Literature DB >> 30214282

Differences in clinical characteristics and mutational pattern between synchronous and metachronous colorectal liver metastases.

Peng Zheng1, Li Ren1, Qingyang Feng1, Dexiang Zhu1, Wenju Chang1, Guodong He1, Meiling Ji1, Mi Jian1, Qi Lin1, Tuo Yi1, Ye Wei1, Jianmin Xu1.   

Abstract

PURPOSE: To investigate differences in clinical characteristics and mutational patterns between synchronous and metachronous colorectal liver metastases (CLMs). PATIENTS AND METHODS: From June 2008 to December 2014, patients with RAS wild-type CLMs treated at Zhongshan Hospital, Fudan University were included. DNA extracted from formalin-fixed paraffin-embedded tissue of primary tumors was sequenced with next-generation sequencing for single-nucleotide polymorphism of 96 genes according to custom panel. Mutations were compared between synchronous and metachronous liver metastases and correlated with clinical characteristics.
RESULTS: A total of 161 patients were included: 93 patients with synchronous CLM and 68 patients with metachronous CLM. Patients with metachronous CLM were obviously elder. For pathology of primary tumors, synchronous CLMs were larger in size, poorly differentiated, and more frequently local advanced and lymph node positive. For evaluation of liver metastases, synchronous CLM had more and larger metastatic lesions. The median number of mutations in synchronous CLMs was significantly higher than in metachronous group (22 vs. 18, p<0.001). EGFR rs2227983 is the most prevalent mutation in both groups and only a part of prevalent mutations is shared in both groups. Prevalent mutations were correlated with many clinical characteristics. EGFR rs2227983, RBMXL3 rs12399211, and PTCH1 rs357564 were prognostic for latency of metachronous CLM.
CONCLUSION: Clinically, synchronous CLMs, compared with metachronous CLMs, were younger and showed heavier tumor burden for both primaries and liver metastases. Genetically, we identified different mutational patterns between synchronous and metachronous CLMs and several correlations between mutations and clinical characteristics. Further researches were needed to confirm these potential key mutations of CLMs.

Entities:  

Keywords:  colorectal liver metastases; metachronous; next-generation sequencing; synchronous

Year:  2018        PMID: 30214282      PMCID: PMC6118248          DOI: 10.2147/CMAR.S161392

Source DB:  PubMed          Journal:  Cancer Manag Res        ISSN: 1179-1322            Impact factor:   3.989


Introduction

Colorectal cancer (CRC) is the most common malignancy throughout the world,1 and liver metastases are the major cause of death in CRC patients. Unfortunately, 40%–50% of CRC patients would develop colorectal liver metastases (CLMs). They are either synchronous or metachronous in presentation with approximately equal incidence.2,3 Compared with synchronous metastases, patients with metachronous metastases show differences in terms of clinicopathologic characteristics and better prognosis after metastases resections.4–6 However, in previous studies, synchronous and metachronous liver metastases were usually lumped together, neglecting their clinical and biologic differences. It is critical to improve our understanding of the biology of liver metastases, which may help to develop more effective therapeutic strategies. Biologic differences between synchronous and metachronous CLMs had been studied previously but showed conflicting results.2,7–11 Available evidence indicated that majority of gene alterations in the primary tumor were maintained in the CLMs, whereas a limited number of studies compared the primary tumors of synchronous and metachronous groups and generally demonstrated no differences in biomarker expression. In consideration of limited number of studies and limited number of biomarkers investigated, it is still not reasonable to deny the hypothesis that the biology of synchronous and metachronous CLMs would be different in view of the known clinicopathologic differences that exist between them. Thus, more comprehensive researches are needed. The use of next-generation sequencing (NGS) for high-throughput genomic analysis has accelerated our understanding of the molecular characteristics of CRC12–14 and may also serve us an insight on this topic. Therefore, we conducted NGS of primary tumors of synchronous or metachronous CLM to investigate mutational patterns between them. We also expected to find prognostic or predictive biomarkers among mutations sequenced.

