Literature DB >> 33846362

Predicting women with depressive symptoms postpartum with machine learning methods.

Sam Andersson1, Deepti R Bathula2, Stavros I Iliadis1, Martin Walter3,4,5, Alkistis Skalkidou6.   

Abstract

Postpartum depression (PPD) is a detrimental health condition that affects 12% of new mothers. Despite negative effects on mothers' and children's health, many women do not receive adequate care. Preventive interventions are cost-efficient among high-risk women, but our ability to identify these is poor. We leveraged the power of clinical, demographic, and psychometric data to assess if machine learning methods can make accurate predictions of postpartum depression. Data were obtained from a population-based prospective cohort study in Uppsala, Sweden, collected between 2009 and 2018 (BASIC study, n = 4313). Sub-analyses among women without previous depression were performed. The extremely randomized trees method provided robust performance with highest accuracy and well-balanced sensitivity and specificity (accuracy 73%, sensitivity 72%, specificity 75%, positive predictive value 33%, negative predictive value 94%, area under the curve 81%). Among women without earlier mental health issues, the accuracy was 64%. The variables setting women at most risk for PPD were depression and anxiety during pregnancy, as well as variables related to resilience and personality. Future clinical models that could be implemented directly after delivery might consider including these variables in order to identify women at high risk for postpartum depression to facilitate individualized follow-up and cost-effectiveness.

Entities:  

Year:  2021        PMID: 33846362     DOI: 10.1038/s41598-021-86368-y

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  35 in total

1.  Personality and risk for postpartum depressive symptoms.

Authors:  S I Iliadis; P Koulouris; M Gingnell; S M Sylvén; I Sundström-Poromaa; L Ekselius; F C Papadopoulos; A Skalkidou
Journal:  Arch Womens Ment Health       Date:  2014-11-06       Impact factor: 3.633

Review 2.  Endocrine factors in the etiology of postpartum depression.

Authors:  Miki Bloch; Robert C Daly; David R Rubinow
Journal:  Compr Psychiatry       Date:  2003 May-Jun       Impact factor: 3.735

Review 3.  Postpartum depression: a review.

Authors:  Milapkumar Patel; Rahn K Bailey; Shagufta Jabeen; Shahid Ali; Narviar C Barker; Kenneth Osiezagha
Journal:  J Health Care Poor Underserved       Date:  2012-05

Review 4.  Biological and psychosocial predictors of postpartum depression: systematic review and call for integration.

Authors:  Ilona S Yim; Lynlee R Tanner Stapleton; Christine M Guardino; Jennifer Hahn-Holbrook; Christine Dunkel Schetter
Journal:  Annu Rev Clin Psychol       Date:  2015       Impact factor: 18.561

5.  Cognitive vulnerability to depression in 5-year-old children of depressed mothers.

Authors:  L Murray; M Woolgar; P Cooper; A Hipwell
Journal:  J Child Psychol Psychiatry       Date:  2001-10       Impact factor: 8.982

6.  Matched cohort study of healthcare resource utilization and costs in young children of mothers with postpartum depression in the United States.

Authors:  Tiffany A Moore Simas; Ming-Yi Huang; Elizabeth R Packnett; Nicole M Zimmerman; Meghan Moynihan; Adi Eldar-Lissai
Journal:  J Med Econ       Date:  2019-10-25       Impact factor: 2.448

7.  Severe obstetric lacerations associated with postpartum depression among women with low resilience - a Swedish birth cohort study.

Authors:  S Asif; A Mulic-Lutvica; C Axfors; P Eckerdal; S I Iliadis; E Fransson; A Skalkidou
Journal:  BJOG       Date:  2020-05-28       Impact factor: 6.531

Review 8.  The relationship between infant-feeding outcomes and postpartum depression: a qualitative systematic review.

Authors:  Cindy-Lee Dennis; Karen McQueen
Journal:  Pediatrics       Date:  2009-04       Impact factor: 7.124

9.  Treatment of postpartum depression: clinical, psychological and pharmacological options.

Authors:  Elizabeth Fitelson; Sarah Kim; Allison Scott Baker; Kristin Leight
Journal:  Int J Womens Health       Date:  2010-12-30

10.  Trends in Postpartum Depressive Symptoms - 27 States, 2004, 2008, and 2012.

Authors:  Jean Y Ko; Karilynn M Rockhill; Van T Tong; Brian Morrow; Sherry L Farr
Journal:  MMWR Morb Mortal Wkly Rep       Date:  2017-02-17       Impact factor: 17.586

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  11 in total

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

Authors:  Heidi Preis; Petar M Djurić; Marzieh Ajirak; Tong Chen; Vibha Mane; David J Garry; Cassandra Heiselman; Joseph Chappelle; Marci Lobel
Journal:  Arch Womens Ment Health       Date:  2022-08-20       Impact factor: 4.405

Review 2.  Effects of Maternal Psychological Stress During Pregnancy on Offspring Brain Development: Considering the Role of Inflammation and Potential for Preventive Intervention.

