| Literature DB >> 29043082 |
Raaj Kishore Biswas1, Enamul Kabir2, Rachel King2.
Abstract
BACKGROUND: Traumatic brain injury (TBI) is a much researched topic in medical health, which requires additional studies to understand various effects of demographic and geographic factors that can assist in developing the most effective treatments. Thousands of people of different ages are suffering from lifelong disabilities, either mild or severe, from TBI and the number is increasing. This study aims to increase our understanding of the effect of sex and age by applying five different statistical methods to evaluate the effect of these covariates on two independent TBI data sets representing patients from different geographical cohorts. A primary data was collected from Bangladesh and it was compared with CRASH (Corticosteroid Randomisation after Significant Head Injury) data, representing various countries around the world.Entities:
Keywords: Bangladesh; Glasgow outcome scale; Health geography; Ordinal outcome scale; Public health
Year: 2017 PMID: 29043082 PMCID: PMC5632827 DOI: 10.1186/s13690-017-0211-y
Source DB: PubMed Journal: Arch Public Health ISSN: 0778-7367
Fig. 1Sliding Dichotomy model: binary bands are created from ordinal scales
Frequency distribution of sex and age in both data sets
| Covariates | Levels | Bangladeshi data (151) | CRASH data (7236) |
|---|---|---|---|
| Gender | Female | 102(67.5%) | 5856 (80.9%) |
| Male | 49 (32.5%) | 1380 (19.1%) | |
| Age Groups | Old (>59) | 54 (35.8%) | 616 (8.5%) |
| Adult (25 ∼58) | 60 (39.7%) | 4286 (59.2%) | |
| Young (0 ∼25) | 37 (24.5%) | 2334 (32.2%) |
Distribution of sex by GOS in binary and four point ordinal form
| Bangladeshi data (151) | CRASH data (7236) | |||
|---|---|---|---|---|
| Outcome scales | Male (% among male) | Female(% among female) | Male (% among male) | Female(% among female) |
| Favorable (GR & MD) | 77 (75.5%) | 37 (75.5%) | 4904 (83.7%) | 1094 (79.3%) |
| Unfavorable (SD & VS) | 25 (24.5%) | 12 (24.5%) | 952 (16.3%) | 286 (20.7%) |
| GR | 55 (53.9%) | 23 (46.9%) | 3511 (60%) | 822 (59.6%) |
| MD | 22 (21.6%) | 14 (28.6%) | 1393 (23.8%) | 272 (19.7%) |
| SD | 06 (5.9%) | 07 (14.3%) | 747 (12.8%) | 209 (15.1%) |
| VS | 19 (18.2%) | 05 (10.2%) | 205 (3.5%) | 77 (5.6%) |
Statistical models on GOS by sex
| Tests | Bangladeshi data | Bootstrap of Bangladeshi data | CRASH data | |
|---|---|---|---|---|
| Fisher’s exact test |
| 1 | <0.001 | |
| CI | 0.427 ∼ 2.441 | 0.639 ∼ 0.863 | ||
| Odds | 1.001 | 0.743 | ||
| Test of proportions |
| 0.99 | <0.001 | |
| CI | -0.174 ∼ 0.173 | -0.074 ∼ -0.023 | ||
| Binary logistic model |
| 0.998 | 0.998 | <0.001 |
| CI | 0.453 ∼ 2.211 | 0.453 ∼ 2.211 | 0.641 ∼ 0.861 | |
| Odds | 1.001 | 1.001 | 0.743 | |
| Proportional odds model | CI | 0.477 ∼ 1.682 | 0.477 ∼ 1.682 | 0.813 ∼ 1.025 |
| Odds | 0.896 | 0.896 | 0.913 | |
| Sliding dichotomy model |
| 0.841 | 0.841 | 0.688 |
| CI | 0.441 ∼ 2.735 | 0.441 ∼ 2.736 | 0.816 ∼ 1.144 | |
| Odds | 1.098 | 1.098 | 0.966 | |
The reference level for sex was ‘male’
Distribution of GOS (as binary outcome) over age
| Bangladeshi data (151) | CRASH data (7236) | |||||
|---|---|---|---|---|---|---|
| Outcome scales | Old (% among Old) | Adult (% among adult) | Young (% among Young) | Old (% among Old) | Adult (% among adult) | Young (% among Young) |
| Favourable (GR & MD) | 12 (22.2%) | 17 (28.3%) | 8 (21.6%) | 197 (32%) | 781 (18.2%) | 260 (11.1%) |
| Unfavourable (SD & VS) | 42 (77.8%) | 43 (71.7%) | 29 (78.4%) | 419 (68%) | 35.05 (81.8%) | 2074(88.9%) |
| GR | 26 (48.1%) | 29 (48.3%) | 23 (62.2%) | 313 (50.8%) | 2444 (54%) | 1576 (67.5%) |
| MD | 16 (29.6%) | 14 (23.3%) | 6 (16.2%) | 106 (17.2%) | 1061 (24.8%) | 498 (21.3%) |
| SD | 5 (9.3%) | 6 (10%) | 2 (5.4%) | 138 (22.4%) | 610 (14.2%) | 208 (8.9%) |
