Multimodal Early Birth Weight Prediction Using Multiple Kernel Learning.
Lisbeth Camargo-MarínMario Guzmán-HuertaOmar Piña-RamírezJorge Pérez-GonzálezPublished in: Sensors (Basel, Switzerland) (2023)
In this work, a novel multimodal learning approach for early prediction of birth weight is presented. Fetal weight is one of the most relevant indicators in the assessment of fetal health status. The aim is to predict early birth weight using multimodal maternal-fetal variables from the first trimester of gestation (Anthropometric data, as well as metrics obtained from Fetal Biometry, Doppler and Maternal Ultrasound). The proposed methodology starts with the optimal selection of a subset of multimodal features using an ensemble-based approach of feature selectors. Subsequently, the selected variables feed the nonparametric Multiple Kernel Learning regression algorithm. At this stage, a set of kernels is selected and weighted to maximize performance in birth weight prediction. The proposed methodology is validated and compared with other computational learning algorithms reported in the state of the art. The obtained results (absolute error of 234 g) suggest that the proposed methodology can be useful as a tool for the early evaluation and monitoring of fetal health status through indicators such as birth weight.
Keyphrases
- birth weight
- gestational age
- weight gain
- machine learning
- body mass index
- preterm birth
- pain management
- deep learning
- magnetic resonance imaging
- preterm infants
- physical activity
- magnetic resonance
- weight loss
- big data
- mass spectrometry
- chronic pain
- neural network
- artificial intelligence
- body weight
- clinical evaluation