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美国45家医院手术输血风险机器学习模型的多中心验证

Multicenter Validation of a Machine Learning Model for Surgical Transfusion Risk at 45 US Hospitals.

作者信息

Lou Sunny S, Kumar Sayantan, Goss Charles W, Avidan Michael S, Kheterpal Sachin, Kannampallil Thomas

机构信息

Department of Anesthesiology, Washington University School of Medicine, St Louis, Missouri.

Institute for Informatics, Data Science, and Biostatistics, Washington University School of Medicine, St Louis, Missouri.

出版信息

JAMA Netw Open. 2025 Jun 2;8(6):e2517760. doi: 10.1001/jamanetworkopen.2025.17760.

Abstract

IMPORTANCE

Accurate estimation of surgical transfusion risk is important for perioperative planning and effective resource allocation. Most machine learning models in health care are not validated or perform poorly in external settings.

OBJECTIVE

To externally validate a publicly available machine learning algorithm (Surgical Personalized Anticipation of Transfusion Hazard [S-PATH]) to estimate red cell transfusion during surgery within a national sample of hospitals.

DESIGN, SETTING, AND PARTICIPANTS: This retrospective cohort study evaluated all surgical cases performed in 2020 or 2021 at 45 US hospitals participating in the Multicenter Perioperative Outcomes Group. Obstetric and nonoperative cases were excluded. Data analysis was performed from February 2023 to March 2025.

EXPOSURES

At each hospital, S-PATH was used to estimate surgical transfusion risk using patient- and procedure-specific characteristics without local retraining. A baseline model representing the standard-of-care maximum surgical blood ordering schedule (MSBOS) approach, which omits patient factors, was used for comparison. Risk thresholds above which a type and screen would be recommended were set for 96% sensitivity. Performance was evaluated at each hospital separately.

MAIN OUTCOMES AND MEASURES

The primary outcome was the difference in the percentage of patients with type and screen order recommendations between S-PATH and MSBOS at each hospital. The secondary outcome was area under the receiver operating characteristic curve (AUROC).

RESULTS

In this cohort study of 3 275 956 surgical cases (median [IQR] age, 57 [40-69] years; 53.1% female) performed at 45 hospitals (28 of 45 academic [62.2%]), S-PATH recommended type and screen orders for a median (IQR) of 32.5% (25.8%-42.0%) of cases, whereas the MSBOS approach recommended type and screens for a median (IQR) of 51.6% (46.9%-61.1%) of cases for the same sensitivity (median [IQR] difference, 17.9 [14.8-24.9] absolute percentage points). The median (IQR) S-PATH AUROC was 0.929 (0.915-0.946), whereas the median (IQR) MSBOS AUROC was 0.857 (0.822-0.884).

CONCLUSIONS AND RELEVANCE

In this cohort study of 45 hospitals, a personalized surgical transfusion risk prediction algorithm demonstrated external validity and discrimination. S-PATH was consistently more effective than standard care, suggesting its potential for use as a perioperative clinical decision support tool.

摘要

重要性

准确估计手术输血风险对于围手术期规划和有效的资源分配至关重要。医疗保健领域的大多数机器学习模型未经外部验证,或在外部环境中表现不佳。

目的

对一种公开可用的机器学习算法(手术输血风险个性化预测[S-PATH])进行外部验证,以在全国医院样本中估计手术期间的红细胞输血情况。

设计、设置和参与者:这项回顾性队列研究评估了2020年或2021年在美国45家参与多中心围手术期结果组的医院进行的所有手术病例。排除产科和非手术病例。数据分析于2023年2月至2025年3月进行。

暴露因素

在每家医院,S-PATH被用于利用患者和手术特定特征估计手术输血风险,无需进行本地再培训。使用一种代表标准治疗最大手术用血预订计划(MSBOS)方法的基线模型进行比较,该方法忽略了患者因素。设定了敏感度为96%时建议进行血型和筛查的风险阈值。在每家医院分别评估性能。

主要结局和测量指标

主要结局是每家医院S-PATH和MSBOS之间建议进行血型和筛查的患者百分比差异。次要结局是受试者工作特征曲线下面积(AUROC)。

结果

在这项对45家医院进行的3275956例手术病例(年龄中位数[四分位间距]为57[40-69]岁;53.1%为女性)的队列研究中,对于相同的敏感度,S-PATH建议对中位数(四分位间距)为32.5%(25.8%-42.0%)的病例进行血型和筛查,而MSBOS方法建议对中位数(四分位间距)为51.6%(46.9%-61.1%)的病例进行血型和筛查(中位数[四分位间距]差异为17.9[14.8-24.9]个绝对百分点)。S-PATH的中位数(四分位间距)AUROC为0.929(0.915-0.946),而MSBOS的中位数(四分位间距)AUROC为0.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e53/12205404/6344b0281058/jamanetwopen-e2517760-g001.jpg

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