Background: Cumulative data have shown that microRNAs (miRNA) are involved in the etiology and prognosis of colorectal cancer (CRC). Genetic polymorphisms in pre-miRNA genes may influence the biogenesis and functions of their host miRNAs. However, whether these polymorphisms are associated with CRC prognosis remains unknown.

Methods: We analyzed the effects of seven single-nucleotide polymorphisms (SNP) in pre-miRNA genes on the prognosis of a Chinese population with 408 CRC patients with surgically-resected adenocarcinoma.

Results: Two SNPs were identified to be significantly associated with recurrence-free survival and overall survival of the patients. The most significant SNP was rs6505162 in pre-miR-423. Compared with the homozygous wild-type genotype, the variant-containing genotypes of this SNP were significantly associated with both the overall survival (HR = 2.12, 95% CI = 1.34–3.34, P = 0.001) and the recurrence-free survival (HR = 1.59, 95% CI = 1.08–2.36, P = 0.019). Another SNP, rs4919510 in pre-miR-608, was also associated with altered recurrence-free survival (HR = 0.61, 95% CI = 0.41–0.92, P = 0.017). These effects were evident only in patients receiving chemotherapy but not in those without chemotherapy. In addition, the combined analysis of the two SNPs conferred a 2.84-fold (95% CI = 1.50–5.37, P = 0.001) increased risk of recurrence and/or death. Similarly, this effect was only prominent in those receiving chemotherapy (P < 0.001) but not in those without chemotherapy (P = 0.999).

Conclusions: Our data suggest that genetic polymorphisms in pre-miRNA genes may impact CRC prognosis especially in patients receiving chemotherapy, a finding that warrants further independent validation.

Impact: This is one of the first studies showing a prognostic role of pre-miRNA gene SNPs in CRC. Cancer Epidemiol Biomarkers Prev; 21(1); 217–27. ©2011 AACR.

Worldwide, colorectal cancer (CRC) is the third most commonly diagnosed cancer in males and the second in females, with more than 1.2 million new cases and 600,000 deaths annually (1). The highest incidence rates of CRC have been observed in regions of developed countries such as Western Europe, North America, and Oceania. In recent decades, the incidence rates are rapidly increasing in several regions that previously had low CRC risk, including countries within Eastern Asia and Eastern Europe (1, 2). Especially, trends of increased CRC incidence and mortality have been observed in China (2). Moreover, CRC is also ranked as the third most common cause of cancer death among both men and women in the United States (3). Although CRC is a disease that is largely influenced by lifestyle and dietary factors (4), recent studies have suggested that interindividual genetic variations such as single-nucleotide polymorphisms (SNP) may affect risk for CRC (5–7). In addition, emerging evidence has shown that SNPs may be used as surrogate biomarkers of the genetic background of CRC patients to predict therapeutic response and prognosis (8–11).

MicroRNAs (miRNA) are a group of endogenous single-stranded small noncoding RNAs that have emerged as key regulators of fundamental biological processes through regulating the expression of more than 30% of human genes (12, 13). miRNAs are initially transcribed as primary miRNAs (pri-miRNA) with several hundred nucleotides, which are further processed into hairpin-structured precursor miRNAs (pre-miRNA) that have approximately 70 nucleotides (14, 15). Pre-miRNAs are the direct precursors of mature miRNAs that have 18 to 25 nucleotides in length. It has been reported that SNPs in the pri-miRNAs and pre-miRNAs could affect the processing and subsequent maturation of miRNAs, leading to altered mature miRNA expression levels (16, 17). In addition, Hu and colleagues screened approximately 400 human pre-miRNAs and their surrounding regions and found that pre-miRNA genes had a significantly lower number of common SNPs than the surrounding regions, suggesting that pre-miRNAs are highly conserved and may be functionally important (18). Consistently, various subsequent studies have reported that pre-miRNA SNPs might confer altered risk of many solid tumors (18–22). However, the role of these SNPs on cancer clinical outcome remains to be evaluated.

Abnormal expression of miRNAs has been well documented as biomarkers or functional regulators in the tumorigenesis and prognosis of CRC (2, 23–26). Because SNPs in miRNA-related genes may impact mature miRNA expression, it follows that these SNPs may also be implicated in cancer development and clinical outcome. Consistently, several recent studies have suggested that SNPs in miRNA biogenesis genes, pri-miRNAs, and miRNA binding sites were associated with altered CRC risk and outcomes (27–29). Nonetheless, to the best of our knowledge, no studies have been reported on the role of SNPs in pre-miRNA regions in CRC prognosis. In this study, we sought to assess the association of pre-miRNA SNPs and the overall survival and recurrence-free survival in a homogeneous population of Chinese CRC patients.

Study population

The population used in this study has been described previously (11). Briefly, newly diagnosed and histologically confirmed CRC patients were enrolled in the Xijing Hospital and Tangdu Hospital affiliated with the Fourth Military Medical University (FMMU) in Xi'an, China. There were no restrictions on age, gender, cancer stage, or other demographic variables on enrollment. The patient enrollment began from February 2006. As of April 2010, a total of 496 eligible CRC patients were recruited. The rate of recruitment among all eligible patients is 90%. All patients included in this study had histopathologically CRC tumors only and no other cancers before or at the time of diagnosis. For this study, we excluded 88 of the 496 patients, which comprised 26 patients who did not undergo surgery or only received palliative operation, 48 patients who had incomplete clinical and/or follow-up data, 6 patients who died within 1 month of surgery, and 8 patients who had poor quality and/or quantity DNA samples. Finally, we included a total of 408 CRC patients with completely validated demographic, clinical, and follow-up data. All patients were Han Chinese with adenocarcinoma and received surgery after diagnosis. Some patients received adjuvant chemotherapy after surgery. No patients received neoadjuvant or radiation therapy. Informed consent was obtained from each enrolled patient. This study was approved by the local research ethics committees of the participating institutes.

Demographic and clinical data collection

Demographic data were collected through in-person interview at the time of initial visit or follow-up in the clinics, medical chart review, or consultation with the treating physicians by trained clinical research specialists. For data acquired from multiple sources, the research staff compared and validated that these data were consistent. If discrepancies were identified, the patients, family members, and/or treating physicians were further contacted for verification. Individual who smoked more than 100 cigarettes in their lifetime were defined as ever smokers, otherwise as never smokers. Never drinkers were defined as those who consumed less than or equal to 1 drink per month. One drink was defined as 1 bottle or can of beer, 1 medium glass of wine, or 1 mixed drink. Detailed clinical information was collected by medical chart review and consultation with treating physicians. The follow-up information on recurrence and death was updated at 6-month intervals through onsite interview, direct calling, or medical chart review by trained clinical specialists. The latest follow-up data in this study were obtained in March 2011. For patients enrolled after August 2008, 5 mL of blood was obtained for genomic DNA extraction. For patients enrolled before August 2008, genomic DNA was extracted from approximately 100 mg of adjacent normal tissues obtained by a pathologist after surgery.

