ORIGINAL RESEARCH article

Front. Oncol., 09 August 2022

Sec. Cancer Genetics

Volume 12 - 2022 | https://doi.org/10.3389/fonc.2022.960269

Association between microRNA 671 polymorphisms and the susceptibility to soft tissue sarcomas in a Chinese population

  • 1. Department of Bone and Soft Tissue Cancer, The Affiliated Cancer Hospital of Zhengzhou University, Henan Cancer Hospital, Zhengzhou, China

  • 2. College of Public Health, Zhengzhou University, Zhengzhou, China

  • 3. Department of Biostatistics and Epidemiology, School of Public Health, Shenzhen University Health Science Center, Shenzhen, China

  • 4. Department of Orthopaedic Oncology Surgery, Beijing Jishuitan Hospital, Peking University, Beijing, China

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Abstract

This study evaluated the association between the microRNA (miRNA) gene polymorphisms and the susceptibility to soft tissue sarcomas (STSs). In this case–control study, DNA was extracted from leukocytes in peripheral blood, which was collected from 169 STSs patients and 170 healthy controls. Three SNPs for miR-210, five SNPs for miR-206, two SNPs for miR-485, two SNPs for miR-34b, two SNPs for miR-671, and three SNPs for miR-381 were investigated and genotyped using a Sequenom Mass ARRAY matrix-assisted laser desorption/ionization-time of flight mass spectrometry platform. Unconditional logistic regression analysis was used to analyze the association between miRNA gene polymorphisms and the susceptibility to STSs. The results showed that miR-671 rs1870238 GC + CC (OR = 1.963, 95% CI = 1.258–3.064, P = 0.003) and miR-671 rs2446065 CG + GG (OR =1.838, 95% CI = 1.178–2.868, P = 0.007) may be genetic risk factors for STSs after adjustment for age and smoking. Therefore, this study suggests that individuals carrying the GC + CC genotype for miR-671 rs1870238 or the CG + GG genotype for miR-671 rs2446065 are susceptible to STSs.

Introduction

Soft tissue sarcomas (STSs) are a highly heterogeneous group of malignant tumors arising from mesenchymal tissues. Histologically speaking, they are composed of many subtypes with ambiguous clinical and histopathological features, which lead to great challenges in their diagnosis and therapy (1). One important clinical challenge is the lack of useful biomarkers. The identification of biomarkers that can be used for primary prevention or to detect tumor responses to chemotherapy or radiotherapy may provide more effective clinical management approaches for clinicians. A growing amount of evidence suggests that miRNA dysregulation in STSs plays an important role in its progression and prognosis (2). The evidence of microRNA in STSs promotes the potential application of microRNA as a clinical biomarker, giving us one potential solution for preventing STSs.

MiRNAs are single-stranded non-coding RNAs that contain 18–25 nucleotides (3). MiRNAs can mediate gene expression by binding to target genes and inhibiting translation and protein synthesis at the post-transcriptional level (4). Most miRNAs are found within keygenomic regions thought to be involved in carcinogenesis. Many miRNAs have also been abnormally expressed in STSs, and the knowledge of miRNA expression patterns in STSs could identify specific signatures for the histological subtypes (5, 6). Furthermore, the different profiling of miRNA expression in tumor tissue of STSs compared with adjacent tissue may provide a clue for the diagnosis of STSs (79). Many studies recently have demonstrated that the altered expression of miRNAs is associated with the occurrence of numerous diseases, which may have a significant possibility of being used as biomarkers and targets of treatment for human illnesses. Structural genetic alterations, including chromosomal abnormalities (10), mutations (11), and single-nucleotide polymorphisms (SNPs), frequently occur in cancers and can affect miRNA expression (12).

SNPs represent an alternate nucleotide that occurs on average every 100 to 1,000 base pairs in vertebrates. Several studies have shown that SNP provided an approach for identifying possible genetic loci associated with diseases, including cancer susceptibility (13). The SNPs in miRNA genes (miRNA-SNP) may work in three possible ways: altering transcription of the primary miRNA transcript; the processing of the pri-miRNA and pre-miRNA; and through their effects on the modulation of miRNA–mRNA interactions (14). Furthermore, a single nucleotide change in a primary miRNA can greatly influence its stability and maturation or alter its activity. Therefore, miRNA-SNPs are associated with many types of cancer (15), including chronic lymphocytic leukemia, thyroid, gastric, and lung cancer. However, the association between polymorphism in the miRNA gene and the risk of STSs has not been fully studied.

Therefore, we first screened the miRNAs associated with the initiation and development of STSs in the literature, including miR-206 (16), miR-671, miR-381 (17), miR-210, miR-485 (18), and miR-34b (19). Then, we detected three SNPs (rs10902173, rs12364149, rs7935908) in miR-210, five SNPs (rs1537670, rs2397080, rs16882131, rs17578851, rs6920648) in miR-206, two SNPs (rs4143957, rs12886869) in miR-485, two SNPs (rs2187473, rs4938723) in miR-34b, two SNPs (rs1870238, rs2446065) in miR-671, and three SNPs (rs2281610, rs7149890, rs34038694) in miR-381, and investigated the susceptible genotype of STSs.

