Prediction for Perioperative Stroke Using Intraoperative Parameters

Author:

Oh Mi‐Young1ORCID,Jung Young Mi23ORCID,Kim Won‐Pyo4ORCID,Lee Hyung‐Chul56ORCID,Kim Tae Kyong57ORCID,Ko Sang‐Bae8,Lim Jaehyun4ORCID,Lee Seung Mi291011ORCID

Affiliation:

1. Department of Neurology Bucheon Sejong Hospital Bucheon‐si Gyeonggi‐do South Korea

2. Department of Obstetrics and Gynecology Seoul National University College of Medicine Seoul South Korea

3. Department of Obstetrics and Gynecology, Guro Hospital Korea University College of Medicine Seoul South Korea

4. R&D Center Lumanlab Inc. Seoul South Korea

5. Department of Anesthesiology and Pain Medicine Seoul National University College of Medicine Seoul South Korea

6. Department of Anesthesiology and Pain Medicine Seoul National University Hospital Seoul South Korea

7. Department of Anesthesiology and Pain Medicine Metropolitan Government Seoul National University Boramae Medical Center Seoul South Korea

8. Department of Neurology Seoul National University Hospital Seoul South Korea

9. Department of Obstetrics and Gynecology Seoul National University Hospital Seoul South Korea

10. Innovative Medical Technology Research Institute Seoul National University Hospital Seoul South Korea

11. Institute of Reproductive Medicine and Population & Medical Big Data Research Center, Medical Research Center Seoul National University Seoul South Korea

Abstract

Background Perioperative stroke is a severe complication following surgery. To identify patients at risk for perioperative stroke, several prediction models based on the preoperative factors were suggested. Prediction models often focus on preoperative patient characteristics to assess stroke risk. However, most existing models primarily base their predictions on the patient's baseline characteristics before surgery. We aimed to develop a machine‐learning model incorporating both pre‐ and intraoperative variables to predict perioperative stroke. Methods and Results This study included patients who underwent noncardiac surgery at 2 hospitals with the data of 15 752 patients from Seoul National University Hospital used for development and temporal internal validation, and the data of 449 patients from Boramae Medical Center used for external validation. Perioperative stroke was defined as a newly developed ischemic lesion on diffusion‐weighted imaging within 30 days of surgery. We developed a prediction model composed of pre‐ and intraoperative factors (integrated model) and compared it with a model consisting of preoperative features alone (preoperative model). Perioperative stroke developed in 109 (0.69%) patients in the Seoul National University Hospital group and 11 patients (2.45%) in the Boramae Medical Center group. The integrated model demonstrated superior predictive performance with area under the curve values of 0.824 (95% CI, 0.762–0.880) versus 0.584 (95% CI, 0.499–0.667; P <0.001) in the internal validation; and 0.716 (95% CI, 0.560–0.859) versus 0.505 (95% CI, 0.343–0.654; P =0.018) in the external validation, compared to the preoperative model. Conclusions We suggest that incorporating intraoperative factors into perioperative stroke prediction models can improve their accuracy.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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