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一种基于机器学习的在线预测工具,用于预测脊柱肿瘤切除术后的短期结果。

A Machine Learning-Based Online Prediction Tool for Predicting Short-Term Postoperative Outcomes Following Spinal Tumor Resections.

作者信息

Karabacak Mert, Margetis Konstantinos

机构信息

Department of Neurosurgery, Mount Sinai Health System, New York, NY 10029, USA.

出版信息

Cancers (Basel). 2023 Jan 28;15(3):812. doi: 10.3390/cancers15030812.

Abstract

Preoperative prediction of short-term postoperative outcomes in spinal tumor patients can lead to more precise patient care plans that reduce the likelihood of negative outcomes. With this study, we aimed to develop machine learning algorithms for predicting short-term postoperative outcomes and implement these models in an open-source web application. Patients who underwent surgical resection of spinal tumors were identified using the American College of Surgeons, National Surgical Quality Improvement Program. Three outcomes were predicted: prolonged length of stay (LOS), nonhome discharges, and major complications. Four machine learning algorithms were developed and integrated into an open access web application to predict these outcomes. A total of 3073 patients that underwent spinal tumor resection were included in the analysis. The most accurately predicted outcomes in terms of the area under the receiver operating characteristic curve (AUROC) was the prolonged LOS with a mean AUROC of 0.745 The most accurately predicting algorithm in terms of AUROC was random forest, with a mean AUROC of 0.743. An open access web application was developed for getting predictions for individual patients based on their characteristics and this web application can be accessed here: huggingface.co/spaces/MSHS-Neurosurgery-Research/NSQIP-ST. Machine learning approaches carry significant potential for the purpose of predicting postoperative outcomes following spinal tumor resections. Development of predictive models as clinically useful decision-making tools may considerably enhance risk assessment and prognosis as the amount of data in spinal tumor surgery continues to rise.

摘要

脊柱肿瘤患者术后短期预后的术前预测可制定更精确的患者护理计划,降低不良预后的可能性。通过本研究,我们旨在开发用于预测术后短期预后的机器学习算法,并将这些模型应用于一个开源网络应用程序中。使用美国外科医师学会国家外科质量改进计划确定接受脊柱肿瘤手术切除的患者。预测了三个结果:住院时间延长、非家庭出院和主要并发症。开发了四种机器学习算法,并将其集成到一个开放获取的网络应用程序中以预测这些结果。共有3073例接受脊柱肿瘤切除的患者纳入分析。根据受试者工作特征曲线下面积(AUROC),预测最准确的结果是住院时间延长,平均AUROC为0.745。根据AUROC,预测最准确的算法是随机森林,平均AUROC为0.743。开发了一个开放获取的网络应用程序,用于根据患者特征为个体患者进行预测,该网络应用程序可在此处访问:huggingface.co/spaces/MSHS-Neurosurgery-Research/NSQIP-ST。机器学习方法在预测脊柱肿瘤切除术后的预后方面具有巨大潜力。随着脊柱肿瘤手术数据量的不断增加,将预测模型开发为临床有用的决策工具可能会显著提高风险评估和预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d06/9913622/772f940c9858/cancers-15-00812-g001.jpg

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