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  3. Anterior-posterior view by full-body digital X-ray to rule out severe spinal injuries in Polytraumatized patients.
 

Anterior-posterior view by full-body digital X-ray to rule out severe spinal injuries in Polytraumatized patients.

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BORIS DOI
10.48350/154926
Publisher DOI
10.1186/s12873-021-00419-1
PubMed ID
33663394
Description
BACKGROUND

Spinal injuries are present in 16-31% of polytraumatized patients. Rapid identification of spinal injuries requiring immobilization or operative treatment is essential. The Lodox-Statscan (LS) has evolved into a promising time-saving diagnostic tool to diagnose life-threatening injuries with an anterior-posterior (AP)-full-body digital X-ray.

METHODS

We aimed to analyze the diagnostic accuracy and the interrater reliability of AP-LS to detect spinal injuries in polytraumatized patients. Therefore, within 3 years, AP-LS of polytraumatized patients (ISS ≥ 16) were retrospectively analyzed by three independent observers. The sensitivity and specificity of correct diagnosis with AP-LS compared to CT scan were calculated. The diagnostic accuracy was evaluated by using the area under the ROC (receiver operating characteristic curve) for sensitivity and specificity. Interrater reliability between the three observers was calculated using Fleiss' Kappa. The sensitivity of AP-LS was further analyzed by the severity of spinal injuries.

RESULTS

The study group included 320 patients (48.5 years ±19.5, 89 women). On CT scan, 207 patients presented with a spinal injury (65%, total of 332 injuries). AP-LS had a low sensitivity of 9% (31 of 332, range 0-24%) and high specificity of 99% (range 98-100%). The sensitivity was highest for thoracic spinal injuries (14%). The interrater reliability was slight (κ = 0.02; 95% CI: 0.00, 0.03). Potentially unstable spinal injuries were more likely to be detected than stable injuries (sensitivity 18 and 6%, respectively).

CONCLUSION

This study demonstrated high specificity with low sensitivity of AP-LS in detecting spinal injuries compared to CT scan. In polytraumatized patients, AP-LS, implemented in the Advanced Trauma Life Support-algorithm, is a helpful tool to diagnose life-threatening injuries. However, if spinal injuries are suspected, performing a full-body CT scan is necessary for correct diagnosis.
Date of Publication
2021-03-05
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
Diagnostic accuracy Full-body digital X-ray LODOX-Statscan Radiography Spinal injuries
Language(s)
en
Contributor(s)
Häckel, Sonjaorcid-logo
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Hofmann, Elena
Anwander, Helen
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Albers, Christoph
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Basedow, Jasmin
Bigdon, Sebastian
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Exadaktylos, Aristomenis
Universitäres Notfallzentrum
Keel, Marius J B
Dunn, Robert N
Maqungo, Sithombo
Benneker, Lorin Michael
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Held, Michael
Hoppe, Sven
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Additional Credits
Universitätsklinik für Orthopädische Chirurgie und Traumatologie
Universitäres Notfallzentrum
Series
BMC emergency medicine
Publisher
BioMed Central
ISSN
1471-227X
Access(Rights)
open.access
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