计算模型可预测接受内分泌疗法和 CDK4/6 抑制剂治疗的 B 型乳腺癌患者的预后。

IF 10 1区 医学 Q1 ONCOLOGY Clinical Cancer Research Pub Date : 2024-09-03 DOI:10.1158/1078-0432.CCR-24-0244
Leonard Schmiester, Fara Brasó-Maristany, Blanca González-Farré, Tomás Pascual, Joaquín Gavilá, Xavier Tekpli, Jürgen Geisler, Vessela N Kristensen, Arnoldo Frigessi, Aleix Prat, Alvaro Köhn-Luque
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引用次数: 0

摘要

目的:开发一种计算生物标志物,用于在治疗前预测乳腺癌患者对CDK4/6抑制剂(CDK4/6i)联合内分泌疗法的反应:实验设计:根据大量公开的乳腺癌细胞系数据,开发并训练了一个包含蛋白质信号转导和药物作用机制的机理数学模型。建立该模型的目的是根据六个基因(CCND1、CCNE1、ESR1、RB1、MYC 和 CDKN1A)的表达提供患者特异性反应评分。该模型在五个独立组群中进行了验证,这些组群中共有 148 名接受内分泌疗法和 CDK4/6i 治疗的早期或晚期乳腺癌患者。通过评估新辅助治疗后的Ki67水平和PAM50复发风险(ROR)或评估无进展生存期(PFS)来衡量反应:结果:在所有五个队列中,该模型均显示与患者的预后有明显关联。该模型预测了高 Ki67(曲线下面积;AUC(95% 置信区间)为 0.80 (0.64 - 0.92)、0.81 (0.60 - 1.00) 和 0.80 (0.65 - 0.93))和高 PAM50 ROR(AUC 为 0.78 (0.64 - 0.89))。在接受化疗的患者中未观察到这一结果。在其他队列中,基于模型预测的患者分层与PFS显著相关(危险比=2.92(95% CI 1.08 - 7.86),P=0.034和HR=2.16(1.02 - 4.55),P=0.043):数学建模方法能准确预测CDK4/6i加内分泌治疗后的患者预后,这标志着B型乳腺癌患者向更个性化的治疗迈进了一步。
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Computational Model Predicts Patient Outcomes in Luminal B Breast Cancer Treated with Endocrine Therapy and CDK4/6 Inhibition.

Purpose: Development of a computational biomarker to predict, prior to treatment, the response to CDK4/6 inhibition (CDK4/6i) in combination with endocrine therapy in patients with breast cancer.

Experimental design: A mechanistic mathematical model that accounts for protein signaling and drug mechanisms of action was developed and trained on extensive, publicly available data from breast cancer cell lines. The model was built to provide a patient-specific response score based on the expression of six genes (CCND1, CCNE1, ESR1, RB1, MYC, and CDKN1A). The model was validated in five independent cohorts of 148 patients in total with early-stage or advanced breast cancer treated with endocrine therapy and CDK4/6i. Response was measured either by evaluating Ki67 levels and PAM50 risk of relapse (ROR) after neoadjuvant treatment or by evaluating progression-free survival (PFS).

Results: The model showed significant association with patient's outcomes in all five cohorts. The model predicted high Ki67 [area under the curve; AUC (95% confidence interval, CI) of 0.80 (0.64-0.92), 0.81 (0.60-1.00) and 0.80 (0.65-0.93)] and high PAM50 ROR [AUC of 0.78 (0.64-0.89)]. This observation was not obtained in patients treated with chemotherapy. In the other cohorts, patient stratification based on the model prediction was significantly associated with PFS [hazard ratio (HR) = 2.92 (95% CI, 1.08-7.86), P = 0.034 and HR = 2.16 (1.02 4.55), P = 0.043].

Conclusions: A mathematical modeling approach accurately predicts patient outcome following CDK4/6i plus endocrine therapy that marks a step toward more personalized treatments in patients with Luminal B breast cancer.

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来源期刊
Clinical Cancer Research
Clinical Cancer Research 医学-肿瘤学
CiteScore
20.10
自引率
1.70%
发文量
1207
审稿时长
2.1 months
期刊介绍: Clinical Cancer Research is a journal focusing on groundbreaking research in cancer, specifically in the areas where the laboratory and the clinic intersect. Our primary interest lies in clinical trials that investigate novel treatments, accompanied by research on pharmacology, molecular alterations, and biomarkers that can predict response or resistance to these treatments. Furthermore, we prioritize laboratory and animal studies that explore new drugs and targeted agents with the potential to advance to clinical trials. We also encourage research on targetable mechanisms of cancer development, progression, and metastasis.
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