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An investigation of proteomic data for application in precision medicine

机译:精密药物应用蛋白质组学数据的研究

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The majority of cancer drug sensitivity models are built utilizing genomic data measured before drug application to predict the steady state sensitivity of an applied drug. Restricting models to this type of data is limiting and can only explain one small piece of the puzzle. Better characterization of cancer cells can be accomplished through the use of proteomic data as this more directly corresponds to cellular activity. We have implemented models that predict cell viability utilizing protein expression measured post drug application. These models are built utilizing the Random Forest, Elastic Net, Partial Least Square Regression and Support Vector Regression algorithms in addition to stacked models. We have also utilized these same algorithms to predict the average protein inhibition of a cancer drug utilizing cell viability screens as input. Protein expression and cell viability data is taken from the HMS-LINCS database. We have shown that cell viability can be effectively predicted utilizing proteomic data and that we can estimate cancer drug protein inhibition utilizing a small number of cell line screens.
机译:大多数癌症药物敏感模型采用药物应用前测量的基因组数据建造,以预测应用药物的稳态敏感性。将模型限制为这种类型的数据是限制性的,只能解释一小块拼图。通过使用蛋白质组学数据可以更好地表征癌细胞,因为该更直接对应于细胞活性。我们已经实施了利用药物申请后蛋白质表达预测细胞活力的模型。除了堆叠模型之外,这些模型是利用随机森林,弹性网,偏最小二乘回归和支持向量回归算法。我们还利用这些相同的算法来预测利用细胞活力屏幕作为输入的癌症药物的平均蛋白质抑制。蛋白表达和细胞活力数据来自HMS-LINCs数据库。我们已经表明,可以利用蛋白质组学数据有效地预测细胞活力,并且我们可以利用少量细胞系筛来估计癌症药物蛋白质抑制。

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