iScience (Feb 2021)

Assessment of the timeliness and robustness for predicting adult sepsis

  • Yuanfang Guan,
  • Xueqing Wang,
  • Xianghao Chen,
  • Daiyao Yi,
  • Luyao Chen,
  • Xiaoqian Jiang

Journal volume & issue
Vol. 24, no. 2
p. 102106

Abstract

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Summary: Sepsis is a leading cause of death among inpatients at hospitals. However, with early detection, death rate can drop substantially. In this study, we present the top-performing algorithm for Sepsis II prediction in the DII National Data Science Challenge using the Cerner Health Facts data involving more than 100,000 adult patients. This large sample size allowed us to dissect the predictability by age-groups, race, genders, and care settings and up to 192 hr of sepsis onset. This large data collection also allowed us to conclude that the last six biometric records on average are informative to the prediction of sepsis. We identified biomarkers that are common across the treatment time and novel biomarkers that are uniquely presented for early prediction. The algorithms showed meaningful signals days ahead of sepsis onset, supporting the potential of reducing death rate by focusing on high-risk populations identified from heterogeneous data integration.

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