Paul G. Allen School of Computer Science and Engineering, University of Washington, Seattle, WA, USA.
Department of Anesthesiology and Pain Medicine, University of Washington, Seattle, WA, USA.
Nat Biomed Eng. 2018 Oct;2(10):749-760. doi: 10.1038/s41551-018-0304-0. Epub 2018 Oct 10.
Although anaesthesiologists strive to avoid hypoxemia during surgery, reliably predicting future intraoperative hypoxemia is not currently possible. Here, we report the development and testing of a machine-learning-based system that, in real time during general anaesthesia, predicts the risk of hypoxemia and provides explanations of the risk factors. The system, which was trained on minute-by-minute data from the electronic medical records of over fifty thousand surgeries, improved the performance of anaesthesiologists when providing interpretable hypoxemia risks and contributing factors. The explanations for the predictions are broadly consistent with the literature and with prior knowledge from anaesthesiologists. Our results suggest that if anaesthesiologists currently anticipate 15% of hypoxemia events, with this system's assistance they would anticipate 30% of them, a large portion of which may benefit from early intervention because they are associated with modifiable factors. The system can help improve the clinical understanding of hypoxemia risk during anaesthesia care by providing general insights into the exact changes in risk induced by certain patient or procedure characteristics.
尽管麻醉师在手术过程中努力避免低氧血症,但目前还无法可靠地预测未来术中低氧血症的发生。在这里,我们报告了一个基于机器学习的系统的开发和测试,该系统在全身麻醉期间实时预测低氧血症的风险,并对风险因素进行解释。该系统是在超过 5 万例手术的电子病历的每分钟数据上进行训练的,它提高了麻醉师在提供可解释的低氧血症风险和促成因素方面的表现。预测的解释与文献和麻醉师的先验知识广泛一致。我们的研究结果表明,如果麻醉师目前预计 15%的低氧血症事件,在这个系统的帮助下,他们将预计 30%的低氧血症事件,其中很大一部分可能受益于早期干预,因为它们与可改变的因素有关。该系统可以通过提供对特定患者或手术特征引起的风险确切变化的一般见解,帮助改善麻醉护理期间低氧血症风险的临床理解。