Searched for: subject%3A%22Embedded%22
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Makrodimitris, S. (author), Pronk, I.B. (author), Abdelaal, T.R.M. (author), Reinders, M.J.T. (author)
Multi-omic analyses are necessary to understand the complex biological processes taking place at the tissue and cell level, but also to make reliable predictions about, for example, disease outcome. Several linear methods exist that create a joint embedding using paired information per sample, but recently there has been a rise in the...
review 2024
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van den Bent, Irene (author), Makrodimitris, S. (author), Reinders, M.J.T. (author)
Computationally annotating proteins with a molecular function is a difficult problem that is made even harder due to the limited amount of available labeled protein training data. Unsupervised protein embeddings partly circumvent this limitation by learning a universal protein representation from many unlabeled sequences. Such embeddings...
journal article 2021
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Mahfouz, A.M.E.T.A. (author), Van de Giessen, M. (author), Van der Maaten, L.J.P. (author), Huisman, S.M.H. (author), Reinders, M.J.T. (author), Hawrylycz, M.J. (author), Lelieveldt, B.P.F. (author)
The Allen Brain Atlases enable the study of spatially resolved, genome-wide gene expression patterns across the mammalian brain. Several explorative studies have applied linear dimensionality reduction methods such as Principal Component Analysis (PCA) and classical Multi-Dimensional Scaling (cMDS) to gain insight into the spatial organization...
journal article 2014