Key points are not available for this paper at this time.
AbstractBackground: Clinical trials reported 25-30% pathologic complete response (pCR) rates in HER2+ breast cancer (BC) patients treated with anti-HER2 therapies without chemotherapy. We hypothesize that a multiparameter classifier can identify patients with HER2 “addicted” tumors who may benefit from a chemotherapy-sparing strategy. Patients and Methods: Baseline HER2+ BC specimens from TBCRC023 and PAMELA trials of neoadjuvant lapatinib+trastuzumab (plus endocrine therapy in ER+ tumors) were used. HER2 protein and gene amplification (ratio), HER2-enriched (HER2-E), and PIK3CA mutation status were assessed by dual gene protein assay (GPA), research-based PAM50, and targeted DNA-sequencing. GPA cutoffs and classifier of response were constructed in TBCRC023 using a decision tree algorithm, then validated in PAMELA. Results: In TBCRC023, 72 BCs had GPA, PAM50, and sequencing data, of which 15 had pCR. Recursive partitioning identified cutoffs of HER2 ratio≥4.6 and %3+ IHC-staining≥97.5%. With PAM50 and sequencing data, the model added HER2-E and PIK3CA wild-type (wt). For clinical implementation, the classifier was locked as HER2 ratio≥4.5 and %3+ IHC-staining≥90% and PIK3CA-wt and HER2-E, yielding 55% and 94% positive (PPV) and negative (NPV) predictive values, respectively. Independent validation using 44 PAMELA cases with all three biomarkers yielded 47% PPV and 82% NPV. Importantly, our classifier’s high NPV signifies its strength in accurately identifying patients who may not be good candidates for treatment de-escalation. Conclusions: Our multiparameter classifier differentially identifies patients who may benefit from HER2-targeted therapy alone from those who need chemotherapy and predicts pCR to anti-HER2 therapy alone comparable to chemotherapy plus dual anti-HER2 therapy in unselected patients.
Building similarity graph...
Analyzing shared references across papers
Loading...
Jamunarani Veeraraghavan
Carolina Gutiérrez
Carmine De Angelis
Building similarity graph...
Analyzing shared references across papers
Loading...
Veeraraghavan et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68e5858ab6db643587522ab2 — DOI: https://doi.org/10.1158/1078-0432.c.6717737.v3