Tissue Selection for PD-L1 Testing in Triple Negative Breast Cancer (TNBC)

Florin Dobritoiu, Adelina Baltan, Alina Chefani,Kim Billingham, Marie-Pierrette Chenard, Reza Vaziri,Magali Lacroix-Triki,Anne Waydelich,Gilles Erb, Emilia Andersson,Marta Cañamero,Paula Toro, Sarah Wedden,Corrado D'Arrigo

APPLIED IMMUNOHISTOCHEMISTRY & MOLECULAR MORPHOLOGY(2022)

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摘要
Atezolizumab in combination with nab-paclitaxel has been introduced for the treatment of locally advanced or recurrent triple negative breast cancer (TNBC). Patient selection relies on the use of immunohistochemistry using a specific monoclonal PD-L1 antibody (clone SP142) in a tightly controlled companion diagnostic test (CDx) with a defined interpretative algorithm. Currently there are no standardized recommendations for selecting the optimal tissue to be tested and there is limited data to support decision making, raising the possibility that tissue selection may bias test results. We compared PD-L1 SP142 assessment in a collection of 73 TNBC cases with matched core biopsies and excision samples. There was good correlation between PD-L1-positive core biopsy and subsequent excision, but we found considerable discrepancy between PD-L1 negative core biopsy and matched excision, with a third of cases found negative on core biopsies converting to positive upon examination of the excision tissue. In view of these findings, we developed a workflow for the clinical testing of TNBC for PD-L1 and implemented it in a central referral laboratory. We present audit data from the clinical PD-L1 testing relating to 2 years of activities, indicating that implementation of this workflow results in positivity rates in our population of TNBC similar to those of IMpassion130 clinical trial. We also developed an online atlas with a precise numerical annotation to aid pathologists in the interpretation of PD-L1 scoring in TNBC.
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关键词
triple negative breast cancer (TNBC), PD-L1 (SP142) immunohistochemistry, atezolizumab companion diagnostic, clinical workflow, immune oncology
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