| Literature DB >> 27295981 |
Ling Sun1, Lu-Xi Zou2, Yu-Chen Han3, Han-Ming Huang4, Zhao-Ming Tan4, Min Gao3, Kun-Ling Ma3, Hong Liu3, Bi-Cheng Liu5.
Abstract
BACKGROUND: There are limited data on the trends of incidence or prevalence of end stage renal disease (ESRD) in China. To assist in future planning for the ESRD program, the trends of incidence, prevalence and health care costs were analyzed and forecasted to the year 2025 by modeling of historical data from 2004 through 2014.Entities:
Keywords: End stage renal disease; Forecast; Health care costs; Incidence; Medical insurance; Prevalence
Mesh:
Year: 2016 PMID: 27295981 PMCID: PMC4906971 DOI: 10.1186/s12882-016-0269-8
Source DB: PubMed Journal: BMC Nephrol ISSN: 1471-2369 Impact factor: 2.388
Fig. 1Forecasted NJUEBMI population counts according to the linear trend model. The asterisk and dashed line represent the observed data, the solid line indicates the forecasted counts, and the lines above and below the solid line from 2015 to 2025 indicate the upper and lower 95 % confidence limits (CL), respectively, for the forecasted counts
Observed and forecasted values for selected yearsa
| 2009 | 2014 | 2015 | 2020 | 2025 | APC | |
|---|---|---|---|---|---|---|
| Period (2015–2025) | ||||||
| Number of NJUEBMI population (No.) | 2,032,074 | 2,968,697 | 3,156,022 | 4,092,646 | 5,029,270 | 4.77 % |
| 2,050,731 | 2,921,065 | (3,087,175–3,224,869) | (4,023,799–4,161,493) | (4,960,423–5,098,117) | ||
| Incidence (pmp) | ||||||
| All ESRD | 205.9 | 219.8 | 222.6 | 236.5 | 250.5 | 1.19 % |
| 206.8 | 218.8 | (219.8–225.4) | (233.7–239.4) | (247.7–253.3) | ||
| HD | 171.5 | 183.5 | 185.9 | 197.9 | 209.9 | 1.22 % |
| 171.2 | 182.5 | (184.2–187.6) | (196.2–199.6) | (208.2–211.7) | ||
| PD | 22.0 | 27.9 | 28.9 | 34.3 | 39.8 | 3.25 % |
| 22.4 | 27.4 | (26.9–30.9) | (32.0–36.6) | (37.2–42.3) | ||
| Kidney Transplant | 12.4 | 8.6 | 8.1 | 5.8 | 4.1 | −6.58 % |
| 13.2 | 8.9 | (7.0–9.4) | (4.9–6.7) | (3.4–5.0) | ||
| Prevalence (pmp) | ||||||
| All ESRD | 1083 | 1215 | 1241 | 1373 | 1505 | 1.95 % |
| 1083 | 1228 | (1186–1297) | (1318–1428) | (1450–1560) | ||
| HD | 815.9 | 928.8 | 967.4 | 1070 | 1128 | 1.55 % |
| 820.2 | 942.5 | (915.4–1019) | (765.5–1374) | (529.1–1727) | ||
| PD | 74.0 | 120.6 | 129.9 | 176.6 | 223.2 | 5.56 % |
| 71.7 | 125.3 | (124.5–135.4) | (171.1–182.0) | (217.7–228.7) | ||
| Kidney Transplant | 195.7 | 150.3 | 141.2 | 95.8 | 50.4 | −9.79 % |
| 190.7 | 160.6 | (128.6–153.8) | (83.2–108.4) | (37.8–63.0) | ||
| Health care costs (¥, in millions) | ||||||
| All ESRD | 172.0 | 318.9 | 341.5 | 470.9 | 600.3 | 5.80 % |
| 168.5 | 315.6 | (323.9–359.0) | (427.7–514.1) | (541.8–658.9) | ||
| HD | 160.5 | 271.7 | 294.0 | 405.3 | 516.5 | 5.80 % |
| 153.5 | 275.5 | (279.3–308.7) | (390.6–419.9) | (501.9–531.2) | ||
| PD | 7.8 | 32.2 | 34.1 | 45.9 | 54.6 | 4.82 % |
| 10.5 | 31.1 | (30.1–38.1) | (18.3–73.5) | (−4.0–113.2) | ||
| Kidney Transplant | 5.3 | 9.0 | 9.8 | 13.5 | 17.3 | 5.85 % |
| 4.5 | 9.0 | (8.6–10.9) | (12.4–14.7) | (16.1–18.4) | ||
| Per capita medical expenses (¥, in thousands) | ||||||
| All ESRD | 76.1 | 90.3 | 92.1 | 97.1 | 99.0 | 7.25‰ |
| 75.9 | 87.9 | (89.2–94.2) | (96.0–97.9) | (98.6–99.3) | ||
| HD | 88.7 | 104.7 | 106.5 | 120.8 | 135.0 | 2.40 % |
