A Predictive Model to Analyze the Factors Affecting the Presence of Traumatic Brain Injury in the Elderly Occupants of Motor Vehicle Crashes Based on Korean In-Depth Accident Study (KIDAS) Database
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Source
2.2. Data Acquisition
2.2.1. Crash Data—Collision Deformation Classification Code (CDC Code)
2.2.2. Injury Data—Abbreviated Injury Scale (AIS)/Injury Severity Score (ISS)
2.2.3. Definition of the Controlled Indicators
2.2.4. Inclusion and Exclusion Criteria
2.3. Data Analysis
2.3.1. Logistic Regression Model
2.3.2. External Validation Analysis
2.3.3. Statistical Analysis
3. Results
3.1. General Characteristics
3.2. Factors Affecting TBI in the Elderly MVOs
3.3. Logistic Regression Model
3.4. External Validation of the Model
4. Discussion
4.1. Methodology
4.2. General Characteristics
4.3. Logistic Multiple Regression Analysis
5. Conclusions
6. Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | Total (n = 822) | TBI (n = 357) | Non-TBI (n = 465) | p Value |
---|---|---|---|---|
Sex, n (%) | 0.646 * | |||
Male | 505 (61.4) | 223 (62.5) | 282 (60.6) | |
Female | 317 (38.6) | 134 (37.5) | 183 (39.4) | |
Age (years), mean ± SD | 63.53 ± 7.25 | 63.44 ± 7.46 | 63.60 ± 7.10 | 0.764 |
Height (cm), mean ± SD | n = 575 | n = 237 | n = 338 | 0.113 |
163.19 ± 9.96 | 163.97 ± 7.97 | 162.64 ± 11.12 | ||
Weight (kg), mean ± SD | n = 576 | n = 238 | n = 338 | 0.838 |
64.04 ± 10.13 | 64.14 ± 9.98 | 63.97 ± 10.25 | ||
BMI (kg/m2), mean ± SD | n = 572 | n = 236 | n = 336 | 0.461 |
23.93 ± 3.02 | 23.82 ± 2.90 | 24.01 ± 3.10 | ||
Vehicle type, n (%) | 0.741 | |||
Sedan | 399 (48.5) | 179 (50.1) | 220 (47.3) | |
SUV | 161 (19.6) | 66 (19.6) | 95 (20.4) | |
Light truck | 174 (21.2) | 77 (21.2) | 97 (20.9) | |
Van | 88 (10.7) | 35 (10.7) | 53 (11.4) | |
Collision type, n (%) | 0.049 | |||
Frontal collision | 424 (51.6) | 165 (46.2) | 259 (55.7) | |
Lateral-nearside collision | 71 (8.6) | 36 (10.1) | 35 (7.5) | |
Lateral-farside collision | 60 (7.3) | 23 (6.4) | 37 (8.0) | |
Rear-end collision | 76 (9.2) | 37 (10.4) | 39 (8.4) | |
Rollover | 114 (13.9) | 54 (15.1) | 60 (12.9) | |
Multiple collisions | 77 (9.4) | 42 (11.8) | 35 (7.5) | |
Fastened seatbelt, n (%) | n = 796 | n = 349 | n = 447 | 0.008 |
547 (66.5) | 222 (63.6) | 325 (72.7) | ||
Deployed frontal airbag, n (%) | n = 610 | n = 279 | n = 331 | 0.356 |
154 (25.2) | 65 (23.3) | 89 (26.9) | ||
Seating position, n (%) | 0.201 | |||
Driver | 521 (63.4) | 225 (63.0) | 296 (63.7) | |
Passenger | 202 (24.6) | 94 (26.3) | 108 (23.2) | |
2nd-row left | 39 (4.7) | 19 (5.3) | 20 (4.3) | |
2nd-row right | 60 (7.3) | 19 (5.3) | 41 (8.8) | |
Seating row, n (%) | 0.331 * | |||
1st-row | 723 (88.0) | 319 (89.4) | 404 (86.9) | |
2nd-row | 99 (12.0) | 38 (10.6) | 61 (13.1) | |
Crush extent (CE), mean ± SD | 3.38 ± 1.79 | 3.43 ± 1.81 | 3.34 ± 1.79 | 0.586 |
Crush extent (CE) zone, n (%) | 0.570 | |||
Zone 1 (Extent 1–3) | 537 (65.3) | 233 (65.3) | 304 (65.4) | |
Zone 2 (Extent 4–6) | 220 (26.8) | 92 (25.8) | 128 (27.5) | |
Zone 3 (Extent 7–9) | 65 (7.9) | 32 (9.0) | 33 (7.1) | |
