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Published in: BMC Cancer 1/2020

01-12-2020 | Breast Cancer | Research article

MammaPrint guides treatment decisions in breast Cancer: results of the IMPACt trial

Authors: Hatem Soliman, Varsha Shah, Gordan Srkalovic, Reshma Mahtani, Ellis Levine, Blanche Mavromatis, Jayanthi Srinivasiah, Mohamad Kassar, Robert Gabordi, Rubina Qamar, Sarah Untch, Heather M. Kling, Tina Treece, William Audeh

Published in: BMC Cancer | Issue 1/2020

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Abstract

Background

Increased usage of genomic risk assessment assays suggests increased reliance on data provided by these assays to guide therapy decisions. The current study aimed to assess the change in treatment decision and physician confidence based on the 70-gene risk of recurrence signature (70-GS, MammaPrint) and the 80-gene molecular subtype signature (80-GS, BluePrint) in early stage breast cancer patients.

Methods

IMPACt, a prospective, case-only study, enrolled 452 patients between November 2015 and August 2017. The primary objective population included 358 patients with stage I-II, hormone receptor-positive, HER2-negative breast cancer. The recommended treatment plan and physician confidence were captured before and after receiving results for 70-GS and 80-GS. Treatment was started after obtaining results. The distribution of 70-GS High Risk (HR) and Low Risk (LR) patients was evaluated, in addition to the distribution of 80-GS compared to IHC status.

Results

The 70-GS classified 62.5% (n = 224/358) of patients as LR and 37.5% (n = 134/358) as HR. Treatment decisions were changed for 24.0% (n = 86/358) of patients after receiving 70-GS and 80-GS results. Of the LR patients initially prescribed CT, 71.0% (44/62) had CT removed from their treatment recommendation. Of the HR patients not initially prescribed CT, 65.1% (41/63) had CT added. After receiving 70-GS results, CT was included in 83.6% (n = 112/134) of 70-GS HR patient treatment plans, and 91.5% (n = 205/224) of 70-GS LR patient treatment plans did not include CT. For patients who disagreed with the treatment recommended by their physicians, most (94.1%, n = 16/17) elected not to receive CT when it was recommended. For patients whose physician-recommended treatment plan was discordant with 70-GS results, discordance was significantly associated with age and lymph node status.

Conclusions

The IMPACt trial showed that treatment plans were 88.5% (n = 317/358) in agreement with 70-GS results, indicating that physicians make treatment decisions in clinical practice based on the 70-GS result. In clinically high risk, 70-GS Low Risk patients, there was a 60.0% reduction in treatment recommendations that include CT. Additionally, physicians reported having greater confidence in treatment decisions for their patients in 72% (n = 258/358) of cases after receiving 70-GS results.

Trial registration

“Measuring the Impact of MammaPrint on Adjuvant and Neoadjuvant Treatment in Breast Cancer Patients: A Prospective Registry” (NCT02670577) retrospectively registered on Jan 27, 2016.
Appendix
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Metadata
Title
MammaPrint guides treatment decisions in breast Cancer: results of the IMPACt trial
Authors
Hatem Soliman
Varsha Shah
Gordan Srkalovic
Reshma Mahtani
Ellis Levine
Blanche Mavromatis
Jayanthi Srinivasiah
Mohamad Kassar
Robert Gabordi
Rubina Qamar
Sarah Untch
Heather M. Kling
Tina Treece
William Audeh
Publication date
01-12-2020
Publisher
BioMed Central
Published in
BMC Cancer / Issue 1/2020
Electronic ISSN: 1471-2407
DOI
https://doi.org/10.1186/s12885-020-6534-z

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