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A non-parametric Bayesian model for joint cell clustering and cluster matching: identification of anomalous sample phenotypes with random effects

机译:用于联合细胞聚类和聚类匹配的非参数贝叶斯模型:识别具有随机效应的异常样本表型

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摘要

BACKGROUND: Flow cytometry (FC)-based computer-aided diagnostics is an emerging technique utilizing modern multiparametric cytometry systems.The major difficulty in using machine-learning approaches for classification of FC data arises from limited access to a wide variety of anomalous samples for training. In consequence, any learning with an abundance of normal cases and a limited set of specific anomalous cases is biased towards the types of anomalies represented in the training set. Such models do not accurately identify anomalies, whether previously known or unknown, that may exist in future samples tested. Although one-class classifiers trained using only normal cases would avoid such a bias, robust sample characterization is critical for a generalizable model. Owing to sample heterogeneity and instrumental variability, arbitrary characterization of samples usually introduces feature noise that may lead to poor predictive performance. Herein, we present a non-parametric Bayesian algorithm called ASPIRE (anomalous sample phenotype identification with random effects) that identifies phenotypic differences across a batch of samples in the presence of random effects. Our approach involves simultaneous clustering of cellular measurements in individual samples and matching of discovered clusters across all samples in order to recover global clusters using probabilistic sampling techniques in a systematic way.RESULTS: We demonstrate the performance of the proposed method in identifying anomalous samples in two different FC data sets, one of which represents a set of samples including acute myeloid leukemia (AML) cases, and the other a generic 5-parameter peripheral-blood immunophenotyping. Results are evaluated in terms of the area under the receiver operating characteristics curve (AUC). ASPIRE achieved AUCs of 0.99 and 1.0 on the AML and generic blood immunophenotyping data sets, respectively.CONCLUSIONS: These results demonstrate that anomalous samples can be identified by ASPIRE with almost perfect accuracy without a priori access to samples of anomalous subtypes in the training set. The ASPIRE approach is unique in its ability to form generalizations regarding normal and anomalous states given only very weak assumptions regarding sample characteristics and origin. Thus, ASPIRE could become highly instrumental in providing unique insights about observed biological phenomena in the absence of full information about the investigated samples.
机译:背景:基于流式细胞仪(FC)的计算机辅助诊断是一种利用现代多参数细胞仪系统的新兴技术。使用机器学习方法对FC数据进行分类的主要困难是由于对各种异常样本进行培训的机会有限。结果,任何具有大量正常案例和有限的一组特定异常案例的学习都将偏向于训练集中所代表的异常类型。这样的模型不能准确地识别将来测试的样本中可能存在的异常,无论以前是已知的还是未知的。尽管仅使用正常情况进行训练的一类分类器可以避免这种偏差,但稳健的样本表征对于可概括的模型至关重要。由于样品的异质性和仪器的可变性,样品的任意表征通常会引入特征噪声,这可能会导致不良的预测性能。在本文中,我们提出了一种称为ASPIRE(具有随机效应的异常样品表型识别)的非参数贝叶斯算法,该算法可在存在随机效应的情况下跨一批样品识别表型差异。我们的方法涉及在单个样本中同时进行细胞测量的聚类和在所有样本中发现的聚类的匹配,以便以系统的方式使用概率抽样技术来恢复全局聚类。结果:我们证明了该方法在识别两个异常样本中的性能不同的FC数据集,其中一个代表一组样本,包括急性髓细胞性白血病(AML)病例,另一个代表通用的5参数外周血免疫表型。根据接收器工作特性曲线(AUC)下的面积评估结果。结论:这些结果表明,ASPIRE可以以几乎完美的准确性识别异常样本,而无需事先获得训练集中异常亚型的样本,因此ASPIRE在AML和通用血液免疫表型数据集上分别获得了0.99和1.0的AUC。 ASPIRE方法在仅针对样本特征和来源的假设非常微弱的情况下,就能够形成有关正常状态和异常状态的概括的独特能力。因此,在缺乏有关被调查样品的完整信息的情况下,ASPIRE可能会在提供有关所观察到的生物现象的独特见解方面发挥重要作用。

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