McGrail Daniel J, Lin Curtis Chun-Jen, Garnett Jeannine, Liu Qingxin, Mo Wei, Dai Hui, Lu Yiling, Yu Qinghua, Ju Zhenlin, Yin Jun, Vellano Christopher P, Hennessy Bryan, Mills Gordon B, Lin Shiaw-Yih
Department of Systems Biology, MD Anderson Cancer Center, Houston, TX 77030 USA.
Centre for Systems Medicine, Royal College of Surgeons in Ireland, 123 St. Stephen's Green, Dublin 2, Ireland.
NPJ Syst Biol Appl. 2017 Mar 6;3:8. doi: 10.1038/s41540-017-0011-6. eCollection 2017.
Despite rapid advancement in generation of large-scale microarray gene expression datasets, robust multigene expression signatures that are capable of guiding the use of specific therapies have not been routinely implemented into clinical care. We have developed an iterative resampling analysis to predict sensitivity algorithm to generate gene expression sensitivity profiles that predict patient responses to specific therapies. The resultant signatures have a robust capacity to accurately predict drug sensitivity as well as the identification of synergistic combinations. Here, we apply this approach to predict response to PARP inhibitors, and show it can greatly outperforms current clinical biomarkers, including mutation status, accurately identifying PARP inhibitor-sensitive cancer cell lines, primary patient-derived tumor cells, and patient-derived xenografts. These signatures were also capable of predicting patient response, as shown by applying a cisplatin sensitivity signature to ovarian cancer patients. We additionally demonstrate how these drug-sensitivity signatures can be applied to identify novel synergizing agents to improve drug efficacy. Tailoring therapeutic interventions to improve patient prognosis is of utmost importance, and our drug sensitivity prediction signatures may prove highly beneficial for patient management.
尽管在大规模微阵列基因表达数据集的生成方面取得了快速进展,但能够指导特定疗法使用的强大多基因表达特征尚未常规应用于临床护理。我们开发了一种迭代重采样分析来预测敏感性算法,以生成预测患者对特定疗法反应的基因表达敏感性概况。所得特征具有强大的能力,能够准确预测药物敏感性以及识别协同组合。在此,我们应用这种方法来预测对PARP抑制剂的反应,并表明它大大优于当前的临床生物标志物,包括突变状态,能够准确识别对PARP抑制剂敏感的癌细胞系、原发性患者来源的肿瘤细胞和患者来源的异种移植物。这些特征还能够预测患者反应,如将顺铂敏感性特征应用于卵巢癌患者所示。我们还展示了这些药物敏感性特征如何用于识别新的协同药物以提高药物疗效。定制治疗干预措施以改善患者预后至关重要,我们的药物敏感性预测特征可能对患者管理非常有益。