Artemov Artem, Aliper Alexander, Korzinkin Michael, Lezhnina Ksenia, Jellen Leslie, Zhukov Nikolay, Roumiantsev Sergey, Gaifullin Nurshat, Zhavoronkov Alex, Borisov Nicolas, Buzdin Anton
Pathway Pharmaceuticals, Wan Chai, Hong Kong, Hong Kong SAR.
D. Rogachyov Federal Research Center of Pediatric Hematology, Oncology and Immunology, Moscow, Russia.
Oncotarget. 2015 Oct 6;6(30):29347-56. doi: 10.18632/oncotarget.5119.
A new generation of anticancer therapeutics called target drugs has quickly developed in the 21st century. These drugs are tailored to inhibit cancer cell growth, proliferation, and viability by specific interactions with one or a few target proteins. However, despite formally known molecular targets for every "target" drug, patient response to treatment remains largely individual and unpredictable. Choosing the most effective personalized treatment remains a major challenge in oncology and is still largely trial and error. Here we present a novel approach for predicting target drug efficacy based on the gene expression signature of the individual tumor sample(s). The enclosed bioinformatic algorithm detects activation of intracellular regulatory pathways in the tumor in comparison to the corresponding normal tissues. According to the nature of the molecular targets of a drug, it predicts whether the drug can prevent cancer growth and survival in each individual case by blocking the abnormally activated tumor-promoting pathways or by reinforcing internal tumor suppressor cascades. To validate the method, we compared the distribution of predicted drug efficacy scores for five drugs (Sorafenib, Bevacizumab, Cetuximab, Sorafenib, Imatinib, Sunitinib) and seven cancer types (Clear Cell Renal Cell Carcinoma, Colon cancer, Lung adenocarcinoma, non-Hodgkin Lymphoma, Thyroid cancer and Sarcoma) with the available clinical trials data for the respective cancer types and drugs. The percent of responders to a drug treatment correlated significantly (Pearson's correlation 0.77 p = 0.023) with the percent of tumors showing high drug scores calculated with the current algorithm.
21世纪,新一代抗癌治疗药物——靶向药物迅速发展起来。这些药物通过与一种或几种靶蛋白的特异性相互作用,来抑制癌细胞的生长、增殖和存活。然而,尽管每种“靶向”药物都有明确已知的分子靶点,但患者对治疗的反应在很大程度上仍然因人而异且难以预测。选择最有效的个性化治疗方案仍是肿瘤学领域的一项重大挑战,目前很大程度上仍需反复试验。在此,我们提出一种基于个体肿瘤样本基因表达特征预测靶向药物疗效的新方法。所附的生物信息学算法可检测肿瘤细胞内调节通路相对于相应正常组织的激活情况。根据药物分子靶点的性质,它能预测在每种情况下,药物是否可以通过阻断异常激活的促肿瘤通路或增强内部肿瘤抑制级联反应来抑制癌症生长和存活。为验证该方法,我们将五种药物(索拉非尼、贝伐单抗、西妥昔单抗、伊马替尼、舒尼替尼)和七种癌症类型(肾透明细胞癌、结肠癌、肺腺癌、非霍奇金淋巴瘤、甲状腺癌和肉瘤)的预测药物疗效评分分布,与各癌症类型和药物的现有临床试验数据进行了比较。药物治疗反应者的百分比与使用当前算法计算出的高药物评分肿瘤的百分比显著相关(皮尔逊相关性为0.77,p = 0.023)。