SNP selection and genotyping

The candidate SNPs were selected based on a literature review of pre-miRNA epidemiologic studies (20, 21, 30–33). Altogether, we genotyped 10 SNPs, including rs895819 in pre-miR-27a, rs2910164 in pre-miR-146a, rs2292832 in pre-miR-149, rs6505162 in pre-miR-423, rs2289030 in pre-miR-492, rs3746444 in pre-miR-499, rs2368392 in pre-miR-604, rs2043556 in pre-miR-605, rs4919510 in pre-miR-608, and rs17759989 in pre-miR-633. Genotyping was done with the Sequenom iPLEX platform (Sequenom Inc.). Laboratory personnel conducting genotyping were blinded to patient information. Strict quality control measures were implemented during genotyping with more than 99% concordance between samples genotyped in duplicate.

Statistical and data analysis

Two major endpoints were evaluated in this study: overall survival and recurrence-free survival. Overall survival time was defined as the time from initial surgery to death from any cause. Recurrence-free survival time was defined as the time from initial surgery to local recurrence, distant metastasis, death from any cause, or to the date of last follow-up. Recurrence is defined as, after the treatment of the primary tumor by surgery and/or chemotherapy, the regrowth of tumor in the original organ (local-regional recurrence) or a different organ (distant metastasis). All recurrent tumors in this study were confirmed as having the same histopathologic characteristics as the primary tumor. Second primary tumors with different histopathologic characteristics were excluded. All patients without recurrence or lost during follow-up were censored for analysis. Recurrence was confirmed through the combined evaluations of imaging findings (ultrasound, computed tomography, positron emission tomography, and magnetic resonance imaging) and laboratory results (mainly carcinoembryonic antigen test). The Hardy–Weinberg equilibrium (HWE) of each SNP was tested by a goodness-of-fit χ2 test. HRs and 95% CIs were estimated by multivariate Cox proportional hazards model, adjusting for age, gender, education level, body mass index (BMI), smoking status, drinking status, chemotherapy, tumor position, tumor differentiation, and tumor stage, where appropriate. Three genetic models (dominant, recessive, and additive) were tested and the best fitting model was selected for all downstream analyses. The tests for interactions between significant SNPs and demographic and clinical variables were conducted by including a cross-product term into the Cox proportional hazards model. Kaplan–Meier curves and a log-rank test were used to assess the differences in overall survival and recurrence-free survival. STATA software package (version 8, STATA Corp.) was used for these analyses. All P values were 2-sided. P ≤ 0.05 was considered the threshold of statistical significance.

Characteristics of the study subjects

The distribution of patients' demographic and clinicopathologic characteristics are summarized in Table 1. A total of 408 CRC patients were included in this study. The average age at diagnosis was 59.4 (range, 22–90), and average BMI was 22.7 (range, 15.8–32.9). All patients received surgery within 2 months after diagnosis. All patients were histologically confirmed by pathologic examination as having adenocarcinoma. There were 230 (56.4%) male patients and 178 (43.6%) female patients. The majority of patients were never smokers (70.8%) and never drinkers (89.5%). There were approximately equal numbers of patients with colon cancer (47.1%) and rectal cancer (52.9%), which is consistent with previous reports that the incidence rates of colon and rectal cancers are generally of the same magnitude in countries with low CRC risk such as China (34). A total of 192 (47.1%) patients had stage 2 tumor, whereas stage 0, 1, 3, and 4 tumors were presented in 2.0%, 14.2%, 27.2%, and 9.6% of patients, respectively. The majority of patients (66.4%) had moderately differentiated tumors. No patient received neoadjuvant chemotherapy, radiotherapy, or targeted therapy, but most patients (78.2%) received adjuvant chemotherapy after surgery. Among the 319 patients receiving chemotherapy, 266 (83.4%) were treated by the FOLFOX regimen, including folinic acid, fluorouracil (F), and oxaliplatin. During follow-up, there were 93 (22.8%) patients who developed recurrences, 94 (23.0%) patients who died, and 134 (32.8%) patients who had at least 1 event (recurrence and/or death). The median overall survival time was 23.0 months and the median recurrence-free survival time was 19.9 months.

Table 1.

Demographic and clinicopathologic characteristics of 408 Chinese CRC patients

VariablesNumber of patients (%), n = 408
Age, mean (range; y) 59.4 (22–90) 
BMI, mean (range) 22.7 (15.8–32.9) 
Gender 
 Male 230 (56.4) 
 Female 178 (43.6) 
Smoking status 
 Ever 119 (29.2) 
 Never 289 (70.8) 
Drinking status 
 Ever 43 (10.5) 
 Never 365 (89.5) 
Education 
 Up to high school 178 (43.6) 
 College degree or higher 171 (41.9) 
 Unknown 59 (14.5) 
Tumor position 
 Colon 192 (47.1) 
 Rectum 216 (52.9) 
Tumor stage 
 0 8 (2.0) 
 1 58 (14.2) 
 2 192 (47.1) 
 3 111 (27.2) 
 4 39 (9.6) 
Tumor differentiation 
 Poor 37 (9.1) 
 Moderate 271 (66.4) 
 Well 100 (24.5) 
Chemotherapy 
 Yes 319 (78.2) 
 No 89 (21.8) 
Recurrence 
 Yes 93 (22.8) 
 No 315 (77.2) 
Death  
 Yes 94 (23.0) 
 No 314 (77.0) 
Event (recurrence and/or death) 
 Yes 134 (32.8) 
 No 274 (67.2) 
VariablesNumber of patients (%), n = 408
Age, mean (range; y) 59.4 (22–90) 
BMI, mean (range) 22.7 (15.8–32.9) 
Gender 
 Male 230 (56.4) 
 Female 178 (43.6) 
Smoking status 
 Ever 119 (29.2) 
 Never 289 (70.8) 
Drinking status 
 Ever 43 (10.5) 
 Never 365 (89.5) 
Education 
 Up to high school 178 (43.6) 
 College degree or higher 171 (41.9) 
 Unknown 59 (14.5) 
Tumor position 
 Colon 192 (47.1) 
 Rectum 216 (52.9) 
Tumor stage 
 0 8 (2.0) 
 1 58 (14.2) 
 2 192 (47.1) 
 3 111 (27.2) 
 4 39 (9.6) 
Tumor differentiation 
 Poor 37 (9.1) 
 Moderate 271 (66.4) 
 Well 100 (24.5) 
Chemotherapy 
 Yes 319 (78.2) 
 No 89 (21.8) 
Recurrence 
 Yes 93 (22.8) 
 No 315 (77.2) 
Death  
 Yes 94 (23.0) 
 No 314 (77.0) 
Event (recurrence and/or death) 
 Yes 134 (32.8) 
 No 274 (67.2) 

