TY - JOUR
T1 - Heterogeneity in the Effect of Early Goal-Directed Therapy for Septic Shock
T2 - A Secondary Analysis of Two Multicenter International Trials
AU - Shah, Faraaz Ali
AU - Talisa, Victor B.
AU - Chang, Chung Chou H.
AU - Triantafyllou, Sofia
AU - Tang, Lu
AU - Mayr, Florian B.
AU - Higgins, Alisa M.
AU - Peake, Sandra L.
AU - Mouncey, Paul
AU - Harrison, David A.
AU - Demerle, Kimberley M.
AU - Kennedy, Jason N.
AU - Cooper, Gregory F.
AU - Bellomo, Rinaldo
AU - Rowan, Kathy
AU - Yealy, Donald M.
AU - Seymour, Christopher W.
AU - Angus, Derek C.
AU - Yende, Sachin P.
N1 - Publisher Copyright:
© 2024 by the Society of Critical Care Medicine and Wolters Kluwer Health, Inc. All Rights Reserved.
PY - 2025/1
Y1 - 2025/1
N2 - Objectives: The optimal approach for resuscitation in septic shock remains unclear despite multiple randomized controlled trials (RCTs). Our objective was to investigate whether previously uncharacterized variation across individuals in their response to resuscitation strategies may contribute to conflicting average treatment effects in prior RCTs. Design: We randomly split study sites from the Australian Resuscitation of Sepsis Evaluation (ARISE) and Protocolized Care for Early Septic Shock (ProCESS) trials into derivation and validation cohorts. We trained machine learning models to predict individual absolute risk differences (iARDs) in 90-day mortality in derivation cohorts and tested for heterogeneity of treatment effect (HTE) in validation cohorts and swapped these cohorts in sensitivity analyses. We fit the best-performing model in a combined dataset to explore roles of patient characteristics and individual components of early goal-directed therapy (EGDT) to determine treatment responses. Setting: Eighty-one sites in Australia, New Zealand, Hong Kong, Finland, Republic of Ireland, and the United States. Patients: Adult patients presenting to the emergency department with severe sepsis or septic shock. Interventions: EGDT vs. usual care. Measurements and Main Results: A local-linear random forest model performed best in predicting iARDs. In the validation cohort, HTE was confirmed, evidenced by an interaction between iARD prediction and treatment (p < 0.001). When patients were grouped based on predicted iARDs, treatment response increased from the lowest to the highest quintiles (absolute risk difference [95% CI], -8% [-19% to 4%] and relative risk reduction, 1.34 [0.89-2.01] in quintile 1 suggesting harm from EGDT, and 12% [1-23%] and 0.64 [0.42-0.96] in quintile 5 suggesting benefit). Sensitivity analyses showed similar findings. Pre-intervention albumin contributed the most to HTE. Analyses of individual EGDT components were inconclusive. Conclusions: Treatment response to EGDT varied across patients in two multicenter RCTs with large benefits for some patients while others were harmed. Patient characteristics, including albumin, were most important in identifying HTE.
AB - Objectives: The optimal approach for resuscitation in septic shock remains unclear despite multiple randomized controlled trials (RCTs). Our objective was to investigate whether previously uncharacterized variation across individuals in their response to resuscitation strategies may contribute to conflicting average treatment effects in prior RCTs. Design: We randomly split study sites from the Australian Resuscitation of Sepsis Evaluation (ARISE) and Protocolized Care for Early Septic Shock (ProCESS) trials into derivation and validation cohorts. We trained machine learning models to predict individual absolute risk differences (iARDs) in 90-day mortality in derivation cohorts and tested for heterogeneity of treatment effect (HTE) in validation cohorts and swapped these cohorts in sensitivity analyses. We fit the best-performing model in a combined dataset to explore roles of patient characteristics and individual components of early goal-directed therapy (EGDT) to determine treatment responses. Setting: Eighty-one sites in Australia, New Zealand, Hong Kong, Finland, Republic of Ireland, and the United States. Patients: Adult patients presenting to the emergency department with severe sepsis or septic shock. Interventions: EGDT vs. usual care. Measurements and Main Results: A local-linear random forest model performed best in predicting iARDs. In the validation cohort, HTE was confirmed, evidenced by an interaction between iARD prediction and treatment (p < 0.001). When patients were grouped based on predicted iARDs, treatment response increased from the lowest to the highest quintiles (absolute risk difference [95% CI], -8% [-19% to 4%] and relative risk reduction, 1.34 [0.89-2.01] in quintile 1 suggesting harm from EGDT, and 12% [1-23%] and 0.64 [0.42-0.96] in quintile 5 suggesting benefit). Sensitivity analyses showed similar findings. Pre-intervention albumin contributed the most to HTE. Analyses of individual EGDT components were inconclusive. Conclusions: Treatment response to EGDT varied across patients in two multicenter RCTs with large benefits for some patients while others were harmed. Patient characteristics, including albumin, were most important in identifying HTE.
KW - heterogeneity of treatment effect
KW - machine learning
KW - precision medicine
KW - resuscitation
KW - sepsis
UR - http://www.scopus.com/inward/record.url?scp=85208661419&partnerID=8YFLogxK
U2 - 10.1097/CCM.0000000000006463
DO - 10.1097/CCM.0000000000006463
M3 - Article
C2 - 39440873
AN - SCOPUS:85208661419
SN - 0090-3493
VL - 53
SP - e4-e14
JO - Critical Care Medicine
JF - Critical Care Medicine
IS - 1
ER -