Materials and methods

Samples

A total of 169 patients with histologically diagnosed STSs were recruited from the Henan Province Cancer Hospital in Henan Province, China. There were 33 synovial sarcomas, 32 undifferentiated pleomorphic sarcomas, 31 fibrosarcomas, 21 liposarcomas, 16 leiomyosarcomas, 11 rhabdomyosarcomas, eight Ewing sarcomas of soft tissues, five malignant peripheral nerve sheath tumors, five spindle cell sarcomas, three alveolar soft part sarcomas, three angiosarcomas, and one clear cell sarcoma. Besides, 170 population-based controls were enrolled during the same period of time as the individuals for physical examinations without a previous history of cancer. Participants who smoked no less than one cigarette per day or those who smoked for more than half a year were categorized as “smokers”, and those who drank more than two times a week and who drank continuously for more than 6 months were categorized as “drinkers”. The standard of the criteria of “smoking” or “drinking”, the method of questionnaire and peripheral blood collection were all described in more detail in our previous study (20). The study was approved by the ethical committee of Zhengzhou University, and all the participating patients signed informed consent.

Genomic DNA sample preparation from whole human blood

The extraction and evaluation of genomic DNA from leukocytes in peripheral blood were described in our previous study (20). Genomic DNA was extracted from whole blood, using the Blood DNA Kit (Bioteke Corporation, Beijing, China) according to the protocol of the manufacturer, and stored at −80 °C until use. The DNA purity and concentration were determined by spectrophotometric measurement of absorbance at 260 and 280 nm using a Thermo Scientific NanoDrop™ 8000 UV–Vis Spectrophotometer (Thermo Fisher Scientific Inc., Wilmington, DE, USA).

Genotyping of polymorphic loci

Firstly, the miRNAs associated with STSs were screened in the literature, including miR-206 (16), miR-671, miR-381 (17), miR-210, miR-485 (18), and miR-34b (19). Next, we screened the functional region SNPs in the gene region, promoter proxy (TSS200), exon (missense and synonymous), and 3’ UTR region through the NCBI dbSNP database. Furthermore, we screened the validated and hot SNPs through the GWAS Catalog (https://www.ebi.ac.uk/gwas/), GWAS Atlas (https://atlas.ctglab.nl/), and GWAS Central (https://www.gwascentral.org/). Then identified with a cut-off value of r2 = 0.8 and a minor allele frequency greater than 0.05 in the Chinese population by 1,000 Genomes. Finally, 21 SNPs, including functional region SNPs and validated and hot SNPs, were selected for genotyping. Because the detection frequency of the rs11606481 genotype was different from the CHB&CHS 1,000 Genomes database and the detection rate of rs4467881, rs11246190, and rs28524679 was less than 95%, we further analyzed the other 17 loci after removing the four loci.

The SNPs were genotyped using a SequenomMassARRAY® matrix-assisted laser desorption/ionization-time of flight (MALDI-TOF) mass spectrometry platform (Sequenom Inc., San Diego, CA, USA). The genotyping experiment mainly included a PCR amplification reaction and a single-base extension reaction. Among these, PCR amplification is to obtain gene fragments containing SNP loci. The 5 µl reaction system was conducted, including 4 µl PCR master mix and 1 µl DNA (20 ng/µl). In the PCR amplification conditions, an initial pre-denaturation was performed at 94°C for 5 min, followed by 45 cycles at 94°C for 20 s, 56°C for 30 s, and 72°C for 60 s, and then a final exposure to 72°C for 3 min. In the single-base extended, 9 μl PCR reaction systems were conducted, including 2 µl EXTEND mix (AgenaBiocience, Inc.), and 7 µl SAP (AgenaBiocience, Inc.) + PCR reaction (product of the PCR amplification). In the single-base extended PCR conditions, an initial pre-denaturation was performed at 94°C for 30 s, followed by 40 cycles at 94 °C for 5 s, 52 °C for 5 s and 80°C for 5 s, 5 cycles at 52°C for 5 s, 80°C for 5 s, and then a final exposure to 72°C for 3 min.

The primers for the PCR reaction were designed using Assay Designer 3.1 software and synthesized by a biotechnology company. Table 1 demonstrates the primer sequences of encoding miRNA genes polymorphic loci, and the genotype plots of seventeen SNPs are shown in Figure 1.

