劳动力监测和决策支持:基于机器学习的范例。

IF 2.3 Q2 OBSTETRICS & GYNECOLOGY
Frontiers in global women's health Pub Date : 2025-04-16 eCollection Date: 2025-01-01 DOI:10.3389/fgwh.2025.1368575
Mariana Nogueira, Sergio Sanchez-Martinez, Gemma Piella, Mathieu De Craene, Carlos Yagüe, Pablo-Miki Marti-Castellote, Mercedes Bonet, Olufemi T Oladapo, Bart Bijnens
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引用次数: 0

摘要

引言:针对劳动过程中的实时监控和决策支持问题,提出了一种基于机器学习的范式,结合了无监督和有监督组件,解决了当前最先进方法(如分段或纯监督模型)的局限性。方法:采用世界卫生组织分娩困难改善结果(BOLD)前瞻性队列研究数据说明了所提出的方法,其中包括2014-2015年在尼日利亚和乌干达13个主要地区卫生保健机构入院分娩的9,995名妇女。使用无监督降维将复杂的劳动数据映射到视觉上直观的空间。在这个空间中,可以将正在进行的分娩轨迹与具有相似特征和已知结果的妇女的历史队列进行比较-该信息可用于估计个性化的“健康”轨迹参考(并提醒医疗保健提供者注意重大偏差),以及提请注意类似分娩中不同干预措施/不良后果的高发生率。为了评估所提出的方法,在剖腹产预测背景下评估了简单风险评分的预测值,该评分量化了类似分娩中正常进展和并发症发生率的偏差,并将其与产程和最先进的监督机器学习模型进行了比较。结果:考虑到所有女性,我们的预测指标的敏感性和特异性为0.70。观察到,当观察不同的亚组时,这种预测性能可能会增加或减少。讨论:通过简单的实现,我们的方法优于分段,并与最先进的监督模型的性能相匹配,同时提供卓越的灵活性和可解释性,作为实时监控和决策支持解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Labour monitoring and decision support: a machine-learning-based paradigm.

Introduction: A machine-learning-based paradigm, combining unsupervised and supervised components, is proposed for the problem of real-time monitoring and decision support during labour, addressing the limitations of current state-of-the-art approaches, such as the partograph or purely supervised models.

Methods: The proposed approach is illustrated with World Health Organisation's Better Outcomes in Labour Difficulty (BOLD) prospective cohort study data, including 9,995 women admitted for labour in 2014-2015 in thirteen major regional health care facilities across Nigeria and Uganda. Unsupervised dimensionality reduction is used to map complex labour data to a visually intuitive space. In this space, an ongoing labour trajectory can be compared to those of a historical cohort of women with similar characteristics and known outcomes-this information can be used to estimate personalised "healthy" trajectory references (and alert the healthcare provider to significant deviations), as well as draw attention to high incidences of different interventions/adverse outcomes among similar labours. To evaluate the proposed approach, the predictive value of simple risk scores quantifying deviation from normal progress and incidence of complications among similar labours is assessed in a caesarean section prediction context and compared to that of the partograph and state-of-the-art supervised machine-learning models.

Results: Considering all women, our predictors yielded sensitivity and specificity of ∼0.70. It was observed that this predictive performance could increase or decrease when looking at different subgroups.

Discussion: With a simple implementation, our approach outperforms the partograph and matches the performance of state-of-the-art supervised models, while offering superior flexibility and interpretability as a real-time monitoring and decision-support solution.

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来源期刊
CiteScore
3.70
自引率
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审稿时长
13 weeks
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