Main effect analyses of individual SNPs

In the 10 genotyped SNPs, 3 SNPs (rs2292832, rs17759989, and rs3746444) were excluded from downstream analyses because of failing to pass quality control of genotyping. The average call rate of the remaining 7 SNPs was 96.8% (range, 90.3%–100%). The detailed genotyping results of the 7 SNPs are listed in Table 2. Except for rs2043556 in which HWE P value was 0.001, the HWE P value for all other SNPs were nonsignificant, ranging from 0.217 to 1.000. The HWE P value was 0.490 for rs6505162 and 0.228 for rs4919510. We did not identify any genotyping error after carefully checking the genotyping results of rs2043556. The significant deviation from HWE for this SNP could potentially result from the differences between our CRC patient population and the general population of cancer-free individuals, and the results related to this SNP need to be interpreted with caution. Overall, 2 SNPs, rs6505162 in pre-miR-423 and rs4919510 in pre-miR-608, exhibited a significant association with the overall survival and the recurrence-free survival of the CRC patients. For both SNPs, the results of the dominant genetic model analysis were more significant for both the overall and the recurrence-free survivals compared with the recessive and additive genetic models, except for the overall survival analysis for rs4919510, in which the result of the additive model (P = 0.063) was slightly more significant than that of the dominant model (P = 0.067). We therefore used the dominant model as the best fitting model in this study. Compared with the homozygous wild-type (WW) genotype, the variant-containing (WV + VV) genotypes of this SNP were significantly associated with unfavorable overall and recurrence-free survival with an HR of 2.12 (95% CI = 1.34–3.34; P = 0.001) and 1.59 (95% CI = 1.08–2.36; P = 0.019), respectively. Another significant SNP was rs4919510. Under a dominant genetic model, the variant-containing genotypes of this SNP were associated with favorable overall and recurrence-free survival with an HR of 0.64 (95% CI = 0.40–1.03; P = 0.067) and 0.61 (95% CI = 0.41–0.92; P = 0.017). There are 139 (34.1%) subjects whose DNA samples were obtained from tissues and 269 (65.9%) from blood. We conducted a test for interaction between both significant SNPs and DNA source and did not identify any significant interaction (Pinteraction for overall survival and recurrence-free survival: 0.371 and 0.646, respectively, for rs6505162 and 0.926 and 0.918, respectively, for rs4919510).

Table 2.

Association of pre-miRNA SNPs with overall and recurrence-free survival of CRC patients