Table 1

PolymorphismPrimers sequences
miR-210rs10902173Forward:5’-ACGTTGGATGTCACAGGCACCTTTTCTCAG-3’
Reverse:5’-ACGTTGGATGAGCCTGGGTATTAGGATGTG-3’
miR-210 rs12364149Forward:5’-ACGTTGGATGTGATCCTCTGGGCACCTTC-3’
Reverse:5’-ACGTTGGATGTTGCTGACCCCTTGACCCTT-3’
miR-210 rs7935908Forward:5’-ACGTTGGATGATCCTCCAGCAGCCTGTCT-3’
Reverse:5’-ACGTTGGATGGACCCGGTCCTGATTTTAAC-3’
miR-206 rs1537670Forward:5’-ACGTTGGATGCCTTCCTCTGGTCATATTAC-3’
Reverse:5’-ACGTTGGATGACGCTTGCAATACACATGGC-3’
miR-206rs2397080Forward:5’-ACGTTGGATGAATCTTTCGGGCTGACCTTG-3’
Reverse:5’-ACGTTGGATGAGTGTTTTCAGAGCAGAAGC-3’
miR-206 rs16882131Forward:5’-ACGTTGGATGGCTGCACAAGAATAAGCCAG-3’
Reverse:5’-ACGTTGGATGTGCTTGGGACCAAATCCTTC-3’
miR-206 rs17578851Forward:5’-ACGTTGGATGAAGTGGAAAGGACAGCAGAG-3’
Reverse:5’-ACGTTGGATGGTGAGTGAGGTTCAGGAAAC-3’
miR-206 rs6920648Forward:5’-ACGTTGGATGAGCAGAAGCCCGACAAAAGG-3’
Reverse:5’-ACGTTGGATGTTTGGGTGCTTGTTGATGGG-3’
miR-485rs4143957Forward:5’-ACGTTGGATGTGTGACAAGTGGCTTCCCTC-3’
Reverse:5’-ACGTTGGATGCCCTGGAGTTGAAATTGTGG-3’
miR-485 rs12886869Forward:5’-ACGTTGGATGAGGTGCCCCTAGAGAAACTG-3’
Reverse:5’-ACGTTGGATGATAGAGAATCTACCCAGGGC-3’
miR-34b rs2187473Forward:5’-ACGTTGGATGGGTTTCCTCGCACTTGCAG-3’
Reverse:5’-ACGTTGGATGGAGAGAAGATGCCTGAGAAG-3’
miR-34b rs4938723Forward:5’-ACGTTGGATGTAGAAGGGAGGTCCTCAATG-3’
Reverse:5’-ACGTTGGATGGGATCTACTCAAGTCTCACC-3’
miR-671 rs1870238Forward:5’-ACGTTGGATGATCACTCCTCTGCCACCTTG-3’
Reverse:5’-ACGTTGGATGCCCTCCCCAGTTTCCAATG-3’
miR-671 rs2446065Forward:5’-ACGTTGGATGGGTGGAGTGTAGATGAAAAC-3’
Reverse:5’-ACGTTGGATGAGCTCAACAGCCTTTCTCTC-3’
miR-381 rs2281610Forward:5’-ACGTTGGATGTCCTAGAGATGACCAGATCC-3’
Reverse:5’-ACGTTGGATGTCCTTTGTCGCTAGAGTCTG-3’
miR-381 rs7149890Forward:5’-ACGTTGGATGTGGAGGTGGTATTGACCTTG-3’
Reverse:5’-ACGTTGGATGGAGCTGGATCATGAACACCC-3’
miR-381 rs34038694Forward:5’-ACGTTGGATGCCATAGGTCAGCTCTCCATC-3’
Reverse:5’-ACGTTGGATGGGAAAAGAGGCTGATTCTGG-3’

Primers sequences for miRNA gene polymorphism.

Forward represents the upstream primer and reverse represents the downstream primer.

Figure 1

Figure 1

The genotype plots of miRNA polymorphisms. The X and Y axes represent the kurtosis of genotypes, respectively. The red square represents no call; the blue upright triangle, the green square, and the orange inverted triangle represent three different genotypes, respectively. In a good clustering plot, the two homozygous types are close to the horizontal axis and the vertical axis, while the heterozygous types are between them, showing a 45-degree angle. Clustering performance shows the evaluation of clustering efficiency, which ranges from 0 to 1.

Statistical analysis

SPSS 21.0 software was used to analyze all the data (SPSS Inc., Chicago, IL, USA). The distribution of population characteristics and genotypes between two groups was analyzed using a chi-square test or t-test. A logistic regression model was used to calculate adjusted odds ratios (OR) and 95% confidence intervals (CI). The level of statistical significance was set at two-sided α = 0.05.

Results

General characteristics of subjects

The characteristics of the study population are presented in Table 2. In total, 170 controls and 169 cases were included in these analyses. The ages ranged from 18 to 85 years in cases, and the age in the cases (48.18 ± 15.16) was significantly younger than that in the controls (51.59 ± 11.08) (P= 0.019). The proportion of smokers in cases (16.6%) was less than that in controls (25.3%) (P = 0.048). The proportion of drinking status in cases (8.9%) was less than that in the controls (17.6%) (P = 0.017). There were no significant differences in gender between the two groups (P = 0.960).

Table 2

CharacteristicsControls (n=170)Cases (n=169)χ2/tP
Gender
 Male91 (53.5)90 (53.3)0.0030.960
 Female79 (46.5)79 (46.7)
Age (years)51.59±11.0848.18±15.162.3670.019
Smoking status
 No127 (74.7)141 (83.4)3.8970.048
 Yes43 (25.3)28 (16.6)
Drinking status
 No140 (82.4)154 (91.1)5.6640.017
 Yes30 (17.6)15 (8.9)

General Characteristics of theSubjects.

Bold values, X2:Chi-square test.

Genotypic distribution of miRNA gene

The results of the Hardy–Weinberg balance shown in Table 3 demonstrate that the genotype distribution for each genetic polymorphism locus did not deviate (P >0.05), and the allele frequencies were similar to those of Asians in the International Human Genome HapMap Project, suggesting that the controls had representativeness. As shown in Table 4, there was a statistically significant difference in miR-206 rs17578851, miR-671 rs1870238, and miR-671 rs2446065 between the STSs and controls (P <0.05). Besides, there were no significant differences in other genotypic frequencies between these two groups.

