| Literature DB >> 30167082 |
Massimo Federico1,2, Enrico Tagliafico3, Angela Toss4, Federico Piacentini4, Laura Cortesi4, Lucia Artuso1,2, Isabella Bernardis1,2, Sandra Parenti1,2, Elena Tenedini1,2, Guido Ficarra5, Antonino Maiorana5, Anna Iannone3, Claudia Omarini4, Luca Moscetti4, Massimo Cristofanilli6.
Abstract
The standard of care for breast cancer has gradually evolved from empirical treatments based on clinical-pathological characteristics to the use of targeted approaches based on the molecular profile of the tumor. Consequently, an increasing number of molecularly targeted drugs have been developed. These drugs target specific alterations, called driver mutations, which confer a survival advantage to cancer cells. To date, the main challenge remains the identification of predictive biomarkers for the selection of the optimal treatment. On this basis, we evaluated a panel of 25 genes involved in the mechanisms of targeted treatment resistance, in 16 primary breast cancers and their matched recurrences, developed during treatment. Overall, we found a detection rate of mutations higher than that described in the literature. In particular, the most frequently mutated genes were ERBB2 and those involved in the PI3K/AKT/mTOR and the MAPK signaling pathways. The study revealed substantial discordances between primary tumors and metastases, stressing the need for analysis of metastatic tissues at recurrence. We observed that 85.7% of patients with an early-stage or locally advanced primary tumor showed at least one mutation in the primary tumor. This finding could explain the subsequent relapse and might therefore justify more targeted adjuvant treatments. Finally, the mutations detected in 50% of relapsed tissues could have guided subsequent treatment choices in a different way. This study demonstrates that mutation events may be present at diagnosis or arise during cancer treatment. As a result, profiling primary and metastatic tumor tissues may be a major step in defining optimal treatments.Entities:
Keywords: breast cancer; molecular characterization; next-generation sequencing; somatic mutations; treatment resistance
Year: 2018 PMID: 30167082 PMCID: PMC6114971 DOI: 10.18632/oncotarget.25810
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Patients and sample characteristics
| Patient number | Age at diagnosis | Primary tumor molecular subtype | Primary tumor characteristics | TNM | Stage at diagnosis | Sites of relapse | Biopsy of the relapse | Relapse characterisitics |
|---|---|---|---|---|---|---|---|---|
| Patient 1 | 56 | LUMINAL A-like | CDI G3, ER 50%, PR 70%, MIB1 20%, HER2 negative | pT2pN1(3/17)M0 | SKIN (Local Relapse) | SKIN NODULE EXCISION | ER 100%, PR 20%, HER2 negative | |
| Patient 2 | 35 | LUMINAL B-like (HER2+) | CDI G3, ER 60%, PR 2%, MIB1 ?, HER2 positive | pT2(25mm)pN0(0/24)M0 | LUNG | SINGLE LUNG NODULE RESECTION | ER 95%, PR 95%, HER2 positive | |
| Patient 3 | 45 | LUMINAL B-like | CLI G3, ER 90%, PR 90%, MIB1 50%, HER2 negative | pT2(multif)pN1(1/15)M0 | SKIN (Local Relapse) | SKIN PUNCH | ER 90%, PR 60%, HER2 negative | |
| Patient 4 | 56 | LUMINAL A-like | CDI G2, ER 95%, PR 95%, MIB1 8%, HER2 negative | pT2pN3(11/13)M1 | BONE, SKIN (Scalp) | SKIN PUNCH | ER 90%, PR 50%, MIB 20%, HER2 negative | |
| Patient 5 | 52 | LUMINAL A-like | CDI G2, ER 90%, PR 80%, MIB1 15%, HER2 negative | pT1cpN1(1/19)M0 | IPSILATERAL AXILLARY LYMPH NODES, BONE, LIVER | IPSILATERAL AXILLARY LYMPH NODES | ER 10%, PR 1%, HER2 negative | |
| Patient 6 | 71 | LUMINAL B-like (HER2+) | CDI G3, ER 100%, PR 10%, MIB1 15%, HER2 positive | pT1cpN0M0 | IPSILATERAL SUPRACLAVICULAR LYMPH NODES | IPSILATERAL SUPRACLAVICULAR LYMPH NODES | ER 90%, PR 1%, HER2 positive | |
