Literature DB >> 35986793

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

Heidi Preis1,2, Petar M Djurić3, Marzieh Ajirak3, Tong Chen3, Vibha Mane3, David J Garry4, Cassandra Heiselman4, Joseph Chappelle4, Marci Lobel5,4.   

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.
© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Austria, part of Springer Nature.

Entities:  

Keywords:  Interdisciplinary research; Machine learning; Precision medicine; Prenatal depression; Psychosocial screening

Mesh:

Year:  2022        PMID: 35986793     DOI: 10.1007/s00737-022-01259-z

Source DB:  PubMed          Journal:  Arch Womens Ment Health        ISSN: 1434-1816            Impact factor:   4.405


  21 in total

1.  Multiple imputation by chained equations: what is it and how does it work?

Authors:  Melissa J Azur; Elizabeth A Stuart; Constantine Frangakis; Philip J Leaf
Journal:  Int J Methods Psychiatr Res       Date:  2011-03       Impact factor: 4.035

Review 2.  Untreated prenatal maternal depression and the potential risks to offspring: a review.

Authors:  Deana B Davalos; Carly A Yadon; Hope C Tregellas
Journal:  Arch Womens Ment Health       Date:  2012-01-04       Impact factor: 3.633

3.  Assessing mental health during pregnancy: An exploratory qualitative study of midwives' perceptions.

Authors:  Natasha Baker; Lindsay Gillman; Kirstie Coxon
Journal:  Midwifery       Date:  2020-03-20       Impact factor: 2.372

4.  Prenatal Depression Risk Factors, Developmental Effects and Interventions: A Review.

Authors:  Tiffany Field
Journal:  J Pregnancy Child Health       Date:  2017-02-27

5.  Barriers to antenatal psychosocial assessment and depression screening in private hospital settings.

Authors:  Tanya Connell; Bryanne Barnett; Donna Waters
Journal:  Women Birth       Date:  2017-10-12       Impact factor: 3.172

Review 6.  Prenatal depression and adverse birth outcomes: an updated systematic review.

Authors:  Eynav Elgavish Accortt; Alyssa C D Cheadle; Christine Dunkel Schetter
Journal:  Matern Child Health J       Date:  2015-06

7.  Development and validation of a machine learning-based postpartum depression prediction model: A nationwide cohort study.

Authors:  Eldar Hochman; Becca Feldman; Abraham Weizman; Amir Krivoy; Shay Gur; Eran Barzilay; Hagit Gabay; Joseph Levy; Ohad Levinkron; Gabriella Lawrence
Journal:  Depress Anxiety       Date:  2020-12-07       Impact factor: 6.505

8.  Detection of postnatal depression. Development of the 10-item Edinburgh Postnatal Depression Scale.

Authors:  J L Cox; J M Holden; R Sagovsky
Journal:  Br J Psychiatry       Date:  1987-06       Impact factor: 9.319

Review 9.  A systematic review and meta-analysis of the association between unintended pregnancy and perinatal depression.

Authors:  Amanuel Alemu Abajobir; Joemer Calderon Maravilla; Rosa Alati; Jackob Moses Najman
Journal:  J Affect Disord       Date:  2015-12-17       Impact factor: 4.839

10.  Predicting women with depressive symptoms postpartum with machine learning methods.

Authors:  Sam Andersson; Deepti R Bathula; Stavros I Iliadis; Martin Walter; Alkistis Skalkidou
Journal:  Sci Rep       Date:  2021-04-12       Impact factor: 4.379

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