Asthma Hospital Admission and Readmission Spikes, Advancing Accurate Classification to Advance Understanding of Causes
Abstract
:1. Introduction
2. Materials and Methods
2.1. Design/Setting
2.2. Statistical Method
- 1.
- Similarly, to the model-based approach by Newson et al. [8], we used a semi parametric general additive model (GAM) [20] to model mean asthma admission and readmission daily counts, adjusting for seasonality, time trend and day of week effect as done previously with these VAED data [11]. In line with Newson et al., we used the a priori definition of a residual being 4 SD from the model predicted mean as a threshold to identify HAADs and HARDs. We refer to this method as M.4SD, where M signifies model based.
- 2.
- We follow the example of Silvers et al. [7] and use a rolling 25% trimmed mean and SD then choose a threshold based on the inspection of residual qq plots. We refer to this method as TMQQ (trimmed mean qq plot).
3. Results
3.1. High Asthma Admission Days (HAADs)
3.1.1. S-H-ESD
3.1.2. TMQQ
3.1.3. M.4SD
3.2. High Asthma Readmission Days (HARDs)
3.2.1. S-H-ESD
3.2.2. TMQQ
3.2.3. M.4SD
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Month * | HAAD | HARD | ||||
---|---|---|---|---|---|---|
S.H.ESD † | TMQQ ‡ | M.4SD ⁋ | S.H.ESD † | TMQQ ‡ | M.4SD ⁋ | |
December | 0 (0%) | 0 (0%) | 0 (0%) | 0 (0%) | 0 (0%) | 0 (0%) |
January | 0 (0%) | 0 (0%) | 0 (0%) | 0 (0%) | 1 (4.5%) | 1 (5.6%) |
February | 10 (59%) | 20 (87%) | 2 (29%) | 0 (0%) | 5 (22.7%) | 0 (0%) |
March | 1 (6%) | 0 (0%) | 1 (14%) | 5 (20%) | 5 (22.7%) | 5 (27.8%) |
April | 0 (0%) | 1 (4%) | 0 (0%) | 1 (4%) | 1 (4.5%) | 1 (5.6%) |
May | 3 (18%) | 1 (4%) | 0 (0%) | 2 (8%) | 1 (4.5%) | 1 (5.6%) |
June | 1 (6%) | 0 (0%) | 0 (0%) | 6 (24%) | 2 (9.1%) | 6 (33.3%) |
July | 0 (0%) | 0 (0%) | 0 (0%) | 0 (0%) | 1 (4.5%) | 0 (0%) |
August | 0 (0%) | 0 (0%) | 0 (0%) | 7 (28%) | 1 (4.5%) | 2 (11.1%) |
September | 0 (0%) | 0 (0%) | 0 (0%) | 2 (8%) | 0 (0%) | 2 (11.1%) |
October | 0 (0%) | 0 (0%) | 0 (0%) | 1 (4%) | 5 (22.7%) | 0 (0%) |
November | 2 (12%) | 1 (4%) | 4 (57%) | 1 (4%) | 0 (0%) | 0 (0%) |
Total | 17 (101%) | 23 (99%) | 7 (100%) | 25 (100%) | 22 (99.7%) | 18 (100.1%) |
Total as % of 4748 Days | 0.4% | 0.5% | 0.2% | 0.5% | 0.5% | 0.4% |
Year | HAAD | HARD | ||||
---|---|---|---|---|---|---|
S.H.ESD | TMQQ | M.4SD | S.H.ESD | TMQQ | M.4SD | |
<= 2002 | 10 (59%) | 6 (26%) | 5 (71%) | 9 (36%) | 10 (45%) | 6 (33%) |
> 2002 | 7 (41%) | 17 (74%) | 2 (29%) | 16 (64%) | 12 (55%) | 12 (67%) |
Total | 17 (100%) | 23 (100%) | 7 (100%) | 25 (100%) | 22 (100%) | 18 (100%) |
Year | HAAD | HARD | ||||
---|---|---|---|---|---|---|
S.H.ESD | TMQQ | M.4SD | S.H.ESD | TMQQ | M.4SD | |
Seasonality | Yes | Yes | No | Yes | No | Yes |
Time trend | Yes | No | Yes | Yes | No | Yes |
Size | Yes | No | Yes | Yes | No | Yes |
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Batra, M.; Erbas, B.; Vicendese, D. Asthma Hospital Admission and Readmission Spikes, Advancing Accurate Classification to Advance Understanding of Causes. Diagnostics 2022, 12, 2445. https://doi.org/10.3390/diagnostics12102445
Batra M, Erbas B, Vicendese D. Asthma Hospital Admission and Readmission Spikes, Advancing Accurate Classification to Advance Understanding of Causes. Diagnostics. 2022; 12(10):2445. https://doi.org/10.3390/diagnostics12102445
Chicago/Turabian StyleBatra, Mehak, Bircan Erbas, and Don Vicendese. 2022. "Asthma Hospital Admission and Readmission Spikes, Advancing Accurate Classification to Advance Understanding of Causes" Diagnostics 12, no. 10: 2445. https://doi.org/10.3390/diagnostics12102445
APA StyleBatra, M., Erbas, B., & Vicendese, D. (2022). Asthma Hospital Admission and Readmission Spikes, Advancing Accurate Classification to Advance Understanding of Causes. Diagnostics, 12(10), 2445. https://doi.org/10.3390/diagnostics12102445