Alcohol, n (%) | n = 584 | n = 259 | n = 325 | 0.210 * |
No | 554 (94.9) | 248 (95.8) | 306 (94.2) | |
Yes | 30 (5.1) | 11 (4.2) | 19 (5.8) | |
Mental status, n (%) | n = 736 | n = 289 | n = 368 | 0.001 |
Alert | 657 (89.3) | 289 (85.8) | 368 (92.2) | |
Verbal response | 40 (5.4) | 24 (7.1) | 16 (4.0) | |
Pain response | 13 (1.8) | 12 (3.6) | 1 (0.3) | |
Unresponsive | 26 (3.5) | 12 (3.6) | 14 (3.5) | |
Result of emergency room, n (%) | n = 750 | n = 336 | n = 414 | 0.143 |
Discharge | 120 (16.0) | 61 (18.2) | 59 (14.3) | |
Transfer | 146 (19.5) | 63 (18.8) | 83 (20.0) | |
Ward admission | 357 (47.6) | 146 (43.5) | 211 (51.0) | |
ICU admission | 92 (12.3) | 47 (14.0) | 45 (10.9) | |
Expired | 35 (4.7) | 19 (5.7) | 16 (3.9) | |
Result of admission, n (%) | n = 314 | n = 151 | n = 163 | 0.115 |
Discharge | 259 (82.5) | 119 (78.8) | 140 (85.9) | |
Transfer | 47 (15.0) | 29 (19.2) | 18 (11.0) | |
Expired | 8 (2.5) | 3 (2.0) | 5 (3.1) | |
MAIS, median [IQR] | 2 [1–3] | 2 [2–3] | 2 [1–3] | <0.001 |
ISS, median [IQR] | 5 [2–13] | 6 [3–13] | 5 [2–12] | <0.001 |
Variables | Univariate | Multivariate |
---|---|---|
Sex, n (%) | ||
Male | Reference | Reference |
Female | 0.926 (0.697–1.230) | 0.927 (0.663–1.296) |
Age (year) | 0.997 (0.978–1.016) | |
Height (cm) | 1.016 (0.996–1.035) | |
Weight (kg), | 1.002 (0.985–1.018) | |
BMI (kg/m2) | 0.979 (0.927–1.035) | |
Vehicle type | ||
Sedan | Reference | Reference |
SUV | 0.854 (0.589–1.237) | 0.783 (0.528–1.161) |
Light truck | 0.976 (0.682–1.396) | 0.821 (0.547–1.231) |
Van | 0.812 (0.507–1.299) | 0.746 (0.452–1.232 |
Collision type | ||
Frontal collision | Reference | Reference |
Lateral-nearside collision | 1.615 (0.975–2.674) | 1.597 (0.938–2.718) |
Lateral-farside collision | 0.976 (0.560–1.701) | 1.125 (0.629–2.014) |
Rear-end collision | 1.489 (0.912–2.432) | 1.833 (1.077–3.119) |
Rollover | 1.413 (0.932–2.142) | 1.481 (0.959–2.288) |
Multiple collision | 1.884 (1.155–3.072) | 1.897 (1.136–3.167) |
Seatbelt | ||
Unfasten (vs. Fasten—Ref) | 1.524 (1.127–2.060) | 1.677 (1.215–2.315) |
Frontal airbag | ||
Non-deployment (vs. Deployment—Ref) | 1.211 (0.837–1.751) | |
Curtain airbag, n (%) | ||
Non-deployment (vs. Deployment—Ref) | 1.158 (0.449–2.982) | |
Seating position, n (%) | ||
Driver | Reference | Reference |
Passenger | 1.145 (0.826–1.587) | 1.134 (0.783–1.640) |
2nd-row left | 1.250 (0.652–2.397) | 0.884 (0.419–1.868) |
2nd-row right | 0.610 (0.344–1.079) | 0.465 (0.941–1.129) |
Seating row, n (%) | ||
1st-row | Reference | |
2nd-row | 0.789 (0.513–1.214) | |
Crush extent (CE) | 1.026 (0.950–1.107) | 1.031 (0.941–1.129) |
Crush extent (CE) zone, n (%) | ||
Zone 1 | Reference | |
Zone 2 | 0.938 (0.683–1.288) | |
Zone 3 | 1.265 (0.756–2.118) | |
Hosmer–Lemeshow: λ2 = 7.123, p = 0.523, Nagelkerke R2 = 0.050 |
Variables | β | SE | Wald | p Value | |
---|---|---|---|---|---|
Intercept | −0.561 | 0.222 | 6.389 | 0.011 | |
Sex | Female (vs. Male) | −0.076 | 0.171 | 0.197 | 0.657 |
Vehicle type | Sedan | Reference | 2.529 | 0.470 | |
SUV | −0.245 | 0.201 | 1.487 | 0.223 | |
