Show simple item record

AuthorQasrawi, Radwan
AuthorAmro, Malak
AuthorVicunaPolo, Stephanny
AuthorAbu Al-Halawa, Diala
AuthorAgha, Hazem
AuthorAbu Seir, Rania
AuthorHoteit, Maha
AuthorHoteit, Reem
AuthorAllehdan, Sabika
AuthorBehzad, Nouf
AuthorBookari, Khlood
AuthorAlKhalaf, Majid
AuthorAl-Sabbah, Haleama
AuthorBadran, Eman
AuthorTayyem, Reema
Available date2022-04-11T08:42:06Z
Publication Date2022-04-04
Publication NameF1000Research
Identifierhttp://dx.doi.org/10.12688/f1000research.110090.1
CitationQasrawi R, Amro M, VicunaPolo S et al. Machine learning techniques for predicting depression and anxiety in pregnant and postpartum women during the COVID-19 pandemic: a cross-sectional regional study [version 1; peer review: awaiting peer review]. F1000Research 2022, 11:390 (https://doi.org/10.12688/f1000research.110090.1)
URIhttp://hdl.handle.net/10576/29525
AbstractBackground : Maternal depression and anxiety are significant public health concerns that play an important role in the health and well-being of mothers and children. The COVID-19 pandemic, the consequential lockdowns and related safety restrictions worldwide negatively affected the mental health of pregnant and postpartum women. Methods: This regional study aimed to develop a machine learning (ML) model for the prediction of maternal depression and anxiety. The study used a dataset collected from five Arab countries during the COVID-19 pandemic between July to December 2020. The population sample included 3569 women (1939 pregnant and 1630 postpartum) from five countries (Jordan, Palestine, Lebanon, Saudi Arabia, and Bahrain). The performance of seven machine learning algorithms was assessed for the prediction of depression and anxiety symptoms. Results : The Gradient Boosting (GB) and Random Forest (RF) models outperformed other studied ML algorithms with accuracy values of 83.3% and 83.2% for depression, respectively, and values of 82.9% and 81.3% for anxiety, respectively. The Mathew’s Correlation Coefficient was evaluated for the ML models; the Naïve Bayes (NB) and GB models presented the highest performance measures (0.63 and 0.59) for depression and (0.74 and 0.73) for anxiety, respectively. The features’ importance ranking was evaluated, the results showed that stress during pregnancy, family support, financial issues, income, and social support were the most significant values in predicting anxiety and depression. Conclusion: Overall, the study evidenced the power of ML models in predicting maternal depression and anxiety and proved to be an efficient tool for identifying and predicting the associated risk factors that influence maternal mental health. The deployment of machine learning models for screening and early detection of depression and anxiety among pregnant and postpartum women might facilitate the development of health prevention and intervention programs that will enhance maternal and child health in low- and middle-income countries.
Languageen
PublisherF1000Research
SubjectMachine Learning
Anxiety
Depression
Pregnancy
COVID-19
Random Forest
TitleMachine learning techniques for predicting depression and anxiety in pregnant and postpartum women during the COVID-19 pandemic: a cross-sectional regional study
TypeArticle
Issue Number390
Volume Number11
ESSN2046-1402
dc.accessType Open Access


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record