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A framework for personalized medicine: prediction of drug sensitivity in cancer by proteomic profiling

机译:个性化医学的框架:通过蛋白质组学分析预测癌症的药物敏感性

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Background The goal of personalized medicine is to provide patients optimal drug screening and treatment based on individual genomic or proteomic profiles. Reverse-Phase Protein Array (RPPA) technology offers proteomic information of cancer patients which may be directly related to drug sensitivity. For cancer patients with different drug sensitivity, the proteomic profiling reveals important pathophysiologic information which can be used to predict chemotherapy responses. Results The goal of this paper is to present a framework for personalized medicine using both RPPA and drug sensitivity (drug resistance or intolerance). In the proposed personalized medicine system, the prediction of drug sensitivity is obtained by a proposed augmented naive Bayesian classifier (ANBC) whose edges between attributes are augmented in the network structure of naive Bayesian classifier. For discriminative structure learning of ANBC, local classification rate (LCR) is used to score augmented edges, and greedy search algorithm is used to find the discriminative structure that maximizes classification rate (CR). Once a classifier is trained by RPPA and drug sensitivity using cancer patient samples, the classifier is able to predict the drug sensitivity given RPPA information from a patient. Conclusion In this paper we proposed a framework for personalized medicine where a patient is profiled by RPPA and drug sensitivity is predicted by ANBC and LCR. Experimental results with lung cancer data demonstrate that RPPA can be used to profile patients for drug sensitivity prediction by Bayesian network classifier, and the proposed ANBC for personalized cancer medicine achieves better prediction accuracy than naive Bayes classifier in small sample size data on average and outperforms other the state-of-the-art classifier methods in terms of classification accuracy.
机译:背景技术个性化医学的目标是根据个体基因组或蛋白质组学特征为患者提供最佳的药物筛选和治疗。反相蛋白质阵列(RPPA)技术可为癌症患者提供蛋白质组信息,这可能与药物敏感性直接相关。对于具有不同药物敏感性的癌症患者,蛋白质组学分析揭示了重要的病理生理信息,可用于预测化学疗法的反应。结果本文的目的是提供一种同时使用RPPA和药物敏感性(耐药性或不耐受性)的个性化医学框架。在所提出的个性化医学系统中,通过所提出的增强朴素贝叶斯分类器(ANBC)获得对药物敏感性的预测,其在原始朴素贝叶斯分类器的网络结构中属性之间的边缘被增加。对于ANBC的判别结构学习,使用局部分类率(LCR)对增强边缘进行评分,并使用贪婪搜索算法查找使分类率(CR)最大化的判别结构。一旦使用癌症患者样本通过RPPA和药物敏感性对分类器进行了训练,分类器就可以根据患者的RPPA信息预测药物敏感性。结论在本文中,我们提出了个性化医学的框架,其中通过RPPA对患者进行分析,并通过ANBC和LCR预测药物敏感性。肺癌数据的实验结果表明,RPPA可以用于通过贝叶斯网络分类器对患者进行药物敏感性预测,并提出的针对个性化癌症药物的拟议ANBC在小样本数据中的平均准确度要优于朴素贝叶斯分类器,并且优于其他分类准确性方面的最新分类器方法。

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