| Literature DB >> 26620869 |
Jianguo Shi1, Lijuan Xiong2, Jiaoyuan Li3,4,5,6, Heng Cao1, Wen Jiang1, Bo Liu1, Xueqin Chen3,4,5,6, Cheng Liu3,4,5,6, Ke Liu1, Guobin Wang1, Kailin Cai1.
Abstract
For many years, the question of whether hyperglycaemia, a manifestation of prediabetes, diabetes mellitus and metabolic syndrome, is a risk factor for colorectal cancer has been intensely studied. In fact, even after the conclusion of several prospective studies, the topic is still controversial. We conducted a systematic review and meta-analysis to investigate the dose-response relationship between blood glucose concentration and the incidence of colorectal cancer. A linear (P = 0.303 for non-linearity) dose-response relationship was observed between fasting plasma glucose (FPG) and colorectal cancer risk without significant heterogeneity. The relative risk (RR) for colorectal cancer per 20 mg/dL increase in FPG was 1.015 (95% CI: 1.012-1.019, P = 0.000). In subgroup analyses, the pooled RRs for colon cancer (CC) and rectal cancer (RC) studies were 1.035 (95% CI 1.008-1.062, P = 0.011) and 1.031 (95% CI: 0.189-5.628, P = 0.972), respectively; in the analysis comparing men and women, the pooled RRs were 1.016 (95% CI: 1.012-1.020, P = 0.000) and 1.011 (95% CI: 0.995-1.027, P = 0.164), respectively. Sensitivity analyses using two methods showed similar results. In conclusion, there is a significant linear dose-response relationship between FPG and the incidence risk of colorectal cancer. For people with diabetes or prediabetes, controlling blood glucose might be useful to prevent colorectal cancer.Entities:
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Year: 2015 PMID: 26620869 PMCID: PMC4665197 DOI: 10.1038/srep17591
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Flow diagram of literature screening.
The basic characteristics of studies included in this systematic review with meta-analysis.
| Study | Region | Design | Cancer type | Gender (men%) | Baseline | Mean age (years) | Follow-up time (years) | Adjusted confounders |
|---|---|---|---|---|---|---|---|---|
| Schoen R. E., 1999 | North America | Cohort | CRC | Both (42.4%) | 1989–1990 (cohort1) 1992–1993 (cohort2) | 73.9 | 6.4 | Age, sex, and physical activity |
| Jee S. H., 2005 | Asia | Cohort | CRC | Male | 1992–1995 | 45.3 | 10 | Age, smoking, alcohol use |
| Jee S. H., 2005 | Asia | Cohort | CRC | Female | 1992–1995 | 49.6 | 10 | Age, smoking, alcohol use |
| Limburg P. J., 2006 | Europe | Case-cohort | CC | Male | 1985–1988 | 59 | 9 | Age, smoking, alcohol use, BMI, diet, physical activity, history of DM |
| Limburg P. J., 2006 | Europe | Case-cohort | RC | Male | 1985–1988 | 59 | 9 | Age, smoking, alcohol use, BMI, diet, physical activity, history of DM |
| Stocks T., 2011 | Europe | Cohort | CRC | Male | 1972–2006 | 43.9 | 12.8 | Age, smoking, BMI |
| Stocks T., 2011 | Europe | Cohort | CRC | Female | 1972–2006 | 44.1 | 11.3 | Age, smoking, BMI |
| Kabat G.C., 2012 | North America | Cohort | CRC | Female | 1993–1998 | 64.3 | 11.9 | Age, BMI, alcohol use, physical activity, family history of CRC, ethnicity |
| Wulaningsih W., 2012 | Europe | Cohort | CC | Both (57.7%) | 1985–1996 | 43.84 | 8.5 | Age, sex, SES, fasting status, glucose, total cholesterol |
| Wulaningsih W., 2012 | Europe | Cohort | RC | Both (57.7%) | 1985–1996 | 43.84 | 8.53 | Age, sex, SES, fasting status, glucose, total cholesterol |
| Nilsen T. L., 2001 | Europe | Cohort | CRC | Male | 1984–1986 | 48.5 | 10.8 | Age |
