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. 2013 Apr 15;13:347. doi: 10.1186/1471-2458-13-347

Table 1.

Poisson regression model between the air pollutant and hemorrhagic fever with renal syndrome

Time lag
Univariate
Multivariate*
  RR (95% CI) P RR (95% CI) P
No time lag
0.998 (0.995–1.000)
.025
1.013 (1.008–1.017)
< .001
1–month lag
0.972 (0.970–0.975)
< .001
1.001 (0.997–1.004)
.785
2–month lag
0.938 (0.935–0.940)
< .001
0.991 (0.987–0.995)
< .001
3–month lag
0.933 (0.931–0.936)
< .001
0.983 (0.979–0.987)
< .001
4–month lag
0.964 (0.961–0.966)
< .001
0.992 (0.988–0.996)
< .001
5–month lag
0.997 (0.995–1.000)
.022
0.991 (0.988–0.995)
< .001
6–month lag
1.024 (1.022–1.026)
< .001
1.005 (1.002–1.008)
.001
7–month lag
1.036 (1.034–1.037)
< .001
1.006 (1.004–1.009)
< .001
8–month lag
1.031 (1.030–1.033)
< .001
1.002 (1.000–1.005)
.036
9–month lag
1.016 (1.014–1.018)
< .001
0.999 (1.012–1.031)
.360
10–month lag
1.005 (1.002–1.007)
< .001
0.993 (0.989–0.997)
.001
11–month lag
1.000 (0.998–1.002)
.827
0.997 (0.993–1.002)
.208
12–month lag 0.990 (0.988–0.992) < .001 0.999 (0.995–1.003) .572

CI confidence interval, RR relative risk.

Dependent variable is the occurrence of hemorrhagic fever with renal syndrome.

*Adjusted for seasonality and climate variables.