Patients and methods

Study population

This study retrospectively included patients with CRC treated at General Surgery Department of Zhongshan Hospital, Fudan University (Shanghai, China) during June 2008 to December 2014. The inclusion criteria were as follows: colorectal adenocarcinoma determined by pathologic evidence; wild-type RAS; liver metastases determined by radiologic and/or pathologic evidence; radical resections of primary tumors; enough formalin-fixed paraffin-embedded (FFPE) tissue of primary tumors; no exposure to any treatment (chemotherapy, targeted therapy, radiotherapy, or interventional therapy) before primary tumor resections. Patients with liver metastases accompanied with other distant metastases were permitted. Adjuvant chemotherapy after primary tumor resection was permitted. Target therapy and interventional therapy were permitted only after the occurrence of liver metastases. All patients provided written and oral informed consent. This study was approved by the ethics committee of Zhongshan Hospital, Fudan University. Two groups were established in this study: the synchronous-metastases group and the metachronous-metastases group. The synchronous-metastases group consisted of patients with liver metastases diagnosed together with or within a 6-month interval of the diagnosis of the primary colorectal tumor. The metachronous-metastases group consisted of patients with liver metastases diagnosed >6 months after primary tumor resection. This study was approved by the local ethics committees and all patients provided written and oral informed consent, including research on tumor tissue. In addition, 10 patients were selected for whole-exome sequencing (WES). All 10 patients were diagnosed with CLM and underwent resection of both primary and metastatic tumors. Exclusion criteria included previous exposure to any treatment for metastatic CRC, family history of CRC, and evidence of a mismatch repair deficiency.

Study procedure

To investigate mutational pattern of different liver metastases, we examined biomarkers (single-nucleotide polymorphism, SNP) through genome-wide exploration using NGS. To preliminarily select genes to construct a custom panel for target capture sequencing, we performed WES for 10 triplets, each comprising primary colorectal tumor and normal colorectal mucosa and matched liver metastases. Genomic DNA from fresh tissue was samples sequenced on an Ion™ Proton (Life Technologies, Carlsbad, CA, USA) platform according to the manufacturer’s instructions. Normal colorectal mucosa was sequenced to exclude germline variants. The read alignments and variant analyses were performed according to the predefined workflow. We constructed a custom panel of 96 genes selected based on driver mutations identified using WES and Tumor Mutation Hotspots Panel version 2 (Life Technologies, Carlsbad, CA, USA). Genomic DNA from FFPE tissue samples of patients in both cohorts was subsequently sequenced for SNPs using an Ion™ Torrent Personal Genome Machine (PGM) according to the manufacturer’s instructions. For a given gene loci, the fraction of mutant alleles was calculated by diving the number of mutant reads by the number of total reads. A 5% cutoff value was employed. A sample was considered wild-type for a given gene when all sequenced loci harbored <5% mutant alleles.

Whole-exome sequencing

DNA was extracted from fresh tumor samples using the MELT™ Total Nucleic Acid Isolation Kit (Life Technologies). Quantity and quality were assessed using Qubit 2.0 (Life Technologies). Fifty to hundred nanograms of DNA for each sample was used for exome capture and library preparation with Ion AmpliSeq™ Exome Kit 4xDuo (Life Technologies) following the manufacturer’s instructions. Then libraries were bar-coded with Ion Xpress™ Barcode Adapters Kit (Life Technologies). The concentration of each library was determined by PCR with the Ion Library™ Quantization Kit (Life Technologies). According to the manufacturer’s instructions, all libraries were diluted to 100 pM working solutions and then pooled as needed to perform the template preparation with Ion PI™ Template OT2 200 kit v2 (Life Technologies) on Ion One Touch™ 2 System. Quality and quantity were determined with Qubit Ion Sphere™ Quality Control Kit (Life Technologies) for the obtained ion sphere particles. WES was performed on Ion Proton™ platform, using the Ion PI™ Sequencing 200 kit v2 and Ion PI™ Chip kit v2. Sequencing data were analyzed with the Torrent Suite™ Software v4.0 (Life Technologies) using default parameters setting.

Processing of WES data

The primary WES data were analyzed for single-nucleotide variants (SNVs) following the procedures indicated below. Variants with SNV quality (QUAL) ≤20 were excluded. QUAL was calculated using Torrent Suite™ software. Variants of normal mucosa were considered background variants. Primary or metastatic tumor samples were filtered using background variants, and the variants were rejected as germline variants or sequencing artifacts when present in the corresponding normal samples. Primary or metastatic tumor-specific SNVs were analyzed using the SeattleSeq SNP Annotation.15 Known germline mutations from the Exome Sequencing Project16 and dbSNP databases (build 140)17 were also excluded. We selected nonsilent mutations, including missense mutations and InDels. Nonsilent mutations were predicted to affect gene function when any of the following criteria were fulfilled: 1) functional impact score of SIFT18 ≤0.05;19 2) functional impact score of PolyPhen-220 >0.45;21 3) functional impact label of Mutation Assessor22 was “medium” or “high”;23 4) Condel24 label was “deleterious”;25 and 5) functional impact score of FATHMM26 <0.27 The transFIC analysis was performed as previously described.28 Mutations were considered cancer driver mutations when the outcome of the transFIC analysis was of “high impact”.

