401:分子反应计算预测患者预后的比较

Allysia J. Mak, K. Quinn, C. Espenschied, K. Chang, Han-Yu Chuang, E. Helman, Darya I. Chudova, J. Odegaard, B. Nagy, Amirali Talasaz
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Method: Aggregate results of > 4,000 patient sample pairs (3-10 weeks apart), > 1000 patient sample technical replicates, > 100 contrived sample dilutions, and in silico simulations were analyzed with Guardant360TM or GuardantOMNITM. Baseline and on-treatment paired patient samples were collected from advanced cancer patients with over 12 tumor types, including lung, colon, and breast. MR calculations included variant allele fractions (VAFs) of somatic SNVs, indels and fusions. Methods including Ratio treatment/baseline (R) of Maximum VAF (maxVAF), Ratio of Mean VAF (mVAF), and Mean of VAF Ratios were compared, with consideration of VAF precision. Analytical accuracy, reproducibility and limit of detection (LoD) were assessed. Results: Comparison of methods for calculating net change in ctDNA load on > 1500 sample pairs showed high correlation (ρ ranged from 0.93 to 0.98) and categorical agreement split by the median (93%). 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Technical replicates identified the variant criteria at which a 50% change in tumor fraction differs significantly from technical variation, and could define analytical reporting limits. Conclusions: Comparison of MR methods in a large set of patient samples and simulations supports RmVAF with inclusion of newly-detected mutations. Clinical validation of these methods will support patient-specific MR prediction of outcomes. Citation Format: Allysia J. Mak, Katie J. Quinn, Carin Espenschied, Kyle Chang, Han-Yu Chuang, Elena Helman, Darya Chudova, Justin Odegaard, Becky Nagy, AmirAli Talasaz. Comparison of molecular response calculations for prediction of patient outcome [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. 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引用次数: 0

摘要

背景:在许多回顾性研究中,早期治疗样本(通常在治疗开始后2-9周)和治疗前基线之间循环肿瘤(ctDNA)负荷的变化估计的分子反应(MR)已被证明可以预测实体肿瘤和治疗类型的患者反应和结果。然而,关于评估分子反应的最佳方法尚无共识。因此,我们旨在评估几种分子反应计算,并确定预测个体晚期癌症患者预后的最佳方法。方法:使用Guardant360TM或GuardantOMNITM软件对超过4000对患者样本(间隔3-10周)、超过1000对患者样本技术重复、超过100次人为样本稀释和计算机模拟的汇总结果进行分析。基线和治疗配对的患者样本来自超过12种肿瘤类型的晚期癌症患者,包括肺癌、结肠癌和乳腺癌。MR计算包括体细胞snv、indels和融合体的变异等位基因分数(VAFs)。方法在考虑VAF精度的情况下,比较最大VAF (maxVAF)、平均VAF (mVAF)和平均VAF比率处理/基线比率(R)。对分析的准确性、重现性和检出限进行了评价。结果:在> 1500对样本上计算ctDNA负荷净变化的方法比较显示出高相关性(ρ值范围为0.93 ~ 0.98),分类一致性被中位数分割(93%)。因此,选择一种基于结果预测的最佳方法将需要大量的患者队列。分析评估和计算机模拟可以预测每种方法的行为。对真实预处理样本肿瘤分数变化的模拟发现,RmVAF或RmaxVAF比mVAFR更准确,而mVAFR可能会因低VAF比率而偏转。几乎25%的样本对具有非maxVAF的肿瘤驱动或抗性突变,这表明mVAF比maxVAF更能捕获肿瘤动态。新检测到的治疗变异可能是ctDNA水平上升的重要信号,影响约2%的样本对的MR。重要的是,当maxVAF接近或低于变量LoD时,由于随机检测和低VAF时变量的较高CV,所有方法的MR精度都会下降。因此,检测变量LoD是能够接受MR评估的患者比例的关键决定因素。技术重复确定了变异标准,其中50%的肿瘤分数变化与技术变异显著不同,并可以确定分析报告的限制。结论:MR方法在大量患者样本和模拟中的比较支持包含新检测到的突变的RmVAF。这些方法的临床验证将支持患者特异性MR预测结果。引文格式:Allysia J. Mak, Katie J. Quinn, Carin Espenschied, Kyle Chang, Han-Yu Chudova, Elena Helman, Darya Chudova, Justin Odegaard, Becky Nagy, AmirAli Talasaz。分子反应计算预测患者预后的比较[摘要]。见:美国癌症研究协会2021年年会论文集;2021年4月10日至15日和5月17日至21日。费城(PA): AACR;癌症杂志,2021;81(13 -增刊):摘要第401期。
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Abstract 401: Comparison of molecular response calculations for prediction of patient outcome
Background: Molecular response (MR) estimated as a change in circulating tumor (ctDNA) load between an early on treatment sample (usually 2-9 weeks post treatment start) and pre-treatment baseline has been shown to predict patient response and outcomes across solid tumors and therapy types in many retrospective studies. There is no consensus, however, regarding the best method for assessing molecular response. Therefore, we aimed to assess several molecular response calculations and determine the optimal method for predicting outcomes in individual advanced cancer patients. Method: Aggregate results of > 4,000 patient sample pairs (3-10 weeks apart), > 1000 patient sample technical replicates, > 100 contrived sample dilutions, and in silico simulations were analyzed with Guardant360TM or GuardantOMNITM. Baseline and on-treatment paired patient samples were collected from advanced cancer patients with over 12 tumor types, including lung, colon, and breast. MR calculations included variant allele fractions (VAFs) of somatic SNVs, indels and fusions. Methods including Ratio treatment/baseline (R) of Maximum VAF (maxVAF), Ratio of Mean VAF (mVAF), and Mean of VAF Ratios were compared, with consideration of VAF precision. Analytical accuracy, reproducibility and limit of detection (LoD) were assessed. Results: Comparison of methods for calculating net change in ctDNA load on > 1500 sample pairs showed high correlation (ρ ranged from 0.93 to 0.98) and categorical agreement split by the median (93%). Therefore selecting an optimal method based on outcome prediction would require prohibitively large patient cohorts. Analytical evaluation and in silico simulations can predict the behavior of each method. Simulations of changes in tumor fraction of real pre-treatment samples found that RmVAF or RmaxVAF are more accurate than mVAFR, which can be skewed by low VAF ratios. Almost 25% of sample pairs have a tumor driver or resistance mutation that is not the maxVAF, suggesting tumor dynamics are better captured by mVAF than maxVAF. Newly-detected on-treatment variants can be an important signal of rising ctDNA levels, impacting MR in approximately 2% of sample pairs. Importantly, MR accuracy for all methods decreases as maxVAF approaches or falls below the variant LoD, due to both stochastic detection and higher CV of variants at low VAF. Thus the assay variant LoD is a key determinant of the fraction of patients who can receive MR evaluation. Technical replicates identified the variant criteria at which a 50% change in tumor fraction differs significantly from technical variation, and could define analytical reporting limits. Conclusions: Comparison of MR methods in a large set of patient samples and simulations supports RmVAF with inclusion of newly-detected mutations. Clinical validation of these methods will support patient-specific MR prediction of outcomes. Citation Format: Allysia J. Mak, Katie J. Quinn, Carin Espenschied, Kyle Chang, Han-Yu Chuang, Elena Helman, Darya Chudova, Justin Odegaard, Becky Nagy, AmirAli Talasaz. Comparison of molecular response calculations for prediction of patient outcome [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. Philadelphia (PA): AACR; Cancer Res 2021;81(13_Suppl):Abstract nr 401.
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