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Learning Causal Models for Noisy Biological Data Mining: An Application to Ovarian Cancer Detection

机译:噪声生物数据挖掘的学习因果模型:在卵巢癌检测中的应用

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摘要

Undetected errors in the expression measurements from high-throughput DNA microarrays and protein spectroscopy could seriously affect the diagnostic reliability in disease detection. In addition to a high resilience against such errors, diagnostic models need to be more comprehensible so that a deeper understanding of the causal interactions among biological entities like genes and proteins may be possible. In this paper, we introduce a robust knowledge discovery approach that addresses these challenges. First, the causal interactions among the genes and proteins in the noisy expression data are discovered automatically through Bayesian network learning. Then, the diagnosis of a disease based on the network is performed using a novel error-handling procedure, which automatically identifies the noisy measurements and accounts for their uncertainties during diagnosis. An application to the problem of ovarian cancer detection shows that the approach effectively discovers causal interactions among cancer-specific proteins. With the proposed error-handling procedure, the network perfectly distinguishes between the cancer and normal patients.
机译:高通量DNA微阵列和蛋白质光谱法表达检测中未发现的错误会严重影响疾病检测的诊断可靠性。除了对此类错误的高度适应能力之外,诊断模型还需要更易于理解,以便对诸如基因和蛋白质之类的生物实体之间的因果相互作用有更深入的了解。在本文中,我们介绍了一种强大的知识发现方法来应对这些挑战。首先,通过贝叶斯网络学习自动发现嘈杂表达数据中基因和蛋白质之间的因果关系。然后,使用新颖的错误处理程序执行基于网络的疾病诊断,该程序会自动识别出嘈杂的测量值,并在诊断过程中说明其不确定性。在卵巢癌检测问题中的一项应用表明,该方法有效地发现了癌症特异性蛋白之间的因果相互作用。通过提出的错误处理程序,该网络可以完美地区分癌症患者和正常患者。

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