Overall survivalRecurrence-free survival
Gene and SNPGenotypeDeath/totalHR (95% CI)aPEvent/totalbHR (95% CI)P
Pre-miR-27a WW 48/213 1 (reference)  69/213 1(reference)  
rs895819 WV 39/167 0.88 (0.55–1.41) 0.599 55/167 0.75 (0.50–1.13) 0.168 
HWE P 0.375 VV 6/25 0.66 (0.26–1.70) 0.393 9/25 0.76 (0.35–1.64) 0.478 
 Dom  0.85 (0.54–1.34) 0.476  0.75 (0.51–1.11) 0.153 
 Rec  0.71 (0.28–1.76) 0.456  0.87 (0.41–1.85) 0.721 
 Add  0.85 (0.59–1.22) 0.374  0.81 (0.59–1.11) 0.195 
Pre-miR-146a WW 24/118 1 (reference)  34/118 1 (reference)  
rs2910164 WV 50/200 1.13 (0.68–1.89) 0.632 69/200 1.10 (0.72–1.69) 0.663 
HWE P 1.000 VV 19/85 0.95 (0.49–1.83) 0.877 30/85 0.94 (0.54–1.66) 0.840 
 Dom  1.08 (0.66–1.75) 0.761  1.06 (0.70–1.59) 0.797 
 Rec  0.88 (0.50–1.56) 0.659  0.89 (0.54–1.46) 0.646 
 Add  0.99 (0.73–1.36) 0.959  0.99 (0.76–1.29) 0.932 
Pre-miR-423 WW 47/242 1 (reference)  74/242 1 (reference)  
rs6505162 WV 40/141 2.18 (1.36–3.51) 0.001 52/141 1.73 (1.15–2.59) 0.008 
HWE P 0.490 VV 7/25 1.79 (0.75–4.28) 0.192 8/25 1.02 (0.44–2.36) 0.960 
 Dom  2.12 (1.34–3.34) 0.001  1.59 (1.08–2.36) 0.019 
 Rec  1.29 (0.55–2.99) 0.557  0.82 (0.36–1.87) 0.642 
 Add  1.61 (1.15–2.25) 0.005  1.28 (0.95–1.73) 0.100 
Pre-miR-492 WW 54/233 1 (reference)  76/233 1 (reference)  
rs2289030 WV 31/136 0.72 (0.43–1.18) 0.194 46/136 0.83 (0.54–1.26) 0.379 
HWE P 0.217 VV 7/28 1.05 (0.46–2.40) 0.910 9/28 0.95 (0.44–2.03) 0.885 
 Dom  0.77 (0.48–1.23) 0.274  0.85 (0.57–1.26) 0.411 
 Rec  1.19 (0.53–2.68) 0.669  1.02 (0.48–2.15) 0.956 
 Add  0.88 (0.60–1.28) 0.498  0.90 (0.65–1.24) 0.530 
Pre-miR-604 WW 46/199 1 (reference)  67/199 1 (reference)  
rs2368392 WV 35/162 1.17 (0.73–1.88) 0.524 50/162 0.97 (0.64–1.47) 0.883 
HWE P 0.292 VV 11/42 1.46 (0.69–3.11) 0.327 15/42 1.47 (0.79–2.77) 0.227 
 Dom  1.22 (0.78–1.91) 0.382  1.06 (0.72–1.55) 0.780 
 Rec  1.37 (0.66–2.84) 0.397  1.49 (0.82–2.74) 0.194 
 Add  1.19 (0.85–1.67) 0.299  1.12 (0.84–1.51) 0.436 
Pre-miR-605 WW 45/184 1 (reference)  66/184 1 (reference)  
rs2043556 WV 42/200 1.01 (0.63–1.61) 0.962 60/200 0.86 (0.58–1.28) 0.460 
HWE P 0.001 VV 7/23 1.47 (0.60–3.62) 0.401 8/23 0.93 (0.41–2.11) 0.856 
 Dom  1.06 (0.67–1.66) 0.808  0.87 (0.59–1.27) 0.471 
 Rec  1.46 (0.61–3.50) 0.392  1.00 (0.45–2.23) 0.999 
 Add  1.11 (0.76–1.61) 0.596  0.91 (0.66–1.25) 0.549 
Pre-miR-608 WW 30/122 1 (reference)  47/122 1 (reference)  
rs4919510 WV 47/213 0.67 (0.41–1.10) 0.112 63/213 0.62 (0.41–0.95) 0.027 
HWE P 0.228 VV 16/72 0.54 (0.25–1.16) 0.112 23/72 0.58 (0.31–1.08) 0.086 
 Dom  0.64 (0.40–1.03) 0.067  0.61 (0.41–0.92) 0.017 
 Rec  0.69 (0.34–1.40) 0.306  0.78 (0.43–1.38) 0.389 
 Add  0.71 (0.50–1.02) 0.063  0.72 (0.53–0.97) 0.032 
Overall survivalRecurrence-free survival
Gene and SNPGenotypeDeath/totalHR (95% CI)aPEvent/totalbHR (95% CI)P
Pre-miR-27a WW 48/213 1 (reference)  69/213 1(reference)  
rs895819 WV 39/167 0.88 (0.55–1.41) 0.599 55/167 0.75 (0.50–1.13) 0.168 
HWE P 0.375 VV 6/25 0.66 (0.26–1.70) 0.393 9/25 0.76 (0.35–1.64) 0.478 
 Dom  0.85 (0.54–1.34) 0.476  0.75 (0.51–1.11) 0.153 
 Rec  0.71 (0.28–1.76) 0.456  0.87 (0.41–1.85) 0.721 
 Add  0.85 (0.59–1.22) 0.374  0.81 (0.59–1.11) 0.195 
Pre-miR-146a WW 24/118 1 (reference)  34/118 1 (reference)  
rs2910164 WV 50/200 1.13 (0.68–1.89) 0.632 69/200 1.10 (0.72–1.69) 0.663 
HWE P 1.000 VV 19/85 0.95 (0.49–1.83) 0.877 30/85 0.94 (0.54–1.66) 0.840 
 Dom  1.08 (0.66–1.75) 0.761  1.06 (0.70–1.59) 0.797 
 Rec  0.88 (0.50–1.56) 0.659  0.89 (0.54–1.46) 0.646 
 Add  0.99 (0.73–1.36) 0.959  0.99 (0.76–1.29) 0.932 
Pre-miR-423 WW 47/242 1 (reference)  74/242 1 (reference)  
rs6505162 WV 40/141 2.18 (1.36–3.51) 0.001 52/141 1.73 (1.15–2.59) 0.008 
HWE P 0.490 VV 7/25 1.79 (0.75–4.28) 0.192 8/25 1.02 (0.44–2.36) 0.960 
 Dom  2.12 (1.34–3.34) 0.001  1.59 (1.08–2.36) 0.019 
 Rec  1.29 (0.55–2.99) 0.557  0.82 (0.36–1.87) 0.642 
 Add  1.61 (1.15–2.25) 0.005  1.28 (0.95–1.73) 0.100 
Pre-miR-492 WW 54/233 1 (reference)  76/233 1 (reference)  
rs2289030 WV 31/136 0.72 (0.43–1.18) 0.194 46/136 0.83 (0.54–1.26) 0.379 
HWE P 0.217 VV 7/28 1.05 (0.46–2.40) 0.910 9/28 0.95 (0.44–2.03) 0.885 
 Dom  0.77 (0.48–1.23) 0.274  0.85 (0.57–1.26) 0.411 
 Rec  1.19 (0.53–2.68) 0.669  1.02 (0.48–2.15) 0.956 