Table 3

GeneSNPgenotypenAllele Frequencyχ2/P
miR-210rs10902173TT22T 0.3520.126/0.723
TC75C 0.648
CC72
rs12364149CC113C 0.8120.240/0.624
CG50G 0.188
GG7
rs7935908GG25G 0.3492.221/0.136
GA68A 0.651
AA76
miR-206rs1537670AA157A 0.9650.229/0.632
AG12G 0.036
GG0
rs2397080TT103T 0.7720.950/0.330
TC55C 0.228
CC11
rs16882131TT9T 0.2150.280/0.597
TC55C 0.785
CC106
rs17578851CC116C 0.8260.004/0.949
CT49T 0.174
TT5
rs6920648AA149A 0.9380.737/0.391
AG21G 0.062
GG0
miR-485rs4143957CC96C 0.7590.104/0.748
CT63T 0.241
TT9
rs12886869GG101G 0.7740.099/0.753
GA61A 0.226
AA8
miR-34brs2187473CC111C 0.8213.272/0.070
CT57T 0.179
TT2
rs4938723TT78T 0.6621.481/0.224
TC69C 0.338
CC23
miR-671rs1870238GG95G 0.7470.003/0.960
GC64C 0.253
CC11
rs2446065CC92C 0.7320.103/0.748
CG65G 0.268
GG13
miR-381rs2281610CC4C 0.1670.137/0.711
CT48T 0.833
TT116
rs7149890TT`16T 0.2880.492/0.483
TC66C 0.712
CC88
rs34038694AA86A 0.7210.749/0.387
AG73G 0.279
GG11

Distribution of MiRNA Genotypic Frequencies inthecontrolgroup.

Table 4

PolymorphismsControls (n=170)Cases (n=169)X2P
miR-210rs10902173
 TT22 (13.0)12 (7.1)3.2800.194
 TC75 (44.4)81 (47.9)
 CC72 (42.6)76 (45.0)
 T119 (35.2)105 (31.1)1.3090.253
 C219 (64.8)233 (68.9)
miR-210rs12364149
 CC113 (66.5)113 (69.8)4.3510.114
 CG50 (29.4)48 (29.6)
 GG7 (4.1)1 (0.6)
 C276 (81.2)274 (84.6)1.3420.247
 G64 (18.8)50 (15.4)
miR-210rs7935908
 GG25 (14.8)15 (9.0)2.6410.267
 GA68 (40.2)71 (42.8)
 AA76 (45.0)80 (48.2)
 G118 (34.9)101 (30.4)1.5340.215
 A220 (65.1)231 (69.6)
miR-206 rs1537670
 AA157 (92.9)150 (90.9)0.4450.505
 AG12 (7.1)15 (9.1)
 GG0 (0.0)0 (0.0)
 A326 (96.4)315 (95.5)0.4260.514
 G12 (3.6)15 (4.5)
miR-206rs2397080
 TT103 (60.9)97 (58.4)0.5710.752
 TC55 (32.5)60 (36.1)
 CC11 (6.5)9 (5.4)
 T261 (77.2)254 (76.5)0.0480.827
 C77 (22.8)78 (23.5)
miR-206rs16882131
 TT9 (5.3)5 (3.1)2.5100.285
 TC55 (32.4)44 (27.0)
 CC106 (62.4)114 (69.9)
 T73 (21.5)54 (16.6)2.5960.107
 C267 (78.5)272 (83.4)
miR-206rs17578851
 CC116 (68.2)126 (76.8)4.6480.098
 CT49 (28.8)37 (22.6)
 TT5 (2.9)1 (0.6)
 C281 (82.6)289 (88.1)3.9800.046
 T59 (17.4)39 (11.9)
miR-206rs6920648
 AA149 (87.6)140 (85.4)1.2640.532
 AG21 (12.4)23 (14.0)
 GG0 (0.0)1 (0.6)
 A319 (93.8)303 (92.4)0.5440.461
 G21 (6.2)25 (7.6)
miR-485rs4143957
 CC96 (57.1)87 (52.7)0.8430.656
 CT63 (37.5)70 (42.4)
 TT9 (5.4)8 (4.8)
 C255 (75.9)244 (73.9)0.3380.561
 T81 (24.1)86 (26.1)
miR-485rs12886869
 GG101 (59.4)93 (56.7)0.2540.881
 GA61 (35.9)63 (38.4)
 AA8(4.7)8 (4.9)
 G263 (77.354)249 (75.9)0.1930.660
 A77 (22.6)79 (24.1)
miR-34b rs2187473
 CC111 (65.3)101 (62.7)3.1530.207
 CT57 (33.5)53 (32.9)
 TT2 (1.2)7 (4.3)
 C279 (82.1)255 (79.2)0.8710.351
 T61 (17.9)67 (20.8)
miR-34b rs4938723
 TT78 (45.9)77 (47.0)1.6470.439
 TC69 (40.6)72 (43.9)
 CC23 (13.5)15 (9.1)
 T225 (66.2)226 (68.9)0.5660.452
 C115 (33.8)102 (31.1)
miR-671rs1870238
 GG95 (55.9)65 (39.6)9.0250.011
 GC64 (37.6)82 (50.0)
 CC11 (6.5)17 (10.4)
 G254 (74.7)212 (64.6)8.0280.005
 C86 (25.3)116 (35.4)
miR-671rs2446065
 CC92 (54.1)65 (39.6)7.0980.029
 CG65 (38.2)81 (49.4)
 GG13 (7.6)18 (11.0)
 C249 (73.2)211 (64.3)6.1760.013
 G91 (26.8)117(35.7)
miR-381rs2281610
 CC4 (2.4)7 (4.3)0.9870.610
 CT48 (28.6)44 (27.0)
 TT116 (69.0)112 (68.7)
 C56 (16.7)58 (17.8)0.1470.702
 T280 (83.3)268 (82.2)
miR-381rs7149890
 TT`16 (9.4)8 (4.9)3.4760.176
 TC66 (38.8)75 (46.0)
 CC88 (51.8)80 (49.1)
 T98 (28.8)91 (27.9)0.0680.795
 C242 (71.182)235 (72.1)
miR-381rs34038694
 AA86 (50.6)80 (49.1)0.2990.861
 AG73 (42.9)70 (42.9)
 GG11 (6.5)13 (8.0)
 A245 (72.1)230 (70.6)0.1850.667
 G95 (27.9)96 (29.4)

