| Literature DB >> 31801599 |
Andrew A Davis1, Qiang Zhang1, Lorenzo Gerratana1,2, Ami N Shah1, Youbin Zhan1, Wenan Qiang1, Brian S Finkelman1,3, Lisa Flaum1, Amir Behdad1,3, William J Gradishar1, Leonidas C Platanias1, Massimo Cristofanilli4,5.
Abstract
PURPOSE: Liquid biopsies, including circulating tumor DNA (ctDNA) and circulating tumor cells (CTCs), can be used to understand disease prognosis, tumor heterogeneity, and dynamic response to treatment in metastatic breast cancer (MBC). We explored a novel, 180-gene ctDNA panel and the association of this platform with CTCs and CTC clusters.Entities:
Keywords: CTC clusters; CTCs; MBC; NGS; ctDNA
Mesh:
Substances:
Year: 2019 PMID: 31801599 PMCID: PMC6894208 DOI: 10.1186/s13058-019-1229-6
Source DB: PubMed Journal: Breast Cancer Res ISSN: 1465-5411 Impact factor: 6.466
Patient characteristics
| Cohort | |
| Number of patients | 22 |
| Number of collections | 40 |
| Sex | |
| Female | 22 (100%) |
| Pathology | |
| IDC | 18 (81.8%) |
| ILC | 4 (18.2%) |
| Histologic subtype | |
| HR+, HER2− | 17 (77.3%) |
| HR−, HER2+ | 1 (4.5%) |
| HR+, HER2+ | 1 (4.5%) |
| TNBC | 3 (13.6%) |
| Clinical subtype | |
| IBC | 6 (27.3%) |
| Non-IBC | 16 (72.7%) |
| Prior therapies in metastatic setting | 2* [0–7] |
| Sites of disease | |
| Bone | 18 (81.8%) |
| Visceral | 15 (68.2%) |
| CTC clusters | |
| Yes | 8 (36.4%) |
| No | 14 (63.6%) |
| Total blood draws with clusters | 14 (35.0%) |
IDC invasive ductal carcinoma, ILC invasive lobular carcinoma, HR hormone receptor, TNCB triple-negative breast cancer, IBC inflammatory breast cancer
*The median
Characteristics of the PredicinePLUS™ platform and detected alterations
| Cohort | |
| Total cases | 49 |
| Cases included in final analyses | 40 |
| Regions analyzed | 180 genes |
| Panel size | 565 kb |
| Samples with detectable alterations | 40/43 (93%) |
| Number of genomic alterations | |
| Mean | 6.7 |
| Median | 6.0 |
| Range | 1–22 |
| Number of genes with detected alterations | 57 |
| Variant allele frequency of detected alterations | 0.11–68.6% |
| Commonly detected SNV/indels | |
| Commonly detected copy number amplifications | |
| Commonly detected copy number losses | |
SNV single nucleotide variant, Indels insertion-deletion mutations
Fig. 1Landscape of genomic alterations. Shown is a heatmap of all detected genomic alterations. Top blue panel indicates the total number of alterations detected for each gene. The colors below indicate the specific types of genomic alterations including SNV/indels (red), copy number gain (green), copy number loss (blue), and SNV/indel + copy number gain (yellow). Each row indicates a sample (N = 40) and each column represents a gene
Fig. 2Genomic alterations associated with CTCs. Genomic alterations in ESR1, GATA3, CCND1, and CDH1 were significantly associated with higher number of CTCs (P < 0.05, Mann-Whitney U test). In contrast, alterations in CDKN2A were more commonly observed in samples with low CTC count (P < 0.05, Mann-Whitney U test). In the validation cohort, significant associations were confirmed for ESR1 (P < 0.005) and GATA3 (P < 0.05)
Fig. 3Genomic alterations in patients with CTC clusters. Genomic alterations in CCND1, CDH1, and BRCA1 were significantly associated with the number of CTC clusters (P < 0.05, Mann-Whitney U test). In the validation cohort, a significant association was confirmed for CDH1 (P < 0.005)
Fig. 4Representative images of a patient with CTC clusters. Shown are representative images of a patient with CTC clusters with nuclear (DAPI) and cytokeratin (CK-PE) staining. CD45 stains for non-CTC leukocytes. HER2/neu staining further distinguished CTCs from leukocytes in this patient. This sample was associated with the following ctDNA genomic alterations: CDH1, TP53, NF1, PIK3CB, BRCA1, CCND1, CDK6, FGFR1, MET, and MYC