 Add  0.88 (0.60–1.28) 0.498  0.90 (0.65–1.24) 0.530 
Pre-miR-604 WW 46/199 1 (reference)  67/199 1 (reference)  
rs2368392 WV 35/162 1.17 (0.73–1.88) 0.524 50/162 0.97 (0.64–1.47) 0.883 
HWE P 0.292 VV 11/42 1.46 (0.69–3.11) 0.327 15/42 1.47 (0.79–2.77) 0.227 
 Dom  1.22 (0.78–1.91) 0.382  1.06 (0.72–1.55) 0.780 
 Rec  1.37 (0.66–2.84) 0.397  1.49 (0.82–2.74) 0.194 
 Add  1.19 (0.85–1.67) 0.299  1.12 (0.84–1.51) 0.436 
Pre-miR-605 WW 45/184 1 (reference)  66/184 1 (reference)  
rs2043556 WV 42/200 1.01 (0.63–1.61) 0.962 60/200 0.86 (0.58–1.28) 0.460 
HWE P 0.001 VV 7/23 1.47 (0.60–3.62) 0.401 8/23 0.93 (0.41–2.11) 0.856 
 Dom  1.06 (0.67–1.66) 0.808  0.87 (0.59–1.27) 0.471 
 Rec  1.46 (0.61–3.50) 0.392  1.00 (0.45–2.23) 0.999 
 Add  1.11 (0.76–1.61) 0.596  0.91 (0.66–1.25) 0.549 
Pre-miR-608 WW 30/122 1 (reference)  47/122 1 (reference)  
rs4919510 WV 47/213 0.67 (0.41–1.10) 0.112 63/213 0.62 (0.41–0.95) 0.027 
HWE P 0.228 VV 16/72 0.54 (0.25–1.16) 0.112 23/72 0.58 (0.31–1.08) 0.086 
 Dom  0.64 (0.40–1.03) 0.067  0.61 (0.41–0.92) 0.017 
 Rec  0.69 (0.34–1.40) 0.306  0.78 (0.43–1.38) 0.389 
 Add  0.71 (0.50–1.02) 0.063  0.72 (0.53–0.97) 0.032 

NOTE: The significant P values (≤0.05) are in bold.

Abbreviations: WW, homozygous wild-type genotype; WV, heterozygous genotype; VV, homozygous variant genotype; Dom, dominant model; Rec, recessive model; Add, additive model.

aAdjusted for age, gender, education level, BMI, smoking status, drinking status, chemotherapy, tumor position, tumor differentiation, and tumor stage.

bEvent, recurrence and/or death.

Stratified analysis of rs6505162 and rs4919510 by host variables

We focused on the recurrence-free survival in all the downstream analyses because this endpoint reflects both recurrence and death. We conducted stratified and interaction analyses of rs6505162 and rs4919510 with the major demographic and clinical variables. As shown in Table 3, Table 4 borderline significant (0.05 < P < 0.1) interactions were identified, including the interactions between rs6505162 and BMI (Pinteraction = 0.096) and tumor stage (Pinteraction = 0.091), as well as the interactions between rs4919510 and gender (Pinteraction = 0.092) and chemotherapy (Pinteraction = 0.072). The significant association between recurrence-free survival and rs6505162 remained at least borderline significant in patients with higher BMI (HR = 2.60, 95% CI = 1.47–4.58, P = 0.001) and higher tumor stage (HR = 1.87, 95% CI = 0.99–3.53, P = 0.053) than those with lower BMI (HR = 0.83, 95% CI = 0.43–1.63, P = 0.593) and lower tumor stage (HR = 1.09, 95% CI = 0.62–1.92, P = 0.772), respectively. The significant effects conferred by rs4919510 was more evident in male patients (HR = 0.47, 95% CI = 0.27–0.81, P = 0.006) and patients receiving chemotherapy (HR = 0.48, 95% CI = 0.30–0.75, P = 0.001), compared with the female patients (HR = 0.94, 95% CI = 0.50–1.79, P = 0.856) and patients without chemotherapy (HR = 1.57, 95% CI = 0.48–5.07, P = 0.454), respectively. Kaplan–Meier curves indicated at least a borderline significant difference in term of time to recurrence or death, between the wild-type and variant-containing genotypes of both rs6505162 (log-rank P = 0.093; Fig. 1A, left) and rs4919510 (log-rank P = 0.059; Fig. 1B, left). For both SNPs, the significant effect was more evident in patients receiving chemotherapy (log-rank P = 0.085 and 0.041 for rs6505162 and rs4919510, respectively; Fig. 1A and B, middle), but not in those without chemotherapy (log-rank P = 0.706 and 0.979 for rs6505162 and rs4919510, respectively; Fig. 1A and B, right). We also generated recurrence-free survival curves that were adjusted by the demographic and clinical variables listed on Table 1 from the Cox regression to determine the differences in recurrence-free survival time between the different genotypes of rs6515062 and rs4919510. The adjusted curves were similar to their corresponding Kaplan–Meier curves and consistent with the results of the Cox proportional hazards analyses. That is, for both SNPs, significant differences in recurrence-free survival time were observed in all patients as well as patients receiving chemotherapy, but not in those patients without chemotherapy (Supplementary Fig. S1).