Construction of custom panel

To prepare for target capture sequencing, we constructed a custom panel based on WES data and Tumor Mutation Hotspots Panel version 2. When selecting genes from WES data, genes that were essential for cancer progression, particularly liver metastasis, were considered with priority. On one hand, we searched all mutations in the GeneRIF database29 using key words “cancer/tumor/carcinoma” and “metasta-/invasion/invade/invasive/migrate”. On the other hand, we focused on mutations of universal genes in primary tumors and corresponding liver metastases. In addition, most genes in the Tumor Mutation Hotspots Panel version 2 were included. The mutation information for these genes was acquired from the Catalog of Somatic Mutations in Cancer (COSMIC) database,30 and we employed the most frequent mutations to build the panel.

Target capture sequencing

DNA was extracted from FFPE tumor samples using the RecoverAll™ Total Nucleic Acid Isolation Kit (Life Technologies) according to the manufacturer’s instructions. Quantity and quality were assessed using Qubit 2.0 (Life Technologies). Ten nanograms of DNA for each sample was used for library construction and template preparation with same procedures described above in the “Whole-exome sequencing” section. Target capture sequencing was carried out with customized panel using the Ion PGM™ platform (Life Technologies) according to the manufacturer’s instructions. The panel consisted of two separate PCR primer pools covering recurrent mutations in 96 genes with 1500X sequence coverage on Ion™ 318 chip. Sequencing data were analyzed with Ion Reporter™ software v4.4 (Life Technologies) using default parameters setting.

Statistical analysis

The statistical analysis plan was established before the genotyping results were available. Differences in categorical parameters were calculated using a chi-square test or Fisher’s exact test. Survival curves were generated using the Kaplan–Meier method and compared using a log-rank test. Hazard ratios and 95% CIs were calculated using the Cox proportional hazards model. For univariate and multivariate analyses of latency of metachronous liver metastases, the Cox proportional hazards model was used. All statistical analyses were conducted using the statistical software SPSS version 18.0 (SPSS Inc., Chicago, IL, USA). A p-value <0.05 was considered statistically significant.

Results

Patients and clinical characteristics

A total of 161 patients were included and sequenced. According to the metastatic type, 93 patients were in synchronous-metastases group and 68 patients in metachronous-metastases group. Several differences in clinical characteristics were observed between groups (Table 1). Patients with metachronous CLMs were obviously elder. With regard to pathology of primary tumors, synchronous CLMs were larger in size, poorly differentiated, and more frequently local advanced and lymph node positive. As to evaluation of liver metastases, synchronous CLMs result in more and larger metastatic lesions.
Table 1

Clinical characteristics of synchronous and metachronous groups

Clinical variablesSynchronous(N=93)Metachronous(N=68)p-value
Age (years), mean±SD55.1±10.363.4±11.8<0.001
Gender, n (%)0.652
 Male62 (66.7%)43 (63.2%)
 Female31 (33.3%)25 (36.8%)
CEA level at diagnosis, ng/mL, n (%)<0.001
 ≥579 (84.9%)21 (30.9%)
 <514 (15.1%)47 (69.1%)
Primary tumor location, n (%)0.428
 Right-sided30 (32.3%)18 (26.5%)
 Left-sided63 (67.7%)50 (73.5%)
Tumor diameter (cm), mean±SD5.1±2.14.2±1.80.011
Histologic grade, n (%)0.016
 Well (Grade 1)2 (2.2%)7 (10.3%)
 Moderate (Grade 2)59 (63.4%)48 (70.6%)
 Poor (Grades 3 and 4)32 (34.4%)13 (19.1%)
pT stage, n (%)0.004
 T1/T23 (3.2%)13 (19.1%)
 T3/T490 (96.8%)55 (80.9%)
pN stage, n (%)<0.001
 N015 (16.1%)43 (63.2%)
 N143 (46.2%)18 (26.5%)
 N235 (37.6%)7 (10.1%)
Tumor deposits, n (%)0.001
 No47 (50.5%)53 (77.9%)
 Yes46 (49.5%)15 (22.1%)
Distribution of LM, n (%)<0.001
 Unilobar34 (36.5%)47 (69.1%)
 Bilobar59 (63.5%)21 (30.9%)
Numbers of LM<0.001
 Median (IQR)5 (3–10)2 (1–4)
Diameter of the largest0.007
LM, cm
 Median (IQR)38 (27–69)33 (14–52)
Accompany with other metastases, n (%)
 Lung10 (12.9%)5 (7.3%)0.764
 Retroperitoneal LN6 (6.4%)2 (2.9%)0.598
 Others*3 (3.2%)2 (2.9%)0.995

Note:

Includes omentum, ovary, and brain.

Abbreviations: CEA, carcinoembryonic antigen; IQR, interquartile range; LM, liver metastases; LN, lymph node.

