| Literature DB >> 34513677 |
Cheng Wang1, Junbin Yan2, Beihui He2, Shuo Zhang3, Sumei Xu4.
Abstract
BACKGROUND: In China, the prevalence and mortality of colorectal cancer (CRC) have always been high, and more than 95% of CRC cases have evolved from colorectal polyps (CPs), especially adenoma. Early detection and treatment of CPs through colonoscopy is essential to reduce the incidence of CRC. Helicobacter pylori (Hp) is regarded as a risk factor for gastritis and gastric cancer and may also be a risk factor for CPs and CRC. However, few studies based on vast clinical cases exist in China to clarify whether Hp is a risk factor for CPs and CRC, and whether Hp-positive patients need to undergo colonoscopy checks earlier. This article attempts to make up for that deficiency.Entities:
Keywords: Chinese; adenoma; age; colorectal cancer; colorectal polyps; cross-sectional study
Year: 2021 PMID: 34513677 PMCID: PMC8427659 DOI: 10.3389/fonc.2021.698898
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1Flowchart of cases selection.
Analysis of Hp infection.
| Group | Numbers (male/female) | Age Mean ± SD | |||
|---|---|---|---|---|---|
| Hp-negative | 9746 (4773/4973) | 47.0 ± 12.8 | |||
| Hp-positive | 3291 (1737/1554) | 50.7 ± 12.0 | |||
| Total | 13037 (6510/6527) | 51.8 ± 12.6 | |||
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| Gender | Male | 4773 (49.0%) | 1737 (52.8%) | 14.258 | 0.000** |
| Female | 4973 (51%) | 1554 (47.2%) | |||
**P < 0.01.
Analysis of CPs and CRC.
| Group | Numbers (male/female) | Age mean ± SD | ||||
|---|---|---|---|---|---|---|
| CPs | 4969 (2897/2072) | 50.6 ± 11.11 | ||||
| CRC | 100 (61/39) | 61.3 ± 10.8 | ||||
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| Gender | Male | 3552 (44.6%) | 2897 (58.3%) | 61 (61.0%) | 235.50 | 0.000** |
| Female | 4416 (55.4%) | 2072 (41.7%) | 39 (39.0%) | |||
| Age (year) | <45 | 2824 (35.4%) | 760 (15.3%) | 6 (6.0%) | 645.97 | 0.000** |
| ≥45 | 5144 (64.6%) | 4209 (84.7%) | 94 (94.0%) | |||
**P < 0.01.
Analysis of CPs and CRC.
| Group | CPs (%) | CRC (%) | ||||
|---|---|---|---|---|---|---|
| Hp-negative | 3609 (37.0%) | 62 (0.64%) | ||||
| Hp-positive | 1360 (41.3%) | 38 (1.15%) | ||||
| Total | 4969 (38.1%) | 100 (0.77%) | ||||
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| Hp | negative positive | 6075 | 3609 | 62 | 29.850 | 0.000** |
| 1893 | 1360 | 38 | ||||
**P < 0.01.
Figure 2OR value of Hp infection from logistic regression. (A) OR value of gender, age, and Hp for CPs. (B) OR value of gender, age, and Hp for CRC.
The χ2 test for the effect of HP, and size, number of CPs.
| Factor | HP (negative) n=3609 | HP (positive) n=1360 | χ2 | |
|---|---|---|---|---|
| diameter≥10 mm | 503 | 224 | 5.075 | 0.024** |
| diameter<10 mm | 3106 | 1136 | ||
| number≥2 | 1480 | 619 | 8.221 | |
| number <2 | 2129 | 741 | 0.004** |
**P < 0.01.
Figure 3OR value of HP, gender, and age for the size and numbers of CPs.
The effect of HP infection on the results of immunohistochemistry with χ2 test.
| Immunohistochemistry | HP-negative (n=268) | HP-positive (n=107) | χ2 | ||
|---|---|---|---|---|---|
| P53 | ≤5% | 154 (57.5%) | 60 (56.1%) | 11.048 | 0.026* |
| 6%~25% | 69 (25.7%) | 26 (24.3%) | |||
| 26%~50% | 30 (11.2%) | 12 (11.2%) | |||
| 51%~75% | 4 (1.5%) | 8 (7.5%) | |||
| <75% | 11 (4.1%) | 1 (0.9%) | |||
| Ki-67 | <30% | 60 (22.4%) | 27 (25.2%) | 0.348 | 0.556 |
| ≥30% | 208 (77.6%) | 80 (74.8%) | |||
| misplaced ribonuclear proteins | normal | 251 (93.6%) | 97 (90.7%) | 1.032 | 0.31 |
| missing | 17 (6.4%) | 10 (9.3%) | |||
*P < 0.05.
Analysis of Hp infectious levels.
| Factor | NCPs n=1893 | CPs n=1398 | χ2 | |
|---|---|---|---|---|
| HP(+) | 1421 | 1048 | 0.846 | 0.0655 |
| HP(++) | 262 | 183 | ||
| HP(+++) | 210 | 167 | ||
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| HP(+) | 2442 | 27 | 0.715 | 0.6995 |
| HP(++) | 440 | 5 | ||
| HP(+++) | 371 | 6 | ||
Figure 4The influence of Hp on the prevalence of CPs in the Chinese of different ages. (A1) Relationship between the prevalence of CPs and Hp in males. (A2) Relationship between the prevalence of CPs and Hp in females. (B) OR value of Hp and different groups of age for CPs from logistic regression.