The distribution of miRNA genetic polymorphism between the control group and the case group.

Bold values, X2: Chi-square test.

miRNA genotype and risk of soft tissue sarcoma

The polymorphisms for miRNA and their ORs and 95% CI in STSs are shown in Table 5. Regarded wild homozygous as the reference group, miR-671 rs1870238GC+CC had a 1.929-fold (OR = 1.929, 95% CI = 1.248–2.982, P = 0.003) increased risk of STSs, and a 1.963-fold (OR =1.963, 95% CI = 1.258–3.064, P = 0.003) increased risk of STSs after adjusting for age, smoking status, and drinking status. The results also showed that miR-671 rs2446065 CG+GG had a 1.796-fold (OR = 1.796, 95% CI = 1.163–2.774, P = 0.008) increased risk of STSs and a 1.838-fold (OR = 1.838, 95% CI = 1.178–2.868, P = 0.007) increased risk of STSs after adjusting for age, smoking status, and drinking status. Moreover, there was no association between other locus polymorphisms for miRNA and the risk of STSs.

Table 5

PolymorphismsControls (n=170)Cases (n=169)OR (95%CI)#P#OR (95%CI)*P*
miR-210rs10902173
 TT22 (13.0)12 (7.1)RefRef
 TC75 (44.4)81 (47.9)1.980 (0.916-4.278)0.0821.929 (0.881-4.224)0.100
 CC72 (42.6)76 (45.0)1.935 (0.893-4.195)0.0942.015 (0.916-4.430)0.081
TC+CC147 (87.0)157 (92.9)1.958 (0.936-4.098)0.0751.970 (0.930-4.176)0.077
miR-210rs12364149
 CC113 (66.5)113 (69.8)RefRef
 CG50 (29.4)48 (29.6)0.960 (0.597-1.542)0.8660.921 (0.566-1.497)0.739
 GG7 (4.1)1 (0.6)0.143 (0.017-1.180)0.0711.151 (0.018-1.265)0.081
 CG+GG57 (33.5)49 (30.2)0.860 (0.541-1.365)0.5210.829 (0.516-1.331)0.437
miR-210rs7935908
 GG25 (14.8)15 (9.0)RefRef
 GA68 (40.2)71 (42.8)1.740 (0.846-3.580)0.1321.683 (0.808-3.508)0.165
 AA76 (45.0)80 (48.2)1.754 (0.860-3.579)0.1221.860 (0.897-3.855)0.095
 GA+AA144 (85.2)151 (91.0)1.748 (0.886-3.448)0.1071.772 (0.887-3.543)0.105
miR-206 rs1537670
 AA157 (92.9)150 (90.9)RefRef
 AG12 (7.1)15 (9.1)1.308 (0.593-2.887)0.5061.376 (0.604-3.137)0.447
 GG0 (0.0)0 (0.0)----
 AG+GG12 (7.1)15 (9.1)1.308 (0.593-2.887)0.5061.376 (0.604-3.137)0.447
miR-206rs2397080
 TT103 (60.9)97 (58.4)RefRef
 TC55 (32.5)60 (36.1)1.158 (0.732-1.833)0.5301.042 (0.649-1.672)0.864
 CC11 (6.5)9 (5.4)0.869 (0.345-2.188)0.7650.797 (0.310-2.051)0.638
 TC+CC66 (39.1)69 (41.6)1.110 (0.717-1.718)0.6391.001 (0.638-1.570)0.996
miR-206rs16882131
 TT9 (5.3)5 (3.1)RefRef
 TC55 (32.4)44 (27.0)1.440 (0.450-4.607)0.5391.570 (0.478-5.156)0.458
 CC106 (62.4)114 (69.9)1.936 (0.629-5.961)0.2502.065 (0.653-6.529)0.217
 TC+CC161 (94.7)158 (96.9)1.766 (0.579-5.387)0.3171.896 (0.605-5.936)0.272
miR-206rs17578851
 CC116 (68.2)126 (76.8)RefRef
 CT49 (28.8)37 (22.6)0.695 (0.423-1.141)0.1510.715 (0.431-1.186)0.193
 TT5 (2.9)1 (0.6)0.184 (0.021-1.599)0.1250.131 (0.015-1.168)0.069
