Literature DB >> 30676988

Improving Prediction Performance Using Hierarchical Analysis of Real-Time Data: A Sepsis Case Study.

Franco van Wyk, Anahita Khojandi, Rishikesan Kamaleswaran.   

Abstract

This paper presents a novel method for hierarchical analysis of machine learning algorithms to improve predictions of at risk patients, thus further enabling prompt therapy. Specifically, we develop a multi-layer machine learning approach to analyze continuous, high-frequency data. We illustrate the capabilities of this approach for early identification of patients at risk of sepsis, a potentially life-threatening complication of an infection, using high-frequency (minute-by-minute) physiological data collected from bedside monitors. In our analysis of a cohort of 586 patients, the model obtained from analyzing the output of a previously developed sepsis prediction model resulted in improved outcomes. Specifically, the original model failed to predict 11.76 ± 4.26% of sepsis patients earlier than Systemic Inflammatory Response Syndrome (SIRS) criteria, commonly used to identify patients at risk for rapid physiological deterioration resulting from sepsis. In contrast, the multi-layer model only failed to predict 3.21 ± 3.11% of sepsis patients earlier than SIRS. In addition, sepsis patients were predicted on average 204.87 ± 7.90 minutes earlier than SIRS criteria using the multi-layer model, which can potentially help reduce mortality and morbidity if implemented in the ICU.

Entities:  

Year:  2019        PMID: 30676988     DOI: 10.1109/JBHI.2019.2894570

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  6 in total

1.  Predicting Volume Responsiveness Among Sepsis Patients Using Clinical Data and Continuous Physiological Waveforms.

Authors:  Rishikesan Kamaleswaran; Jiaoying Lian; Dong-Lien Lin; Himasagar Molakapuri; SriManikanth Nunna; Parth Shah; Shiv Dua; Rema Padman
Journal:  AMIA Annu Symp Proc       Date:  2021-01-25

2.  Dynamic prediction of life-threatening events for patients in intensive care unit.

Authors:  Jiang Hu; Xiao-Hui Kang; Fang-Fang Xu; Ke-Zhi Huang; Bin Du; Li Weng
Journal:  BMC Med Inform Decis Mak       Date:  2022-10-22       Impact factor: 3.298

3.  Early Detection of Sepsis With Machine Learning Techniques: A Brief Clinical Perspective.

Authors:  Daniele Roberto Giacobbe; Alessio Signori; Filippo Del Puente; Sara Mora; Luca Carmisciano; Federica Briano; Antonio Vena; Lorenzo Ball; Chiara Robba; Paolo Pelosi; Mauro Giacomini; Matteo Bassetti
Journal:  Front Med (Lausanne)       Date:  2021-02-12

4.  Prior Distribution Estimation of Monitored Information in the Intensive Care Unit with the Hidden Markov Model and Decision Tree Methods.

Authors:  Xin Zhao; Xiaokai Nie; Guofei Pang; Siyuan Qiu; Kehan Shi; Changqing Wang; Bingqi Zhao; Yidan Huo
Journal:  J Healthc Eng       Date:  2022-03-24       Impact factor: 2.682

Review 5.  Machine learning for the prediction of sepsis: a systematic review and meta-analysis of diagnostic test accuracy.

Authors:  Lucas M Fleuren; Thomas L T Klausch; Charlotte L Zwager; Linda J Schoonmade; Tingjie Guo; Luca F Roggeveen; Eleonora L Swart; Armand R J Girbes; Patrick Thoral; Ari Ercole; Mark Hoogendoorn; Paul W G Elbers
Journal:  Intensive Care Med       Date:  2020-01-21       Impact factor: 17.440

Review 6.  Sepsis Performance Improvement Programs: From Evidence Toward Clinical Implementation.

Authors:  Michiel Schinkel; Prabath W B Nanayakkara; W Joost Wiersinga
Journal:  Crit Care       Date:  2022-03-22       Impact factor: 9.097

  6 in total

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