Long-Time Trend of Colorectal Cancer Mortality Attributable to High Processed Meat Intake in China and a Bayesian Projection from 2020 to 2030: A Model-Based Study
Abstract
:1. Introduction
2. Materials and Methods
2.1. Research Data
2.2. Definitions of Measurements
2.3. Statistical Analysis
2.3.1. Age-Period-Cohort Model
2.3.2. Joinpoint Analysis
2.3.3. Bayesian Age-Period-Cohort Analysis
3. Results
3.1. General Trend of the Attributed CRC Mortality
3.2. Local and Net Drifts
3.3. Age-Period-Cohort Analysis
3.4. Joinpoint Analysis
3.5. Bayesian Prediction
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Age-Standardized Mortality Rates (ASMRs) | Crude Mortality Rates (CMRs) | ||||||
---|---|---|---|---|---|---|---|
Time Period | AVPC (95%CI) | t (p) | Time Period | AVPC (95%CI) | t (p) | ||
Female | Trend 1 | 1990~1997 | −0.2 (−0.4,0) | −2.7 (0.020) | 1990~1997 | 1.5 (1.3,1.7) | 15.0 (<0.001) |
Trend 2 | 1997~2000 | 2.5 (1.1,3.9) | 3.9 (0.002) | 1997~2001 | 5.4 (4.7,6.1) | 17.2 (<0.001) | |
Trend 3 | 2000~2004 | 5.2 (4.5,5.8) | 17.4 (<0.001) | 2001~2004 | 8.1 (6.9,9.2) | 15.4 (<0.001) | |
Trend 4 | 2004~2011 | 3.5 (3.3,3.7) | 41.5 (<0.001) | 2004~2011 | 6.4 (6.2,6.5) | 97.0 (<0.001) | |
Trend 5 | 2011~2016 | 0.2 (−0.1,0.5) | 1.5 (0.146) | 2011~2016 | 3.3 (3.1,3.5) | 34.0 (<0.001) | |
Trend 6 | 2016~2019 | 2.6 (2.1,3.2) | 11.0 (<0.001) | 2016~2019 | 5.6 (5.3,5.9) | 40.8 (<0.001) | |
AAPC | - | 2.0 (1.9,2.2) | 22.7 (<0.001) | - | 4.6 (4.4,4.8) | 59.2 (<0.001) | |
Male | Trend 1 | 1990~1996 | 0.3 (−0.4,1.0) | 1.0 (0.342) | 1990~1996 | 1.8 (1.1,2.5) | 5.7 (<0.001) |
Trend 2 | 1996~2000 | 3.6 (1.8,5.5) | 4.3 (0.001) | 1996~2000 | 6.3 (4.6,8.1) | 8.2 (<0.001) | |
Trend 3 | 2000~2004 | 8.1 (6.6,9.7) | 11.3 (<0.001) | 2000~2004 | 11.9 (10.6,13.3) | 20.2 (<0.001) | |
Trend 4 | 2004~2011 | 5.4 (5,5.8) | 28.7 (<0.001) | 2004~2011 | 8.4 (8.2,8.7) | 66.8 (<0.001) | |
Trend 5 | 2011~2019 | 1.4 (1.1,1.6) | 12.7 (<0.001) | 2011~2017 | 3.8 (3.5,4) | 30.9 (<0.001) | |
Trend 6 | - | - | - | 2017~2019 | 5.0 (3.9,6.1) | 10.3 (<0.001) | |
AAPC | - | 3.3 (3,3.7) | 19.2 (<0.001) | - | 6.0 (5.7,6.3) | 38.2 (<0.001) |
Age Group | Rate (95%CI) | ||
---|---|---|---|
2019 | 2020 | 2030 | |
25–29 | 0.00018 (0.00004,0.00041) | 0.00018 (0.00004,0.00041) | 0.00018 (0.00003,0.00046) |
30–34 | 0.00408 (0.00331,0.00495) | 0.00406 (0.00323,0.00502) | 0.00399 (0.00217,0.00667) |
35–39 | 0.00474 (0.00411,0.00541) | 0.00472 (0.00402,0.00548) | 0.00460 (0.00277,0.00710) |
40–44 | 0.00452 (0.00404,0.00503) | 0.00450 (0.00397,0.00507) | 0.00437 (0.00282,0.00636) |
45–49 | 0.00458 (0.00418,0.00501) | 0.00457 (0.00411,0.00505) | 0.00441 (0.00296,0.00618) |
50–54 | 0.00469 (0.00433,0.00507) | 0.00466 (0.00424,0.00511) | 0.00447 (0.00305,0.00617) |
55–59 | 0.00450 (0.00418,0.00484) | 0.00448 (0.00409,0.00488) | 0.00427 (0.00293,0.00586) |
60–64 | 0.00450 (0.00419,0.00482) | 0.00447 (0.00410,0.00487) | 0.00426 (0.00293,0.00583) |
65–69 | 0.00457 (0.00427,0.00488) | 0.00454 (0.00417,0.00492) | 0.00431 (0.00297,0.00590) |
70–74 | 0.00464 (0.00435,0.00494) | 0.00461 (0.00425,0.00500) | 0.00436 (0.00301,0.00595) |
75–79 | 0.00498 (0.00466,0.00530) | 0.00494 (0.00455,0.00535) | 0.00464 (0.00320,0.00633) |
