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Pan-Cancer Transcriptional Models Predicting Chemosensitivity in Human Tumors

机译:预测人肿瘤中化学敏感性的泛癌转录模型

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Motivation: Despite increasing understanding of the molecular characteristics of cancer, chemotherapy success rates remain low for many cancer types. Studies have attempted to identify patient and tumor characteristics that predict sensitivity or resistance to different types of conventional chemotherapies, yet a concise model that predicts chemosensitivity based on gene expression profiles across cancer types remains to be formulated. We attempted to generate pan-cancer models predictive of chemosensitivity and chemoresistance. Such models may increase the likelihood of identifying the type of chemotherapy most likely to be effective for a given patient based on the overall gene expression of their tumor. Results: Gene expression and drug sensitivity data from solid tumor cell lines were used to build predictive models for 11 individual chemotherapy drugs. Models were validated using datasets from solid tumors from patients. For all drug models, accuracy ranged from 0.81 to 0.93 when applied to all relevant cancer types in the testing dataset. When considering how well the models predicted chemosensitivity or chemoresistance within individual cancer types in the testing dataset, accuracy was as high as 0.98. Cell line–derived pan-cancer models were able to statistically significantly predict sensitivity in human tumors in some instances; for example, a pan-cancer model predicting sensitivity in patients with bladder cancer treated with cisplatin was able to significantly segregate sensitive and resistant patients based on recurrence-free survival times ( P ?=?.048) and in patients with pancreatic cancer treated with gemcitabine ( P ?=?.038). These models can predict chemosensitivity and chemoresistance across cancer types with clinically useful levels of accuracy.
机译:动机:尽管对癌症的分子特征的了解,但许多癌症类型的化疗成功率仍然低。研究试图识别预测不同类型的常规化疗的敏感性或抗性的患者和肿瘤特征,但是一种简洁的模型,其基于癌症类型的基因表达谱预测化学敏感性仍然是待制备的。我们试图产生预测化学敏感性和化学性的泛癌模型。这种模型可能增加鉴定最可能基于其肿瘤的整体基因表达对给定患者有效的化疗的可能性的可能性。结果:采用固体肿瘤细胞系的基因表达和药物敏感性数据来构建11个个体化疗药物的预测模型。使用来自患者的实体瘤的数据集进行验证模型。对于所有药物模型,在测试数据集中应用于所有相关癌症类型时,精度范围为0.81至0.93。在考虑在测试数据集中的个体癌症类型内的模型预测的模型预测的模型或化学抑制程度,精度高达0.98。细胞系衍生的泛癌模型能够在某些情况下统计上显着地预测人类肿瘤的敏感性;例如,预测用顺铂治疗的膀胱癌患者预测敏感性的泛癌模型能够显着分离敏感和抗性患者,基于无复发存活时间(P?= 048)和胰腺癌患者治疗吉西他滨(p?= _. 038)。这些模型可以通过临床上有用的准确度预测癌症类型的化学敏感性和化学性。

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