E43: Development, Validation, and Comparison of Machine Learning Models for Predicting Pediatric Surgical Site Infection Using the NSQIP-P Database
カートのアイテムが多すぎます
カートに追加できませんでした。
ウィッシュリストに追加できませんでした。
ほしい物リストの削除に失敗しました。
ポッドキャストのフォローに失敗しました
ポッドキャストのフォロー解除に失敗しました
-
ナレーター:
-
著者:
概要
In this episode, Thomas K Varghese, Jr, MD, FACS, is joined by Carrie Chan, MSN, MPH, from the University of California, San Francisco, and Karthik Balakrishnan, MD, FACS, from Stanford Medicine Children’s Health. They discuss their recent article,“Development, Validation, and Comparison of Machine Learning Models for Predicting Pediatric Surgical Site Infections Using the NSQIP-P Database,” which represents the largest study to date on predicting pediatric surgical site infection. The authors developed machine-learning models and ultimately recommend a regularized logistic regression model for clinical integration, balancing performance and feasibility for implementation. Findings support using routine preoperative data for personalized infection prevention and preoperative planning.
Disclosure Information: Ms Chan and Drs Varghese and Balakrishnan have nothing to disclose.
To earn 0.25 AMA PRA Category 1 Credits™ for this episode of the JACS Operative Word Podcast, click here to register for the course and complete the evaluation. Listeners can earn CME credit for this podcast for up to 2 years after the original air date.
Chan, Carrie T MSN, MPH; Pletcher, Mark J MD, MPH; Balakrishnan, Karthik MD, MPH, FACS; Hswen, Yulin ScD, MPH; Scheffler, Aaron PhD, MS. Development, Validation, and Comparison of Machine Learning Models for Predicting Pediatric Surgical Site Infections Using the NSQIP-P Database. Journal of the American College of Surgeons 242(3):p 712-722, March 2026. | DOI: 10.1097/XCS.0000000000001683
Learn more about the Journal of the American College of Surgeons, a monthly peer-reviewed journal publishing original contributions on all aspects of surgery, including scientific articles, collective reviews, experimental investigations, and more.
#JACSOperativeWord