| Literature DB >> 25168984 |
Abstract
Inpatient falls are the most common adverse events that occur in a hospital, and about 3 to 10% of falls result in serious injuries such as bone fractures and intracranial haemorrhages. We previously reported that bone fractures and intracranial haemorrhages were two major fall-related injuries and that risk assessment score for osteoporotic bone fracture was significantly associated not only with bone fractures after falls but also with intracranial haemorrhage after falls. Based on the results, we tried to establish a risk assessment tool for predicting fall-related severe injuries in a hospital. Possible risk factors related to fall-related serious injuries were extracted from data on inpatients that were admitted to a tertiary-care university hospital by using multivariate Cox' s regression analysis and multiple logistic regression analysis. We found that fall risk score and fracture risk score were the two significant factors, and we constructed models to predict fall-related severe injuries incorporating these factors. When the prediction model was applied to another independent dataset, the constructed model could detect patients with fall-related severe injuries efficiently. The new assessment system could identify patients prone to severe injuries after falls in a reproducible fashion.Entities:
Mesh:
Year: 2014 PMID: 25168984 PMCID: PMC4825464 DOI: 10.5539/gjhs.v6n5p70
Source DB: PubMed Journal: Glob J Health Sci ISSN: 1916-9736
Results of univariate analysis of risk factors for severe injuries after falls
| Factors | Fallers with severe injuries | Non-fallers and fallers without severe injuries | Logrank test | Chi-square test |
|---|---|---|---|---|
| All patients | 43 | 29 067 | ||
| History of falls | 27 | 12 176 | 0.003 | 0.008 |
| Age >=65 | 34 | 15 283 | <0.001 | <0.001 |
| Male gender | 13 | 15 305 | 0.002 | 0.005 |
| BMI >=30 | 6 | 6 777 | 0.465 | 1.000 |
| Gait instability | 8 | 2 223 | 0.121 | 0.016 |
| Agitated confusion | 11 | 1 823 | 0.003 | <0.001 |
| Frequent urination | 10 | 2 352 | 0.010 | <0.001 |
| Visual impairment | 11 | 5 093 | 0.097 | 0.235 |
| Lower limb weakness | 19 | 4 814 | 0.005 | <0.001 |
| Prescription of ‘culprit’ drugs | 9 | 3 338 | 0.656 | 0.089 |
| STRATIFY >=2 | 23 | 6 372 | <0.001 | <0.001 |
| FRAX™ >=10 | 32 | 10 438 | <0.001 | <0.001 |
| LOS >=14 | 31 | 14 115 | - | 0.003 |
| Ward | - | - | 0.636 | <0.001 |
| Clinical department | - | - | 0.815 | <0.001 |
| Background disease (ICD10) | - | - | 0.086 | <0.001 |
| Any anticoagulants or antiplatelets | 19 | 4 846 | 0.008 | <0.001 |
| Warfarin | 13 | 2 606 | 0.010 | <0.001 |
Factors that may associated with falls and severe injuries after falls were evaluated to determine whether they are associated with severe injuries after falls by using the differences in proportions test and logrank test in the development dataset. LOS, length of hospital stay.
Results of multivariate analysis of risk factors for severe injuries after falls
| A. | ||||||
| Items | Estimated coefficient (β) | Standard error for β | Sig. | Hazard ratio | 95% C.I. for β | |
| STRATIFY | 0.431 | 0.121 | <0.001 | 1.539 | 1.214 | 1.952 |
| FRAX™ | 0.048 | 0.012 | <0.001 | 1.049 | 1.024 | 1.074 |
| B. | ||||||
| Items | Estimated coefficient (β) | Standard error for β | Sig. | Odds ratio | 95% C.I. for β | |
| STRATIFY | 0.539 | 0.118 | <0.001 | 1.714 | 1.359 | 2.161 |
| FRAX™ | 0.052 | 0.012 | <0.001 | 1.054 | 1.029 | 1.079 |
| Constant | -7.780 | 0.284 | <0.001 | |||
Risk factors that were significantly associated with severe injures after falls in Table 1 were analyzed by multivariate Cox’ s regression analysis (A) and multiple logistic regression analysis (B). Significant factors were selected by using the stepwise selection method. CI, confidence interval.
Comparison of performances of the constructed models to predict severe injuries after falls
A.Development dataset
| Model | Risk Criteria | Event +ve | Event -ve | Total | Sensitivity (%) | Specificity (%) | PPV (%) | NPV (%) | F-measure | ||
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | High | 26 | 5 205 | 5 231 | |||||||
| Low | 17 | 23 862 | 23 879 | 60.47 | 82.09 | 0.50 | 99.93 | 0.0099 | |||
| Total | 43 | 29 067 | 29 110 | ||||||||
| 2 | High | 25 | 4 282 | 4 307 | |||||||
| Low | 18 | 24 785 | 24 803 | 58.14 | 85.27 | 0.58 | 99.93 | 0.0115 | |||
| Total | 43 | 29 067 | 29 110 | ||||||||
| 3 | High | 18 | 3 118 | 3 136 | |||||||
| Low | 25 | 25 949 | 25 974 | 41.86 | 89.27 | 0.57 | 99.90 | 0.0113 | |||
| Total | 43 | 29 067 | 29 110 | ||||||||
| STRATIFY | High | 23 | 6 372 | 6 395 | |||||||
| Low | 20 | 22 695 | 22 715 | 53.49 | 78.08 | 0.36 | 99.91 | 0.0071 | |||
| Total | 43 | 29 067 | 29 110 | ||||||||
| FRAX™ | High | 32 | 10 438 | 10 470 | |||||||
| Low | 11 | 18 629 | 18 640 | 74.42 | 64.09 | 0.31 | 99.94 | 0.0061 | |||
| Total | 43 | 29 067 | 29 110 | ||||||||
| No screening | 43 | 29 067 | 29 110 | 0.15 | |||||||
| B. Test dataset | |||||||||||
After three models had been constructed to predict severe injuries after falls, we compared the performances of the models by applying the models to the development dataset (A) and the test dataset (B). Sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV) and F-value were calculated. Event +ve, event positive; event -ve, event negative.
Figure 1Two-dimensional risk assessment matrix composed of FRAX™ score and STRATIFY score
Figure 2Survival plots for severe injuries after falls