| Literature DB >> 35238320 |
Graeme McLeod1,2, Iain Kennedy1, Judith Joss1, Eilidh Simpson3, Katriona Goldmann4.
Abstract
BACKGROUND: Hip fracture is associated with high mortality. Identification of individual risk informs anesthetic and surgical decision-making and can reduce the risk of death. However, interpreting mathematical models and applying them in clinical practice can be difficult. There is a need to simplify risk indices for clinicians and laypeople alike.Entities:
Keywords: fracture; hip; hip fracture; machine learning; model; mortality; nomogram; postoperative; prediction; surgery; survival; web
Year: 2022 PMID: 35238320 PMCID: PMC9008534 DOI: 10.2196/34096
Source DB: PubMed Journal: Interact J Med Res ISSN: 1929-073X
Characteristics of surviving and deceased patients 365 days after hip fracture surgery.
| Variable | Surviving (n=235) | Deceased (n=94) | Difference (95% CI), odds ratio (95% CI) | ||||||||
| Age in years, mean (SD) | 82.5 (10.0) | 80.9 (9.6) | 1.5 (0.8 to 3.9) | .21 | |||||||
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| 1.0 (0.6 to 1.7) | .94 | |||||||||
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| Male | 61 (26) | 24 (25.5) |
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| Female | 174 (74) | 70 (74.5) |
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| BMI in kg/m2, mean (SD) | 24.2 (5.7) | 21.8 (4.2) | 2.4 (0.9 to 3.8) | .002 | |||||||
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| N/Aa | <.001 | |||||||||
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| I | 7 (3) | 0 (0) |
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| II | 62 (26.4) | 5 (5.3) |
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| III | 113 (48.1) | 58 (61.7) |
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| IV | 27 (11.5) | 26 (27.7) |
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| N/A | <.001 | |||||||||
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| Home | 189 (80.4) | 46 (48.9) |
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| Care home | 41 (17.4) | 45 (47.9) |
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| Rehabilitation hospital | 3 (1.3) | 3 (3.2) |
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| Acute-care hospital | 1 (0.4) | 0 (0) |
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| Long-term–care hospital | 1 (0.4) | 0 (0) |
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| Scottish Index of Multiple Deprivation 2016 score, median (IQR, full range) | 11 (6 to 16, 1 to 20) | 12 (8 to 16, 1 to 20) | 1.0 (–1.0 to 2.0) | .42 | |||||||
| Stay in days, mean (SD) | 12.6 (10.2) | 12.1 (8.2) | 0.5 (–1.7 to 2.6) | .67 | |||||||
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| 1.0 (0.6 to 0.6) | .89 | |||||||||
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| Left | 123 (52.3) | 50 (53.2) |
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| Right | 112 (47.7) | 44 (46.8) |
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| N/A | .70 | |||||||||
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| Bipolar | 18 (7.7) | 3 (3.2) |
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| Compression hip screw | 80 (34) | 35 (37.2) |
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| Collarless, polished, tapered | 26 (11.1) | 1 (1.1) |
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| Thompson | 88 (37.4) | 45 (47.9) |
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| Femoral nail | 23 (9.8) | 10 (10.6) |
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| Hemoglobin in g/L, mean (SD) | 120.3 (18.0) | 115.6 (15.0) | 4.7 (0.8 to 8.6) | .01 | |||||||
| White cell count in 109/L, mean (SD) | 11.8 (6.1) | 11.1 (3.2) | 0.8 (–0.2 to 1.8) | .14 | |||||||
| C-reactive protein in mg/L, median (IQR, full range) | 6 (3 to 25, 2 to 299.0) | 13 (3 to 46, 3 to 273) | 1.0 (0.0 to 3.0) | .046 | |||||||
| Lactate in mmol/L, mean (SD) | 1.47 (0.74) | 1.70 (0.92) | 0.24 (0.0 to 0.48) | .04 | |||||||
| Creatinine in µmol/L, mean (SD) | 71.1 (27.5) | 89.2 (42.0) | 18.2 (8.4 to 27.8) | <.001 | |||||||
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| N/A | .02 | |||||||||
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| Daytime (9 AM to 5 PM) | 196 (83.4) | 78 (83) |
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| Evening (5 PM to 10 PM) | 37 (15.7) | 14 (14.9) |
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| Night (10 PM to 9 AM) | 2 (0.9) | 2 (2.1) |
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| N/A | <.001 | |||||||||
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| Home | 100 (42.6) | 13 (13.8) |
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| Care home | 61 (26) | 42 (44.7) |
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| Rehabilitation setting | 54 (23) | 18 (19.1) |
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| Acute-care hospital | 15 (6.4) | 6 (6.4) |
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| Long-term-care hospital | 7 (3) | 3 (3.2) |
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| Died in hospital | 2 (0.9) | 8 (8.5) |
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aN/A: not applicable.
