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一项关于机器学习技术在识别围产期不良儿童发育产妇风险因素中的范围综述和质量评估。

A scoping review and quality assessment of machine learning techniques in identifying maternal risk factors during the peripartum phase for adverse child development.

作者信息

Tu Hsing-Fen, Zierow Larissa, Lennartsson Mattias, Schweitzer Sascha

机构信息

Department of Women's and Children's Health, Uppsala University, Uppsala, Sweden.

Department of Psychology, Uppsala University, Uppsala, Sweden.

出版信息

PLoS One. 2025 May 28;20(5):e0321268. doi: 10.1371/journal.pone.0321268. eCollection 2025.

Abstract

Maternal exposure to environmental risk factors (e.g., heavy metal exposure) or mental health problems during the peripartum phase has been shown to lead to negative and lasting impacts on child development and life in adulthood. Given the importance of identifying early markers within highly complex and heterogeneous perinatal factors, machine learning techniques emerge as a promising tool. The main goal of the current scoping review was to summarize the evidence on the application of machine learning techniques in predicting or identifying risk factors during peripartum for child development. A critical appraisal was also conducted to evaluate various aspects, including representativeness, data leakage, validation, performance metrics, and interpretability. A systematic search was conducted in PubMed, Web of Science, Scopus, and Google Scholar to identify studies published prior to the 14th of January 2025. Review selection and data extraction were performed by three independent reviewers. After removing duplicates, the searches yielded 10,336 studies, of which 60 studies were included in the final report. Among these 60 machine learning studies, a majority were pattern-focused, using machine learning primarily as a tool to more accurately describe associations between variables, while 16 studies were prediction-focused (26.7%), exploring the predictive performance of their models. For prediction-focused machine learning studies, a diverse range of methodologies was observed. The quality assessment showed that all studies had some important criteria that were not fully met, with deviations ranging from minor to major, limiting the interpretability and generalizability of the reported findings. Future research should aim at addressing these limitations to enhance the robustness and applicability of machine learning models in this field.

摘要

母亲在围产期接触环境风险因素(如重金属暴露)或出现心理健康问题,已被证明会对儿童发育和成年后的生活产生负面且持久的影响。鉴于在高度复杂和异质的围产期因素中识别早期标志物的重要性,机器学习技术成为一种很有前景的工具。当前范围综述的主要目标是总结关于机器学习技术在预测或识别围产期儿童发育风险因素方面应用的证据。还进行了批判性评估,以评估各个方面,包括代表性、数据泄露、验证、性能指标和可解释性。在PubMed、科学网、Scopus和谷歌学术上进行了系统检索,以确定2025年1月14日前发表的研究。由三位独立评审员进行综述筛选和数据提取。去除重复项后,检索到10336项研究,其中60项研究纳入最终报告。在这60项机器学习研究中,大多数以模式为重点,主要将机器学习用作更准确描述变量之间关联的工具,而16项研究以预测为重点(26.7%),探索其模型的预测性能。对于以预测为重点的机器学习研究,观察到了多种方法。质量评估表明,所有研究都有一些重要标准未得到充分满足,偏差范围从小到大都有,这限制了所报告结果的可解释性和普遍性。未来的研究应旨在解决这些局限性,以提高机器学习模型在该领域的稳健性和适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac33/12119027/42b1f52b3d28/pone.0321268.g001.jpg

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