Figure 1.

Kaplan–Meier recurrence-free survival curves of CRC in all patients, in patients with chemotherapy, and in patients without chemotherapy. A, rs6505162, dominant model; B, rs4919510, dominant model. WWa, WVa, and VVa indicate the homozygous wild-type, heterozygous, and homozygous variant genotypes of rs6505162, respectively. WWb, WVb, and VVb indicate the homozygous, heterozygous, and homozygous variant genotypes of rs4919510, respectively.

Figure 1.

Kaplan–Meier recurrence-free survival curves of CRC in all patients, in patients with chemotherapy, and in patients without chemotherapy. A, rs6505162, dominant model; B, rs4919510, dominant model. WWa, WVa, and VVa indicate the homozygous wild-type, heterozygous, and homozygous variant genotypes of rs6505162, respectively. WWb, WVb, and VVb indicate the homozygous, heterozygous, and homozygous variant genotypes of rs4919510, respectively.

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Table 3.

Association of rs6505162 and rs4919510 with recurrence-free survival stratified by host characteristics

rs6505162rs4919510
VariablesStratumGenotypeEvent/totalaHR (95% CI)bPEvent/totalHR (95% CI)P
Overall  WW 74/242 1 (reference)  47/122 1 (reference)  
  WV + VV 60/166 1.59 (1.08–2.36) 0.019 86/285 0.61 (0.41–0.92) 0.017 
Age 
 Younger (<61) WW 42/117 1 (reference)  26/55 1 (reference)  
  WV + VV 33/83 1.33 (0.76–2.32) 0.319 49/145 0.44 (0.25–0.79) 0.005 
 Older (≥ 61) WW 32/125 1 (reference)  21/67 1 (reference)  
  WV + VV 27/83 2.05 (1.07–3.93) 0.031 37/140 0.77(0.41–1.46) 0.427 
    Pinteraction 0.387  Pinteraction 0.361 
Gender 
 Male WW 38/131 1 (reference)  28/65 1 (reference)  
  WV + VV 38/99 2.17 (1.26–3.74) 0.005 48/165 0.47 (0.27–0.81) 0.006 
 Female WW 36/111 1 (reference)  19/57 1 (reference)  
  WV + VV 22/67 1.12(0.60–2.13) 0.717 38/120 0.94(0.50–1.79) 0.856 
    Pinteraction 0.401  Pinteraction 0.092 
Educational level 
 Up to high school WW 27/114 1 (reference)  17/49 1 (reference)  
  WV + VV 27/64 2.06 (1.14–3.74) 0.017 36/128 0.66 (0.35–1.24) 0.194 
 College or higher WW 36/98 1 (reference)  25/55 1 (reference)  
  WV + VV 27/73 1.51 (0.87–2.60) 0.144 38/116 0.52 (0.30–0.91) 0.022 
    Pinteraction 0.469  Pinteraction 0.302 
BMI 
 BMI <22.7 WW 36/123 1 (reference)  23/64 1 (reference)  
  WV + VV 24/77 0.83 (0.43–1.63) 0.593 36/135 0.49 (0.25–0.97) 0.041 
 BMI ≥ 22.7 WW 38/117 1 (reference)  24/56 1 (reference)  
  WV + VV 34/83 2.60 (1.47–4.58) 0.001 48/144 0.61 (0.35–1.06) 0.078 
    Pinteraction 0.096  Pinteraction 0.741 
Smoking status 
 Never smoker WW 55/170 1 (reference)  32/91 1 (reference)  
  WV + VV 43/119 1.44 (0.92–2.27) 0.113 65/197 0.69 (0.43–1.11) 0.125 
 Ever smoker WW 19/72 1 (reference)  15/31 1 (reference)  
  WV + VV 17/47 2.70 (1.15–6.31) 0.022 21/88 0.34 (0.13–0.88) 0.027 
    Pinteraction 0.401 P for interaction Pinteraction 0.206 
Drinking status 
 Never drinker WW 65/218 1 (reference)  40/112 1 (reference)  
  WV + VV 50/147 1.50 (0.98–2.30) 0.064 74/252 0.64 (0.41–1.00) 0.051 
 Ever drinker WW 9/24 1 (reference)  7/10 1 (reference)  
  WV + VV 10/19 7.88 (1.24–50.07) 0.029 12/33 0.46 (0.11–1.90) 0.283 
    Pinteraction 0.591  Pinteraction 0.636 
Chemotherapy 
 No WW 15/54 1 (reference)  5/18 1 (reference)  
  WV + VV 11/35 1.96 (0.79–4.83) 0.144 21/71 1.57 (0.48–5.07) 0.454 
 Yes WW 59/188 1 (reference)  42/104 1 (reference)  
  WV + VV 49/131 1.58 (1.01–2.49) 0.046 65/214 0.48 (0.30–0.75) 0.001 
    Pinteraction 0.852  Pinteraction 0.072 
Tumor position 
 Colon WW 34/116 1 (reference)  24/60 1 (reference)  
  WV + VV 30/76 1.09 (0.59–2.00) 0.785 40/132 0.60 (0.32–1.12) 0.108 
 Rectum WW 40/126 1 (reference)  23/62 1 (reference)  
  WV + VV 30/90 1.91 (1.06–3.42) 0.030 46/153 0.66 (0.37–1.19) 0.169 
    Pinteraction 0.254  Pinteraction 0.538 
Tumor differentiation 
 Poor and Moderate WW 57/184 1 (reference)  41/94 1 (reference)  
  WV + VV 50/124 1.81 (1.16–2.82) 0.009 65/213 0.54 (0.35–0.85) 0.008 
 Well WW 17/58 1 (reference)  6/28 1 (reference)  
  WV + VV 10/42 0.88 (0.32–2.44) 0.808 21/72 1.65 (0.46–5.91) 0.440 
    Pinteraction 0.253  Pinteraction 0.218 
Tumor stage 
 Stage 0–2 WW 32/148 1 (reference)  23/76 1 (reference)  
  WV + VV 24/110 1.09 (0.62–1.92) 0.772 32/181 0.51 (0.28–0.92) 0.026 
 Stage 3–4 WW 42/94 1 (reference)  24/46 1 (reference)  
  WV + VV 36/56 1.87 (0.99–3.53) 0.053 54/104 0.65 (0.35–1.22) 0.183 
    Pinteraction 0.091  Pinteraction 0.476 
rs6505162rs4919510
VariablesStratumGenotypeEvent/totalaHR (95% CI)bPEvent/totalHR (95% CI)P
Overall  WW 74/242 1 (reference)  47/122 1 (reference)  
  WV + VV 60/166 1.59 (1.08–2.36) 0.019 86/285 0.61 (0.41–0.92) 0.017 
Age 
 Younger (<61) WW 42/117 1 (reference)  26/55 1 (reference)  
  WV + VV 33/83 1.33 (0.76–2.32) 0.319 49/145 0.44 (0.25–0.79) 0.005 
 Older (≥ 61) WW 32/125 1 (reference)  21/67 1 (reference)  
  WV + VV 27/83 2.05 (1.07–3.93) 0.031 37/140 0.77(0.41–1.46) 0.427 
    Pinteraction 0.387  Pinteraction 0.361 
Gender 
 Male WW 38/131 1 (reference)  28/65 1 (reference)  
  WV + VV 38/99 2.17 (1.26–3.74) 0.005 48/165 0.47 (0.27–0.81) 0.006 
 Female WW 36/111 1 (reference)  19/57 1 (reference)  
  WV + VV 22/67 1.12(0.60–2.13) 0.717 38/120 0.94(0.50–1.79) 0.856 
    Pinteraction 0.401  Pinteraction 0.092 
Educational level 
 Up to high school WW 27/114 1 (reference)  17/49 1 (reference)  
  WV + VV 27/64 2.06 (1.14–3.74) 0.017 36/128 0.66 (0.35–1.24) 0.194 
 College or higher WW 36/98 1 (reference)  25/55 1 (reference)  
  WV + VV 27/73 1.51 (0.87–2.60) 0.144 38/116 0.52 (0.30–0.91) 0.022 
    Pinteraction 0.469  Pinteraction 0.302 
BMI 
 BMI <22.7 WW 36/123 1 (reference)  23/64 1 (reference)  
  WV + VV 24/77 0.83 (0.43–1.63) 0.593 36/135 0.49 (0.25–0.97) 0.041 
 BMI ≥ 22.7 WW 38/117 1 (reference)  24/56 1 (reference)  
  WV + VV 34/83 2.60 (1.47–4.58) 0.001 48/144 0.61 (0.35–1.06) 0.078 
    Pinteraction 0.096  Pinteraction 0.741 
Smoking status 
 Never smoker WW 55/170 1 (reference)  32/91 1 (reference)  
  WV + VV 43/119 1.44 (0.92–2.27) 0.113 65/197 0.69 (0.43–1.11) 0.125 
 Ever smoker WW 19/72 1 (reference)  15/31 1 (reference)  
  WV + VV 17/47 2.70 (1.15–6.31) 0.022 21/88 0.34 (0.13–0.88) 0.027 
    Pinteraction 0.401 P for interaction Pinteraction 0.206 
Drinking status 
 Never drinker WW 65/218 1 (reference)  40/112 1 (reference)  
  WV + VV 50/147 1.50 (0.98–2.30) 0.064 74/252 0.64 (0.41–1.00) 0.051 
 Ever drinker WW 9/24 1 (reference)  7/10 1 (reference)  
  WV + VV 10/19 7.88 (1.24–50.07) 0.029 12/33 0.46 (0.11–1.90) 0.283 
    Pinteraction 0.591  Pinteraction 0.636 
Chemotherapy 
 No WW 15/54 1 (reference)  5/18 1 (reference)  
  WV + VV 11/35 1.96 (0.79–4.83) 0.144 21/71 1.57 (0.48–5.07) 0.454 
 Yes WW 59/188 1 (reference)  42/104 1 (reference)  
  WV + VV 49/131 1.58 (1.01–2.49) 0.046 65/214 0.48 (0.30–0.75) 0.001 
    Pinteraction 0.852  Pinteraction 0.072 
Tumor position 
 Colon WW 34/116 1 (reference)  24/60 1 (reference)  
  WV + VV 30/76 1.09 (0.59–2.00) 0.785 40/132 0.60 (0.32–1.12) 0.108 
 Rectum WW 40/126 1 (reference)  23/62 1 (reference)  
  WV + VV 30/90 1.91 (1.06–3.42) 0.030 46/153 0.66 (0.37–1.19) 0.169 
    Pinteraction 0.254  Pinteraction 0.538 
Tumor differentiation 
 Poor and Moderate WW 57/184 1 (reference)  41/94 1 (reference)  
  WV + VV 50/124 1.81 (1.16–2.82) 0.009 65/213 0.54 (0.35–0.85) 0.008 
 Well WW 17/58 1 (reference)  6/28 1 (reference)  
  WV + VV 10/42 0.88 (0.32–2.44) 0.808 21/72 1.65 (0.46–5.91) 0.440 
    Pinteraction 0.253  Pinteraction 0.218 
Tumor stage 
 Stage 0–2 WW 32/148 1 (reference)  23/76 1 (reference)  
  WV + VV 24/110 1.09 (0.62–1.92) 0.772 32/181 0.51 (0.28–0.92) 0.026 
 Stage 3–4 WW 42/94 1 (reference)  24/46 1 (reference)  
  WV + VV 36/56 1.87 (0.99–3.53) 0.053 54/104 0.65 (0.35–1.22) 0.183 
    Pinteraction 0.091  Pinteraction 0.476 

NOTE: The significant P values (≤0.05) are in bold.

Abbreviations: WW, homozygous wild-type genotype; WV, heterozygous genotype; VV, homozygous variant genotype; Dom, dominant model.

aEvent: recurrence and/or death.

bAdjusted for age, gender, education level, BMI, smoking status, drinking status, chemotherapy, tumor position, tumor differentiation, tumor stage, where appropriate.

Table 4.

