Shara Nawar, Mirabal-Beltran Roxanne, Talmadge Bethany, Falah Noor, Ahmad Maryam, Dempers Ramon, Crovatt Samantha, Eisenberg Steven, Anderson Kelley
MedStar Health Research Institute, Hyattesville, MD, United States.
Georgetown-Howard Universities Center for Clinical and Translational Science, Washington, DC, DC, United States.
JMIR Cardio. 2024 Apr 22;8:e53091. doi: 10.2196/53091.
Cardiovascular conditions (eg, cardiac and coronary conditions, hypertensive disorders of pregnancy, and cardiomyopathies) were the leading cause of maternal mortality between 2017 and 2019. The United States has the highest maternal mortality rate of any high-income nation, disproportionately impacting those who identify as non-Hispanic Black or Hispanic. Novel clinical approaches to the detection and diagnosis of cardiovascular conditions are therefore imperative. Emerging research is demonstrating that machine learning (ML) is a promising tool for detecting patients at increased risk for hypertensive disorders during pregnancy. However, additional studies are required to determine how integrating ML and big data, such as electronic health records (EHRs), can improve the identification of obstetric patients at higher risk of cardiovascular conditions.
This study aimed to evaluate the capability and timing of a proprietary ML algorithm, Healthy Outcomes for all Pregnancy Experiences-Cardiovascular-Risk Assessment Technology (HOPE-CAT), to detect maternal-related cardiovascular conditions and outcomes.
Retrospective data from the EHRs of a large health care system were investigated by HOPE-CAT in a virtual server environment. Deidentification of EHR data and standardization enabled HOPE-CAT to analyze data without pre-existing biases. The ML algorithm assessed risk factors selected by clinical experts in cardio-obstetrics, and the algorithm was iteratively trained using relevant literature and current standards of risk identification. After refinement of the algorithm's learned risk factors, risk profiles were generated for every patient including a designation of standard versus high risk. The profiles were individually paired with clinical outcomes pertaining to cardiovascular pregnancy conditions and complications, wherein a delta was calculated between the date of the risk profile and the actual diagnosis or intervention in the EHR.
In total, 604 pregnancies resulting in birth had records or diagnoses that could be compared against the risk profile; the majority of patients identified as Black (n=482, 79.8%) and aged between 21 and 34 years (n=509, 84.4%). Preeclampsia (n=547, 90.6%) was the most common condition, followed by thromboembolism (n=16, 2.7%) and acute kidney disease or failure (n=13, 2.2%). The average delta was 56.8 (SD 69.7) days between the identification of risk factors by HOPE-CAT and the first date of diagnosis or intervention of a related condition reported in the EHR. HOPE-CAT showed the strongest performance in early risk detection of myocardial infarction at a delta of 65.7 (SD 81.4) days.
This study provides additional evidence to support ML in obstetrical patients to enhance the early detection of cardiovascular conditions during pregnancy. ML can synthesize multiday patient presentations to enhance provider decision-making and potentially reduce maternal health disparities.
心血管疾病(如心脏和冠状动脉疾病、妊娠期高血压疾病和心肌病)是2017年至2019年孕产妇死亡的主要原因。美国是所有高收入国家中孕产妇死亡率最高的国家,对非西班牙裔黑人或西班牙裔人群的影响尤为严重。因此,迫切需要新的心血管疾病检测和诊断临床方法。新兴研究表明,机器学习(ML)是检测妊娠期高血压疾病风险增加患者的一种有前景的工具。然而,还需要更多研究来确定将ML与大数据(如电子健康记录(EHR))相结合如何能改善对心血管疾病风险较高的产科患者的识别。
本研究旨在评估一种专有的ML算法——所有妊娠经历的健康结果-心血管风险评估技术(HOPE-CAT)检测与孕产妇相关的心血管疾病及结局的能力和时机。
HOPE-CAT在虚拟服务器环境中对一个大型医疗系统的EHR中的回顾性数据进行了调查。EHR数据的去识别化和标准化使HOPE-CAT能够在没有预先存在偏差的情况下分析数据。该ML算法评估了心脏产科临床专家选择的风险因素,并使用相关文献和当前的风险识别标准进行迭代训练。在完善算法学习到的风险因素后,为每位患者生成风险概况,包括标准风险与高风险的指定。这些概况分别与与心血管妊娠疾病和并发症相关的临床结局配对,其中计算了风险概况日期与EHR中实际诊断或干预日期之间的差值。
总共604例分娩的妊娠有可与风险概况进行比较的记录或诊断;大多数患者为黑人(n = 482,79.8%)且年龄在21至34岁之间(n = 509,84.4%)。先兆子痫(n = 547,90.6%)是最常见的疾病,其次是血栓栓塞(n = 16,2.7%)和急性肾疾病或肾衰竭(n = 13,2.2%)。HOPE-CAT识别风险因素与EHR中报告的相关疾病首次诊断或干预日期之间的平均差值为56.8(标准差69.7)天。HOPE-CAT在心肌梗死的早期风险检测中表现最强,差值为65.7(标准差81.4)天。
本研究提供了更多证据支持在产科患者中使用ML,以加强妊娠期心血管疾病的早期检测。ML可以综合多天的患者表现,以改善医疗服务提供者的决策,并有可能减少孕产妇健康差距。