| Patient 7 | 57 | LUMINAL A-like | CDI G3, ER 90%, PR 40%, MIB1 8%, HER2 negative | pT2,pN3(17/33),M1 | CONTRALATERAL AXILLARY LYMPH NODES, BONE | CONTRALATERAL AXILLARY LYMPH NODES | ||
| Patient 8 | 47 | LUMINAL A-like | CDI G3, ER 85%, PR 9%, MIB1 16%, HER2 negative | pT1cpN1(2/20)M0 | CONTRALATERAL AXILLARY LYMPH NODES | CONTRALATERAL AXILLARY LYMPH NODES | ER 100%, PR 100%, HER2 negative | |
| Patient 9 | 73 | LUMINAL A-like | CDI G2, ER 100%, PR 90%, MIB1 15%, HER2 negative | pT1cpN0M0 | BONE, LUNG, LIVER, LYMPH NODES | LIVER | ER 85%, | |
| Patient 10 | 71 | LUMINAL B-like (HER2+) | CDI G3, ER 15%, PR neg, MIB1 10%, HER2 positive | pT2,pN3(39/39),M0 | LYMPH NODES, IPSILATERAL CHEST WALL | IPSILATERAL CHEST WALL | ||
| Patient 11 | 56 | LUMINAL B-like | CDI G2, ER 98%, PR 0%, MIB1 25%, HER2 negative | pT1c(multif),pN0,M0 | IPSILATERAL AXILLARY LYMPH NODES | IPSILATERAL AXILLARY LYMPH NODES | ER 15%, PR neg, MIB1 40%, HER2 negative | |
| Patient 12 | 81 | LUMINAL B-like | CLI G3, ER 80%, PR <1%, MIB1 15%, HER2 negative | cT3,cN+,M0 | BREAST, LYMPH NODES, BONE, LIVER | IPSILATERAL MASTECTOMY | ||
| Patient 13 | 61 | LUMINAL B-like | CLI G3, ER 90%, PR 90%, MIB1 70%, HER2 negative | pT2,pN0(0/19),M0 | BREAST, IPSILATERAL AXILLARY SOFT TISSUES | IPSILATERAL AXILLARY SOFT TISSUES | ER 50%, | |
| Patient 14 | 48 | LUMINAL B-like | CDI G3, ER 95%, PR 95%, MIB1 80%, HER2 negative | cT3,cN+,M0 | BONE, LUNG, LIVER, LYMPH NODES | LIVER | ER 95%, PR 3%, MIB1 30%, HER2 negative | |
| Patient 15 | 53 | LUMINAL B-like (HER2+) | CDI G3, ER 90%, PR 30%, MIB1 10%, HER2 positive | pT1c,pN2(6/16),M0 | IPSILATERAL BREAST (CUTANEOUS) | IPSILATERAL BREAST SKIN PUNCH | ER 90%, | |
| Patient 16 | 45 | LUMINAL B-like | CDI G3, ER 90%, PR 1%, MIB1 40%, HER2 negative | IBC cT4cN+M0 (right) | CONTRALATERAL BREAST, RIGHT CHEST WALL, BONE | RIGHT CHEST WALL | ER 30%, |
Discordant ER, PR and HER2 reported in red.
Figure 1Number of patients for each primary tumor mutation
Figure 2Number of patients for each relapse mutation
Figure 3Number of mutated genes in primary tumors and relapsed tissues
Figure 4Number of pathogenic variants detected in primary tumors and relapsed tissues
Mutations detected in PIK3CA, ERBB2, ESR1 and AKT1 genes
| Primary tumor mutations | Relapse mutations | |||||||
|---|---|---|---|---|---|---|---|---|
| PIK3CA | ERBB2 | ESR1 | AKT1 | PIK3CA | ERBB2 | ESR1 | AKT1 | |
| Patient 2 | x | x | x | x | x | c.3658G>T, p.Gly1220Cys | x | x |
| Patient 4 | c.1624G>A, p.Glu542Lys | x | x | x | c.1624G>A, p.Glu542Lys | x | x | x |
| Patient 5 | c.3140A>G, p.His1047Arg | x | x | x | c.3140A>G, p.His1047Arg | x | x | x |
| Patient 6 | x | c.1067C>A, p.Ala356Asp | x | x | x | c.1067C>A, p.Ala356Asp | x | x |
| Patient 7 | x | c.-1C>T c.2246C>T, p.Ser749Phe | x | x | x | x | x | x |
| Patient 8 | x | x | x | x | x | x | c.382G>A, p.Val128Met | c.117G>T, p.Lys39Asn |
| Patient 9 | c.1624G>A, p.Glu542Lys | x | x | x | c.1035T>A, p.Asn345Lys | x | x | c.46G>A, p.Gly16Arg |
| Patient 10 | c.3104C>T, p.Ala1035Val | c.3526C>T, p.Gln1176Ter | x | c.32G>A, p.Trp11Ter | x | x | x | x |
| Patient 11 | c.1633G>A, p.Glu545Lys | c.1478C>T, p.Pro493Leu | x | x | c.1633G>A, p.Glu545Lys | c.1478C>T, p.Pro493Leu | x | x |
| Patient 12 | x | x | x | x | c.3140A>G, p.His1047Arg | x | x | x |
| Patient 14 | x | x | c.1469T>G, p.Met490Arg | x | x | c.135+3G>T | c.600G>C,p.Trp200Cys | x |
| Patient 15 | x | c.1870A>G, p.Ile624Val | x | x | x | c.1870A>G, p.Ile624Val | x | x |
| Patient 16 | c.1030G>A, p.Val344Met | x | x | x | c.1030G>A, p.Val344Met | x | c.1370-26C>G | x |
PIK3CA “Hotspot” mutations reported in red.
Figure 5Mutations detected in the two most frequently mutated genes, PIK3CA and ERBB2
Figure 6Flow diagram of patients evaluated for the study
The gene panel