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A neural network approach to multi-biomarker panel discovery by high-throughput plasma proteomics profiling of breast cancer

机译:乳腺癌高通量血浆蛋白质组学分析的多生物标志物小组发现的神经网络方法

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Background In the past several years, there has been increasing interest and enthusiasm in molecular biomarkers as tools for early detection of cancer. Liquid chromatography tandem mass spectrometry (LC/MS/MS) based plasma proteomics profiling technique is a promising technology platform to study candidate protein biomarkers for early detection of cancer. Factors such as inherent variability, protein detectability limitation, and peptide discovery biases among LC/MS/MS platforms have made the classification and prediction of proteomics profiles challenging. Developing proteomics data analysis methods to identify multi-protein biomarker panels for breast cancer diagnosis based on neural networks provides hope for improving both the sensitivity and the specificity of candidate cancer biomarkers for early detection. Results In our previous method, we developed a Feed Forward Neural Network-based method to build the classifier for plasma samples of breast cancer and then applied the classifier to predict blind dataset of breast cancer. However, the optimal combination C* in our previous method was actually determined by applying the trained FFNN on the testing set with the combination. Therefore, in this paper, we applied a three way data split to the Feed Forward Neural Network for training, validation and testing based. We found that the prediction performance of the FFNN model based on the three way data split outperforms our previous method and the prediction performance is improved from (AUC = 0.8706, precision = 82.5%, accuracy = 82.5%, sensitivity = 82.5%, specificity = 82.5% for the testing set) to (AUC = 0.895, precision = 86.84%, accuracy = 85%, sensitivity = 82.5%, specificity = 87.5% for the testing set). Conclusions Further pathway analysis showed that the top three five-marker panels are associated with complement and coagulation cascades, signaling, activation, and hemostasis, which are consistent with previous findings. We believe the new approach is a better solution for multi-biomarker panel discovery and it can be applied to other clinical proteomics.
机译:背景技术在过去几年中,分子生物标志物随着早期发现癌症的工具而越来越兴趣和热情。液相色谱串联质谱(LC / MS / MS)等离子体蛋白质组学分析技术是研究候选蛋白生物标志物进行早期检测癌症的有前途的技术平台。 LC / MS / MS平台中固有的可变性,蛋白质可检测性限制和肽发现偏差等因素使蛋白质组学曲线挑战的分类和预测。发展蛋白质组学数据分析方法以鉴定基于神经网络的乳腺癌诊断多蛋白质生物标志物面板提供了提高患者患者患者患者早期检测的敏感性和特异性的希望。结果在我们之前的方法中,我们开发了一种基于饲料的神经网络的方法,以构建乳腺癌血浆样品的分类器,然后将分类器预测乳腺癌的盲目数据集。然而,我们以前的方法中的最佳组合C *实际上是通过将训练的FFNN应用于使用组合的测试集。因此,在本文中,我们将三种数据分开到馈送前向神经网络的馈送,验证和基于测试。我们发现,基于三个方式数据分裂优于我们之前的方法的FFNN模型的预测性能,从(AUC = 0.8706,精度= 82.5%,精度= 82.5%,精确度= 82.5%,精确= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,= 82.5%,提高了预测性能的预测性能82.5%的测试集)至(AUC = 0.895,精度= 86.84%,精度= 85%,灵敏度= 82.5%,特异性= 87.5%的测试集)。结论进一步的途径分析表明,前三个五标记面板与补体和凝血级联,信号传导,活化和止血相关,这与先前的发现一致。我们认为新方法是多生物标志物面板发现的更好解决方案,它可以应用于其他临床蛋白质组学。

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