The efficacy and effectiveness of machine learning for weaning in mechanically ventilated patients at the intensive care unit:a systematic review

被引:0
|
作者
Man Ting Kwong [1 ]
Glen Wright Colopy [2 ]
Anika MWeber [3 ]
Ari Ercole [4 ]
Jeroen HMBergmann [1 ]
机构
[1] Department of Engineering Science, University of Oxford
[2] snap Inc
[3] CRUK/MRC Oxford Institute for Radiation Oncology
[4] Division of Anaesthesia, Addenbrooke’s Hospital, University of
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Weaning from mechanical ventilation in the intensive care unit(ICU) is a complex clinical problem and relevant for future organ engineering.Prolonged mechanical ventilation(MV) leads to a range of medical complications that increases length of stay and costs as well as contributes to morbidity and even mortality and long-term quality of life.The need to reduce MV is both clinical and economical.Artificial intelligence or machine learning(ML) methods are promising opportunities to positively influence patient outcomes.ML methods have been proposed to enhance clinical decisions processes by using the large amount of digital information generated in the ICU setting.There is a particular interest in empirical methods(such as ML) to improve management of “difficult-to-wean” patients, due to the associated costs and adverse events associated with this population.A systematic literature search was performed using the OVID, IEEEXplore, Pub Med, and Web of Science databases.All publications that included(1) the application of ML to weaning from MV in the ICU and(2) a clinical outcome measurement were reviewed.A checklist to assess the study quality of medical ML publications was modified to suit the critical assessment of ML in MV weaning literature.The systematic search identified nine studies that used ML for weaning management from MV in critical care.The weaning management application areas included(1) prediction of successful spontaneous breathing trials(SBTs),(2) prediction of successful extubation,(3) prediction of arterial blood gases, and(4)ventilator setting and oxygenation-adjustment advisory systems.Seven of the nine studies scored seven out of eight on the quality index.The remaining two of the nine studies scored one out of eight on the quality index.This scoring may, in part,be explained by the publications' focus on technical novelty, and therefore focusing on issues most important to a technical audience, instead of issues most important for a systematic medical review.This review showed that only a limited number of studies have started to assess the efficacy and effectiveness of ML for MV in the ICU.However, ML has the potential to be applied to the prediction of SBT failure, extubation failure, and blood gases, and also the adjustment of ventilator and oxygenation settings.The available databases for the development of ML in this clinical area may still be inadequate.None of the reviewed studies reported on the procedure, treatment, or sedation strategy undergone by patients.Such information is unlikely to be required in a technical publication but is potentially vital to the development ML techniques that are sufficiently robust to meet the needs of the “difficult-to-wean” patient population.
引用
收藏
页码:31 / 40
页数:10
相关论文
共 50 条
  • [21] Oral care practices in non-mechanically ventilated intensive care unit patients: An integrative review
    Emery, Kimberly Paige
    Guido-Sanz, Frank
    [J]. JOURNAL OF CLINICAL NURSING, 2019, 28 (13-14) : 2462 - 2471
  • [22] Use of Communication Tools for Mechanically Ventilated Patients in the Intensive Care Unit
    Holm, Anna
    Dreyer, Pia
    [J]. CIN-COMPUTERS INFORMATICS NURSING, 2018, 36 (08) : 398 - 405
  • [23] Assessment of Sedation and Analgesia in Mechanically Ventilated Patients in Intensive Care Unit
    Naithani, Udita
    Bajaj, Pramila
    Chhabra, Sanjay
    [J]. INDIAN JOURNAL OF ANAESTHESIA, 2008, 52 (05) : 519 - 526
  • [24] Delirium as a predictor of mortality in mechanically ventilated patients in the intensive care unit
    Ely, EW
    Shintani, A
    Truman, B
    Speroff, T
    Gordon, SM
    Harrell, FE
    Inouye, SK
    Bernard, GR
    Dittus, RS
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2004, 291 (14): : 1753 - 1762
  • [25] Quiet Time for Mechanically Ventilated Patients in a Medical Intensive Care Unit
    McAndrew, Natalie S.
    Leske, Jane
    Guttormson, Jill
    [J]. WESTERN JOURNAL OF NURSING RESEARCH, 2016, 38 (10) : 1374 - 1375
  • [26] PREDICTING RESPONSE TO DEXMEDETOMIDINE IN MECHANICALLY VENTILATED INTENSIVE CARE UNIT PATIENTS
    Gbadamosi, Sheriff
    Morton, James
    Peters, Nicholas
    [J]. CRITICAL CARE MEDICINE, 2020, 48
  • [27] Energy balance in obese, mechanically ventilated intensive care unit patients
    Vest, Michael T.
    Newell, Emma
    Shapero, Mary
    McGraw, Patricia
    Jurkovitz, Claudine
    Lennon, Shannon L.
    Trabulsi, Jillian
    [J]. NUTRITION, 2019, 66 : 48 - 53
  • [28] Quiet time for mechanically ventilated patients in the medical intensive care unit
    McAndrew, Natalie S.
    Leske, Jane
    Guttormson, Jill
    Kelber, Sheryl T.
    Moore, Kaylen
    Dabrowski, Sylvia
    [J]. INTENSIVE AND CRITICAL CARE NURSING, 2016, 35 : 22 - 27
  • [29] Ultrasound-assessed diaphragmatic dysfunction as a predictor of weaning outcome in mechanically ventilated patients with sepsis in intensive care unit
    Mohamed Ahmed Saad
    Sherif Wadie Nashed
    Ahmed Nagah El-Shaer
    Ashraf Elsayed Elagamy
    Maha Sadek El derh
    [J]. Ain-Shams Journal of Anesthesiology, 14
  • [30] Ultrasound-assessed diaphragmatic dysfunction as a predictor of weaning outcome in mechanically ventilated patients with sepsis in intensive care unit
    Saad, Mohamed Ahmed
    Nashed, Sherif Wadie
    El-Shaer, Ahmed Nagah
    Elagamy, Ashraf Elsayed
    El Derh, Maha Sadek
    [J]. AIN SHAMS JOURNAL OF ANESTHESIOLOGY, 2022, 14 (01)