Summary of WES and target capture sequence

Ten triplets were sequenced with WES for preliminarily data to construct custom panel. Overall, we identified 608 potential somatic driver mutations in 511 genes in primary colorectal tumors and 694 potential somatic driver mutations in 638 genes in liver metastases. The number of somatic mutations in 10 primary colorectal tumor ranged from 41 to 87, with a mean of 60 (Figure 1A), which was not significantly different from that of the non-hypermutated CRCs reported in The Cancer Genome Atlas.31 When comparing mutations between tumors, 230 mutations in 219 genes were universal in the primary tumor and corresponding liver metastases. In addition, mutations observed in 10 patients were predominated by the C/G>T/A transition (Figure 1B) consistent with the results of previous CRC genomics studies.31,32
Figure 1

Summary of driver mutations identified by whole-exome sequencing.

Notes: (A) Distribution of driver mutations in primary tumor and liver metastases. (B) Distribution of transitions and transversions.

Abbreviations: L, liver metastases; P, primary tumor.

According to the custom panel, 161 patients were sequenced with target capture sequence for recurrent mutations of 96 genes. Mutations with mutational frequencies >10% and <90% were further investigated for stability. Finally, 48 mutations in 27 genes were included in following analysis (Table 2). Among these mutations, 40 were already documented in dbSNP databases (build 140).
Table 2

List of mutations analyzed

GeneSingle Nucleotide Polymorphism database (dbSNP)cDNACoding sequence (CDS)ProteinAmino acidsCodons
ACTN41,2761,200400W/CtgG/tgC
ATAD3Brs8602131,2731,157386R/QcGg/cAg
ATAD3Brs1399021891,8511,735579R/CCgc/Tgc
ATP6V1B1rs177203031628930T/IaCc/aTc
COL2A1rs20707394,3784,2131,405G/SGgc/Agc
CUL9rs22737095,9185,8431,948H/PcAc/cCc
EGFRrs22279831,5861,403468R/KaGg/aAg
ERBB2rs1058808, rs3704207243,4633,4631,155P/ACcc/Gcc
ERBB2rs113620128128395I/VAtc/Gtc
EZH2rs2302427648526176D/HGac/Cac
FAM129A2,0201,826609L/PcTg/cCg
FCGBPrs110835434,0264,0181,340V/LGtg/Ctg
FCGBPrs75388508524415T/NaCc/aAc
HNF1Ars116928822222375I/LAtc/Ctc
KRT33Ars12937519854809270A/VgCg/gTg
LAMA4rs10503493,7543,3561,119P/RcCt/cGt
LY6G6Drs118062293334334112R/CCgt/Tgt
MAGEC1rs125583651,008722241S/FtCc/tTc
MAGEC1rs176037738452151T/IaCt/aTt
MAP3K19rs39053172,4662,435812E/GgAa/gGa
MAP3K19rs11125422,0572,026676E/QGag/Cag
MDC15,3204,6721,558G/SGgc/Agc
MDC1rs1440878106,2655,6171,873P/ACcc/Gcc
MDC1rs617332134,5953,9471,316M/RaTg/aGg
MDC1rs9461623719721241S/PTct/Cct
MDC11,9751,535512R/KaGa/aAa
MDN1rs47075691,4341,318440F/VTtt/Gtt
MEGF6rs7513275571344115M/TaTg/aCg
MEGF6rs75533992,9742,747916R/LcGg/cTg
MEGF6rs46485063,6373,4101,137G/AgGc/gCc
MICBrs106507534623880K/EAag/Gag
MICBrs1051788451310104D/NGat/Aat
MICBrs313490040826789I/MatC/atG
PTCH1rs3575644,0863,9411,314P/LcCc/cTc
PTPN23rs67800132,7882,452818A/TGca/Aca
PTPN233,6973,3611,121S/CAgc/Tgc
RBMXL3rs123992111,2341,192398D/NGac/Aac
RBMXL33,0593,0171,006G/DgGc/gAc
RBMXL3rs66439473,1873,1451,049R/GAgg/Ggg
TAPBPrs2071888731518173T/RaCa/aGa
TAPBP42120870V/MGtg/Atg
TAPBP59725184R/PcGg/cCg
TCF3rs20748881,9721,475492A/VgCg/gTg
TYK2rs23042561,5661,084362V/FGtc/Ttc
WDSUB1rs75918491,107958320R/SCgc/Agc
WDSUB1rs16843852793644215K/TaAa/aCa
ZNF462rs38145385,7725,4831,828N/SaAc/aGc
ZNF462rs177236371,4991,210404M/VAtg/Gtg

