Machine Learning-Based Prediction of Abdominal Subcutaneous Fat Thickness During Pregnancy.
Moon Sook HwangEunjeong SongJeonghee AhnSeungmi ParkPublished in: Metabolic syndrome and related disorders (2023)
Objective: Current evidence regarding the safety of abdominal subcutaneous injections in pregnant women is limited. In this study, we developed a predictive model for abdominal skin-subcutaneous fat thickness (S-ScFT) by gestational periods (GP) in pregnant women. Methods: A total of 354 cases were measured for S-ScFT. Three machine learning algorithms, namely deep learning, random forest, and support vector machine, were used for S-ScFT predictive modeling and factor analysis for each abdominal site. Data analysis was performed using SPSS and RapidMiner softwares. Results: The deep learning algorithm best predicted the abdominal S-ScFT. The common important variables in all three algorithms for the prediction of abdominal S-ScFT were menarcheal age, prepregnancy weight, prepregnancy body mass index (categorized), large fetus for gestational age, and alcohol consumption. Conclusion: Predicting the safety of subcutaneous injections during pregnancy could be beneficial for managing gestational diabetes mellitus in pregnant women.
Keyphrases
- pregnant women
- machine learning
- deep learning
- body mass index
- weight gain
- artificial intelligence
- data analysis
- birth weight
- gestational age
- alcohol consumption
- pregnancy outcomes
- convolutional neural network
- adipose tissue
- big data
- optical coherence tomography
- physical activity
- climate change
- ultrasound guided
- weight loss
- fatty acid
- soft tissue
- body weight