Submitted:
31 July 2025
Posted:
01 August 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
- A patient assigned to Level 0 requires standard postoperative care in the recovery room followed by timely transfer to a general ward (= standard care) when transfer criteria are met. This corresponds to the international standard of a PACU. This level was set as the system default.
- Level 1 patients are expected to stay in the PACU for an extended period of at least 4 hours, e.g., including overnight monitoring. Level 2 patients are monitored at the IMC during the postoperative phase.
- For Level 3 patients, postoperative care in an ICU is assumed to be necessary.
2.1. Statistics
3. Results
3.1. Surgical-Based Predictions
3.2. Anesthesiological-Based Predictions
3.3. Comparison of Predictions
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ICU | Intensive care unit |
| ML | Machine learning |
| PACU | Post-Anesthesia Care Unit |
| IMC | Intermediate Care |
| SVM | Support vector machine |
| OR | Operating Room |
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| actual postoperative level of care |
surgical-based prediction | ||||
| Level 0 | Level 1 | Level 2 | Level 3 | total | |
| Level 0 | 31,480 (98.21%) | 296 (0.92%) | 125 (0.39%) | 152 (0.47%) | 32,053 |
| Level 1 | 736 (86.59%) | 84 (9.88%) |
21 (2.47%) | 9 (1.06%) | 850 |
| Level 2 | 492 (57.14%) | 41 (4.76%) | 324 (37.63%) | 4 (0.46%) | 861 |
| Level 3 | 772 (44.78%) | 28 (1.62%) | 268 (15.55%) | 656 (38.05%) | 1,724 |
| total | 33,480 | 449 | 738 | 821 | 35,488 |
| Actual postoperative level of care | anesthesiological-based prediction | ||||
| Level 0 | Level 1 | Level 2 | Level 3 | total | |
| Level 0 | 29,212 (91.14%) | 1,544 (4.82%) | 532 (1.66%) | 765 (2.39%) | 32,053 |
| Level 1 | 517 (60,82%) | 226 (26,59%) | 85 (10,00%) | 22 (2,59%) | 850 |
| Level 2 | 197 (22.88%) | 78 (9.06%) | 498 (57.84%) | 88 (10.22%) | 861 |
| Level 3 | 335 (19.43%) | 64 (3.71%) | 345 (20.01%) | 980 (56.84%) | 1,724 |
| total | 30,261 | 1,912 | 1,460 | 1,855 | 35,488 |
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