Correlation between clinical characteristics and mutations

Univariate analysis identified that 18 mutations in 12 genes were correlated with clinical variables (Table 3). MDC1 was associated with the most number of clinical variables, including T stage, N stage, tumor location of primary, and size and number of liver metastases. Mutations of ATAD3B, MAGEC1, and MICB were only associated with pathologic variables of primary tumor. Most of the mutations associated with variables of liver metastases were also associated with lymph node metastases. Ten correlations with preoperative CEA level, lymph node metastases, and number of LMs remained significant with false discovery rate <0.05.
Table 3

Clinical variables associated with gene mutations

Clinical variableMutationMutation frequency (vs. no risk variable)p-valueq-value
Age ≥65 yearsPTPN23 c.3361A>T60.5% (26/43) (vs. 33.9% [40/118])0.0020.096
Male genderKRT33A rs1293751959.0% (62/105) (vs. 41.1% [23/56])0.0300.480
MAGEC1 rs17603723.8% (25/105) (vs. 42.9% [24/56])0.0120.576
MICB rs31349008.6% (9/105) (vs. 21.4% [12/56])0.0120.288
CEA at diagnosis ≥5 ng/mLATAD3B rs86021362% (62/100) (vs. 32.8% [20/61])<0.0010.008
TCF rs207488868% (68/100) (vs. 49.2% [30/61])0.0180.144
MAP3K19 rs390531761% (61/100) (vs. 42.6% [26/61])0.0230.159
COL2A1 rs207073964% (64/100) (vs. 47.5% [29/61])0.0400.192
MEGF6 rs751327551% (51/100) (vs. 26.2% [16/61])0.0020.032
MDC1 c.4672G>A53% (53/100) (vs. 36.1% [55/61])0.0370.196
PTPN23 c.3361A>T30% (30/100) (vs. 59.0% [36/61])<0.0010.012
MDC1 rs6173321329% (29/100) (vs. 47.5% [29/61])0.0170.163
MAGEC1 rs17603722% (22/100) (vs. 44.3% [27/61])0.0030.036
MDC1 c.1535G>A10% (10/100) (vs. 23.0% [14/61])0.0250.150
Right-sided tumorsMDC1 c.4672G>A62.5% (30/48) (vs. 39.8% [45/113])0.0080.384
Poor histologic gradeATAD3B rs86021364.4% (29/45) (vs. 45.7% [53/116])0.0330.528
KRT33A rs1293751968.9% (31/45) (vs. 46.6% [54/116])0.0110.528
ATAD3B rs13990218944.4% (20/45) (vs. 26.7% [31/116])0.0300.720
MAGEC1 rs1255836533.3% (15/45) (vs. 18.1% [21/116])0.0370.444
T3/T4MICB rs106507533.8% (49/145) (vs. 62.5% [10/16])0.0240.576
MICB rs313490011.0% (16/145) (vs. 31.3% [5/16])0.023
Lymph node positiveATAD3B rs86021359.2% (61/103) (vs. 36.2% [21/58])0.0050.048
MEGF6 rs751327547.6% (49/103) (vs. 31.0% [18/58])0.0410.246
RBMXL3 rs1239921153.4% (55/103) (vs. 75.9% [44/58])0.0050.060
MDC1 rs14408781038.8% (40/103) (vs. 13.8% [8/58])0.0010.024
PTPN23 c.3361A>T29.1% (30/103) (vs. 62.1% [36/58])<0.0010.020
MDC1 rs6173321327.2% (28/103) (vs. 51.7% [30/58])0.0020.032
MAGEC1 rs17603723.3% (24/103) (vs. 43.1% [25/58])0.0090.617
MICB rs31349007.8% (8/103) (vs. 22.4% [13/58])0.0080.064
Numbers of LM ≥median levelMEGF6 rs751327547.8% (54/113) (vs. 27.1% [13/48])0.0150.240
RBMXL3 rs1239921154.0% (61/113) (vs. 79.2% [38/48])0.0030.072
MDC1 rs14408781034.5% (39/113) (vs. 18.8% [9/48])0.0450.540
PTPN23 c.3361A>T32.7% (37/113) (vs. 60.4% [29/48])0.0010.038
Diameter of the largest LMHNF1A 1rs116928868.8% (64/93) (vs. 48.5% [33/68])0.0090.413
≥median levelMDC1 c.4672G>A53.8% (50/93) (vs. 36.8% [25/68])0.0330.531
MDC1 rs6173321343.0% (40/93) (vs. 26.5% [18/68])0.0310.740

Note: q-value for adjusted p-value with false discovery rate (Benjamini–Hochberg procedure).

Abbreviations: CEA, carcinoembryonic antigen; LM, liver metastases.