| VS | 7 (13%) | 11 (18.3%) | 6 (16.2%) | 59 (9.6%) | 171 (04%) | 52 (2.2%) |
Statistical tests on age groups vs GOS
| Tests | Bangladeshi data | Bootstrap of Bangladeshi data | CRASH data | ||||
|---|---|---|---|---|---|---|---|
| Adult | Young | Adult | Young | Adult | Young | ||
| Binary logistic model |
| 0.455 | 0.946 | 0.455 | 0.946 | <0.001 | <0.001 |
| CI | 0.308 ∼ 1.695 | 0.376 ∼ 2.849 | 0.308 ∼ 1.695 | 0.376 ∼ 2.849 | 1.751 ∼ 2.542 | 3.031 ∼ 4.640 | |
| Odds | 0.723 | 1.034 | 0.723 | 1.036 | 2.110 | 3.751 | |
| Proportional odds model | CI | 0.452 ∼ 1.761 | 0.650 ∼ 3.331 | 0.452 ∼ 1.761 | 0.649 ∼ 3.331 | 1.331 ∼ 1.849 | 0.855 ∼ 7.299 |
| Odds | 0.892 | 1.471 | 0.892 | 1.471 | 1.569 | 2.498 | |
| Sliding dichotomy model |
| 0.815 | 0.955 | 0.815 | 0.955 | 0.513 | 0.332 |
| CI | 0.338 ∼ 2.349 | 0.334 ∼ 3.19 | 0.337 ∼ 2.349 | 0.334 ∼ 3.198 | 0.714 ∼ 1.18 | 0.673 ∼ 1.143 | |
| Odds | 0.891 | 1.0333 | 0.891 | 1.0333 | 0.919 | 0.877 | |
The reference level for age group was ‘old’
Cross table of sex and age in both data sets
| Bangladeshi data (151) | CRASH data (7236) | |||
|---|---|---|---|---|
| Sex | Male (% among the age group) | Female (% among the age group) | Male (% among the age group) | Female (% among the age group) |
| Age groups | ||||
| Old (>59) | 37 (68.5%) | 17 (31.5%) | 411 (66.7%) | 205 (33.3%) |
| Adult (25 ∼58) | 39 (65%) | 21 (35%) | 3534 (82.5%) | 752 (17.5%) |
| Young (15 ∼25) | 26 (70.3%) | 11 (29.7%) | 1911 (81.9%) | 423 (18.1%) |
Statistical tests on age groups and sex with interactions for Bangladesh data
| Bangladeshi data | ||||||
|---|---|---|---|---|---|---|
| Tests | Sex (Female) | Adult | Young | Sex*Adult | Sex*Young | |
| Binary logistic model |
| 0.876 | 0.681 | 0.627 | 0.774 | 0.289 |
| CI | 0.229 ∼ 3.517 | 0.276 ∼ 2.315 | 0.233 ∼ 2.407 | 0.128 ∼ 4.613 | 0.300 ∼ 56.222 | |
| Odds | 0.897 | 0.800 | 0.749 | 0.769 | 4.109 | |
| Proportional odds model | CI | 5.0218 ∼ 0.063 | 0.273 ∼ 1.972 | 0.350 ∼ 2.528 | 0.408 ∼ 6.831 | 0.649 ∼ 24.912 |
| Odds | 0.563 | 0.734 | 0.941 | 1.669 | 4.020 | |
| Sliding dichotomy model |
| 0.516 | 0.913 | 0.716 | 0.568 | 0.554 |
| CI | 0.323 ∼ 9.477 | 0.334 ∼ 3.402 | 0.334 ∼ 4.931 | 0.061 ∼ 4.653 | 0.038 ∼ 5.795 | |
| Odds | 1.750 | 1.067 | 1.283 | 0.531 | 0.468 | |
The reference level for sex was ‘male’ and age group was ‘old’
Statistical tests on age groups and sex with interactions for CRASH data
| CRASH data | ||||||
|---|---|---|---|---|---|---|
| Tests | Sex (Female) | Adult | Young | Sex*Adult | Sex*Young | |
| Binary logistic model |
| <0.001 | <0.001 | <0.001 | 0.018 | 0.024 |
| CI | 0.372 ∼ 0.752 | 1.367 ∼ 2.181 | 2.339 ∼ 3.935 | 1.089 ∼ 2.447 | 1.076 ∼ 2.819 | |
| Odds | 0.529 | 1.727 | 3.034 | 1.633 | 1.742 | |
| Proportional odds model | CI | 0.415 ∼ 0.796 | 1.073 ∼ 1.598 | 1.671 ∼ 2.545 | 1.214 ∼ 2.496 | 1.252 ∼ 2.759 |
| Odds | 0.574 | 1.309 | 2.062 | 1.741 | 1.858 | |
| Sliding dichotomy model |
| 0.615 | 0.803 | 0.697 | 0.594 | 0.37 |
| CI | 0.682 ∼ 1.905 | 0.712 ∼ 1.302 | 0.686 ∼ 1.286 | 0.489 ∼ 1.505 | 0.423 ∼ 1.378 | |
| Odds | 1.141 | 0.962 | 0.939 | 0.858 | 0.763 | |
The reference level for sex was ‘male’ and age groups was ‘old’
Interaction effects for CRASH data
| CRASH data | ||||||
|---|---|---|---|---|---|---|
| Tests | Male*Adult | Male*Young | Female*Old | Female*Adult | Female*Young | |
| Binary logistic model |
| <0.001 | <0.001 | <0.001 | <0.001 | <0.001 |
| CI | 1.367 ∼ 2.181 | 2.339 ∼ 3.935 | 0.372 ∼ 0.752 | 1.126 ∼ 1.975 | 1.937 ∼ 4.031 | |
| Odds | 1.727 | 3.034 | 0.529 | 1.490 | 2.794 | |
| Proportional odds model | CI | 1.073 ∼ 1.598 | 1.671 ∼ 2.545 | 0.415 ∼ 0.796 | 1.035 ∼ 1.656 | 1.668 ∼ 2.904 |
| Odds | 1.309 | 2.062 | 0.574 | 1.309 | 2.201 | |
The reference level considered here was Male*Old