80–84 | 0.00549 (0.00514,0.00586) | 0.00545 (0.00501,0.00590) | 0.00508 (0.00350,0.00694) |
85–89 | 0.00573 (0.00532,0.00616) | 0.00568 (0.00520,0.00619) | 0.00530 (0.00365,0.00724) |
90–94 | 0.00721 (0.00661,0.00784) | 0.00717 (0.00649,0.00788) | 0.00672 (0.00462,0.00922) |
Age Group | Rate (95%CI) | ||
---|---|---|---|
2019 | 2020 | 2030 | |
25–29 | 0.00036 (0.00009,0.00082) | 0.00036 (0.00008,0.00083) | 0.00038 (0.00007,0.00100) |
30–34 | 0.00478 (0.00368,0.00606) | 0.00478 (0.00360,0.00618) | 0.00495 (0.00250,0.00868) |
35–39 | 0.00566 (0.00473,0.00670) | 0.00567 (0.00465,0.00682) | 0.00581 (0.00330,0.00933) |
40–44 | 0.00547 (0.00475,0.00625) | 0.00547 (0.00469,0.00633) | 0.00558 (0.00344,0.00840) |
45–49 | 0.00557 (0.00497,0.00621) | 0.00557 (0.00491,0.00630) | 0.00568 (0.00368,0.00818) |
50–54 | 0.00560 (0.00506,0.00617) | 0.00560 (0.00500,0.00625) | 0.00571 (0.00378,0.00805) |
55–59 | 0.00530 (0.00485,0.00577) | 0.00530 (0.00478,0.00586) | 0.00541 (0.00362,0.00756) |
60–64 | 0.00521 (0.00479,0.00566) | 0.00523 (0.00473,0.00575) | 0.00535 (0.00360,0.00744) |
65–69 | 0.00522 (0.00482,0.00564) | 0.00523 (0.00475,0.00573) | 0.00535 (0.00361,0.00743) |
70–74 | 0.00525 (0.00486,0.00565) | 0.00525 (0.00478,0.00574) | 0.00532 (0.00359,0.00737) |
75–79 | 0.00565 (0.00524,0.00607) | 0.00564 (0.00514,0.00616) | 0.00561 (0.00380,0.00778) |
80–84 | 0.00641 (0.00594,0.00690) | 0.00639 (0.00582,0.00699) | 0.00628 (0.00425,0.00871) |
85–89 | 0.00671 (0.00619,0.00727) | 0.00669 (0.00607,0.00735) | 0.00657 (0.00443,0.00910) |
90–94 | 0.00847 (0.00772,0.00926) | 0.00847 (0.00762,0.00937) | 0.00836 (0.00563,0.01162) |
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Chen, F.; Chen, S.; Luo, Y.; Si, A.; Yang, Y.; Li, Y.; Hu, W.; Zhang, Y. Long-Time Trend of Colorectal Cancer Mortality Attributable to High Processed Meat Intake in China and a Bayesian Projection from 2020 to 2030: A Model-Based Study. Int. J. Environ. Res. Public Health 2022, 19, 10603. https://doi.org/10.3390/ijerph191710603
Chen F, Chen S, Luo Y, Si A, Yang Y, Li Y, Hu W, Zhang Y. Long-Time Trend of Colorectal Cancer Mortality Attributable to High Processed Meat Intake in China and a Bayesian Projection from 2020 to 2030: A Model-Based Study. International Journal of Environmental Research and Public Health. 2022; 19(17):10603. https://doi.org/10.3390/ijerph191710603
Chicago/Turabian StyleChen, Fangyao, Shiyu Chen, Yaqi Luo, Aima Si, Yuhui Yang, Yemian Li, Weiwei Hu, and Yuxiang Zhang. 2022. "Long-Time Trend of Colorectal Cancer Mortality Attributable to High Processed Meat Intake in China and a Bayesian Projection from 2020 to 2030: A Model-Based Study" International Journal of Environmental Research and Public Health 19, no. 17: 10603. https://doi.org/10.3390/ijerph191710603
APA StyleChen, F., Chen, S., Luo, Y., Si, A., Yang, Y., Li, Y., Hu, W., & Zhang, Y. (2022). Long-Time Trend of Colorectal Cancer Mortality Attributable to High Processed Meat Intake in China and a Bayesian Projection from 2020 to 2030: A Model-Based Study. International Journal of Environmental Research and Public Health, 19(17), 10603. https://doi.org/10.3390/ijerph191710603