Mutational pattern of synchronous and metachronous liver metastases

The median number of mutations in the synchronous group was 22 (range from 2 to 32), which was significantly higher than 18 (range from 2 to 28) in the metachronous group (p<0.001). Mutation frequency of the synchronous group, compared with the metachronous group, was significantly higher in 12 mutations and lower in five mutations (Figure 2). For most other mutations, the frequency was numerically higher in the synchronous group. In addition, only half of the most prevalent mutations in the synchronous group were in common with that in the metachronous group (Table 4).
Figure 2

Mutation frequencies of synchronous and metachronous CLMs.

Notes: (A) Mutation frequency of most sequenced genes were different between synchronous and metachronous CLMs, and 17 of them were statistically signifcant. (B) Synchronous CLMs carried significantly more mutations than metachronous CLMs (median number, 22 vs 18, p<0.001).

Abbreviation: CLMs, colorectal liver metastases.

Table 4

Prevalent mutations in synchronous and metachronous groups

Prevalent mutations in synchronous groupPrevalent mutations in metachronous group
MutationFrequency (vs. metachronous group) (%)MutationFrequency (vs. synchronous group) (%)
EGFRrs222798379.5 (vs. 72.1)EGFRrs222798372.1 (vs. 79.6)
ATAD3Brs86021378.4** (vs. 13.2)RBMXL3rs1239921172.1** (vs. 53.8)
TAPBPrs20718887.84 (vs. 70.6)TAPBPrs207188870.6 (vs. 78.5)
ZNF462rs381453871.0 (vs. 67.6)ZNF462rs381453867.6 (vs. 71.0)
TCF3rs2074888MAP3K19rs390531771.0* (vs. 47.1)68.8* (vs. 33.8)PTPN23c.3361A>TPTCH1rs35756467.6** (vs. 21.5)66.2 (vs. 63.4)
CUL9rs227370966.7 (vs. 61.7)CUL9rs227370961.7 (vs. 66.7)
MAP3K19rs111254266.7** (vs. 33.8)MDC1rs6173321360.3** (vs. 18.3)

Notes:

p<0.05;

p<0.001.

Mutations and survival of metachronous liver metastases

The latency of metachronous CLMs is summarized in Figure 3. Half of all metachronous CLMs occurred within 15 months, and 75% occurred within 24 months. For patients with metachronous CLMs, the latency was significantly associated with prevalent mutations in metachronous CLMs, including EGFR rs2227983, RBMXL3 rs12399211, TAPBP rs2071888, PTPN23 c.3361A>T, PTCH1 rs357564, and MDC1 rs61733213. In multivariate analysis, correlation between latency and EGFR rs2227983, RBMXL3 rs12399211, and PTCH1 rs357564 remained significant (Table 5).
Figure 3

Timing of metachronous metastases.

Note: Half of all metachronous colorectal liver metastases occurred within 15 months, and 75% occurred within 24 months.

Table 5

Univariate and multivariate analyses of latency of metachronous colorectal liver metastases

MutationUnivariate analyses
Multivariate analyses
HR (95% CI)p-valueHR (95% CI)p-value
EGFR rs2227983Wild-type/mutant0.43 (0.23–0.78)0.0060.47 (0.25–0.88)0.019
RBMXL3 rs12399211Wild-type/mutant0.36 (0.19–0.67)0.0010.41 (0.18–0.92)0.030
TAPBP rs2071888Wild-type/mutant0.49 (0.28–0.85)0.0110.71 (0.36–1.40)0.324
PTPN23 c.3361A>TWild-type/mutant0.49 (0.28–0.87)0.0151.71 (0.64–4.56)0.287
PTCH1 rs357564Wild-type/mutant0.39 (0.22–0.069)0.0010.50 (0.28–0.91)0.022
MDC1 rs61733213Wild-type/mutant0.56 (0.33–0.95)0.0330.88 (0.38–2.04)0.760

Abbreviation: HR, hazard ratio.

