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机器学习在预测术后结果方面具有令人兴奋的潜力:一种在 IR 中开发随机森林模型的框架。

Machine Learning Offers Exciting Potential for Predicting Postprocedural Outcomes: A Framework for Developing Random Forest Models in IR.

机构信息

Warren Alpert Medical School of Brown University, Providence, Rhode Island; Brown Center for Biomedical Informatics, Brown University, 233 Richmond Street, Box G-R, Providence, RI 02912.

Warren Alpert Medical School of Brown University, Providence, Rhode Island; Brown Center for Biomedical Informatics, Brown University, 233 Richmond Street, Box G-R, Providence, RI 02912.

出版信息

J Vasc Interv Radiol. 2020 Jun;31(6):1018-1024.e4. doi: 10.1016/j.jvir.2019.11.030. Epub 2020 May 4.

Abstract

PURPOSE

To demonstrate that random forest models trained on a large national sample can accurately predict relevant outcomes and may ultimately contribute to future clinical decision support tools in IR.

MATERIALS AND METHODS

Patient data from years 2012-2014 of the National Inpatient Sample were used to develop random forest machine learning models to predict iatrogenic pneumothorax after computed tomography-guided transthoracic biopsy (TTB), in-hospital mortality after transjugular intrahepatic portosystemic shunt (TIPS), and length of stay > 3 days after uterine artery embolization (UAE). Model performance was evaluated with area under the receiver operating characteristic curve (AUROC) and maximum F1 score. The threshold for AUROC significance was set at 0.75.

RESULTS

AUROC was 0.913 for the TTB model, 0.788 for the TIPS model, and 0.879 for the UAE model. Maximum F1 score was 0.532 for the TTB model, 0.357 for the TIPS model, and 0.700 for the UAE model. The TTB model had the highest AUROC, while the UAE model had the highest F1 score. All models met the criteria for AUROC significance.

CONCLUSIONS

This study demonstrates that machine learning models may suitably predict a variety of different clinically relevant outcomes, including procedure-specific complications, mortality, and length of stay. Performance of these models will improve as more high-quality IR data become available.

摘要

目的

展示基于大型全国样本训练的随机森林模型可以准确预测相关结果,并可能最终为 IR 领域的未来临床决策支持工具做出贡献。

材料和方法

使用 2012-2014 年全国住院患者样本中的患者数据来开发随机森林机器学习模型,以预测 CT 引导下经胸壁穿刺活检(TTB)后医源性气胸、经颈静脉肝内门体分流术(TIPS)后住院死亡率以及子宫动脉栓塞术(UAE)后住院时间>3 天的概率。通过接受者操作特征曲线下面积(AUROC)和最大 F1 评分来评估模型性能。AUROC 显著性阈值设定为 0.75。

结果

TTB 模型的 AUROC 为 0.913,TIPS 模型为 0.788,UAE 模型为 0.879。TTB 模型的最大 F1 评分为 0.532,TIPS 模型为 0.357,UAE 模型为 0.700。TTB 模型的 AUROC 最高,而 UAE 模型的 F1 得分最高。所有模型均符合 AUROC 显著性标准。

结论

本研究表明,机器学习模型可以适当地预测各种不同的临床相关结果,包括特定手术的并发症、死亡率和住院时间。随着更多高质量的 IR 数据的出现,这些模型的性能将得到提高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/92be/10625161/0414a4d5c547/nihms-1571409-f0001.jpg

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