks
期刊介绍: High-Throughput (formerly Microarrays, ISSN 2076-3905) is a multidisciplinary peer-reviewed scientific journal that provides an advanced forum for the publication of studies reporting high-dimensional approaches and developments in Life Sciences, Chemistry and related fields. Our aim is to encourage scientists to publish their experimental and theoretical results based on high-throughput techniques as well as computational and statistical tools for data analysis and interpretation. The full experimental or methodological details must be provided so that the results can be reproduced. There is no restriction on the length of the papers. High-Throughput invites submissions covering several topics, including, but not limited to: Microarrays, DNA Sequencing, RNA Sequencing, Protein Identification and Quantification, Cell-based Approaches, Omics Technologies, Imaging, Bioinformatics, Computational Biology/Chemistry, Statistics, Integrative Omics, Drug Discovery and Development, Microfluidics, Lab-on-a-chip, Data Mining, Databases, Multiplex Assays.
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