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Unveiling the Influence of AI on Advancements in Respiratory Care: Narrative Review
7
Zitationen
22
Autoren
2024
Jahr
Abstract
BACKGROUND: Artificial intelligence is experiencing rapid growth, with continual innovation and advancements in the health care field. OBJECTIVE: This study aims to evaluate the application of artificial intelligence technologies across various domains of respiratory care. METHODS: We conducted a narrative review to examine the latest advancements in the use of artificial intelligence in the field of respiratory care. The search was independently conducted by respiratory care experts, each focusing on their respective scope of practice and area of interest. RESULTS: This review illuminates the diverse applications of artificial intelligence, highlighting its use in areas associated with respiratory care. Artificial intelligence is harnessed across various areas in this field, including pulmonary diagnostics, respiratory care research, critical care or mechanical ventilation, pulmonary rehabilitation, telehealth, public health or health promotion, sleep clinics, home care, smoking or vaping behavior, and neonates and pediatrics. With its multifaceted utility, artificial intelligence can enhance the field of respiratory care, potentially leading to superior health outcomes for individuals under this extensive umbrella. CONCLUSIONS: As artificial intelligence advances, elevating academic standards in the respiratory care profession becomes imperative, allowing practitioners to contribute to research and understand artificial intelligence's impact on respiratory care. The permanent integration of artificial intelligence into respiratory care creates the need for respiratory therapists to positively influence its progression. By participating in artificial intelligence development, respiratory therapists can augment their clinical capabilities, knowledge, and patient outcomes.
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Autoren
- Mohammed Μ. Alqahtani
- Abdullah Alanazi
- Saleh S. Algarni
- Hassan Aljohani
- Faraj K. Alenezi
- Tareq F. Alotaibi
- Mansour M. Alotaibi
- Mobarak K Alqahtani
- Mushabbab Alahmari
- Khalid S. Alwadeai
- Saeed M. Alghamdi
- Mohammed A. Almeshari
- Turki Faleh Alshammari
- Noora Mumenah
- Ebtihal Al Harbi
- Ziyad F Al Nufaiei
- Eyas Alhuthail
- Esam Alzahrani
- Husam Alahmadi
- Abdulaziz Alarifi
- Amal Mousa Zaidan
- Taha Ismaeil
Institutionen
- King Saud bin Abdulaziz University for Health Sciences(SA)
- King Abdulaziz Medical City(SA)
- King Abdullah International Medical Research Center(SA)
- National Guard Health Affairs(SA)
- Northern Border University(SA)
- University of Bisha(SA)
- King Saud University(SA)
- Umm al-Qura University(SA)
- Saudi Heart Association(SA)
- Al Baha University(SA)
- King Abdulaziz University(SA)