| 91.2 | 100.1 | (98.8–114.3) | (112.2–129.4) | (125.7–144.4) | ||
| PD | 68.2 | 92.3 | 94.4 | 98.9 | 99.8 | 5.58‰ |
| 71.3 | 84.9 | (84.9–98.1) | (96.9–99.6) | (99.4–99.9) | ||
| Kidney Transplant | 12.7 | 20.5 | 22.1 | 29.9 | 37.8 | 5.51 % |
| 11.6 | 19.2 | (19.6–24.5) | (27.5–32.4) | (35.3–40.2) | ||
Abbreviations: APC annual percentage change, NJUEBMI Nanjing urban employee basic medical insurance, ESRD end stage renal disease, HD hemodialysis, PD peritoneal dialysis, pmp per million population
aThe top values for each variable are the forecasted values. The bottom values for each variable in the 2009 and 2014 columns are the observed values. The bottom values in the 2015, 2020, and 2025 columns are 95 % confidence intervals for the forecasts
bThe selected forecasting models are listed in the brackets below each variable, separately
Goodness-of-fit statistical values
| Mean errora | Maximum error | Minimum error | Mean percent errorb | Maximum percent error | Minimum percent error | R-squarec | |
|---|---|---|---|---|---|---|---|
| Number of NJUEBMI population (No.) | 2.27E-05 | 55591 | −47633 | −0.09 | 2.93 | −2.88 | 0.997 |
| Incidence (pmp) | |||||||
| All ESRD | 3.23E-09 | 1.57 | −1.55 | −3.07E-03 | 0.73 | −0.75 | 0.943 |
| HD | −3.28E-09 | 0.94 | −0.98 | −1.73E-03 | 0.53 | −0.54 | 0.971 |
| PD | 0.15 | 1.52 | −0.65 | 0.56 | 5.66 | −2.76 | 0.869 |
| Kidney Transplant | −0.12 | 0.83 | −1.04 | −1.42 | 6.29 | −10.68 | 0.756 |
| Prevalence (pmp) | |||||||
| All ESRD | 4.55E-09 | 58.32 | −43.33 | −0.07 | 5.36 | −4.77 | 0.915 |
| HD | 1.17 | 24.73 | −65.08 | 0.12 | 2.78 | −8.16 | 0.931 |
| PD | −2.73E-10 | 4.7 | −4.92 | 0.41 | 10.93 | −5.61 | 0.993 |
| Kidney Transplant | −3.09E-09 | 10.31 | −9.57 | −0.06 | 6.42 | −4.9 | 0.961 |
| Health care costs (¥, in millions) | |||||||
| All ESRD | −0.64 | 16.61 | −15.22 | −1.57 | 7.09 | −13.46 | 0.990 |
| HD | −1.55E-09 | 8.89 | −12.8 | 0.63 | 15.31 | −12.41 | 0.991 |
| PD | 0.49 | 3.83 | −1.61 | 5.62 | 37.36 | −9.99 | 0.969 |
| Kidney Transplant | −1.00E-10 | 0.95 | −0.88 | −0.36 | 29 | −23.87 | 0.953 |
| Per capita medical expenses (¥, in thousands) | |||||||
| All ESRD | −0.11 | 3.35 | −2.89 | −0.27 | 3.88 | −4.48 | 0.942 |
| HD | 0.48 | 4.79 | −4.6 | 0.45 | 5.34 | −5.38 | 0.777 |
| PD | −0.94 | 8.46 | −8.69 | −2.49 | 9.46 | −13.08 | 0.852 |
| Kidney Transplant | −2.50E-11 | 1.94 | −1.34 | −0.7 | 10.93 | −12.1 | 0.917 |
Abbreviations: NJUEBMI Nanjing urban employee basic medical insurance, ESRD end stage renal disease, HD hemodialysis, PD peritoneal dialysis, pmp per million population
aThe mean error indicates an average difference (2004 to 2014) of the forecasted values from the observed values. The maximum error indicates one of the 11 years (2004 to 2014) that exhibited the largest deviation of the forecasted value from the observed value, and the minimum error indicates the smallest deviation. A positive sign indicates over forecasting, whereas a negative sign indicates under forecasting
bThe mean percent error reflects a proportional deviation of the mean error. Maximum and Minimum percent errors reflect proportional deviations of the largest and smallest errors, respectively
cThe R-Square indicates the correlation between the observed values and the forecasted values