 CT+TT54 (31.8)38 (23.2)0.648 (0.399-1.053)0.0800.649 (0.396-1.065)0.087
miR-206rs6920648
 AA149 (87.6)140 (85.4)RefRef
 AG21 (12.4)23 (14.0)1.166 (0.618-2.200)0.6361.087 (0.567-2.083)0802
 GG0 (0.0)1 (0.6)----
 AG+GG21 (12.4)24 (14.6)1.216 (0.648-2.283)0.5421.125 (0.590-2.145)0.721
miR-485rs4143957
 CC96 (57.1)87 (52.7)RefRef
 CT63 (37.5)70 (42.4)1.226 (0.784-1.918)0.3721.105 (0.698-1.748)0.671
 TT9 (5.4)8 (4.8)0.981 (0.362-2.654)0.9701.065 (0.384-2.957)0.904
 CT+TT72 (42.9)78 (47.3)1.195 (0.776-1.842)0.4181.100 (0.707-1.711)0.673
miR-485rs12886869
 GG101 (59.4)93 (56.7)RefRef
 GA61 (35.9)63 (38.4)1.122 (0.715-1.761)0.6181.005 (0.632-1.598)0.982
 AA8 (4.7)8 (4.9)1.086 (0.392-3.011)0.8741.183 (0.414-3.380)0.753
 GA+AA69 (40.6)71 (43.3)1.118 (0.723-1.726)0.6171.024 (0.656-1.601)0.916
miR-34b rs2187473
 CC111 (65.3)101 (62.7)RefRef
 CT57 (33.5)53 (32.9)1.022 (0.644-1.620)0.9271.005 (0.627-1.612)0.983
 TT2 (1.2)7 (4.3)3.847 (0.781-18.946)0.0983.828 (0.761-19.254)0.103
 CT+TT59 (34.7)60 (37.3)1.118 (0.713-1.751)0.6271.103 (0.697-1.747)0.675
miR-34b rs4938723
 TT78 (45.9)77 (47.0)RefRef
 TC69 (40.6)72 (43.9)1.057 (0.670-1.668)0.8120.965 (0.604-1.541)0.880
 CC23 (13.5)15 (9.1)0.661 (0.321-1.361)0.2610.649 (0.310-1.361)0.252
 TC+CC92 (54.1)87 (53.0)0.958 (0.623-1.473)0.8450.887 (0.570-1.380)0.595
miR-671rs1870238
 GG95 (55.9)65 (39.6)RefRef
 GC64 (37.6)82 (50.0)1.873 (1.189-2.950)0.0071.915 (1.203-3.049)0.006
 CC11 (6.5)17 (10.4)2.259 (0.993-5.136)0.0522.232 (0.971-5.135)0.059
 GC+CC75 (44.1)99 (60.4)1.929 (1.248-2.982)0.0031.963 (1.258-3.064)0.003
miR-671rs2446065
 CC92 (54.1)65 (39.6)RefRef
 CG65 (38.2)81 (49.4)1.764 (1.119-2.781)0.0151.813 (1.137-2.889)0.012
 GG13 (7.6)18 (11.0)1.960 (0.898-4.279)0.0911.960 (0.887-4.333)0.096
 CG+GG78 (45.9)99 (60.4)1.796 (1.163-2.774)0.0081.838 (1.178-2.868)0.007
miR-381rs2281610
 CC4 (2.4)7 (4.3)RefRef
 CT48 (28.6)44 (27.0)0.524 (0.144-1.912)0.3280.535 (0.142-2.010)0.354
 TT116 (69.0)112 (68.7)0.552 (0.157-1.937)0.3530.629 (0.174-2.275)0.480
 CT+TT164 (97.6)156 (95.7)0.544 (0.156-1.893)0.3380.600 (0.168-2.147)0.432
miR-381rs7149890
 TT`16 (9.4)8 (4.9)RefRef
 TC66 (38.8)75 (46.0)2.273 (0.914-5.651)0.0772.274 (0.902-5.735)0.082
 CC88 (51.8)80 (49.1)1.818 (0.738-4.477)0.1932.070 (0.828-5.179)0.120
 TC+CC154 (90.6)155 (95.1)2.013 (0.837-4.841)0.1182.163 (0.887-5.274)0.090
miR-381rs34038694
 AA86 (50.6)80 (49.1)RefRef
 AG73 (42.9)70 (42.9)1.031 (0.659-1.612)0.8940.887 (0.557-1.412)0.612
 GG11 (6.5)13 (8.0)1.270 (0.538-2.998)0.5851.297 (0.538-3.128)0.562
 AG+GG84 (49.4)83 (50.9)1.062 (0.691-1.633)0.7830.939 (0.602-1.464)0.781

The miRNA genetic polymorphisms and the risk of soft tissue sarcoma.

