预测分析在妊娠、分娩和产后护理中的应用。

IF 1.8 4区 医学 Q2 NURSING
Caitlin Dreisbach, Veronica Barcelona, Meghan Reading Turchioe, Samantha Bernstein, Elise Erickson
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引用次数: 0

摘要

摘要:预测分析已成为一种有前途的方法,以改善生殖保健和患者的结果。在怀孕和分娩期间,准确预测风险和并发症的能力可以使早期干预和减少不良事件。然而,在围产期护理环境中实施预测模型存在挑战和伦理考虑。我们介绍了预测分析的主要概念,并描述了预测建模在围产期护理主题中的应用,如生育、先兆子痫、分娩开始、剖宫产后阴道分娩、子宫破裂、诱导结果、产后出血和产后情绪障碍。尽管一些预测模型已经达到了足够的精度(AUC 0.7-0.9),但大多数预测模型需要在不同人群和实践环境中进行额外的外部验证。偏见,特别是种族偏见,仍然是当前模型的一个主要限制。护士和高级执业护士,包括执业护士、认证注册麻醉师护士和助产士,在确保高质量数据收集和向临床医生和卫生保健系统用户传达预测模型输出方面发挥着至关重要的作用。解决伦理挑战和局限性的预测分析是必要的,公平地翻译这些工具,以支持以患者为中心的围产期护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Predictive Analytics in Pregnancy, Birth, and Postpartum Nursing Care.

Abstract: Predictive analytics has emerged as a promising approach for improving reproductive health care and patient outcomes. During pregnancy and birth, the ability to accurately predict risks and complications could enable earlier interventions and reduce adverse events. However, there are challenges and ethical considerations for implementing predictive models in perinatal care settings. We introduce major concepts in predictive analytics and describe application of predictive modeling to perinatal care topics such as fertility, preeclampsia, labor onset, vaginal birth after cesarean, uterine rupture, induction outcomes, postpartum hemorrhage, and postpartum mood disorders. Although some predictive models have achieved adequate accuracy (AUC 0.7-0.9), most require additional external validation across diverse populations and practice settings. Bias, particularly racial bias, remains a key limitation of current models. Nurses and advanced practice nurses, including nurse practitioners certified registered nurse anesthetists, and nurse-midwives, play a vital role in ensuring high-quality data collection and communicating predictive model outputs to clinicians and users of the health care system. Addressing the ethical challenges and limitations of predictive analytics is imperative to equitably translate these tools to support patient-centered perinatal care.

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来源期刊
CiteScore
2.60
自引率
16.70%
发文量
158
审稿时长
>12 weeks
期刊介绍: MCN''s mission is to provide the most timely, relevant information to nurses practicing in perinatal, neonatal, midwifery, and pediatric specialties. MCN is a peer-reviewed journal that meets its mission by publishing clinically relevant practice and research manuscripts aimed at assisting nurses toward evidence-based practice. MCN focuses on today''s major issues and high priority problems in maternal/child nursing, women''s health, and family nursing with extensive coverage of advanced practice healthcare issues relating to infants and young children. Each issue features peer-reviewed, clinically relevant articles. Coverage includes updates on disease and related care; ideas on health promotion; insights into patient and family behavior; discoveries in physiology and pathophysiology; clinical investigations; and research manuscripts that assist nurses toward evidence-based practices.
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