Clusters of Pregnant Women with Severe Acute Respiratory Syndrome Due to COVID-19: An Unsupervised Learning Approach.
Isadora Celine Rodrigues CarneiroSofia Galvão FeronatoGuilherme Ferreira SilveiraAlexandre Dias Porto Chiavegatto FilhoHellen Geremias Dos SantosPublished in: International journal of environmental research and public health (2022)
COVID-19 has been widely explored in relation to its symptoms, outcomes, and risk profiles for the severe form of the disease. Our aim was to identify clusters of pregnant and postpartum women with severe acute respiratory syndrome (SARS) due to COVID-19 by analyzing data available in the Influenza Epidemiological Surveillance Information System of Brazil (SIVEP-Gripe) between March 2020 and August 2021. The study's population comprised 16,409 women aged between 10 and 49 years old. Multiple correspondence analyses were performed to summarize information from 28 variables related to symptoms, comorbidities, and hospital characteristics into a set of continuous principal components (PCs). The population was segmented into three clusters based on an agglomerative hierarchical cluster analysis applied to the first 10 PCs. Cluster 1 had a higher frequency of younger women without comorbidities and with flu-like symptoms; cluster 2 was represented by women who reported mainly ageusia and anosmia; cluster 3 grouped older women with the highest frequencies of comorbidities and poor outcomes. The defined clusters revealed different levels of disease severity, which can contribute to the initial risk assessment of the patient, assisting the referral of these women to health services with an appropriate level of complexity.
Keyphrases
- polycystic ovary syndrome
- coronavirus disease
- pregnant women
- sars cov
- pregnancy outcomes
- risk assessment
- case report
- cervical cancer screening
- breast cancer risk
- healthcare
- type diabetes
- machine learning
- sleep quality
- public health
- insulin resistance
- health information
- emergency department
- early onset
- heavy metals
- electronic health record
- respiratory syndrome coronavirus
- human health
- social media
- adverse drug
- deep learning
- acute care
- artificial intelligence
- data analysis