Machine Learning for Mechanical Ventilation Control (Extended Abstract)
Abstrak
Mechanical ventilation is one of the most widely used therapies in the ICU. However, despite broad application from anaesthesia to COVID-related life support, many injurious challenges remain. We frame these as a control problem: ventilators must let air in and out of the patient's lungs according to a prescribed trajectory of airway pressure. Industry-standard controllers, based on the PID method, are neither optimal nor robust. Our data-driven approach learns to control an invasive ventilator by training on a simulator itself trained on data collected from the ventilator. This method outperforms popular reinforcement learning algorithms and even controls the physical ventilator more accurately and robustly than PID. These results underscore how effective data-driven methodologies can be for invasive ventilation and suggest that more general forms of ventilation (e.g., non-invasive, adaptive) may also be amenable.
Topik & Kata Kunci
Penulis (15)
Daniel Suo
Naman Agarwal
Wenhan Xia
Xinyi Chen
Udaya Ghai
Alexander Yu
Paula Gradu
Karan Singh
Cyril Zhang
Edgar Minasyan
Julienne LaChance
Tom Zajdel
Manuel Schottdorf
Daniel Cohen
Elad Hazan
Akses Cepat
- Tahun Terbit
- 2021
- Bahasa
- en
- Sumber Database
- arXiv
- Akses
- Open Access ✓