为早期检测接受硼替佐米、来那度胺和地塞米松治疗的骨髓瘤患者的生化复发建立血清M蛋白反应模型。

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Yuki Otani, Yunqi Zhao, Guanyu Wang, Richard Labotka, Mark Rogge, Neeraj Gupta, Majid Vakilynejad, Dean Bottino, Yusuke Tanigawara
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引用次数: 0

摘要

多发性骨髓瘤(MM)治疗指南建议在达到正式进展标准(FPC)后再进行下一步治疗。由于预测病情进展可以在疾病负担相对较低时及早转入下一步治疗,因此我们评估了一个数学模型的预测准确性,该模型可以在达到 FPC 之前 180 天预测复发。我们从 IA16 数据集中抽取了 470/1143 例患者,这些患者在 CoMMpass 研究(NCT01454297)中接受了 VRd(Velcade(硼替佐米)、Revlimid(来那度胺)和地塞米松)的初始治疗,我们将这些患者按 2:1 的比例随机分成训练集和测试集。利用训练集建立了一个 M 蛋白动态模型,并根据患者长达 12 个月或更长时间的治疗反应史预测测试集患者的复发概率。该模型和 M 蛋白 "速度 "的预测准确性通过接收者操作特征(ROC)分析进行评估。最终的模型是一个双种群肿瘤生长抑制模型,具有药物效应加成和细胞杀伤的中转延迟区。利用至少 360 天的反应数据,通过 FPC 提前 180 天预测复发的 ROC 曲线下面积值为 0.828,优于相同条件下 M 蛋白速度的 ROC 值 0.706。该模型可通过早期M蛋白反应预测未来的复发,可用于未来的临床试验,以检验早期切换到二线疗法是否会给MM患者带来更好的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling serum M-protein response for early detection of biochemical relapse in myeloma patients treated with bortezomib, lenalidomide and dexamethasone.

Multiple myeloma (MM) treatment guidelines recommend waiting for formal progression criteria (FPC) to be met before proceeding to the next line of therapy. As predicting progression may allow early switching to next-line therapy while the disease burden is relatively low, we evaluated the predictive accuracy of a mathematical model to anticipate relapse 180 days before the FPC is met. A subset of 470/1143 patients from the IA16 dataset who were initially treated with VRd (Velcade (bortezomib), Revlimid (lenalidomide), and dexamethasone) in the CoMMpass study (NCT01454297) were randomly split 2:1 into training and testing sets. A model of M-protein dynamics was developed using the training set and used to predict relapse probability in patients in the testing set given their response histories up to 12 or more months of treatment. The predictive accuracy of this model and M-protein "velocity" were assessed via receiver operating characteristics (ROC) analysis. The final model was a two-population tumor growth inhibition model with additive drug effect and transit delay compartments for cell killing. The ROC area under the curve value of relapse prediction 180 days ahead of observed relapse by FPC was 0.828 using at least 360 days of response data, which was superior to the M-protein velocity ROC score of 0.706 under the same conditions. The model can predict future relapse from early M-protein responses and can be used in a future clinical trial to test whether early switching to second-line therapy results in better outcomes in MM.

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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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