Bolis M, Garattini E, Paroni G, Zanetti A, Kurosaki M, Castrignanò T, Garattini S K, Biancardi F, Barzago M M, Gianni' M, Terao M, Pattini L, Fratelli M
Laboratory of Molecular Biology, IRCCS-Istituto di Ricerche Farmacologiche Mario Negri, Milano.
Department of Electronics, Information and Bioengineering, Politecnico di Milano, Milano.
Ann Oncol. 2017 Mar 1;28(3):611-621. doi: 10.1093/annonc/mdw660.
All-trans-retinoic acid (ATRA) is a differentiating agent used in the treatment of acute-promyelocytic-leukemia (APL) and it is under-exploited in other malignancies despite its low systemic toxicity. A rational/personalized use of ATRA requires the development of predictive tools allowing identification of sensitive cancer types and responsive individuals.
RNA-sequencing data for 10 080 patients and 33 different tumor types were derived from the TCGA and Leucegene datasets and completely re-processed. The study was carried out using machine learning methods and network analysis.
We profiled a large panel of breast-cancer cell-lines for in vitro sensitivity to ATRA and exploited the associated basal gene-expression data to initially generate a model predicting ATRA-sensitivity in this disease. Starting from these results and using a network-guided approach, we developed a generalized model (ATRA-21) whose validity extends to tumor types other than breast cancer. ATRA-21 predictions correlate with experimentally determined sensitivity in a large panel of cell-lines representative of numerous tumor types. In patients, ATRA-21 correctly identifies APL as the most sensitive acute-myelogenous-leukemia subtype and indicates that uveal-melanoma and low-grade glioma are top-ranking diseases as for average predicted responsiveness to ATRA. There is a consistent number of tumor types for which higher ATRA-21 predictions are associated with better outcomes.
In summary, we generated a tumor-type independent ATRA-sensitivity predictor which consists of a restricted number of genes and has the potential to be applied in the clinics. Identification of the tumor types that are likely to be generally sensitive to the action of ATRA paves the way to the design of clinical studies in the context of these diseases. In addition, ATRA-21 may represent an important diagnostic tool for the selection of individual patients who may benefit from ATRA-based therapeutic strategies also in tumors characterized by lower average sensitivity.
全反式维甲酸(ATRA)是一种用于治疗急性早幼粒细胞白血病(APL)的分化剂,尽管其全身毒性较低,但在其他恶性肿瘤中的应用尚未得到充分开发。合理/个性化使用ATRA需要开发预测工具,以识别敏感的癌症类型和有反应的个体。
来自TCGA和Leucegene数据集的10080名患者和33种不同肿瘤类型的RNA测序数据被获取并进行了完全重新处理。该研究采用机器学习方法和网络分析进行。
我们对一大组乳腺癌细胞系进行了ATRA体外敏感性分析,并利用相关的基础基因表达数据初步生成了一个预测该疾病中ATRA敏感性的模型。从这些结果出发,我们采用网络引导的方法,开发了一个通用模型(ATRA-21),其有效性扩展到乳腺癌以外的肿瘤类型。ATRA-21的预测与大量代表多种肿瘤类型的细胞系中实验确定的敏感性相关。在患者中,ATRA-21正确地将APL识别为最敏感的急性髓性白血病亚型,并表明葡萄膜黑色素瘤和低级别胶质瘤是对ATRA平均预测反应性最高的疾病。有相当数量的肿瘤类型,其较高的ATRA-21预测与更好的结果相关。
总之,我们生成了一个与肿瘤类型无关的ATRA敏感性预测指标,它由数量有限的基因组成,具有临床应用潜力。识别可能对ATRA作用普遍敏感的肿瘤类型为这些疾病背景下的临床研究设计铺平了道路。此外,ATRA-21可能是一种重要的诊断工具,用于选择可能从基于ATRA的治疗策略中获益的个体患者,即使在平均敏感性较低的肿瘤中也是如此。