Effects of chemotherapy on CRC recurrence-free survival stratified by rs6505162 or rs4919510

SNP and variablesEvent/totalaHR (95% CI)bP
In all patients 
 No chemotherapy 26/89 1 (reference)  
 Chemotherapy 108/319 0.61 (0.37–1.00) 0.048 
In patients with WW genotype of rs6505162 
 No chemotherapy 15/54 1 (reference)  
 Chemotherapy 59/188 0.52 (0.27–1.01) 0.052 
In patients with WV + VV genotype of rs6505162 
 No chemotherapy 11/35 1 (reference)  
 Chemotherapy 49/131 0.62 (0.27–1.40) 0.248 
In patients with WW genotype of rs4919510 
 No chemotherapy 5/18 1 (reference)  
 Chemotherapy 42/104 1.75 (0.57–5.41) 0.329 
In patients with WV + VV genotype of rs4919510 
 No chemotherapy 21/71 1 (reference)  
 Chemotherapy 65/214 0.41 (0.23–0.73) 0.003 
SNP and variablesEvent/totalaHR (95% CI)bP
In all patients 
 No chemotherapy 26/89 1 (reference)  
 Chemotherapy 108/319 0.61 (0.37–1.00) 0.048 
In patients with WW genotype of rs6505162 
 No chemotherapy 15/54 1 (reference)  
 Chemotherapy 59/188 0.52 (0.27–1.01) 0.052 
In patients with WV + VV genotype of rs6505162 
 No chemotherapy 11/35 1 (reference)  
 Chemotherapy 49/131 0.62 (0.27–1.40) 0.248 
In patients with WW genotype of rs4919510 
 No chemotherapy 5/18 1 (reference)  
 Chemotherapy 42/104 1.75 (0.57–5.41) 0.329 
In patients with WV + VV genotype of rs4919510 
 No chemotherapy 21/71 1 (reference)  
 Chemotherapy 65/214 0.41 (0.23–0.73) 0.003 

NOTE: The significant P values (≤0.05) are in bold.

Abbreviations: WW, homozygous wild-type genotype; WV, heterozygous genotype; VV, homozygous variant genotype; Dom, dominant model.

aEvent: recurrence and/or death.

bAdjusted for age, gender, education level, BMI, smoking status, drinking status, chemotherapy, tumor position, tumor differentiation, tumor stage, where appropriate.

Effects of chemotherapy on patient outcome by pre-miRNA SNPs

Because both rs6505162 and rs4919510 conferred significantly altered risk of recurrence-free survival in patients receiving chemotherapy but not in those without chemotherapy, we sought to evaluate whether the effect of chemotherapy on patient outcome was also influenced by these SNPs. As showed in Table 4, patients receiving chemotherapy exhibited a better recurrence-free survival than those without chemotherapy (HR = 0.61, 95% CI = 0.37–1.00, P = 0.048). Interestingly, this effect remained at least borderline significant in patients with the low-risk genotypes of either SNPs (WW in rs6505162 or WV + VV in rs4919510). That is, the effect of chemotherapy on recurrence-free survival remained borderline significant in patients with the homozygous wild-type genotype of rs6505162 (HR = 0.52, 95% CI = 0.27–1.01, P = 0.052) and significant in patients with the variant-containing genotypes of rs4919510 (HR = 0.41, 95% CI = 0.23–0.73, P = 0.003). In comparison, no significant effect by chemotherapy on recurrence-free survival was observed in patients with the high-risk genotypes of both SNPs (P = 0.248 for rs6505162 and 0.329 for rs4919510).

Joint effects of rs6505162 and rs4919510 on CRC risk

Finally, we conducted joint analysis to assess the cumulative effect of the 2 significant SNPs on CRC recurrence-free survival. Using the patients with the low-risk genotype in both SNPs as reference group, patients with the high-risk genotype of both SNPs exhibited a 2.84-fold (95% CI = 1.50–5.37, P = 0.001) increase in risk of recurrence and/or death (Table 5). Consistently, this effect was more prominent in patients receiving chemotherapy (HR = 3.81, 95% CI = 1.87–7.78, P < 0.001) but not in those without chemotherapy (HR = 1.00, 95% CI = 0.10–10.24, P = 0.999). Kaplan–Meier curves showed a borderline significance in term of recurrence-free survival time in the joint effect analysis (log-rank P = 0.062, Fig. 2, left). Consistent with the Cox analysis, this effect was more evident in those receiving chemotherapy (log-rank P = 0.043; Fig. 2, middle) than those without chemotherapy (log-rank P = 0.936, Fig. 2, right).

Figure 2.

Kaplan–Meier recurrence-free survival curves of joint effects between rs6505162 and rs4919510 under a dominant model. WWa + WVb + VVb indicates the combination of the low-risk genotypes of both rs6505162 and rs4919510, WVa + VVa + WVb + VVb indicates the combination of the high-risk genotypes of rs6505162 and the low-risk genotypes of rs4919510, WWa + WWb indicates the combination of the low-risk genotypes of rs6505162 and the high-risk genotypes of rs4919510, and WVa + VVa + WWb indicates the combination of the high-risk genotypes of both rs6505162 and rs4919510.

Figure 2.

Kaplan–Meier recurrence-free survival curves of joint effects between rs6505162 and rs4919510 under a dominant model. WWa + WVb + VVb indicates the combination of the low-risk genotypes of both rs6505162 and rs4919510, WVa + VVa + WVb + VVb indicates the combination of the high-risk genotypes of rs6505162 and the low-risk genotypes of rs4919510, WWa + WWb indicates the combination of the low-risk genotypes of rs6505162 and the high-risk genotypes of rs4919510, and WVa + VVa + WWb indicates the combination of the high-risk genotypes of both rs6505162 and rs4919510.

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Table 5.

Joint effects of rs6505162 and rs4919510 on CRC recurrence-free survival

All patientsPatients with chemotherapyPatients without chemotherapy
GenotypeEvent/totalaHR (95% CI)bPEvent/totalHR (95% CI)PEvent/totalHR (95% CI)P value
rs6505162 rs4919510          
WW WV + VV 43/159 1 (reference)  32/118 1 (reference)  11/41 1 (reference)  
WV + VV WV + VV 43/126 1.81 (1.11–2.94) 0.017 33/96 1.85 (1.03–3.31) 0.040 10/30 2.09 (0.74–5.89) 0.164 
WW WW 30/82 1.84 (1.09–3.13) 0.024 26/69 2.34 (1.27–4.29) 0.006 4/13 0.92 (0.21–3.98) 0.908 
WV + VV WW 17/40 2.84 (1.50–5.37) 0.001 16/35 3.81 (1.87–7.78) <0.001 1/5 1.00 (0.10–10.24) 0.999 
All patientsPatients with chemotherapyPatients without chemotherapy
GenotypeEvent/totalaHR (95% CI)bPEvent/totalHR (95% CI)PEvent/totalHR (95% CI)P value
rs6505162 rs4919510          
WW WV + VV 43/159 1 (reference)  32/118 1 (reference)  11/41 1 (reference)  
WV + VV WV + VV 43/126 1.81 (1.11–2.94) 0.017 33/96 1.85 (1.03–3.31) 0.040 10/30 2.09 (0.74–5.89) 0.164 
WW WW 30/82 1.84 (1.09–3.13) 0.024 26/69 2.34 (1.27–4.29) 0.006 4/13 0.92 (0.21–3.98) 0.908 
WV + VV WW 17/40 2.84 (1.50–5.37) 0.001 16/35 3.81 (1.87–7.78) <0.001 1/5 1.00 (0.10–10.24) 0.999 

NOTE: The significant P values (≤0.05) are in bold.

