A machine learning and centrifugal microfluidics platform for bedside prediction of sepsis

  • Lidija Malic
  • , Peter G.Y. Zhang
  • , Pamela J. Plant
  • , Liviu Clime
  • , Christina Nassif
  • , Dillon Da Fonte
  • , Evan E. Haney
  • , Byeong Ui Moon
  • , Victor Min Sung Sit
  • , Daniel Brassard
  • , Maxence Mounier
  • , Eryn Churcher
  • , James T. Tsoporis
  • , Reza Falsafi
  • , Manjeet Bains
  • , Andrew Baker
  • , Uriel Trahtemberg
  • , Ljuboje Lukic
  • , John C. Marshall
  • , Matthias Geissler
  • Robert E.W. Hancock, Teodor Veres, Claudia C. dos Santos

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Sepsis is a life-threatening organ dysfunction due to a dysfunctional response to infection. Delays in diagnosis have substantial impact on survival. Herein, blood samples from 586 in-house patients with suspected sepsis are used in conjunction with machine learning and cross-validation to define a six-gene expression signature of immune cell reprogramming, termed Sepset, to predict clinical deterioration within the first 24 h (h) of clinical presentation. Prediction accuracy (~90% in early intensive care unit (ICU) and 70% in emergency room patients) is validated in 3178 patients from existing independent cohorts. A RT-PCR-based Sepset detection test shows a 94% sensitivity in 248 patients to predict worsening of the sequential organ failure assessment scores within the first 24 h. A stand-alone centrifugal microfluidic instrument that automates whole-blood Sepset classifier detection is tested, showing a sensitivity of 92%, and specificity of 89% in identifying the risk of clinical deterioration in patients with suspected sepsis.

Original languageEnglish
Article number4442
JournalNature Communications
Volume16
Issue number1
DOIs
StatePublished - 27 May 2025

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© The Author(s) 2025.

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