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应用机器学习方法分析心理社会筛查数据,以改善产前抑郁的识别:对临床实践和研究的意义。

Applying machine learning methods to psychosocial screening data to improve identification of prenatal depression: Implications for clinical practice and research.

机构信息

Department of Psychology, Stony Brook University, Stony Brook, NY, 11794, USA.

Department of Obstetrics, Gynecology and Reproductive Medicine, Renaissance School of Medicine, Stony Brook University, Stony Brook, NY, 11794, USA.

出版信息

Arch Womens Ment Health. 2022 Oct;25(5):965-973. doi: 10.1007/s00737-022-01259-z. Epub 2022 Aug 20.

Abstract

We utilized machine learning (ML) methods on data from the PROMOTE, a novel psychosocial screening tool, to quantify risk for prenatal depression for individual patients and identify contributing factors that impart greater risk for depression. Random forest algorithms were used to predict likelihood for being at high risk for prenatal depression (Edinburgh Postnatal Depression Scale; EPDS ≥ 13 and/or positive self-injury item) using data from 1715 patients who completed the PROMOTE. Performance matrices were calculated to assess the ability of the PROMOTE to accurately classify patients. Probability for depression was calculated for individual patients. Finally, recursive feature elimination was used to evaluate the importance of each PROMOTE item in the classification of depression risk. PROMOTE data were successfully used to predict depression with acceptable performance matrices (accuracy = 0.80; sensitivity = 0.75; specificity = 0.81; positive predictive value = 0.79; negative predictive value = 0.97). Perceived stress, emotional problems, family support, age, major life events, partner support, unplanned pregnancy, current employment, lifetime abuse, and financial state were the most important PROMOTE items in the classification of depression risk. Results affirm the value of the PROMOTE as a psychosocial screening tool for prenatal depression and the benefit of using it in conjunction with ML methods. Using such methods can help detect underreported outcomes and identify what in patients' lives makes them more vulnerable, thus paving the way for effective individually tailored precision medicine.

摘要

我们利用机器学习 (ML) 方法对 PROMOTE 中的数据进行分析,PROMOTE 是一种新型的心理社会筛查工具,旨在量化个体患者产前抑郁的风险,并确定增加抑郁风险的因素。随机森林算法用于预测 1715 名完成 PROMOTE 测试的患者中,有多少人具有产前抑郁高风险(爱丁堡产后抑郁量表;EPDS≥13 分和/或有自我伤害项目)的可能性。使用性能矩阵来评估 PROMOTE 准确分类患者的能力。为每位患者计算抑郁的可能性。最后,递归特征消除用于评估 PROMOTE 项目在分类抑郁风险中的重要性。PROMOTE 数据成功地用于预测抑郁,具有可接受的性能矩阵(准确性=0.80;敏感性=0.75;特异性=0.81;阳性预测值=0.79;阴性预测值=0.97)。感知压力、情绪问题、家庭支持、年龄、重大生活事件、伴侣支持、意外怀孕、当前就业、一生受虐待、财务状况是 PROMOTE 中对分类抑郁风险最重要的项目。结果证实了 PROMOTE 作为产前抑郁心理社会筛查工具的价值,以及与 ML 方法结合使用的好处。使用这些方法可以帮助发现报告不足的结果,并确定患者生活中哪些方面使他们更容易受到影响,从而为有效的个性化精准医疗铺平道路。

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本文引用的文献

1
Psychological treatment of perinatal depression: a meta-analysis.围产期抑郁症的心理治疗:荟萃分析。
Psychol Med. 2023 Apr;53(6):2596-2608. doi: 10.1017/S0033291721004529. Epub 2021 Nov 16.
3
Introduction to Machine Learning in Obstetrics and Gynecology.机器学习在妇产科中的应用简介。
Obstet Gynecol. 2022 Apr 1;139(4):669-679. doi: 10.1097/AOG.0000000000004706. Epub 2022 Mar 10.
5
Trajectories of antenatal depression and adverse pregnancy outcomes.产前抑郁的轨迹与不良妊娠结局。
Am J Obstet Gynecol. 2022 Jan;226(1):108.e1-108.e9. doi: 10.1016/j.ajog.2021.07.007. Epub 2021 Jul 17.

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