Content area
Monitoring mean arterial pressure (MAP) is essential for ensuring safe general anesthesia. Current practices rely either on non-invasive cuff measurements, which suffer from poor temporal resolution, or invasive arterial lines, which provide excellent accuracy and resolution but carry a significant risk of complications. Therefore, identifying alternatives to arterial lines in the operating rooms is a pressing need. Despite the importance of this issue in the community, clinically viable non-invasive MAP monitoring methods have yet to emerge. Existing approaches often encounter reproducibility issues, notably on large, open-source databases, and are not always optimized for real-time predictions. To address these limitations, this study introduces AnesthNet, a deep learning architecture designed for MAP estimation, using data exclusively from non-invasive and routine sensors such as photoplethysmography, ECG, and cuff oscillometer. AnesthNet was evaluated against the best-performing state-of-the-art deep learning architectures, using international standards to assess their performance on two of the largest datasets to date: VitalDB (2,833 patients) and LaribDB (5,060 patients). AnesthNet achieved superior performances, reaching an MAE of 4.6 (± 4.7) mmHg on VitalDB and 3.8 (± 5.7) mmHg on LaribDB. Our model also outperformed other architectures for different delays in cuff values and yielded no significant latency during inference, meeting clinical real-time requirements.
Details
Monitoring methods;
Deep learning;
Datasets;
International standards;
Calibration;
Vital signs;
Signal processing;
Electrocardiography;
Hypotension;
Causality;
Anesthesia;
EKG;
Patients;
Electronic health records;
Blood pressure;
Neural networks;
Hemodynamics;
Data collection;
Libraries;
Latency;
Intensive care;
Data warehouses;
Critical care
1 INSERM, U942 MASCOT, Université Paris Cité, 75006, Paris, France (ROR: https://ror.org/05f82e368) (GRID: grid.508487.6) (ISNI: 0000 0004 7885 7602); Department of Anaesthesia and Critical Care, APHP, Hôpital Lariboisière, 75010, Paris, France (ROR: https://ror.org/02mqtne57) (GRID: grid.411296.9) (ISNI: 0000 0000 9725 279X); Inria, Université Paris-Saclay, Palaiseau, France (ROR: https://ror.org/03xjwb503) (GRID: grid.460789.4) (ISNI: 0000 0004 4910 6535)
2 INSERM, U942 MASCOT, Université Paris Cité, 75006, Paris, France (ROR: https://ror.org/05f82e368) (GRID: grid.508487.6) (ISNI: 0000 0004 7885 7602); Department of Anaesthesia and Critical Care, APHP, Hôpital Lariboisière, 75010, Paris, France (ROR: https://ror.org/02mqtne57) (GRID: grid.411296.9) (ISNI: 0000 0000 9725 279X); LMS, CNRS, Institut Polytechnique de Paris, Palaiseau, France (ROR: https://ror.org/042tfbd02) (GRID: grid.508893.f)
3 INSERM, U942 MASCOT, Université Paris Cité, 75006, Paris, France (ROR: https://ror.org/05f82e368) (GRID: grid.508487.6) (ISNI: 0000 0004 7885 7602); Department of Anaesthesia and Critical Care, APHP, Hôpital Lariboisière, 75010, Paris, France (ROR: https://ror.org/02mqtne57) (GRID: grid.411296.9) (ISNI: 0000 0000 9725 279X)
4 Inria, Université Paris-Saclay, Palaiseau, France (ROR: https://ror.org/03xjwb503) (GRID: grid.460789.4) (ISNI: 0000 0004 4910 6535)