Department of Anesthesia and Perioperative Care, University of California San Francisco, San Francisco, 550 16th St., San Francisco, CA, 94158, USA.
Bakar Computational Health Sciences Institute, University of California San Francisco, San Francisco, CA, USA.
J Clin Monit Comput. 2022 Oct;36(5):1367-1377. doi: 10.1007/s10877-021-00774-1. Epub 2021 Nov 27.
Opal is the first published example of a full-stack platform infrastructure for an implementation science designed for ML in anesthesia that solves the problem of leveraging ML for clinical decision support. Users interact with a secure online Opal web application to select a desired operating room (OR) case cohort for data extraction, visualize datasets with built-in graphing techniques, and run in-client ML or extract data for external use. Opal was used to obtain data from 29,004 unique OR cases from a single academic institution for pre-operative prediction of post-operative acute kidney injury (AKI) based on creatinine KDIGO criteria using predictors which included pre-operative demographic, past medical history, medications, and flowsheet information. To demonstrate utility with unsupervised learning, Opal was also used to extract intra-operative flowsheet data from 2995 unique OR cases and patients were clustered using PCA analysis and k-means clustering. A gradient boosting machine model was developed using an 80/20 train to test ratio and yielded an area under the receiver operating curve (ROC-AUC) of 0.85 with 95% CI [0.80-0.90]. At the default probability decision threshold of 0.5, the model sensitivity was 0.9 and the specificity was 0.8. K-means clustering was performed to partition the cases into two clusters and for hypothesis generation of potential groups of outcomes related to intraoperative vitals. Opal's design has created streamlined ML functionality for researchers and clinicians in the perioperative setting and opens the door for many future clinical applications, including data mining, clinical simulation, high-frequency prediction, and quality improvement.
蛋白石是第一个为麻醉学中的机器学习设计的完整堆栈平台基础设施的范例,它解决了利用机器学习进行临床决策支持的问题。用户通过安全的在线 Opal 网络应用程序与 Opal 进行交互,选择所需的手术室(OR)病例队列以进行数据提取,使用内置的绘图技术可视化数据集,并在客户端运行 ML 或提取用于外部使用的数据。Opal 用于从单个学术机构的 29,004 个独特 OR 病例中获取数据,根据肌酐 KDIGO 标准基于术前预测术后急性肾损伤(AKI),使用包括术前人口统计学、既往病史、药物和流程图信息在内的预测因素。为了展示无监督学习的实用性,Opal 还用于从 2995 个独特的 OR 病例中提取术中流程图数据,并使用 PCA 分析和 k-means 聚类对患者进行聚类。使用 80/20 的训练到测试比例开发了梯度提升机模型,并产生了 0.85 的接收器操作曲线(ROC-AUC)下面积,95%置信区间为 [0.80-0.90]。在默认概率决策阈值为 0.5 的情况下,该模型的灵敏度为 0.9,特异性为 0.8。执行 k-means 聚类将病例分为两个簇,并生成与术中生命体征相关的潜在结果组的假设。Opal 的设计为围手术期的研究人员和临床医生创建了简化的机器学习功能,并为许多未来的临床应用打开了大门,包括数据挖掘、临床模拟、高频预测和质量改进。