Automating excellence: A breakthrough in emergency general surgery quality benchmarking

被引:0
作者
Perkins, Louis A. [1 ]
Mou, Zongyang [1 ]
Masch, Jessica [1 ]
Harris, Brandon [1 ]
Liepert, Amy E. [2 ]
Costantini, Todd W. [1 ]
Haines, Laura N. [1 ]
Berndtson, Allison [1 ]
Adams, Laura [1 ]
Doucet, Jay J. [1 ]
Santorelli, Jarrett E. [1 ]
机构
[1] UC San Diego Sch Med, Dept Surg, Div Trauma Surg Crit Care Burns & Acute Care Surg, 200 West Arbor Dr 8896, San Diego, CA 92103 USA
[2] Univ Missouri, Sch Med, Dept Surg, Div Acute Care Surg, Columbia, MO USA
关键词
Emergency general surgery; acute care surgery; registry; quality improvement; ESS ACCURATELY PREDICTS; IMPROVEMENT PROGRAM; AMERICAN-COLLEGE; SCORE; VALIDATION; OUTCOMES;
D O I
10.1097/TA.0000000000004532
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
BACKGROUNDGiven the high mortality and morbidity of emergency general surgery (EGS), designing and implementing effective quality assessment tools is imperative. Currently accepted EGS risk scores are limited by the need for manual extraction, which is time-intensive and costly. We developed an automated institutional electronic health record (EHR)-linked EGS registry that calculates a modified Emergency Surgery Score (mESS) and a modified Predictive OpTimal Trees in Emergency Surgery Risk (POTTER) score and demonstrated their use in benchmarking outcomes.METHODSThe EHR-linked EGS registry was queried for patients undergoing emergent laparotomies from 2018 to 2023. Data captured included demographics, admission and discharge data, diagnoses, procedures, vitals, and laboratories. The mESS and modified POTTER (mPOTTER) were calculated based off previously defined variables, with estimation of subjective variables using diagnosis codes and other abstracted treatment variables. This was validated against ESS and the POTTER risk calculators by chart review. Observed versus expected (O:E) 30-day mortality and complication ratios were generated.RESULTSThe EGS registry captured 177 emergent laparotomies. There were 32 deaths (18%) and 79 complications (45%) within 30 days of surgery. For mortality, the mean difference between the mESS and ESS risk predictions for mortality was 3% (SD, 10%) with 86% of mESS predictions within 10% of ESS. The mean difference between the mPOTTER and POTTER was -2% (SD, 11%) with 76% of mPOTTER predictions within 10% of POTTER. Observed versus expected ratios by mESS and ESS were 1.45 and 1.86, respectively, and for mPOTTER and POTTER, they were 1.45 and 1.30, respectively. There was similarly good agreement between automated and manual risk scores in predicting complications.CONCLUSIONOur study highlights the effective implementation of an institutional EHR-linked EGS registry equipped to generate automated quality metrics. This demonstrates potential in enhancing the standardization and assessment of EGS care while mitigating the need for extensive human resources investment.LEVEL OF EVIDENCEPrognostic and Epidemiologic Study; Level IV.
引用
收藏
页码:435 / 441
页数:7
相关论文
共 30 条
[1]   Does the Emergency Surgery Score predict failure to discharge the patient home? A nationwide analysis [J].
AlSowaiegh, Reem ;
Naar, Leon ;
Mokhtari, Ava ;
Parks, Jonathan J. ;
Fawley, Jason ;
Mendoza, April E. ;
Saillant, Noelle N. ;
Velmahos, George C. ;
Kaafarani, Haytham M. A. .
JOURNAL OF TRAUMA AND ACUTE CARE SURGERY, 2021, 90 (03) :471-476
[2]  
[Anonymous], 2022, 2022 EGS-VP Standards: Optimal Resources for Emergency General Surgery
[3]   Surgical Risk Is Not Linear: Derivation and Validation of a Novel, User-friendly, and Machine-learning-based Predictive OpTimal Trees in Emergency Surgery Risk (POTTER) Calculator [J].
Bertsimas, Dimitris ;
Dunn, Jack ;
Velmahos, George C. ;
Kaafarani, Haytham M. A. .
ANNALS OF SURGERY, 2018, 268 (04) :574-583
[4]   STATISTICAL METHODS FOR ASSESSING AGREEMENT BETWEEN TWO METHODS OF CLINICAL MEASUREMENT [J].
BLAND, JM ;
ALTMAN, DG .
LANCET, 1986, 1 (8476) :307-310
[5]   Emergency general surgery verification: Quality improvement and the case for optimal resources and process standards [J].
Coleman, Jamie J. ;
Davis, Kimberly A. ;
Savage, Stephanie A. ;
Staudenmayer, Kristin ;
Coimbra, Raul .
JOURNAL OF TRAUMA AND ACUTE CARE SURGERY, 2024, 96 (01) :E1-E4
[6]   Standardized Health data and Research Exchange (SHaRE): promoting a learning health system [J].
Davis, Sierra ;
Ehwerhemuepha, Louis ;
Feaster, William ;
Hackman, Jeffrey ;
Morizono, Hiroki ;
Kanakasabai, Saravanan ;
Mosa, Abu Saleh Mohammad ;
Parker, Jerry ;
Iwamoto, Gary ;
Patel, Nisha ;
Gasparino, Gary ;
Kane, Natalie ;
Hoffman, Mark A. .
JAMIA OPEN, 2022, 5 (01)
[7]   Comparison of Outcomes Between the National Surgical Quality Improvement Program and an Emergency General Surgery Registry [J].
DesPain, Robert W. ;
Parker, William J. ;
Kindvall, Angela T. ;
Learn, Peter A. ;
Elster, Eric A. ;
Jessie, Elliot M. ;
Rodriguez, Carlos J. ;
Bradley, Matthew J. .
JOURNAL FOR HEALTHCARE QUALITY, 2021, 43 (02) :76-81
[8]   The evolution of emergency general surgery: its time for a dedicated program manager [J].
Eaton, Barbara ;
O'Meara, Lindsay ;
Aresco, Carla ;
Scalea, Thomas ;
Diaz, Jose ;
Bruns, Brandon .
EUROPEAN JOURNAL OF TRAUMA AND EMERGENCY SURGERY, 2022, 48 (01) :5-11
[9]   Validation of the Artificial Intelligence-Based Predictive Optimal Trees in Emergency Surgery Risk (POTTER) Calculator in Emergency General Surgery and Emergency Laparotomy Patients [J].
El Hechi, Majed W. ;
Maurer, Lydia R. ;
Levine, Jordan ;
Zhuo, Daisy ;
El Moheb, Mohamad ;
Velmahos, George C. ;
Dunn, Jack ;
Bertsimas, Dimitris ;
Kaafarani, Haytham M. A. .
JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS, 2021, 232 (06) :912-919
[10]   The Emergency Surgery Score (ESS) accurately predicts outcomes in elderly patients undergoing emergency general surgery [J].
Gaitanidis, Apostolos ;
Mikdad, Sarah ;
Breen, Kerry ;
Kongkaewpaisan, Napaporn ;
Mendoza, April ;
Saillant, Noelle ;
Fawley, Jason ;
Parks, Jonathan ;
Velmahos, George ;
Kaafarani, Haytham .
AMERICAN JOURNAL OF SURGERY, 2020, 220 (04) :1052-1057