Discussion

In this study, we conducted NGS in primary tumors of synchronous or metachronous CLM and identified several differences in terms of clinical characteristics and mutational patterns. For clinicopathologic characteristics, our results were broadly consistent with previous studies.2,5 Patients from the synchronous group were younger than those from the metachronous group. Compared to the metachronous group, patients in the synchronous group showed heavier tumor burden for both primaries and liver metastases. Furthermore, the synchronous group, more frequently characterized by adverse prognostic factors, had inferior overall survival than the metachronous group (median time 26 vs. 36 months, p=0.001). These results indicated that synchronous CLM may represent a more aggressive tumor subtype than metachronous CLM. All these issues highlight the need for understanding of differences in molecular biology, which results in and keeps the different manifestations between synchronous and metachronous CLMs. Based on the understanding of the mechanisms of metastases, we extracted our efforts to identify biologic differences between synchronous and metachronous CLMs. In contrast to previous studies focusing on limited gene alterations,2,8,9,33 we used a multivariable approach, including genome-wide exploration using WES, panel construction based on bioinformatics, and selection of significant biomarkers according to clinical outcomes. The advantage of this multivariable approach is that it is unbiased by biologic assumptions and thereby may find correlations between distinct gene mutations and liver metastases. Finally, we included and analyzed 48 mutations in 27 genes. The synchronous group harbored significantly more mutations than the metachronous group, representing a more heterogeneous and advanced subgroup of CLM. For the synchronous group, about half of the prevalent mutations were in common with the metachronous group, and the most prevalent was EGFR rs2227983. These mutations were potential key mutations of liver metastases and further research was needed. Another half of the prevalent mutations were private in the synchronous group and were significantly more frequently mutant than the metachronous group. In addition, prevalent mutations private in the metachronous group showed similar trend. Furthermore, these mutations, including RBMXL3 rs12399211, PTPN23 c.3361A>T, PTCH1 rs357564, and MDC1 rs61733213, partly explained the latency of metachronous liver metastases. All these results indicated that the synchronous and the metachronous groups showed different mutational patterns, and these mutations were correlated with several clinical characteristics. Different mutations may be potential key mutations and further researches were needed. In previous studies on this topic, the majority found differences in molecular marker expression between CLMs and their respective primaries in both the synchronous and metachronous groups. Limited comparison was done between LMs or primaries between the synchronous and the metachronous groups. Pantaleo et al8 compared the expression signature with reverse transcriptase PCR and enzyme-linked immunosorbent assay and indicated that EGFR and COX-2 are overexpressed in metachronous and synchronous metastases, respectively. van der Wal et al2 reported that liver parenchyma adjacent to the LMs provides a highly prosperous angiogenic environment in the synchronous group compared to the metachronous groups. However, there were also many studies with negative findings.34,35 Our results added evidences for the hypothesis that synchronous and metachronous CLMs were biologically different. According to previous studies, both synchronous and metachronous CLMs would evolve different biologic alterations to their corresponding primaries.11,32,33,36 Thus, examination of metastatic tissue is crucial as it could help choose optimal treatment according to current biologic status. Simultaneously, studies also demonstrated that the majority of biologic alterations, especially key alterations, in primaries were maintained in CLMs.11,32,35 If these key alterations of liver metastases could be detected in primaries, it could have important clinical implications for prediction of occurrence, even timing of liver metastases. Under consideration of the evidence mentioned above, we selected and examined tissue of primary tumors. If only corresponding metastatic tissue were examined, our study may provide more information. This was a retrospective exploratory study and there were several limitations: first, we sequenced single type of gene alteration in a highly selected cohort. Only SNPs of primary tumors with wild-type RAS were sequenced. Thus, this study provided an incomplete and partial view on differences between different CLMs; second, many correlations were observed between clinical parameters and mutations, but relevant biologic evidences were still limited. More studies were needed to confirm the clinical meanings and explore the underlying mechanism. Third, the influences of tumor heterogeneity and differences between LMs and their respective primaries were not taken into consideration in the study.

Conclusion

Synchronous CLMs, compared to metachronous CLMs, were younger and showed heavier tumor burden for both primaries and liver metastases. NGS identified different mutational patterns between synchronous and metachronous CLMs. Further researches were needed to confirm the correlation between differences in clinical characteristics and mutational patterns and the mechanism inside.
  26 in total

1.  Subclonal Genomic Architectures of Primary and Metastatic Colorectal Cancer Based on Intratumoral Genetic Heterogeneity.

Authors:  Tae-Min Kim; Seung-Hyun Jung; Chang Hyeok An; Sung Hak Lee; In-Pyo Baek; Min Sung Kim; Sung-Won Park; Je-Keun Rhee; Sug-Hyung Lee; Yeun-Jun Chung
Journal:  Clin Cancer Res       Date:  2015-05-15       Impact factor: 12.531

2.  Angiogenesis in synchronous and metachronous colorectal liver metastases: the liver as a permissive soil.

Authors:  Gesiena E van der Wal; Annette S H Gouw; Jan A A M Kamps; Henk E Moorlag; Marian L C Bulthuis; Grietje Molema; Koert P de Jong
Journal:  Ann Surg       Date:  2012-01       Impact factor: 12.969

Review 3.  Towards a pan-European consensus on the treatment of patients with colorectal liver metastases.