Figure 1Final Cox proportional hazards model 365 days after hip fracture surgery. Hazard ratios show a reduced risk of death with increasing age and lower BMI. Risk of death rose with increased creatinine and lactate levels. Note the nonlinear increase in risk with creatinine level, and the increase in risk from values immediately above the physiological range.
Model validation. Global and final Cox proportional hazards models. The final model was developed after iterative data reduction and calibration using bootstrap and showed good validation in 329 patients.
| Model |
| LR ( | Dxyc | C indexd | ge | |
| Global Cox proportional hazards model 365 days after surgery | 0.364 | .002 | 0.623 | 0.812 | 1.897 | |
| Final Cox proportional hazards model 365 days after surgery | 0.231 | <.01 | 0.474 | 0.732 | 1.360 |
aR2 coefficient of determination.
bLikelihood ratio chi-square test.
cSomers Dxy test.
dConcordance index.
eGini index.
Independent variables predicting mortality in the final Cox proportional hazards model, a logistic model, and a binomial model. All models are 365 days after hip fracture surgery. Variables common to all models included age, BMI, lactate, and creatinine. Apostrophes indicate nonlinear restricted cubic splines.
| Dependent variable | Final Cox proportional hazards model, regression coefficient (95% CI) | Logistic regression model, regression coefficient (95% CI) | Binomial model, regression coefficient (95% CI) |
| Age | 0.976 (0.947 to 1.007) | –0.023 (–0.062 to 0.016) | –0.018 (–0.056 to 0.020) |
| BMI | 0.913 (0.862 to 0.967) | –0.115 (–0.199 to –0.032) | –0.126 (–0.205 to –0.047) |
| White cell count | N/Aa | 0.138 (–0.109 to 0.385) | –0.028 (–0.105 to 0.048) |
| White cell count’ | N/A | –0.196 (–0.453 to 0.062) | N/A |
| Lactate | 0.003 (<0.001 to 0.199) | –5.519 (–10.812 to –0.226) | –0.899 (–0.095 to 1.893) |
| Creatinine | 0.906 (0.817 to 1.005) | –0.072 (–0.198 to 0.055) | –0.031 (0.008 to 0.055) |
| Creatinine’ | 1.185 (1.030 to 1.364) | 0.133 (–0.042 to 0.308) | N/A |
| Lactate*Creatinine | 1.110 (1.037 to 1.189) | 0.098 (0.013 to 0.183) | -0.007 (–0.018 to 0.004) |
| Lactate*Creatinine’ | 0.865 (0.788 to 0.951) | –0.134 (–0.250 to –0.018) | N/A |
| Constant | N/A | 5.471 (–3.329 to 14.270) | 0.491 (–3.379 to 4.360) |
aN/A: not applicable.
Logistic regression validation results.
| Model |
| LR ( | Brier | Dxyc | C indexd | ge | |
| Logistic model (30 days) | 0.714 | 17.390 | .004 | 0.069 | 0.541 | 0.770 | 1.348 |
| Logistic model (120 days) | 0.396 | 21.280 | .002 | 0.114 | 0.706 | 0.853 | 2.051 |
| Logistic model (365 days) | 0.277 | 37.252 | <.001 | 0.147 | 0.562 | 0.781 | 1.619 |
aR2 coefficient of determination.
bLikelihood ratio chi-square test.
cSomers Dxy test.
dConcordance index.
eGini index.
Diagnostic results for Nottingham Hip Fracture Score.
| Time | Area under the receiver operating characteristics curve (95% CI) | |
| 30 days | 0.576 (0.454-0.698) | .22 |
| 120 days | 0.606 (0.538-0.674) | .003 |
| 365 days | 0.602 (0.526-0.678) | .01 |
Figure 2Dynamic nomogram. Top: sliders that are used to enter data for age (standardized to 80 years) and white cell count (standardized to 10 x 109/L). Bottom: 4 imaginary scenarios, differing in BMI, creatinine, and lactate. The red, green, blue, and purple lines represent the following values for BMI, creatinine, and lactate, respectively: 25 kg/m2, 80 µmol/L, 1.5; 15 kg/m2, 80 µmol/L, 1.5 mmol/L; 15 kg/m2, 80 µmol/L, 4 mmol/L; and 15 kg/m2, 140 µmol/L, 4 mmol/L. The dynamic nomogram is available on our website [16].