Literature DB >> 32485555

The development an artificial intelligence algorithm for early sepsis diagnosis in the intensive care unit.

Kuo-Ching Yuan1, Lung-Wen Tsai2, Ko-Han Lee3, Yi-Wei Cheng3, Shou-Chieh Hsu3, Yu-Sheng Lo4, Ray-Jade Chen5.   

Abstract

BACKGROUND: Severe sepsis and septic shock are still the leading causes of death in Intensive Care Units (ICUs), and timely diagnosis is crucial for treatment outcomes. The progression of electronic medical records (EMR) offers the possibility of storing a large quantity of clinical data that can facilitate the development of artificial intelligence (AI) in medicine. However, several difficulties, such as poor structure and heterogenicity of the raw EMR data, are encountered when introducing AI with ICU data. Labor-intensive work, including manual data entry, personal medical records sorting, and laboratory results interpretation may hinder the progress of AI. In this article, we introduce the developing of an AI algorithm designed for sepsis diagnosis using pre-selected features; and compare the performance of the AI algorithm with SOFA score based diagnostic method.
MATERIALS AND METHODS: This is a prospective open-label cohort study. A specialized EMR, named TED_ICU, was implemented for continuous data recording. One hundred six clinical features relevant to sepsis diagnosis were selected prospectively. A labeling work to allocate SEPSIS or NON_SEPSIS status for each ICU patient was performed by the in-charge intensivist according to SEPSIS-3 criteria, along with the automatic recording of selected features every day by TED_ICU. Afterward, we use de-identified data to develop the AI algorithm. Several machine learning methods were evaluated using 5-fold cross-validation, and XGBoost, a decision-tree based algorithm was adopted for our AI algorithm development due to best performance.
RESULTS: The study was conducted between August 2018 and December 2018 for the first stage of analysis. We collected 1588 instances, including 444 SEPSIS and 1144 NON-SEPSIS, from 434 patients. The 434 patients included 259 (59.6%) male patients and 175 female patients. The mean age was 67.6-year-old, and the mean APACHE II score was 13.8. The SEPSIS cohort had a higher SOFA score and increased use of organ support treatment. The AI algorithm was developed with a shuffle method using 80% of the instances for training and 20% for testing. The established AI algorithm achieved the following: accuracy = 82% ± 1%; sensitivity = 65% ± 5%; specificity = 88% ± 2%; precision = 67% ± 3%; and F1 = 0.66 ± 0.02. The area under the receiver operating characteristic curve (AUROC) was approximately 0.89. The SOFA score was used on the same 1588 instances for sepsis diagnosis, and the result was inferior to our AI algorithm (AUROC = 0.596).
CONCLUSION: Using real-time data, collected by EMR, from the ICU daily practice, our AI algorithm established with pre-selected features and XGBoost can provide a timely diagnosis of sepsis with an accuracy greater than 80%. AI algorithm also outperforms the SOFA score in sepsis diagnosis and exhibits practicality as clinicians can deploy appropriate treatment earlier. The early and precise response of this AI algorithm will result in cost reduction, outcome improvement, and benefit for healthcare systems, medical staff, and patients as well.
Copyright © 2020 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  AI; Artificial intelligence; Critical care; Diagnostic algorithm; ICU; Sepsis; XGBoost

Mesh:

Year:  2020        PMID: 32485555     DOI: 10.1016/j.ijmedinf.2020.104176

Source DB:  PubMed          Journal:  Int J Med Inform        ISSN: 1386-5056            Impact factor:   4.046


  12 in total

1.  Performance effectiveness of vital parameter combinations for early warning of sepsis-an exhaustive study using machine learning.

Authors:  Ekanath Srihari Rangan; Rahul Krishnan Pathinarupothi; Kanwaljeet J S Anand; Michael P Snyder
Journal:  JAMIA Open       Date:  2022-10-14

2.  Predicting the Prognosis of Patients in the Coronary Care Unit: A Novel Multi-Category Machine Learning Model Using XGBoost.

Authors:  Xingchen Wang; Tianqi Zhu; Minghong Xia; Yu Liu; Yao Wang; Xizhi Wang; Lenan Zhuang; Danfeng Zhong; Jun Zhu; Hong He; Shaoxiang Weng; Junhui Zhu; Dongwu Lai
Journal:  Front Cardiovasc Med       Date:  2022-05-12

Review 3.  Artificial Intelligence for Clinical Decision Support in Sepsis.

Authors:  Miao Wu; Xianjin Du; Raymond Gu; Jie Wei
Journal:  Front Med (Lausanne)       Date:  2021-05-13

4.  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

5.  Predicting 30-days mortality for MIMIC-III patients with sepsis-3: a machine learning approach using XGboost.

Authors:  Nianzong Hou; Mingzhe Li; Lu He; Bing Xie; Lin Wang; Rumin Zhang; Yong Yu; Xiaodong Sun; Zhengsheng Pan; Kai Wang
Journal:  J Transl Med       Date:  2020-12-07       Impact factor: 5.531

6.  The impact of recency and adequacy of historical information on sepsis predictions using machine learning.

Authors:  Manaf Zargoush; Alireza Sameh; Mahdi Javadi; Siyavash Shabani; Somayeh Ghazalbash; Dan Perri
Journal:  Sci Rep       Date:  2021-10-21       Impact factor: 4.379

7.  Quo Vadis Anesthesiologist? The Value Proposition of Future Anesthesiologists Lies in Preserving or Restoring Presurgical Health after Surgical Insult.

Authors:  Krzysztof Laudanski
Journal:  J Clin Med       Date:  2022-02-21       Impact factor: 4.241

8.  A machine learning-based risk stratification tool for in-hospital mortality of intensive care unit patients with heart failure.

Authors:  Cida Luo; Yi Zhu; Zhou Zhu; Ranxi Li; Guoqin Chen; Zhang Wang
Journal:  J Transl Med       Date:  2022-03-18       Impact factor: 5.531

9.  Thiamine May Be Beneficial for Patients With Ventilator-Associated Pneumonia in the Intensive Care Unit: A Retrospective Study Based on the MIMIC-IV Database.

Authors:  Luming Zhang; Shaojin Li; Xuehao Lu; Yu Liu; Yinlong Ren; Tao Huang; Jun Lyu; Haiyan Yin
Journal:  Front Pharmacol       Date:  2022-06-23       Impact factor: 5.988

10.  Machine Learning Prediction Models for Mechanically Ventilated Patients: Analyses of the MIMIC-III Database.

Authors:  Yibing Zhu; Jin Zhang; Guowei Wang; Renqi Yao; Chao Ren; Ge Chen; Xin Jin; Junyang Guo; Shi Liu; Hua Zheng; Yan Chen; Qianqian Guo; Lin Li; Bin Du; Xiuming Xi; Wei Li; Huibin Huang; Yang Li; Qian Yu
Journal:  Front Med (Lausanne)       Date:  2021-07-01
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.