| Literature DB >> 32784246 |
Bendix Carstensen1, Pernille Falberg Rønn1, Marit Eika Jørgensen2,3.
Abstract
INTRODUCTION: Incidence rates of diabetes have been increasing and mortality rates have been decreasing. Our aim is the quantification of the effects of these on the prevalence and prediction of the future burden of diabetes. RESEARCH DESIGN AND METHODS: From population-based registers of Denmark, we derived diabetes incidence and mortality rates and mortality rates for persons without diabetes for the period 1996-2016. Rates were modeled by smooth parametric terms using Poisson regression. Estimated rates were used to assess the relative contribution of incidence and mortality to changes in prevalence over the study period as well as for prediction of future rates and prevalence 2017-2040.Entities:
Keywords: epidemiology; incidence; mortality; registries
Mesh:
Year: 2020 PMID: 32784246 PMCID: PMC7418686 DOI: 10.1136/bmjdrc-2019-001064
Source DB: PubMed Journal: BMJ Open Diabetes Res Care ISSN: 2052-4897
Average annual change (%) in diabetes incidence, mortality, and standardized mortality rates (SMR) in Denmark in the period 1996–2017.
| Annual % change (95% CI) | |
| No diabetes: | |
| DM incidence | |
| Men | 2.95 (2.82 to 3.09) |
| Women | 2.79 (2.64 to 2.93) |
| Mortality | |
| Men | −2.89 (−2.94 to −2.84) |
| Women | −2.46 (−2.51 to −2.41) |
| Diabetes: | |
| Mortality | |
| Men | −3.93 (−4.04 to −3.82) |
| Women | −3.48 (−3.61 to −3.36) |
| SMR (DM vs no DM) | |
| Men | −1.11 (−1.22 to −0.99) |
| Women | −1.16 (−1.28 to −1.03) |
DM, diabetes mellitus.
Figure 1Age distribution of persons with diabetes in Denmark as of 1 January 2017 according to components of the changes in diabetes prevalence 1996–2016. Figures at the top is the number, respectively percentages attributable to the four factors. The colored areas are number of cases attributable to Mort: declining mortality (full color), Inc: increasing incidence (pale color) and Imbal: incidence/mortality imbalance 1996 (weak color). The weakest color in the middle (Org) corresponds to the number of cases that would have been present if age-specific prevalences were as of 1 January 1996. Men in blue, women in red.
Figure 2Observed and predicted number of patients with diabetes 1996–2030. Left panels are number of men (A), women (C) and total number of diabetic persons (E); right panels show age distributions in 10-year classes for men (B), women (C) and all (F). Blue is men, red is women and gray both sexes combined; different shades correspond to 10-year age classes. The black vertical line delineates the observed (data) from the prediction.
Predicted number of prevalent patients with diabetes and prevalence 2017–2040, using six different prediction scenarios for incidence rates: naive prediction from a splines-based APC model, attenuation with halving of rate change per 5 years, fixing rates at the level of 1 January 2017 and an increase of incidence of 2%, 4% and 6% per year (mortality rate changes are also attenuated by a halving of rate change per 5 years in all scenarios)
| Date | APC-naive | Attenuation | 0%/year | Fixed annual incidence increase | 6%/year | |||||||
| 2%/year | 4%/year | |||||||||||
| 1 Jan | N | % | N | % | N | % | N | % | N | % | N | % |
| M | ||||||||||||
| 2018 | 163 046 | 5.7 | 163 031 | 162 695 | 5.6 | 162 996 | 5.7 | 163 014 | 5.7 | 163 031 | 5.7 | |
| 2019 | 169 921 | 5.9 | 169 787 | 168 426 | 5.8 | 169 557 | 5.9 | 169 713 | 5.9 | 169 871 | 5.9 | |
| 2020 | 177 504 | 6.1 | 177 038 | 174 029 | 6.0 | 176 421 | 6.1 | 176 956 | 6.1 | 177 504 | 6.1 | |
| 2025 | 227 155 | 7.6 | 217 909 | 199 718 | 6.7 | 212 735 | 7.1 | 219 519 | 7.4 | 226 953 | 7.6 | |
| 2030 | 299 745 | 9.9 | 260 187 | 220 633 | 7.3 | 249 815 | 8.2 | 270 791 | 8.9 | 295 261 | 9.7 | |
| 2035 | 400 956 | 13.0 | 298 297 | 9.7 | 236 477 | 7.7 | 286 589 | 9.3 | 330 343 | 10.7 | 384 353 | 12.5 |
| 2040 | 537 954 | 17.2 | 330 611 | 10.6 | 248 358 | 8.0 | 323 695 | 10.4 | 399 279 | 12.8 | 497 106 | 15.9 |
| W | ||||||||||||
| 2018 | 131 442 | 4.5 | 131 429 | 131 138 | 4.5 | 131 397 | 4.5 | 131 410 | 4.5 | 131 423 | 4.5 | |
| 2019 | 136 492 | 4.7 | 136 375 | 135 187 | 4.6 | 136 156 | 4.7 | 136 275 | 4.7 | 136 396 | 4.7 | |
| 2020 | 142 177 | 4.8 | 141 763 | 139 126 | 4.7 | 141 160 | 4.8 | 141 571 | 4.8 | 141 992 | 4.8 | |
| 2025 | 181 787 | 6.1 | 173 236 | 156 961 | 5.2 | 167 788 | 5.6 | 173 054 | 5.8 | 178 833 | 6.0 | |
| 2030 | 245 124 | 8.0 | 207 174 | 171 229 | 5.6 | 195 238 | 6.4 | 211 675 | 6.9 | 230 955 | 7.6 | |
| 2035 | 340 134 | 11.0 | 238 481 | 7.7 | 181 736 | 5.9 | 222 661 | 7.2 | 257 289 | 8.3 | 300 584 | 9.7 |
| 2040 | 475 714 | 15.2 | 265 069 | 8.5 | 189 225 | 6.0 | 250 399 | 8.0 | 310 896 | 9.9 | 391 134 | 12.5 |
| M+W | ||||||||||||
| 2018 | 294 489 | 5.1 | 294 460 | 293 833 | 5.1 | 294 393 | 5.1 | 294 424 | 5.1 | 294 455 | 5.1 | |
| 2019 | 306 414 | 5.3 | 306 162 | 303 613 | 5.2 | 305 713 | 5.3 | 305 989 | 5.3 | 306 267 | 5.3 | |
| 2020 | 319 680 | 5.5 | 318 801 | 313 156 | 5.4 | 317 581 | 5.4 | 318 527 | 5.5 | 319 496 | 5.5 | |
| 2025 | 408 942 | 6.8 | 391 145 | 356 679 | 6.0 | 380 523 | 6.4 | 392 573 | 6.6 | 405 786 | 6.8 | |
| 2030 | 544 869 | 8.9 | 467 362 | 391 862 | 6.4 | 445 053 | 7.3 | 482 466 | 7.9 | 526 217 | 8.6 | |
| 2035 | 741 090 | 12.0 | 536 778 | 8.7 | 418 213 | 6.8 | 509 250 | 8.2 | 587 633 | 9.5 | 684 936 | 11.1 |
| 2040 | 1 013 668 | 16.2 | 595 680 | 9.5 | 437 582 | 7.0 | 574 094 | 9.2 | 710 175 | 11.4 | 888 240 | 14.2 |
The boldface numbers are the predictions we report as the most reliable and used in figure 2. It should be noted that figures beyond 2030 are very uncertain.
APC, age–period–cohort; M, men; W, women.