Light truck | −0.198 | 0.207 | 0.912 | 0.339 | |
Van | −0.293 | 0.256 | 1.314 | 0.252 | |
Seating position | Driver | Reference | 0.070 | ||
Front Right Passenger | 0.125 | 0.189 | 0.442 | 0.506 | |
Second Left Passenger | −0.123 | 0.382 | 0.104 | 0.747 | |
Second Right Passenger | −0.765 | 0.333 | 5.271 | 0.022 | |
Seatbelt status | Unfastened (vs Fasten) | 0.517 | 0.164 | 9.902 | 0.002 |
Collision type | Frontal collision | Reference | 7.060 | 0.037 | |
Lateral-Nearside collision | 0.468 | 0.271 | 2.974 | 0.085 | |
Lateral-farside collision | 0.118 | 0.297 | 0.158 | 0.691 | |
Rear-end collision | 0.606 | 0.271 | 4.985 | 0.026 | |
Rollover | 0.393 | 0.222 | 3.134 | 0.077 | |
Multiple collisions | 0.640 | 0.262 | 5.991 | 0.014 | |
Crush extent (increased 1 unit) | 0.031 | 0.046 | 0.435 | 0.510 |
c-Statistics (95% CI) | Cut-Off Value | Sensitivity | Specificity |
---|---|---|---|
60.8% (57.4%, 64.2%) | 0.4832 | 0.417 | 0.768 |
TBI in the Elderly MVOs | Diagnosed Condition | ||
---|---|---|---|
TBI | non-TBI | ||
Predicted condition | TBI | 3 (TP: True Positive) | 10 (FP: False Positive) |
non-TBI | 3 (FN: False Negative) | 27 (TN: True Negative) | |
Sensitivity: 0.500 (TP/(TP + FN)), Specificity: 0.730 (TN/(FP + TN)), Accuracy: 0.698 ((TP + TN)/All) |
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Lee, H.Y.; Youk, H.; Kim, O.H.; Kang, C.Y.; Kong, J.S.; Choo, Y.I.; Choi, D.R.; Lee, H.J.; Kang, D.K.; Lee, K.H. A Predictive Model to Analyze the Factors Affecting the Presence of Traumatic Brain Injury in the Elderly Occupants of Motor Vehicle Crashes Based on Korean In-Depth Accident Study (KIDAS) Database. Int. J. Environ. Res. Public Health 2021, 18, 3975. https://doi.org/10.3390/ijerph18083975
Lee HY, Youk H, Kim OH, Kang CY, Kong JS, Choo YI, Choi DR, Lee HJ, Kang DK, Lee KH. A Predictive Model to Analyze the Factors Affecting the Presence of Traumatic Brain Injury in the Elderly Occupants of Motor Vehicle Crashes Based on Korean In-Depth Accident Study (KIDAS) Database. International Journal of Environmental Research and Public Health. 2021; 18(8):3975. https://doi.org/10.3390/ijerph18083975
Chicago/Turabian StyleLee, Hee Young, Hyun Youk, Oh Hyun Kim, Chan Young Kang, Joon Seok Kong, Yeon Il Choo, Doo Ruh Choi, Hae Ju Lee, Dong Ku Kang, and Kang Hyun Lee. 2021. "A Predictive Model to Analyze the Factors Affecting the Presence of Traumatic Brain Injury in the Elderly Occupants of Motor Vehicle Crashes Based on Korean In-Depth Accident Study (KIDAS) Database" International Journal of Environmental Research and Public Health 18, no. 8: 3975. https://doi.org/10.3390/ijerph18083975
APA StyleLee, H. Y., Youk, H., Kim, O. H., Kang, C. Y., Kong, J. S., Choo, Y. I., Choi, D. R., Lee, H. J., Kang, D. K., & Lee, K. H. (2021). A Predictive Model to Analyze the Factors Affecting the Presence of Traumatic Brain Injury in the Elderly Occupants of Motor Vehicle Crashes Based on Korean In-Depth Accident Study (KIDAS) Database. International Journal of Environmental Research and Public Health, 18(8), 3975. https://doi.org/10.3390/ijerph18083975