P#A logistic regression model was used to analyze the association between polymorphism in miRNA with soft tissue sarcoma risk.

P*A logistic regression model was used to analyze the association between polymorphism in miRNA with soft tissue sarcoma riskadjusted for age,smokingstatus, and drinkingstatus.

Ref: The reference group when comparing.

Bold values, X2:Chi-square test. OR, odds ratio; CI, confidence interval.

Discussion

This hospital-based case–control study showed a significant association between the miR-671 polymorphism (rs1870238 and rs2446065) and STS risk in humans from Henan Province, China. Individuals carrying the heterozygous GC genotype or with the homozygous CC genotype in rs1870238 had a 1.929-fold increased risk of developing STSs compared with individuals with the GG wild-type. Individuals carrying the heterozygous CG genotype or with the homozygous GG genotype in rs1870238 had a 1.796-fold increased risk of developing STSs compared with individuals with the CC wild-type.

STSs include more than 70 histological subtypes that may occur at any age. Among these different heterogeneous subtypes of STSs, aggressive high-grade malignancies often arise in adolescents and young adults, such as rhabdomyosarcoma, synovial sarcoma, Ewing sarcoma, and osteosarcoma (21).In this study, the age of the cases ranged from 18 to 85 years old, and the age of the cases (48.18 ± 15.16) was lower than the median diagnosis age of STSs, which is generally 60 years. We speculated that the difference between the actual mean age in the cases and the mean age at diagnosis of STSs may be due to the Berkson bias and lots of histological subtypes. Recently, a study also indicated that the peak or average age of STS onset varies with different histological subtypes. For example, Aaron et al. (2021) reported that synovial sarcoma presents at a younger mean age of 39 years at diagnosis (22). This study case had numerous synovial sarcomas, which may decrease the age of cases. Besides, a case–control study indicated that smoking and alcohol were potential risk factors for sarcomas (23). Therefore, we further analyzed the association between polymorphism in the miRNA gene and the susceptibility of STSs adjusted for age, smoking status, and drinking status and found that miR-671rs1870238GC+CC and miR-671 rs2446065 CG+GG may be risk factors for STSs (OR = 1.963, 95% CI = 1.258–3.064, P = 0.003 and OR = 1.838, 95% CI = 1.178–2.868, P = 0.007, respectively).

MiR-671, located at 7q36.1, serves as a suppressor or an oncogene in different tumors and plays a vital role in the biological process of many types of cancer, particularly in osteosarcoma (24), breast cancer (25), and non-small cell lung cancer (26). MiR-671 could directly target microfibril-associated glycoproteins (26), tripartite motif 14 (27), forkhead box protein P2 (28) and M1 (25), TNF receptor-associated factor 3 (29), and cyclin D2 (30), involved in the proliferation, migration, and invasion of tumor cells. Besides, miR-671 may also regulate the PI3k/Akt signaling (31) and the Wnt signaling pathways (32) that are closely related to the occurrence and development of cancers. miR-671 plays a crucial role in the oncogenesis of tumors by silencing SMARCB1 which manifests frequently with a loss-of-function mutation in malignant neoplasms (33). Furthermore, in previous studies, overexpression of miR-671 was found in epithelioid sarcomas (34), malignant peripheral nerve sheath tumors, and synovial sarcomas (17), implicating it as a promising therapeutic target for sarcomas. However, the association between genetic polymorphisms of miR-671 and the risk of STSs is ill-defined. In this study, we first identified that rs1870238 and rs2446065 of miR-671 were found to be associated with STS risk, which raised the most concerns and warranted further study. This evidence promotes the potential application of miR-671 polymorphisms as a clinical biomarker, giving us new hope for the early prevention and diagnosis of STSs.

MiR-206, located at 6p12.2, belongs to one of the muscle-specific miRNAs. MiR-206 could suppress myogenic differentiation and muscle cell proliferation through inhibition of DNA synthesis  (35). Therefore, an inhibitory effect on cell growth can be observed following a forced expression of miR-206 in rhabdomyosarcoma, which is one kind of myogenic sarcoma, both in vitro and in vivo (36, 37). MiR-206, highly expressed in normal skeletal muscle, was downregulated in leiomyosarcoma, normal smooth muscle (38), and rhabdomyosarcoma (37, 39). In particular, lowmiR-206 expression correlated with poor overall survival in metastatic embryonal rhabdomyosarcoma and alveolar rhabdomyosarcoma cases without PAX3/7–FOXO1 fusion genes (40). However, MiR-206 was found to be overexpressed in epithelioid sarcomas (34) and sera of rhabdomyosarcoma patients (41). One possible reason for the controversial result is that the reference person or tissue was different in the above studies. Muscle-specific miRNA levels were usually lower in rhabdomyosarcoma compared with skeletal muscle but generally higher than in other normal tissues. A study provided evidence that miR-206 rs6920648 (HR = 0.77 (95% CI = 0.61–0.97, p-value = 0.02) was associated with breast cancer survival (42). But there is no study on the association of miR-206 gene polymorphisms with STS risk. In this study, the results showed the loci distribution of miR-206 rs17578851 between the cases and controls was a significant difference (P <0.05) through the chi-square test. However, there was no association between miR-206 rs17578851 and STS risk with logistic regression analysis.

