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首页> 外文期刊>Supportive care in cancer: official journal of the Multinational Association of Supportive Care in Cancer >Development and validation of a patient-specific predictive instrument for the need for dose reduction in chemotherapy for breast cancer: a potential decision aid for the use of myeloid growth factors.
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Development and validation of a patient-specific predictive instrument for the need for dose reduction in chemotherapy for breast cancer: a potential decision aid for the use of myeloid growth factors.

机译:开发和验证针对患者的减少乳腺癌化疗剂量的预测工具:使用骨髓生长因子的潜在决策辅助。

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A predictive instrument for chemotherapy dose reductions would help optimize delivery of planned chemotherapy and rationalize the use of myeloid growth factors. We analyzed data on 833 women with breast cancer treated with cyclophosphamide, doxorubicin, and fluorouracil, for six cycles in two phase III clinical trials. From the first study ( n=323), we generated a logistic regression model that predicts an individual patient's probability of receiving significantly reduced chemotherapy, defined as less than 85% of the planned dose over cycles 2-6, using data generated from cycle 1. The model was validated on data from the second study ( n=510). The predictive model's variables include nadir absolute neutrophil count (ANC) in cycle 1 (OR: 0.14, 95% CI: 0.06-0.30, P<0.001) and percent drop of platelets between day 1 and the nadir in cycle 1 (OR: 1.04, 95% CI: 1.02-1.05, P<0.001). Both variables are dose adjusted based on the chemotherapy cycle 1 dose. The model's discriminatory performance was good (ROC area=0.82), as was the calibration of predicted with actual frequencies of dose reductions. In the validation dataset, model variables remained significant, with an ROC area of 0.78 and good calibration. In summary, we devised and validated a predictive instrument that uses data from a patient's first cycle of chemotherapy to compute the probability of requiring a significant chemotherapy dose reduction on subsequent cycles. This instrument could help clinicians select patients who will benefit from early administration of myeloid growth factors.
机译:减少化学药品剂量的预测性仪器将有助于优化计划化学疗法的交付并合理利用髓样生长因子。我们在两项III期临床试验的六个周期中分析了用环磷酰胺,阿霉素和氟尿嘧啶治疗的833名乳腺癌女性的数据。在第一个研究中(n = 323),我们使用第1周期产生的数据,生成了一个逻辑回归模型,该模型可预测单个患者接受显着降低的化疗的概率,该概率定义为第2-6周期少于计划剂量的85%。根据第二项研究的数据验证了该模型(n = 510)。预测模型的变量包括第1周期的最低点中性粒细胞绝对计数(ANC)(OR:0.14,95%CI:0.06-0.30,P <0.001)和第1天与第1周期的最低点之间的血小板减少百分比(OR:1.04) 95%CI:1.02-1.05,P <0.001)。这两个变量均根据化疗周期1的剂量进行剂量调整。该模型的辨别性能良好(ROC面积= 0.82),用实际的剂量减少频率对预测值进行校准也是如此。在验证数据集中,模型变量仍然很重要,ROC面积为0.78,并且校准良好。总而言之,我们设计并验证了一种预测性仪器,该仪器使用患者第一个化疗周期的数据来计算在随后的化疗周期中需要显着降低化疗剂量的可能性。该仪器可以帮助临床医生选择将从骨髓生长因子的早期给药中受益的患者。

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