人工智能基于细胞因子谱预测妊娠并发症。

IF 1.7 4区 医学 Q3 OBSTETRICS & GYNECOLOGY
Fawaz Azizieh, Bulent Yilmaz, Raj Raghupathy
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引用次数: 0

摘要

背景:妊娠并发症的早期预测对于充分和及时的预防、管理和减少母体/胎儿发病至关重要。目的:应用无偏人工智能/机器学习(AI/ML)方法研究细胞因子对妊娠并发症的预测价值。方法:在这项研究中,我们使用了我们之前发表的127名有妊娠并发症的妇女和97名有正常分娩史和正在正常分娩的妇女的数据。从活化的外周血单核细胞(PBMC)中分析了一组7种细胞因子。应用kNN、SVM、决策树和集合分类等AI/ML方法,探讨AI/ML在比较和预测正常妊娠和正常分娩的可能性,而不是不同的妊娠并发症,如复发性自然流产(RSM)、早产(PTD)、妊娠高血压(PIH)和胎膜早破(PROM)。结果:该研究检查了不同妊娠条件下的细胞因子水平,揭示了显著差异,特别是在年龄匹配的比较中,IL-2和IFN-γ的水平。此外,对于Ensemble (Bagged)、QDA和SVM (Cubic)等方法,二元分类任务显示出显著的准确性和f-measure,显示了它们在区分正常分娩和不同妊娠并发症方面的有效性。结论:该研究为基于外周血细胞产生的细胞因子水平预测妊娠并发症提供了一种基于机器学习的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence predicts pregnancy complications based on cytokine profiles.

Background: Early prediction of pregnancy complications is important for adequate and timely prevention, management, and reducing maternal/fetal pathogenesis.

Objective: To study the prognostic value of cytokines as predictors of pregnancy complications using unbiased artificial intelligence/machine learning (AI/ML) methods.

Methods: For this study, we used our previously published data on 127 women with pregnancy complications and 97 women with a history of normal delivery and undergoing a normal delivery. A panel of seven cytokines were analyzed from activated peripheral blood mononuclear cells (PBMC). AI/ML methods such as kNN, SVM, decision tree, and ensemble classification were applied to explore the possible use of AI/ML to compare and predict normal gestation and normal delivery as opposed to different pregnancy complications such as recurrent spontaneous miscarriage (RSM), preterm delivery (PTD), pregnancy-induced hypertension (PIH), and premature rupture of fetal membranes (PROM).

Results: The study examined cytokine levels in various pregnancy conditions, revealing significant differences, particularly in the levels of IL-2 and IFN-γ, across age-matched comparisons. Additionally, binary classification tasks demonstrated notable accuracies and f-measures for methodologies such as Ensemble (Bagged), QDA, and SVM (Cubic), showcasing their effectiveness in distinguishing between normal delivery and different pregnancy complications.

Conclusion: The study provides a machine learning-based methodology for the prediction of pregnancy complications based on levels of cytokines produced by peripheral blood cells.

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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
217
审稿时长
2-3 weeks
期刊介绍: The official journal of The European Association of Perinatal Medicine, The Federation of Asia and Oceania Perinatal Societies and The International Society of Perinatal Obstetricians. The journal publishes a wide range of peer-reviewed research on the obstetric, medical, genetic, mental health and surgical complications of pregnancy and their effects on the mother, fetus and neonate. Research on audit, evaluation and clinical care in maternal-fetal and perinatal medicine is also featured.
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