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Precision Oncology beyond Targeted Therapy: Combining Omics Data with Machine Learning Matches the Majority of Cancer Cells to Effective Therapeutics

机译:超出目标治疗的精确肿瘤学:将OMICS数据与机器学习相结合与大多数癌细胞与有效的治疗方法相匹配

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摘要

Precision oncology involves identifying drugs that will effectively treat a tumor and then prescribing an optimal clinical treatment regimen. However, most first-line chemotherapy drugs do not have biomarkers to guide their application. For molecularly targeted drugs, using the genomic status of a drug target as a therapeutic indicator has limitations. In this study, machine learning methods (e.g., deep learning) were used to identify informative features from genome-scale omics data and to train classifiers for predicting the effectiveness of drugs in cancer cell lines. The methodology introduced here can accurately predict the efficacy of drugs, regardless of whether they are molecularly targeted or nonspecific chemotherapy drugs. This approach, on a per-drug basis, can identify sensitive cancer cells with an average sensitivity of 0.82 and specificity of 0.82; on a per-cell line basis, it can identify effective drugs with an average sensitivity of 0.80 and specificity of 0.82. This report describes a data-driven precision medicine approach that is not only generalizable but also optimizes therapeutic efficacy. The framework detailed herein, when successfully translated to clinical environments, could significantly broaden the scope of precision oncology beyond targeted therapies, benefiting an expanded proportion of cancer patients.
机译:精密肿瘤学涉及识别将有效治疗肿瘤的药物,然后处于规定最佳的临床治疗方案。然而,大多数一线化疗药物没有生物标志物引导其应用。对于分子靶向药物,使用药物靶标作为治疗指示剂的基因组状态具有限制。在本研究中,用于识别基因组尺度常规数据的信息特征,并培训分类器以预测癌细胞系中药物的有效性。介绍的方法可以准确地预测药物的功效,无论它们是分子靶向还是非特异性化疗药物。这种方法在每种药物的基础上可以鉴定平均敏感性0.82的敏感性癌细胞和0.82的特异性;在每个细胞系的基础上,它可以识别平均敏感性为0.80的有效药物和0.82的特异性。本报告描述了一种数据驱动的精密药方法,其不仅概括,而且优化治疗效果。本文详述的框架在成功转化为临床环境时,可以显着扩大超出针对疗法的精密肿瘤的范围,从而有益于癌症患者的扩大比例。

著录项

  • 来源
    《Molecular cancer research: MCR》 |2018年第2期|共10页
  • 作者单位

    Univ Pittsburgh Dept Biomed Informat Sch Med Pittsburgh PA 15206 USA;

    Univ Pittsburgh Dept Biomed Informat Sch Med Pittsburgh PA 15206 USA;

    Univ Pittsburgh Dept Biomed Informat Sch Med Pittsburgh PA 15206 USA;

    Univ Pittsburgh Dept Biomed Informat Sch Med Pittsburgh PA 15206 USA;

    Univ Pittsburgh Dept Biomed Informat Sch Med Pittsburgh PA 15206 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 肿瘤学;
  • 关键词

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