AI Article Synopsis

  • A study was conducted to see if time-sensitive biological indicators could forecast sepsis mortality risk and create individual risk profiles for patients.
  • The research involved 356 septic patients in nine Canadian ICUs, where clinical data and biomarker levels were tracked over time.
  • Using a special statistical model, the study successfully developed a tool that predicts death probability in septic patients and outlines how various biological indicators contribute to mortality risk.

Article Abstract

Unlabelled: To determine if a set of time-varying biological indicators can be used to: 1) predict the sepsis mortality risk over time and 2) generate mortality risk profiles.

Design: Prospective observational study.

Setting: Nine Canadian ICUs.

Subjects: Three-hundred fifty-six septic patients.

Interventions: None.

Measurements And Main Results: Clinical data and plasma levels of biomarkers were collected longitudinally. We used a complementary log-log model to account for the daily mortality risk of each patient until death in ICU/hospital, discharge, or 28 days after admission. The model, which is a versatile version of the Cox model for gaining longitudinal insights, created a composite indicator (the daily hazard of dying) from the "day 1" and "change" variables of six time-varying biological indicators (cell-free DNA, protein C, platelet count, creatinine, Glasgow Coma Scale score, and lactate) and a set of contextual variables (age, presence of chronic lung disease or previous brain injury, and duration of stay), achieving a high predictive power (conventional area under the curve, 0.90; 95% CI, 0.86-0.94). Including change variables avoided misleading inferences about the effects of day 1 variables, signifying the importance of the longitudinal approach. We then generated mortality risk profiles that highlight the relative contributions among the time-varying biological indicators to overall mortality risk. The tool was validated in 28 nonseptic patients from the same ICUs who became septic later and was subject to 10-fold cross-validation, achieving similarly high area under the curve.

Conclusions: Using a novel version of the Cox model, we created a prognostic tool for septic patients that yields not only a predicted probability of dying but also a mortality risk profile that reveals how six time-varying biological indicators differentially and longitudinally account for the patient's overall daily mortality risk.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7063956PMC
http://dx.doi.org/10.1097/CCE.0000000000000032DOI Listing

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