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Development of a prediction model for emergency medical service witnessed traumatic out-of-hospital cardiac arrest: A multicenter cohort studyopen access

Authors
Wang, Shao-AnChang, Chih-JungShin, Shan DoChu, Sheng-EnHuang, Chun-YenHsu, Li-MinLin, Hao-YangHong, Ki JeongJamaluddin, Sabariah FaizahSon, Do NgocRamakrishnan, T.V.Chiang, Wen-ChuSun, Jen-TangMa, Matthew Huei-MingThe PATOS Clinical Research NetworkTanaka, HideharuVelasco, BernadettKhruekarnchana, PairojFares, SalehParticipating Nation InvestigatorsRao, RamanaAbraham, George P.Bin, Mohidin Mohd AminSaim, Al-HilmiKean, Lim CheeAnthonysamy, CeciliaDin, Mohd Yssof Shah JahanJi, Kang WenKheng, Cheah PheeAli, Shamila bt MohamadRamanathan, PeriyanayakiYang, Chia BoonChia, Hon WoeiHamad, Hafidahwati BintiIsmail, Samsu AmbiaWan, Abdullah Wan Rasydan B.Kimura, AkioGundran, Carlos D.Convocar, PaulineSabarre, Nerissa G.Tiglao, Patrick JosephSong, Kyoung JunJeong, JooMoon, Sung WooKim, Joo YeongCha, Won ChulLee, Seung ChulAhn, Jae YunLee, Kang HyeonYeom, Seok RanRyu, Hyeon HoKim, Su JinKim, Sang ChulHu, Ray-HengWang, Ruei-FangHsieh, Shang-LinKao, Wei-FongRiyapan, SatthaTianwibool, ParinyaBuaprasert, PhuditAkaraborworn, OsareeAl, Sakaf Omer AhmedHuy, Le BaoVan, Dai NguyenParticipating Site Investigators
Issue Date
Jan-2024
Publisher
Elsevier B.V.
Keywords
Emergency medical service; Out-of-hospital cardiac arrest; Prediction model; Trauma; Witness
Citation
Journal of the Formosan Medical Association, v.123, no.1, pp 23 - 35
Pages
13
Indexed
SCIE
SCOPUS
Journal Title
Journal of the Formosan Medical Association
Volume
123
Number
1
Start Page
23
End Page
35
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/22290
DOI
10.1016/j.jfma.2023.07.011
ISSN
0929-6646
1876-0821
Abstract
Background/Purpose: To develop a prediction model for emergency medical technicians (EMTs) to identify trauma patients at high risk of deterioration to emergency medical service (EMS)-witnessed traumatic cardiac arrest (TCA) on the scene or en route. Methods: We developed a prediction model using the classical cross-validation method from the Pan-Asia Trauma Outcomes Study (PATOS) database from 1 January 2015 to 31 December 2020. Eligible patients aged ≥18 years were transported to the hospital by the EMS. The primary outcome (EMS-witnessed TCA) was defined based on changes in vital signs measured on the scene or en route. We included variables that were immediately measurable as potential predictors when EMTs arrived. An integer point value system was built using multivariable logistic regression. The area under the receiver operating characteristic (AUROC) curve and Hosmer-Lemeshow (HL) test were used to examine discrimination and calibration in the derivation and validation cohorts. Results: In total, 74,844 patients were eligible for database review. The model comprised five prehospital predictors: age <40 years, systolic blood pressure <100 mmHg, respiration rate >20/minute, pulse oximetry <94%, and levels of consciousness to pain or unresponsiveness. The AUROC in the derivation and validation cohorts was 0.767 and 0.782, respectively. The HL test revealed good calibration of the model (p = 0.906). Conclusion: We established a prediction model using variables from the PATOS database and measured them immediately after EMS personnel arrived to predict EMS-witnessed TCA. The model allows prehospital medical personnel to focus on high-risk patients and promptly administer optimal treatment. © 2023 Formosan Medical Association
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