Abbreviations: WW, homozygous wild-type genotype; WV, heterozygous genotype; VV, homozygous variant genotype.

aEvent: recurrence and/or death.

bAdjusted for age, gender, education level, BMI, smoking status, drinking status, chemotherapy, tumor position, tumor differentiation, tumor stage, where appropriate.

In this study, we evaluated the effects of SNPs in pre-miRNA on the clinical outcomes of a Chinese CRC population. We found that 2 SNPs, rs6505162 in pre-miR-423 and rs4919510 in pre-miR-608, were significantly associated with altered overall survival and recurrence-free survival of the patients. In addition, joint effects of the 2 SNPs on CRC outcome were observed, especially in patients treated with chemotherapy.

Genetic polymorphisms in pre-miRNA genomic regions have been associated with the risk and clinical outcomes of various solid malignancies such as cancers of breast, prostate, lung, bladder, esophagus, and kidney (18, 21, 31, 33, 35–37). In addition, a few studies also reported the implications of pre-miRNA SNPs in the risk of CRC (38, 39). However, it remains to be determined whether these SNPs affect the clinical outcome of CRC patients. The only previously reported epidemiologic study on miRNA-related SNPs was conducted by Lee and colleagues, who did not identify any significant effect between miRNA-related SNPs and CRC survival on a multivariate basis in a population of 420 Korean CRC patients (40). In another small study with 61 patients, Boni and colleagues found that SNPs in the primary precursor region (pri-miRNAs) of pri-miR-26a1 and pri-miR-100 were associated with the clinical response of metastatic colon cancer patients treated with 5-fluorouracil and irinotecan (29). In this study, we found that rs6505162 in pre-miR-423 and rs4919510 in pre-miR-608 were significantly associated with altered overall and recurrence-free survivals of Chinese CRC patients. Both SNPs have been evaluated in previous studies with mixed results. For instance, it has been reported that rs6505162 was associated with a significantly increased risk of ovarian cancer (41), contrary to another 3 studies showing that it conferred a reduced risk of esophageal cancer, and recurrence or survival of renal cell carcinoma and prostate cancer (37, 42, 43). The expression level of miR-423 has been reported to be significantly increased in breast cancer tissues compared with normal tissues (44). However, whether rs6505162 modulates the expression of miR-423 is not clear. The rs4919510 variant has been associated with an increased risk of recurrence in patients with renal cell carcinoma (42). Different alleles of this SNP has been predicted by in silico algorithms to exhibit differential capacities to bind to the potential target genes of miR-608 such as insulin receptor INSR and tumor suppressor TP53 (45), suggesting that the variant allele of rs4919510 could have different biological functions in relation to its various targets. It has been reported that miR-608 was downregulated in ovarian cancer (46), but whether rs4919510 has an effect on the expression of miR-608 remains unknown. The conflicting results of these 2 SNPs among different cancers may be accounted for by differences in study design, sample size, and populations, or biological functions specific to different cancer types. Additional studies with well-powered homogeneous study populations, together with functional characterizations, are warranted to provide additional definitive evidence.

In stratified analyses, we found that the effects of both rs6505162 and rs4919510 on recurrence-free survival were only evident in patients receiving chemotherapy (Table 3). A test for interaction revealed a borderline significant interaction effect between chemotherapy and rs4919510. The finding of this potential interaction is in accordance with the observation that the HRs of this SNP in the stratified analysis were opposite in patients with chemotherapy (HR = 0.48) and those without chemotherapy (HR = 1.57; Table 3). We did not identify a significant interaction between chemotherapy and rs6505162, which is consistent with the observation that for this SNP, both of the patients with and without chemotherapy had elevated risk of recurrence and/or death (HR = 1.58 and 1.96, respectively). Nonetheless, given the modest samples size of our study population, the interaction analysis may not be adequately powered. Therefore, the results are not definitive at this point and future studies with larger patient populations are needed to validate these findings. When we conducted the joint effect analysis by combining the low-risk genotypes of both SNPs as the reference group, we found those patients with the high-risk genotypes of both SNPs had a significantly increased risk of death and/or recurrence (P = 0.001). In accordance, this effect was more prominent in patients receiving chemotherapy (HR = 3.81, P < 0.001) than those without chemotherapy (HR = 1.00, P = 0.999) (Table 5). miRNAs have been extensively implicated in affecting the response to chemotherapy in patients with various cancers including CRC (23, 47–49). However, it remains to be assessed whether SNPs in miRNA gene regions influence CRC chemoresponse by affecting the expression and function of the host miRNAs. Our data in this study suggest that the 2 significant SNPs identified in this study may possibly modulate the effects of chemotherapy on CRC outcome individually and jointly. If validated, they have the potential to be incorporated with other prognostic factors to select high-risk patients that are more likely to benefit from the therapeutic benefits of chemotherapy.

Our study has several strengths. First, the patients were enrolled from Xi'an and adjacent area. This region is highly attractive in conducting population-based research because of the geographic stability with low mobility rate. Second, the patients analyzed in this study were highly homogenous, in that all the patients had adenocarcinoma and were surgically treated to remove the primary tumor. In addition, all chemotherapy treatments were started within 2 months of surgery and 83.4% of the 319 chemotherapy-treated patients received the same first-line adjuvant FOLFOX chemotherapy. The highly homogenous patient characteristics and treatments, as well as low rate of patient loss to follow-up, greatly reduced the confounding effects of the heterogeneous therapeutics modalities identified in most biomarker studies of cancer clinical outcome. Our study also has limitations. First, our study was restricted to Han Chinese and whether the findings can be generalized to other ethnic groups needs further evaluations. In addition, we could not rule out the possibility of chance findings in our study due to the relatively short follow-up time (median follow-up time, 23.7 months) and modest sample size. The enrollment of this study is still ongoing with a low rate of patient loss, which will further enable us to obtain higher statistical power for in-depth analyses. Another interesting observation in this study was that the HR was stronger for overall survival than recurrence-free survival for rs6505162. This could be explained by the possibility that the variant allele of this SNP conferred a higher risk of dying of primary cancer or its sequelae. However, the lack of complete data on sequelae in this patient population prevented us from further analyzing the patient outcome based on different causes of death.

In conclusion, our data showed for the first time that polymorphisms in pre-miRNAs were significantly associated with CRC clinical outcomes in a Chinese population, especially in patients receiving chemotherapy. Further validations of these findings are needed using independent populations and functional characterizations.

No potential conflicts of interest were disclosed.

The authors thank Dr. Marie Dennis and Ms. Heidi Swan (Division of Population Science, Department of Medical Oncology, Thomas Jefferson University) for scientific editing.

This work was supported by a start-up grant from Thomas Jefferson University, grant 2009CB521704 from The National Basic Research Program of China, and grant 30872927 from National Natural Science Foundation of China.

The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked advertisement in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.

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Supplementary data