2023
DOI: 10.3390/s24010002
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Multimodal Early Birth Weight Prediction Using Multiple Kernel Learning

Lisbeth Camargo-Marín,
Mario Guzmán-Huerta,
Omar Piña-Ramirez
et al.

Abstract: 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… Show more

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