Developing a machine-learning model for real-time prediction of successful extubation in mechanically ventilated patients using time-series ventilator-derived parameters

被引:4
作者
Huang, Kuo-Yang [1 ,2 ,3 ,4 ]
Hsu, Ying-Lin [5 ]
Chen, Huang-Chi [6 ]
Horng, Ming-Hwarng [6 ]
Chung, Che-Liang [6 ]
Lin, Ching-Hsiung [1 ,3 ,7 ]
Xu, Jia-Lang [2 ]
Hou, Ming-Hon [1 ,3 ,4 ,8 ,9 ]
机构
[1] Changhua Christian Hosp, Dept Internal Med, Div Chest Med, Changhua, Taiwan
[2] Changhua Christian Hosp, Artificial Intelligence Dev Ctr, Changhua, Taiwan
[3] Natl Chung Hsing Univ, Inst Genom & Bioinformat, Taichung, Taiwan
[4] Natl Chung Hsing Univ, PhD Program Med Biotechnol, Taichung, Taiwan
[5] Natl Chung Hsing Univ, Inst Stat, Dept Appl Math, Taichung, Taiwan
[6] Yuanlin Christian Hosp, Dept Internal Med, Div Chest Med, Changhua, Taiwan
[7] MingDao Univ, Dept Recreat & Holist Wellness, Changhua, Taiwan
[8] Natl Chung Hsing Univ, Grad Inst Biotechnol, Taichung, Taiwan
[9] Natl Chung Hsing Univ, Dept Life Sci, Taichung, Taiwan
关键词
extubation; intensive care unit; machine learning; mechanical ventilation; prediction model; OUTCOMES; FAILURE;
D O I
10.3389/fmed.2023.1167445
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundSuccessful weaning from mechanical ventilation is important for patients admitted to intensive care units. However, models for predicting real-time weaning outcomes remain inadequate. Therefore, this study aimed to develop a machine-learning model for predicting successful extubation only using time-series ventilator-derived parameters with good accuracy. MethodsPatients with mechanical ventilation admitted to the Yuanlin Christian Hospital in Taiwan between August 2015 and November 2020 were retrospectively included. A dataset with ventilator-derived parameters was obtained before extubation. Recursive feature elimination was applied to select the most important features. Machine-learning models of logistic regression, random forest (RF), and support vector machine were adopted to predict extubation outcomes. In addition, the synthetic minority oversampling technique (SMOTE) was employed to address the data imbalance problem. The area under the receiver operating characteristic (AUC), F1 score, and accuracy, along with the 10-fold cross-validation, were used to evaluate prediction performance. ResultsIn this study, 233 patients were included, of whom 28 (12.0%) failed extubation. The six ventilatory variables per 180 s dataset had optimal feature importance. RF exhibited better performance than the others, with an AUC value of 0.976 (95% confidence interval [CI], 0.975-0.976), accuracy of 94.0% (95% CI, 93.8-94.3%), and an F1 score of 95.8% (95% CI, 95.7-96.0%). The difference in performance between the RF and the original and SMOTE datasets was small. ConclusionThe RF model demonstrated a good performance in predicting successful extubation in mechanically ventilated patients. This algorithm made a precise real-time extubation outcome prediction for patients at different time points.
引用
收藏
页数:9
相关论文
共 41 条
  • [1] Machine-Learning-Based Disease Diagnosis: A Comprehensive Review
    Ahsan, Md Manjurul
    Luna, Shahana Akter
    Siddique, Zahed
    [J]. HEALTHCARE, 2022, 10 (03)
  • [2] A systematic review on machine learning approaches for cardiovascular disease prediction using medical big data
    Azmi, Javed
    Arif, Muhammad
    Nafis, Md Tabrez
    Alam, M. Afshar
    Tanweer, Safdar
    Wang, Guojun
    [J]. MEDICAL ENGINEERING & PHYSICS, 2022, 105
  • [3] Predictive factors of weaning from mechanical ventilation and extubation outcome: A systematic review
    Baptistella, Antuani Rafael
    Sarmento, Fabio Junior
    da Silva, Karina Ribeiro
    Baptistella, Shaline Ferla
    Taglietti, Marcelo
    Zuquello, Radames Adamo
    Nunes Filho, Joao Rogerio
    [J]. JOURNAL OF CRITICAL CARE, 2018, 48 : 56 - 62
  • [4] Variation in extubation failure rates after neonatal congenital heart surgery across Pediatric Cardiac Critical Care Consortium hospitals
    Benneyworth, Brian D.
    Mastropietro, Christopher W.
    Graham, Eric M.
    Klugman, Darren
    Costello, John M.
    Zhang, Wenying
    Gaies, Michael
    [J]. JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY, 2017, 153 (06) : 1519 - 1526
  • [5] Breathing pattern variability: a weaning predictor in postoperative patients recovering from systemic inflammatory response syndrome
    Bien, MY
    Hseu, SS
    Yien, HW
    Kuo, BIT
    Lin, YT
    Wang, JH
    Kou, YR
    [J]. INTENSIVE CARE MEDICINE, 2004, 30 (02) : 241 - 247
  • [6] SmcHD1, containing a structural-maintenance-of-chromosomes hinge domain, has a critical role in X inactivation
    Blewitt, Marnie E.
    Gendrel, Anne-Valerie
    Pang, Zhenyi
    Sparrow, Duncan B.
    Whitelaw, Nadia
    Craig, Jeffrey M.
    Apedaile, Anwyn
    Hilton, Douglas J.
    Dunwoodie, Sally L.
    Brockdorff, Neil
    Kay, Graham F.
    Whitelaw, Emma
    [J]. NATURE GENETICS, 2008, 40 (05) : 663 - 669
  • [7] SMOTE: Synthetic minority over-sampling technique
    Chawla, Nitesh V.
    Bowyer, Kevin W.
    Hall, Lawrence O.
    Kegelmeyer, W. Philip
    [J]. 2002, American Association for Artificial Intelligence (16)
  • [8] Machine Learning and Prediction in Medicine - Beyond the Peak of Inflated Expectations
    Chen, Jonathan H.
    Asch, Steven M.
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 2017, 376 (26) : 2507 - 2509
  • [9] Enhanced recursive feature elimination
    Chen, Xue-Wen
    Jeong, Jong Cheol
    [J]. ICMLA 2007: SIXTH INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS, PROCEEDINGS, 2007, : 429 - 435
  • [10] Predicting short-term suicidal thoughts in adolescents using machine learning: developing decision tools to identify daily level risk after hospitalization
    Czyz, E. K.
    Koo, H. J.
    Al-Dajani, N.
    King, C. A.
    Nahum-Shani, I
    [J]. PSYCHOLOGICAL MEDICINE, 2023, 53 (07) : 2982 - 2991