Authors:  Alice M Graham; Olivia Doyle; Ellen L Tilden; Elinor L Sullivan; Hanna C Gustafsson; Mollie Marr; Madeleine Allen; Kristen L Mackiewicz Seghete
Journal:  Biol Psychiatry Cogn Neurosci Neuroimaging       Date:  2021-10-27

Review 3.  Resilience in the Perinatal Period and Early Motherhood: A Principle-Based Concept Analysis.

Authors:  Susan Elizabeth Hannon; Déirdre Daly; Agnes Higgins
Journal:  Int J Environ Res Public Health       Date:  2022-04-14       Impact factor: 4.614

4.  Predicting perinatal health outcomes using smartphone-based digital phenotyping and machine learning in a prospective Swedish cohort (Mom2B): study protocol.

Authors:  Alkistis Skalkidou; Fotios C Papadopoulos; Ayesha M Bilal; Emma Fransson; Emma Bränn; Allison Eriksson; Mengyu Zhong; Karin Gidén; Ulf Elofsson; Cathrine Axfors
Journal:  BMJ Open       Date:  2022-04-27       Impact factor: 3.006

5.  Performance Evaluation of Machine Learning Algorithm for Classification of Unintended Pregnancy among Married Women in Bangladesh.

Authors:  Md Ismail Hossain; Md Jakaria Habib; Ahmed Abdus Saleh Saleheen; Md Kamruzzaman; Azizur Rahman; Sutopa Roy; Md Amit Hasan; Iqramul Haq; Md Injamul Haq Methun; Md Iqbal Hossain Nayan; Md Rukonozzaman Rukon
Journal:  J Healthc Eng       Date:  2022-05-28       Impact factor: 3.822

Review 6.  Technology-Based Approaches for Supporting Perinatal Mental Health.

Authors:  Andrew M Novick; Melissa Kwitowski; Jack Dempsey; Danielle L Cooke; Allison G Dempsey
Journal:  Curr Psychiatry Rep       Date:  2022-07-23       Impact factor: 8.081

7.  Machine learning techniques for predicting depression and anxiety in pregnant and postpartum women during the COVID-19 pandemic: a cross-sectional regional study.

Authors:  Radwan Qasrawi; Malak Amro; Stephanny VicunaPolo; Diala Abu Al-Halawa; Hazem Agha; Rania Abu Seir; Maha Hoteit; Reem Hoteit; Sabika Allehdan; Nouf Behzad; Khlood Bookari; Majid AlKhalaf; Haleama Al-Sabbah; Eman Badran; Reema Tayyem
Journal:  F1000Res       Date:  2022-04-04

8.  Assessment and Prediction of Depression and Anxiety Risk Factors in Schoolchildren: Machine Learning Techniques Performance Analysis.

Authors:  Radwan Qasrawi; Stephanny Paola Vicuna Polo; Diala Abu Al-Halawa; Sameh Hallaq; Ziad Abdeen
Journal:  JMIR Form Res       Date:  2022-08-31

9.  Postpartum depression: a developed and validated model predicting individual risk in new mothers.

Authors:  Trine Munk-Olsen; Xiaoqin Liu; Kathrine Bang Madsen; Mette-Marie Zacher Kjeldsen; Liselotte Vogdrup Petersen; Veerle Bergink; Alkistis Skalkidou; Simone N Vigod; Vibe G Frokjaer; Carsten B Pedersen; Merete L Maegbaek
Journal:  Transl Psychiatry       Date:  2022-09-30       Impact factor: 7.989

10.  Machine Learning Predicts Drug Metabolism and Bioaccumulation by Intestinal Microbiota.

Authors:  Laura E McCoubrey; Stavriani Thomaidou; Moe Elbadawi; Simon Gaisford; Mine Orlu; Abdul W Basit
Journal:  Pharmaceutics       Date:  2021-11-25       Impact factor: 6.321

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