Abstract 488P
Background
Breast cancer brain metastasis (BCBM) is an significant issue in the treatment of breast cancer and always leads to poor prognosis. Novel therapeutic targets are needed in clinical practice. In this study, we aimed to identify potential actionable targets in brain metastases utilizing the FoundationOne® CDx (F1CDx).
Methods
Formalin-fixed paraffin-embedded (FFPE) specimens including 17 primary tumors, 49 BCBMs and 7 extra-cranial metastases from 54 patients who underwent surgery for BCBM were tested by F1CDx. Tumor infiltrated lymphocytes (TILs) of BCBM were also tested by hematoxylin-eosin staining.
Results
The median tumor mutation burden (TMB) and TILs were 5.0 (range: 0- 29) Muts/Mb and 1.0 (range: 0- 5) respectively in BCBMs. High TMB (>10 Muts/MB) were detected in 3 BCBMs. Genomic alterations(GAs) were detected in all samples. The top-ranked mutated genes in BCBMs were TP53(81.6%), PIK3CA(34.7%), MLL2(22.4%), BRCA2(14.3%) and ATM(14.3%); and the most prevalent copy number alterations (CNAs) were ERBB2(57.1%), CDK12(36.7%), CCND1(28.6%),FGF19 (26.5%), and MYC (22.4%). ATM mutation was detected in 7 BCBMs while none in primary tumors, although without statistically significant difference. The most prevalent GAs were relatively consistent between paired primary and BCBMs. Actionable GAs were detected in 93.9% of all BCBMs and consistent rate were 54.5% (6/11) between paired primary and BCBMs. Compared to matched primary tumors, reduced actionable GAs were found in 4 BCBMs and additional actionable GAs were discovered in only one BCBM.
Conclusions
TMB and TILs was relatively low in BCBMs. Comparable consistency of actionable GAs was identified between primary and BCBMs. It was reasonable to treat BCBM according to genomic profiling of primary tumors if BCBM specimens were unavailable since possibility to find additional therapeutic targets was relatively low.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Foundation Medicine, Inc. USA.
Disclosure
All authors have declared no conflicts of interest.
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