This study describes the development of a database, called MilkyBase, of the biochemical composition of human milk. The data were selected, digitized and curated partly by machine-learning, partly manually from publications. The database can be used to find patterns in the milk composition as a function of maternal-, infant- and measurement conditions and as a platform for users to put their own data in the format shown here. The database is an Excel workbook of linked sheets, making it easy to input data by non-computationally minded nutritionists. The hierarchical organisation of the fields makes sure that statistical inference methods can be programmed to analyse the data. Uncertainty quantification and recording dynamic (time-dependent) compositions offer predictive potentials.
CITATION STYLE
Pacza, T., Martins, M. L., Rockaya, M., Müller, K., Chatterjee, A., Barabási, A. L., & Baranyi, J. (2022). MilkyBase, a database of human milk composition as a function of maternal-, infant- and measurement conditions. Scientific Data, 9(1). https://doi.org/10.1038/s41597-022-01663-1
Mendeley helps you to discover research relevant for your work.