Authors:  Eric Van Cutsem; Bernard Nordlinger; Rene Adam; Claus-Henning Köhne; Carmelo Pozzo; Graeme Poston; Marc Ychou; Philippe Rougier
Journal:  Eur J Cancer       Date:  2006-08-10       Impact factor: 9.162

4.  Clinicopathological features and prognosis in resectable synchronous and metachronous colorectal liver metastasis.

Authors:  Ming-Shian Tsai; Yen-Hao Su; Ming-Chih Ho; Jin-Tung Liang; Tzu-Ping Chen; Hong-Shiee Lai; Po-Huang Lee
Journal:  Ann Surg Oncol       Date:  2006-11-14       Impact factor: 5.344

5.  A colorectal cancer classification system that associates cellular phenotype and responses to therapy.

Authors:  Anguraj Sadanandam; Costas A Lyssiotis; Krisztian Homicsko; Eric A Collisson; William J Gibb; Stephan Wullschleger; Liliane C Gonzalez Ostos; William A Lannon; Carsten Grotzinger; Maguy Del Rio; Benoit Lhermitte; Adam B Olshen; Bertram Wiedenmann; Lewis C Cantley; Joe W Gray; Douglas Hanahan
Journal:  Nat Med       Date:  2013-04-14       Impact factor: 53.440

6.  Improving the prediction of the functional impact of cancer mutations by baseline tolerance transformation.

Authors:  Abel Gonzalez-Perez; Jordi Deu-Pons; Nuria Lopez-Bigas
Journal:  Genome Med       Date:  2012-11-26       Impact factor: 11.117

7.  Amphiregulin and Epiregulin mRNA expression in primary colorectal cancer and corresponding liver metastases.

Authors:  Hidekazu Kuramochi; Go Nakajima; Yuka Kaneko; Ayako Nakamura; Yuji Inoue; Masakazu Yamamoto; Kazuhiko Hayashi
Journal:  BMC Cancer       Date:  2012-03-13       Impact factor: 4.430

8.  Novel recurrently mutated genes and a prognostic mutation signature in colorectal cancer.

Authors:  Jun Yu; William K K Wu; Xiangchun Li; Jun He; Xiao-Xing Li; Simon S M Ng; Chang Yu; Zhibo Gao; Jie Yang; Miao Li; Qiaoxiu Wang; Qiaoyi Liang; Yi Pan; Joanna H Tong; Ka F To; Nathalie Wong; Ning Zhang; Jie Chen; Youyong Lu; Paul B S Lai; Francis K L Chan; Yingrui Li; Hsiang-Fu Kung; Huanming Yang; Jun Wang; Joseph J Y Sung
Journal:  Gut       Date:  2014-06-20       Impact factor: 23.059

9.  Predicting the functional, molecular, and phenotypic consequences of amino acid substitutions using hidden Markov models.

Authors:  Hashem A Shihab; Julian Gough; David N Cooper; Peter D Stenson; Gary L A Barker; Keith J Edwards; Ian N M Day; Tom R Gaunt
Journal:  Hum Mutat       Date:  2012-11-02       Impact factor: 4.878

10.  Somatic retrotransposition in human cancer revealed by whole-genome and exome sequencing.

Authors:  Elena Helman; Michael S Lawrence; Chip Stewart; Carrie Sougnez; Gad Getz; Matthew Meyerson
Journal:  Genome Res       Date:  2014-05-13       Impact factor: 9.043

View more
  4 in total

1.  Genetic variants of the EGFR ligand-binding domain and their association with structural alterations in Arab cancer patients.

Authors:  Maryam Marzouq; Ali Nairouz; Noureddine Ben Khalaf; Sonia Bourguiba-Hachemi; Raed Quaddorah; Dana Ashoor; M Dahmani Fathallah
Journal:  BMC Res Notes       Date:  2021-04-19

2.  Predicting the benefit of stereotactic body radiotherapy of colorectal cancer metastases.

Authors:  Sara Lindberg; Eva Onjukka; Peter Wersäll; Caroline Staff; Rolf Lewensohn; Giuseppe Masucci; Karin Lindberg
Journal:  Clin Transl Radiat Oncol       Date:  2022-07-21

3.  High Expression of CUL9 Is Prognostic and Predictive for Adjuvant Chemotherapy in High-Risk Stage II and Stage III Colon Cancer.

Authors:  Peng Zheng; Yang Lv; Yihao Mao; Feifan Shen; Zhiyuan Zhang; Jiang Chang; Shanchao Yu; Meiling Ji; Qingyang Feng; Jianmin Xu
Journal:  Cancers (Basel)       Date:  2022-08-09       Impact factor: 6.575

Review 4.  Which patients are prone to suffer liver metastasis? A review of risk factors of metachronous liver metastasis of colorectal cancer.

Authors:  Mengdi Hao; Kun Wang; Yuhan Ding; Huimin Li; Yin Liu; Lei Ding
Journal:  Eur J Med Res       Date:  2022-07-25       Impact factor: 4.981

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.