Literature DB >> 34362354

Improvement of APACHE II score system for disease severity based on XGBoost algorithm.

Yan Luo1,2, Zhiyu Wang1,2, Cong Wang3,4.   

Abstract

BACKGROUND: Prognostication is an essential tool for risk adjustment and decision making in the intensive care units (ICUs). In order to improve patient outcomes, we have been trying to develop a more effective model than Acute Physiology and Chronic Health Evaluation (APACHE) II to measure the severity of the patients in ICUs. The aim of the present study was to provide a mortality prediction model for ICUs patients, and to assess its performance relative to prediction based on the APACHE II scoring system.
METHODS: We used the Medical Information Mart for Intensive Care version III (MIMIC-III) database to build our model. After comparing the APACHE II with 6 typical machine learning (ML) methods, the best performing model was screened for external validation on anther independent dataset. Performance measures were calculated using cross-validation to avoid making biased assessments. The primary outcome was hospital mortality. Finally, we used TreeSHAP algorithm to explain the variable relationships in the extreme gradient boosting algorithm (XGBoost) model.
RESULTS: We picked out 14 variables with 24,777 cases to form our basic data set. When the variables were the same as those contained in the APACHE II, the accuracy of XGBoost (accuracy: 0.858) was higher than that of APACHE II (accuracy: 0.742) and other algorithms. In addition, it exhibited better calibration properties than other methods, the result in the area under the ROC curve (AUC: 0.76). we then expand the variable set by adding five new variables to improve the performance of our model. The accuracy, precision, recall, F1, and AUC of the XGBoost model increased, and were still higher than other models (0.866, 0.853, 0.870, 0.845, and 0.81, respectively). On the external validation dataset, the AUC was 0.79 and calibration properties were good.
CONCLUSIONS: As compared to conventional severity scores APACHE II, our XGBoost proposal offers improved performance for predicting hospital mortality in ICUs patients. Furthermore, the TreeSHAP can help to enhance the understanding of our model by providing detailed insights into the impact of different features on the disease risk. In sum, our model could help clinicians determine prognosis and improve patient outcomes.
© 2021. The Author(s).

Entities:  

Keywords:  APACHE II score system; Intensive care units treatment; MIMIC III database; Machine learning; Predictive modeling

Year:  2021        PMID: 34362354     DOI: 10.1186/s12911-021-01591-x

Source DB:  PubMed          Journal:  BMC Med Inform Decis Mak        ISSN: 1472-6947            Impact factor:   2.796


  5 in total

1.  APACHE-II score correlation with mortality and length of stay in an intensive care unit.

Authors:  Saad Ahmed Naved; Shahla Siddiqui; Fazal Hameed Khan
Journal:  J Coll Physicians Surg Pak       Date:  2011-01       Impact factor: 0.711

2.  ICU discharge APACHE II scores help to predict post-ICU death.

Authors:  Yung-Che Chen; Meng-Chih Lin; Yu-Chin Lin; Hsueh-Wen Chang; Chuang-Chi Huang; Ying-Huang Tsai
Journal:  Chang Gung Med J       Date:  2007 Mar-Apr

3.  Inference for the difference in the area under the ROC curve derived from nested binary regression models.

Authors:  Glenn Heller; Venkatraman E Seshan; Chaya S Moskowitz; Mithat Gönen
Journal:  Biostatistics       Date:  2017-04-01       Impact factor: 5.279

4.  Prognosis of patients in a medical intensive care unit.

Authors:  Ali Ugur Unal; Osman Kostek; Mumtaz Takir; Ozge Caklili; Mehmet Uzunlulu; Aytekin Oguz
Journal:  North Clin Istanb       Date:  2015-12-31

5.  Comparison of APACHE II and SAPS II Scoring Systems in Prediction of Critically Ill Patients' Outcome.

Authors:  Hamed Aminiahidashti; Farzad Bozorgi; Seyyed Hosein Montazer; Majid Baboli; Abolfazl Firouzian
Journal:  Emerg (Tehran)       Date:  2017-01-08
  5 in total
  2 in total

1.  Which model is superior in predicting ICU survival: artificial intelligence versus conventional approaches.

Authors:  Farzad Mirzakhani; Farahnaz Sadoughi; Mahboobeh Hatami; Alireza Amirabadizadeh
Journal:  BMC Med Inform Decis Mak       Date:  2022-06-26       Impact factor: 3.298

2.  Establishment of ICU Mortality Risk Prediction Models with Machine Learning Algorithm Using MIMIC-IV Database.

Authors:  Ke Pang; Liang Li; Wen Ouyang; Xing Liu; Yongzhong Tang
Journal:  Diagnostics (Basel)       Date:  2022-04-24
  2 in total

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