Literature DB >> 33936391

Contextual Embeddings from Clinical Notes Improves Prediction of Sepsis.

Fatemeh Amrollahi1, Supreeth P Shashikumar1, Fereshteh Razmi1, Shamim Nemati1.   

Abstract

Sepsis, a life-threatening organ dysfunction, is a clinical syndrome triggered by acute infection and affects over 1 million Americans every year. Untreated sepsis can progress to septic shock and organ failure, making sepsis one of the leading causes of morbidity and mortality in hospitals. Early detection of sepsis and timely antibiotics administration is known to save lives. In this work, we design a sepsis prediction algorithm based on data from electronic health records (EHR) using a deep learning approach. While most existing EHR-based sepsis prediction models utilize structured data including vitals, labs, and clinical information, we show that incorporation of features based on clinical texts, using a pre-trained neural language representation model, allows for incorporation of unstructured data without an explicit need for ontology-based named-entity recognition and classification. The proposed model is trained on a large critical care database of over 40,000 patients, including 2805 septic patients, and is compared against competing baseline models. In comparison to a baseline model based on structured data alone, incorporation of clinical texts improved AUC from 0.81 to 0.84. Our findings indicate that incorporation of clinical text features via a pre-trained language representation model can improve early prediction of sepsis and reduce false alarms. ©2020 AMIA - All rights reserved.

Entities:  

Year:  2021        PMID: 33936391      PMCID: PMC8075484     

Source DB:  PubMed          Journal:  AMIA Annu Symp Proc        ISSN: 1559-4076


  17 in total

1.  The Third International Consensus Definitions for Sepsis and Septic Shock (Sepsis-3).

Authors:  Mervyn Singer; Clifford S Deutschman; Christopher Warren Seymour; Manu Shankar-Hari; Djillali Annane; Michael Bauer; Rinaldo Bellomo; Gordon R Bernard; Jean-Daniel Chiche; Craig M Coopersmith; Richard S Hotchkiss; Mitchell M Levy; John C Marshall; Greg S Martin; Steven M Opal; Gordon D Rubenfeld; Tom van der Poll; Jean-Louis Vincent; Derek C Angus
Journal:  JAMA       Date:  2016-02-23       Impact factor: 56.272

2.  An empirical evaluation of deep learning for ICD-9 code assignment using MIMIC-III clinical notes.

Authors:  Jinmiao Huang; Cesar Osorio; Luke Wicent Sy
Journal:  Comput Methods Programs Biomed       Date:  2019-05-25       Impact factor: 5.428

Review 3.  Big data in medicine is driving big changes.

Authors:  F Martin-Sanchez; K Verspoor
Journal:  Yearb Med Inform       Date:  2014-08-15

4.  Early sepsis detection in critical care patients using multiscale blood pressure and heart rate dynamics.

Authors:  Supreeth P Shashikumar; Matthew D Stanley; Ismail Sadiq; Qiao Li; Andre Holder; Gari D Clifford; Shamim Nemati
Journal:  J Electrocardiol       Date:  2017-08-16       Impact factor: 1.438

5.  The Surviving Sepsis Campaign Bundle: 2018 Update.

Authors:  Mitchell M Levy; Laura E Evans; Andrew Rhodes
Journal:  Crit Care Med       Date:  2018-06       Impact factor: 7.598

6.  Natural Language Processing of Clinical Notes for Improved Early Prediction of Septic Shock in the ICU.

Authors:  Ran Liu; Joseph L Greenstein; Sridevi V Sarma; Raimond L Winslow
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2019-07

7.  Scalable and accurate deep learning with electronic health records.

Authors:  Alvin Rajkomar; Eyal Oren; Kai Chen; Andrew M Dai; Nissan Hajaj; Michaela Hardt; Peter J Liu; Xiaobing Liu; Jake Marcus; Mimi Sun; Patrik Sundberg; Hector Yee; Kun Zhang; Yi Zhang; Gerardo Flores; Gavin E Duggan; Jamie Irvine; Quoc Le; Kurt Litsch; Alexander Mossin; Justin Tansuwan; James Wexler; Jimbo Wilson; Dana Ludwig; Samuel L Volchenboum; Katherine Chou; Michael Pearson; Srinivasan Madabushi; Nigam H Shah; Atul J Butte; Michael D Howell; Claire Cui; Greg S Corrado; Jeffrey Dean
Journal:  NPJ Digit Med       Date:  2018-05-08

8.  Early Prediction of Sepsis From Clinical Data: The PhysioNet/Computing in Cardiology Challenge 2019.

Authors:  Matthew A Reyna; Christopher S Josef; Russell Jeter; Supreeth P Shashikumar; M Brandon Westover; Shamim Nemati; Gari D Clifford; Ashish Sharma
Journal:  Crit Care Med       Date:  2020-02       Impact factor: 7.598

9.  MIMIC-III, a freely accessible critical care database.

Authors:  Alistair E W Johnson; Tom J Pollard; Lu Shen; Li-Wei H Lehman; Mengling Feng; Mohammad Ghassemi; Benjamin Moody; Peter Szolovits; Leo Anthony Celi; Roger G Mark
Journal:  Sci Data       Date:  2016-05-24       Impact factor: 6.444

10.  BioBERT: a pre-trained biomedical language representation model for biomedical text mining.

Authors:  Jinhyuk Lee; Wonjin Yoon; Sungdong Kim; Donghyeon Kim; Sunkyu Kim; Chan Ho So; Jaewoo Kang
Journal:  Bioinformatics       Date:  2020-02-15       Impact factor: 6.937

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  1 in total

1.  Sepsis prediction, early detection, and identification using clinical text for machine learning: a systematic review.

Authors:  Melissa Y Yan; Lise Tuset Gustad; Øystein Nytrø
Journal:  J Am Med Inform Assoc       Date:  2022-01-29       Impact factor: 4.497

  1 in total

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