| Nilsen T. L., 2001 | Europe | Cohort | CRC | Male | 1984–1986 | 49.8 | 10.8 | Age |
| Ahmed R. L., 2006 | North America | Cohort | CRC | Both | 1987–1989 | 45–64 | 11.5 | Age, sex, alcohol use, physical activity, family history of CRC, drugs used |
| Aleksandrova K., 2011 | Europe | Nested case–control | CC | Male | 1992–2000 | 58.8 | 3.7, 9.3 | Age, follow-up time |
| Aleksandrova K., 2011 | Europe | Nested case–control | RC | Female | 1992–2000 | 58.1 | 3.7, 9.3 | Age, follow-up time, menopausal status |
| Aleksandrova K., 2011 | Europe | Nested case–control | CC | Male | 1992–2000 | 58.8 | 3.7, 9.3 | Age, follow-up time |
| Aleksandrova K., 2011 | Europe | Nested case–control | RC | Female | 1992–2000 | 58.1 | 3.7, 9.3 | Age, follow-up time, menopausal status |
| Shin A., 2011 | Asia | Cohort | RC | Male | 1996–1997 | 30–80 | 7 | Age |
| Shin A., 2011 | Asia | Cohort | RC | Female | 1996–1997 | 30–80 | 7 | Age |
| Shin H. Y., 2014 | Asia | Cohort | CRC | Male | 2004-2011 | 42 | 4.7 | Age, smoking, alcohol use, BMI, physical activity |
| Shin H. Y., 2014 | Asia | Cohort | CRC | Female | 2004-2011 | 41.5 | 4.7 | Age, smoking, alcohol use, BMI, diet, physical activity |
CRC = colorectal cancer, CC = colon cancer, RC = rectal cancer, BMI = body mass index, DM = diabetes mellitus, SES = socio-economic status.
*Cohort 1 (n = 5201; 5.3% members of minority groups) was recruited in 1989–1990; Cohort 2 with 687 minority subjects (97.8% African-American) was enrolled in 1992–1993.
Site-specific (CC and RC) or sex-specific (male and female) analyses were not reported.
The fasting state is defined according to the description of the original study.
Pooled analysis of 7 cohorts. Norwegian cohorts: The Oslo study I (Oslo), 1972–73, The Norwegian Counties Study, 1974–88, The Cohort of Norway, 1994–2003, The 40-year cohort (40-year), 1985–1999; The Austrian cohort: The Vorarlberg Health Monitoring and Prevention Programme, 1985–2005; and Swedish cohorts: The Vasterbotten Intervention Project, 1985 and ongoing, The Malmo Preventive Project, 1974–1992.
※The mean follow-up time was 3.7 years for cases and 9.3 years for controls. Follow-up time was adjusted for risk analysis.
Study-specific and summary RRs for colorectal cancer, per 20 mg/dL increase in FPG.
| Study | RR (95% CI) | |||
|---|---|---|---|---|
| First author, year | Cancer type | Gender (men %) | ||
| Schoen R. E., 1999 | CRC | Both (42.4%) | 1.036 (1.004–1.068) | 0.025 |
| Jee S. H., 2005 | CRC | Male | 1.016 (1.012–1.019) | 0.000 |
| Jee S. H., 2005 | CRC | Female | 1.008 (0.991–1.024) | 0.351 |
| Limburg P. J., 2006 | CC | Male | 1.094 (0.913–1.310) | 0.332 |
| Limburg P. J., 2006 | RC | Male | 1.102 (0.957–1.270) | 0.177 |
| Tanja Stocks, 2011 | CRC | Male | 1.023 (0.958–1.093) | 0.492 |
| Tanja Stocks, 2011 | CRC | Female | 1.054 (0.966–1.150) | 0.240 |
| GC Kabat, 2012 | CRC | Female | 1.092 (0.988–1.207) | 0.085 |
| Wulaningsih W., 2012 | CC | Both (57.7%) | 1.033 (1.006–1.061) | 0.015 |
| Wulaningsih W., 2012 | RC | Both (57.7%) | 0.964 (0.934–0.995) | 0.022 |
| Total | Total | Total | 1.015 (1.012–1.019) | 0.000 |
Notes: In the study-specific dose-response analysis, RRs were significant in 4 studies (P < 0.05) and not significant in 6 studies (P > 0.05). However, the total RR was significant without significant heterogeneity (I = 11%, P = 0.295). The P value was 0.303 for the test of linearity. Thus, the meta-analysis indicated that the incidence of colorectal cancer increased linearly with increasing FPG.
