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Generating a robust prediction model for stage I lung adenocarcinoma recurrence after surgical resection

机译:生成手术切除后I期肺腺癌复发的可靠预测模型

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摘要

Lung cancer mortality remains high even after successful resection. Adjuvant treatment benefits stage II and III patients, but not stage I patients, and most studies fail to predict recurrence in stage I patients. Our study included 211 lung adenocarcinoma patients (stages I–IIIA; 81% stage I) who received curative resections at Taipei Veterans General Hospital between January 2001 and December 2012. We generated a prediction model using 153 samples, with validation using an additional 58 clinical outcome-blinded samples. Gene expression profiles were generated using formalin-fixed, paraffin-embedded tissue samples and microarrays. Data analysis was performed using a supervised clustering method. The prediction model generated from mixed stage samples successfully separated patients at high vs. low risk for recurrence. The validation tests hazard ratio (HR = 4.38) was similar to that of the training tests (HR = 4.53), indicating a robust training process. Our prediction model successfully distinguished high- from low-risk stage IA and IB patients, with a difference in 5-year disease-free survival between high- and low-risk patients of 42% for stage IA and 45% for stage IB (p < 0.05). We present a novel and effective model for identifying lung adenocarcinoma patients at high risk for recurrence who may benefit from adjuvant therapy. Our prediction performance of the difference in disease free survival between high risk and low risk groups demonstrates more than two fold improvement over earlier published results.
机译:即使成功切除,肺癌死亡率仍然很高。辅助治疗有益于II期和III期患者,但不适用于I期患者,并且大多数研究未能预测I期患者的复发。我们的研究包括2001年1月至2012年12月在台北荣民总医院接受根治性切除术的211例肺腺癌患者(I–IIIA期; I期为81%)。我们使用153个样本生成了预测模型,并使用了58个临床样本进行了验证结果盲样本。使用福尔马林固定,石蜡包埋的组织样品和微阵列生成基因表达谱。使用监督聚类方法进行数据分析。从混合阶段样本生成的预测模型成功分离了高复发风险和低复发风险的患者。验证测试的危险比(HR = 4.38)与培训测试的风险比(HR = 4.53)相似,表明培训过程稳健。我们的预测模型成功地区分了高危和低危IA和IB患者,高危和低危患者的5年无病生存期分别为IA期42%和IB期45%(p <0.05)。我们提出了一种新颖有效的模型,用于识别复发风险高,可能受益于辅助治疗的肺腺癌患者。我们对高危人群和低危人群之间无病生存期差异的预测表现表明,与先前发表的结果相比,该疾病的改善率高出两倍以上。

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