Both miR-210 and miR-34b are located on chromosomal 11. MiR-210 is a well-known responder to hypoxia, which is expressed in a wide range of cells and involves numerous biological processes (43). A previous study showed that miR-210 could directly regulate HIF3α in hypoxia-responsive STSs (18). Besides, miR-210 was upregulated in malignant peripheral nerve sheath tumors compared with neurofibromas (44). Furthermore, hypoxia-induced miR-210 promoter demethylation enhances proliferation, autophagy, and angiogenesis of schwannoma cells (45). MiR-210 was also found to decrease expression in angiosarcoma cells both in vivo and in vitro, and was associated with angiosarcoma cell proliferation by target E2F3 and ephrin A3 (46). The expression levels of miR-210 were correlated with the prognosis and age of tumor onset in a gender-specific manner in STS patients (47). MiR-34b was silenced in numerous cancers by DNA methylation of its promoter (48) and became an important tumor suppressor in many sarcoma types. For instance, miR-34b is downregulated in synovial Sarcoma relative to other sarcomas (5), the methylation levels of miR-34b were associated with STSs clinical stage (19), and miR-34a levels inversely correlate with poor patient survival outcomes indicating its potential role as a diagnostic marker in Ewing sarcoma (49). However, a recent study showed that miR-34b expression levels were significantly higher in Ewing’s sarcoma tumors compared to normal tissue and acted as a tumor oncogene, promoting Ewing’s sarcoma cell proliferation, migration, and invasion by downregulating Notch1 (50). Furthermore, miR-34b polymorphisms have provided evidence of association with cancer risk and survival. For example, Jeannette et al. (2013) found that miR-34b rs4938723 was associated with breast cancer survival (42). Qi et al. (2014) suggested that miR-34b rs4938723 was a susceptible locus for hepatocellular cancer and colorectal cancer (51) and many other studies have also shown that miR-34b rs4938723 variant may be a disk factor for the development of prostate cancer (52) and acute lymphoblastic leukemia (53). However, there was no study on the association of miR-210 and miR-34b polymorphisms with STS risk. Our study did not find an association between miR-210 and miR-34b polymorphisms and the risk of STSs either.

Both miR-485 and miR-381 are located on chromosomal 14. Little is known about the relationship between miR-485 and miR-381 and STSs. In previous studies, miR-485 was reported to be decreased in osteosarcoma cells, and overexpression of miR-485-3p restrained osteosarcoma cell proliferation, migration, and sphere formation (54). Besides, miR-485 could indirectly regulate HIF3α in hypoxia-responsive STSs (18). MiR-485 has also been found to be associated with drug-resistant rhabdomyosarcoma (55). As for miR-381, one study reported that miR-381 overexpression in epithelioid sarcomas (34). There was no study on the association of miR-485 and miR-381 polymorphisms with STS risk. Our study did not find an association between miR-485 and miR-381 polymorphisms and STS risk either.

However, there are still some limitations to our study. Firstly, miRNA-SNPs in each pathological classification of STSs were not analyzed due to the limited sample of different pathological types. Secondly, further research is needed to elucidate the target gene and mechanism of miR-671 rs1870238 and rs1870238 in STSs. Thirdly, there are racial differences in gene polymorphism, and the results need to be further verified in other populations.

Conclusion

miR-671 rs1870238 GC+CC and miR-671 rs2446065 CG+GG may be genetic risk factors for STSs, suggesting that individuals carrying the GC+CC genotype for miR-671 rs1870238 or the CG+GG genotype for miR-671 rs2446065 are susceptible to STSs.

Funding

This study was financially supported by the grant of Scientific and Technological Innovation Outstanding Young Talent Training Project from the Health Commission of Henan Province (No. YXKC2021031).

Acknowledgments

All the authors thank all the subjects who voluntarily joined this study.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Statements

Data availability statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Ethics statement

This study was reviewed and approved by the Ethical Committee of Zhengzhou University. The patients/participants provided their written informed consent to participate in this study.

Author contributions

PZ designed this research and wrote this paper. XL and FH analyzed data. LH and XN collected the blood samples. YS and WY instructed this study. All authors listed have made a substantial, direct, and intellectual contribution to the work and approved it for publication.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

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Summary

Keywords

miRNA-671, soft tissue sarcoma, rs1870238, rs2446065, gene polymorphisms

Citation

Zhang P, Li X, Huang L, Hu F, Niu X, Sun Y and Yao W (2022) Association between microRNA 671 polymorphisms and the susceptibility to soft tissue sarcomas in a Chinese population. Front. Oncol. 12:960269. doi: 10.3389/fonc.2022.960269

Received

02 June 2022

Accepted

18 July 2022

Published

09 August 2022

Volume

12 - 2022

Edited by

Claudio Sette, Catholic University of the Sacred Heart, Italy

Reviewed by

Maria Anna Smolle, Medical University of Graz, Austria; Erik Wiemer, Erasmus University Medical Center, Netherlands

Updates

Copyright

*Correspondence: Peng Zhang,

This article was submitted to Cancer Genetics, a section of the journal Frontiers in Oncology

Disclaimer

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.

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