Figure 2Summary risk ratios for colorectal cancer, the highest compared to lowest FPG category.
Considering that the doses of the comparison groups were quite different, we divided the meta-analysis of two-category variables into two parts according to the total number of original FPG categories (FPG category ≥3 and FPG category = 2). There was slight or significant heterogeneity among these studies. The results should be interpreted critically.
Subgroup analyses of pooled relative risks of colorectal cancer per 20 mg/dL increase in fasting blood glucose.
| Subgroup | Number of study | Relative Risk (95%CI) | Test for heterogeneity* | ||
|---|---|---|---|---|---|
| Cancer type | |||||
| CRC | 6 | 1.016 (1.012–1.019) | 0.000 | 0 | 0.904 |
| CC | 2 | 1.035 (1.008–1.062) | 0.011 | 11 | 0.295 |
| RC | 2 | 1.031 (0.189–5.628) | 0.972 | 11 | 0.345 |
| Region | |||||
| North America | 2 | 1.041 (1.010–1.072) | 0.008 | 2 | 0.381 |
| Europe | 6 | 1.010 (0.992–1.029) | 0.284 | 16 | 0.26 |
| Asia | 2 | 1.015 (1.011–1.019) | 0.000 | 0 | 0.694 |
| Follow-up time (years) | |||||
| <10 | 5 | 1.015 (0.998–1.032) | 0.076 | 46 | 0.030 |
| ≥10 | 5 | 1.015 (1.011–1.019) | 0.000 | 0 | 0.928 |
| Gender | |||||
| Both | 3 | 1.013 (0.996–1.031) | 0.122 | 3 | 0.405 |
| Male | 4 | 1.016 (1.012–1.020) | 0.000 | 0 | 0.847 |
| Female | 3 | 1.011 (0.995–1.027) | 0.164 | 0 | 0.555 |
| Fasting status | |||||
| Fasting | 6 | 1.016 (1.012–1.019) | 0.000 | 0 | 0.585 |
| Mix | 4 | 1.008 (0.989–1.027) | 0.421 | 23 | 0.208 |
| Risk type¶ | |||||
| HR | 7 | 1.015 (1.011–1.019) | 0.000 | 34 | 0.068 |
| RR | 3 | 1.036 (1.008–1.063) | 0.010 | 0 | 0.941 |
*For the test of heterogeneity in each subgroup, we also calculated the I statistic, and 50% was regarded as the cutoff point for non-significant and significant levels. No significant heterogeneity was detected in our dose-response meta-analysis and we did not further test the heterogeneity between subgroups.
The total sample size and the number of rectal cancer cases included were small.
¶Both studies using HR and RR as the risk type showed a significant dose-response relationship and we assigned RR as the risk type to illustrate our results.
Figure 3Funnel plot of the highest compared to lowest FPG categories from only 10 studies included in the dose-response meta-analysis.
The funnel plot was based on 4 small studies (fewer than 100 cancer cases for each exposure dose) and 6 large studies. Among the 10 published studies, the results of 2 studies were statistically significant (P < 0.05), and the results of 8 studies were not significant (P > 0.05). For the 2 studies with significant results, one study was small, whereas the other came from the group of 6 large studies. No significant publication bias was detected (P = 0.125 for Egger’s test, P = 0.283 for Begg’s test). This funnel plot shows asymmetry, which might be related to reasons other than publication bias.