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SUPERVISED LEARNING METHODS FOR THE PREDICTION OF TUMOR RADIOSENSITIVITY TO PREOPERATIVE RADIOCHEMOTHERAPY

机译:预测术前放射化学疗法的肿瘤放射敏感性的监督学习方法

摘要

Disclosed is a gene expression panel that can predict radiation sensitivity (radiosensitivity) of a tumor in a subject. A method of predicting radiation sensitivity is provided that is based on cellular clonogenic survival after 2 Gy (SF2) for 48 cell lines. Gene expression is used as the basis of the prediction model. The radiosensitivity cell-based prediction model is validated using clinical patient data from rectal and esophagus cancer patients that received RT before surgery. The radiosensitivity genomic-based prediction model identifies patients with rectal cancer that may benefit from RT treatment by assigning higher values of SF2 to radio-resistant patients and lower values of SF2 to radio-sensitive patients.
机译:公开了一种可以预测对象中肿瘤的放射敏感性(放射敏感性)的基因表达面板。提供了一种预测放射敏感性的方法,该方法基于48个细胞系在2 Gy(SF2)之后的细胞克隆形成存活率。基因表达被用作预测模型的基础。使用来自在手术前接受放疗的直肠和食道癌患者的临床患者数据验证了基于放射敏感性细胞的预测模型。基于放射敏感性基因组的预测模型可通过将较高的SF2值分配给放射耐受性患者,将较低的SF2值分配给放射敏感性患者,从而识别可能受益于RT治疗的直肠癌患者。

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