Table 2.
Time series |
Detection algorithms |
Outbreaks periods |
Non-epidemic periods |
|
---|---|---|---|---|
Mean timeliness (days) | Number of days with false alarms N = 793 | Specificity (%) | ||
UrgIndex - hospitalisations |
C2, k = 0.08, 1d |
3.7 |
149 |
81.2 |
C2, k = 0.08, 3d |
8.7 |
75 |
90.5 |
|
C2, k = 0.1, 1d |
3.7 |
120 |
84.9 |
|
C2, k = 0.1, 3d |
14.3 |
56 |
92.9 |
|
C3, k = 0.08, 1d |
−10.7 |
560 |
29.4 |
|
C3, k = 0.08, 3d |
−8.7 |
497 |
37.3 |
|
C3, k = 0.08, 5d |
−6.7 |
446 |
43.8 |
|
C3, k = 0.1, 1d |
−8.3 |
511 |
35.6 |
|
C3, k = 0.1, 3d |
−6.3 |
440 |
44.5 |
|
C3, k = 0.1, 5d |
−0.3 |
384 |
51.6 |
|
C3, k = 0.5, 1d |
4.0 |
139 |
82.5 |
|
C3, k = 0.5, 3d |
6.0 |
78 |
90.2 |
|
C3, k = 1, 1d |
4.0 |
41 |
94.8 |
|
ICD10 – consultations |
C1, k = 0.07, 1d |
1.0 |
37 |
95.3 |
C1, k = 0.07, 3d |
5.0 |
23 |
97.1 |
|
C1, k = 0.07, 5d |
12.3 |
15 |
98.1 |
|
C1, k = 0.1, 1d |
1.0 |
36 |
95.5 |
|
C1, k = 0.1, 3d |
5.0 |
22 |
97.2 |
|
C1, k = 0.1, 5d |
12.3 |
14 |
98.2 |
|
C2, k = 0.07, 1d |
−1.7 |
34 |
95.7 |
|
C2, k = 0.07, 3d |
24.7 |
26 |
96.7 |
|
C2, k = 0.07, 5d |
26.7 |
18 |
97.7 |
|
C2, k = 0.1, 1d |
6.7 |
30 |
96.2 |
|
C2, k = 0.1, 3d |
25.0 |
22 |
97.2 |
|
C2, k = 0.1, 5d |
27.0 |
14 |
98.2 |
|
C3, k = 0.07, 1d |
−8.0 |
48 |
93.9 |
|
C3, k = 0.07, 3d |
3.0 |
40 |
95.0 |
|
C3, k = 0.07, 5d |
5.0 |
35 |
95.6 |
|
C3, k = 0.1, 1d |
−8.0 |
46 |
94.2 |
|
C3, k = 0.1, 3d |
3.0 |
36 |
95.5 |
|
C3, k = 0.1, 5d |
5.0 |
31 |
96.1 |
|
C3, k = 0.5, 1d | 8.3 | 26 | 96.7 |
C1, C2, and C3 refer to the three different moving average calculations of CUSUM statistics (C1-mild, C2-medium, C3-ultra).
k is the detectable difference to the mean used to the calculation of CUSUM statistics.
Negative mean timeliness: first day signal before the outbreaks beginning, on average.
Positive mean timeliness: first day signal after the outbreaks beginning, on average.