Machine learning-based suggestion for critical interventions in the management of potentially severe conditioned patients in emergency department triage

被引:15
作者
Chang, Hansol [1 ,2 ]
Yu, Jae Yong [2 ]
Yoon, Sunyoung [2 ]
Kim, Taerim [1 ]
Cha, Won Chul [1 ,2 ,3 ]
机构
[1] Sungkyunkwan Univ, Samsung Med Ctr, Dept Emergency Med, Sch Med, 115 Irwon Ro, Seoul 06355, South Korea
[2] Sungkyunkwan Univ, Samsung Adv Inst Hlth Sci & Technol SAIHST, Dept Digital Hlth, 115 Irwon Ro, Seoul 06355, South Korea
[3] Samsung Med Ctr, Digital Innovat Ctr, 81 Irwon Ro, Seoul 06351, South Korea
关键词
ARTIFICIAL-INTELLIGENCE; GUIDELINES; UPDATE;
D O I
10.1038/s41598-022-14422-4
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Providing timely intervention to critically ill patients is a challenging task in emergency departments (ED). Our study aimed to predict early critical interventions (CrIs), which can be used as clinical recommendations. This retrospective observational study was conducted in the ED of a tertiary hospital located in a Korean metropolitan city. Patient who visited ED from January 1, 2016, to December 31, 2018, were included. Need of six CrIs were selected as prediction outcomes, namely, arterial line (A-line) insertion, oxygen therapy, high-flow nasal cannula (HFNC), intubation, Massive Transfusion Protocol (MTP), and inotropes and vasopressor. Extreme gradient boosting (XGBoost) prediction model was built by using only data available at the initial stage of ED. Overall, 137,883 patients were included in the study. The areas under the receiver operating characteristic curve for the prediction of A-line insertion was 0 center dot 913, oxygen therapy was 0.909, HFNC was 0.962, intubation was 0.945, MTP was 0.920, and inotropes or vasopressor administration was 0.899 in the XGBoost method. In addition, an increase in the need for CrIs was associated with worse ED outcomes. The CrIs model was integrated into the study site's electronic medical record and could be used to suggest early interventions for emergency physicians.
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页数:10
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共 48 条
[1]   Critical Care Nurses' Role in Implementing the "ABCDE Bundle" Into Practice [J].
Balas, Michele C. ;
Vasilevskis, Eduard E. ;
Burke, William J. ;
Boehm, Leanne ;
Pun, Brenda T. ;
Olsen, Keith M. ;
Peitz, Gregory J. ;
Ely, E. Wesley .
CRITICAL CARE NURSE, 2012, 32 (02) :35-46
[2]   Machine-learning-based COVID-19 mortality prediction model and identification of patients at low and high risk of dying [J].
Banoei, Mohammad M. ;
Dinparastisaleh, Roshan ;
Zadeh, Ali Vaeli ;
Mirsaeidi, Mehdi .
CRITICAL CARE, 2021, 25 (01)
[3]   Abnormal vital signs are strong predictors for intensive care unit admission and in-hospital mortality in adults triaged in the emergency department - a prospective cohort study [J].
Barfod, Charlotte ;
Lauritzen, Marlene Mauson Pankoke ;
Danker, Jakob Klim ;
Soeletormos, Gyoergy ;
Forberg, Jakob Lundager ;
Berlac, Peter Anthony ;
Lippert, Freddy ;
Lundstrom, Lars Hyldborg ;
Antonsen, Kristian ;
Lange, Kai Henrik Wiborg .
SCANDINAVIAN JOURNAL OF TRAUMA RESUSCITATION & EMERGENCY MEDICINE, 2012, 20
[4]   How artificial intelligence could transform emergency department operations [J].
Berlyand, Yosef ;
Raja, Ali S. ;
Dorner, Stephen C. ;
Prabhakar, Anand M. ;
Sonis, Jonathan D. ;
Gottumukkala, Ravi V. ;
Succi, Marc David ;
Yun, Brian J. .
AMERICAN JOURNAL OF EMERGENCY MEDICINE, 2018, 36 (08) :1515-1517
[5]   Treatment of comatose survivors of out-of-hospital cardiac arrest with induced hypothermia [J].
Bernard, SA ;
Gray, TW ;
Buist, MD ;
Jones, BM ;
Silvester, W ;
Gutteridge, G ;
Smith, K .
NEW ENGLAND JOURNAL OF MEDICINE, 2002, 346 (08) :557-563
[6]   Prospective and External Evaluation of a Machine Learning Model to Predict In-Hospital Mortality of Adults at Time of Admission [J].
Brajer, Nathan ;
Cozzi, Brian ;
Gao, Michael ;
Nichols, Marshall ;
Revoir, Mike ;
Balu, Suresh ;
Futoma, Joseph ;
Bae, Jonathan ;
Setji, Noppon ;
Hernandez, Adrian ;
Sendak, Mark .
JAMA NETWORK OPEN, 2020, 3 (02)
[7]   Arterial waveforms: Monitoring changes in configuration [J].
Campbell, B .
HEART & LUNG, 1997, 26 (03) :204-214
[8]   Impact of COVID-19 Pandemic on the Overall Diagnostic and Therapeutic Process for Patients of Emergency Department and Those with Acute Cerebrovascular Disease [J].
Chang, Hansol ;
Yu, Jae Yong ;
Yoon, Sun Young ;
Hwang, Sung Yeon ;
Yoon, Hee ;
Cha, Won Chul ;
Sim, Min Seob ;
Jo, Ik Joon ;
Kim, Taerim .
JOURNAL OF CLINICAL MEDICINE, 2020, 9 (12)
[9]   XGBoost: A Scalable Tree Boosting System [J].
Chen, Tianqi ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :785-794
[10]   The effects of emergency department crowding on triage and hospital admission decisions [J].
Chen, Wanyi ;
Linthicum, Benjamin ;
Argon, Nilay Tanik ;
Bohrmann, Thomas ;
Lopiano, Kenneth ;
Mehrotra, Abhi ;
Travers, Debbie ;
Ziya, Serhan .
AMERICAN JOURNAL OF EMERGENCY MEDICINE, 2020, 38 (04) :774-779