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Incidental CT Findings of Patients Who Admitted to ER Following a Traffic Accident.

作者信息

Yigit Yavuz, Ayhan Harun

机构信息

Derince Training and Research Hospital, Kocaeli.

Haydarpasa Numune Training and Research Hospital, İstanbul.

出版信息

Turk J Emerg Med. 2016 Feb 26;14(1):9-14. doi: 10.5505/1304.7361.2014.13284. eCollection 2014 Mar.

Abstract

OBJECTIVE

The aim of this study was to investigate and analyze incidental CT findings of traffic injury patients discharged from the ER, and to determine overall notification rates.

METHODS

All traffic injury-related patient records between 01.06.2013-01.03.2013 were obtained from Derince Training and Research Hospital Emergency Service using patient files and the hospital database. Brain, thorax and/or abdominal CT images of 340 patients aged between 0 to 84 years were included in the study. ER observation forms were investigated for the patients who had incidental findings on CT scanning and overall notification rates were recorded.

RESULTS

Mean age of the 363 cases was 31.2 (SD 17.9, min 0, max 84) and 35.5% of patients were female (n=129) and 64.5% were male (n=234). A total of 537 CT scans were performed on 363 patients. 147, 319 and 71 CT scans were performed on the thorax, brain and abdominal, respectively. 27.3% (n=99) of scan results showed the presence of a coincidental pathology. The most common disease on scans were bone lesions (8%, n=29), followed by sinus abnormalities (7.7%, n=28). Incidental findings ratio in patients aged over 60 was 60.8%, while under 60 was 24.8%. It was found that seven patients (7.1%) were informed about the imaging results.

CONCLUSION

Most of the incidental findings were found to be benign; however, 16.5% of them were considered to require in-depth investigation. Further investigations are needed to understand the clinical relevance of these findings and their effects on patients.

摘要
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e777/4909874/6b2350ccb1a2/fx1.jpg

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