4.4 Article Proceedings Paper

Selection strategy for sedation depth in critically ill patients on mechanical ventilation

Journal

BMC MEDICAL INFORMATICS AND DECISION MAKING
Volume 21, Issue SUPPL 2, Pages -

Publisher

BMC
DOI: 10.1186/s12911-021-01452-7

Keywords

Mechanical ventilation; Clustering; Sedation and analgesia; Latent profile analysis; ICU

Funding

  1. Beijing Nova Program from Beijing Municipal Science & Technology Commission [Z201100006820126]
  2. Capital Characteristic Clinic Project of Beijing [Z181100001718209]
  3. China International Medical Exchange Foundation Special Fund for Young and Middle-aged Medical Research [Z-2018-35-1902]
  4. China Health Information and Health Care Big Data Association Severe Infection Analgesia and Sedation Big Data Special Fund [Z-2019-1-001]
  5. Undergraduate Teaching Reform of Peking Union Medical College Hospital [2020zlgc0109]

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This study used latent profile analysis and dimensionality reduction to classify patients treated with mechanical ventilation and sedation and analgesia into two categories, revealing that the depth of sedation was limited by the condition of the respiratory system.
Background Analgesia and sedation therapy are commonly used for critically ill patients, especially mechanically ventilated patients. From the initial nonsedation programs to deep sedation and then to on-demand sedation, the understanding of sedation therapy continues to deepen. However, according to different patient's condition, understanding the individual patient's depth of sedation needs remains unclear. Methods The public open source critical illness database Medical Information Mart for Intensive Care III was used in this study. Latent profile analysis was used as a clustering method to classify mechanically ventilated patients based on 36 variables. Principal component analysis dimensionality reduction was used to select the most influential variables. The ROC curve was used to evaluate the classification accuracy of the model. Results Based on 36 characteristic variables, we divided patients undergoing mechanical ventilation and sedation and analgesia into two categories with different mortality rates, then further reduced the dimensionality of the data and obtained the 9 variables that had the greatest impact on classification, most of which were ventilator parameters. According to the Richmond-ASS scores, the two phenotypes of patients had different degrees of sedation and analgesia, and the corresponding ventilator parameters were also significantly different. We divided the validation cohort into three different levels of sedation, revealing that patients with high ventilator conditions needed a deeper level of sedation, while patients with low ventilator conditions required reduction in the depth of sedation as soon as possible to promote recovery and avoid reinjury. Conclusion Through latent profile analysis and dimensionality reduction, we divided patients treated with mechanical ventilation and sedation and analgesia into two categories with different mortalities and obtained 9 variables that had the greatest impact on classification, which revealed that the depth of sedation was limited by the condition of the respiratory system.

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