Searched for: %2520
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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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Keukeleire, P. (author), Makrodimitris, S. (author), Reinders, M.J.T. (author)
Cell-free DNA (cfDNA) are DNA fragments originating from dying cells that are detectable in bodily fluids, such as the plasma. Accelerated cell death, for example caused by disease, induces an elevated concentration of cfDNA. As a result, determining the cell type origins of cfDNA molecules can provide information about an individual's health...
journal article 2023
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Jongbloed, Elisabeth M. (author), Jansen, Maurice P.H.M. (author), de Weerd, Vanja (author), Helmijr, Jean A. (author), Beaufort, Corine M. (author), Reinders, M.J.T. (author), van Marion, Ronald (author), van IJcken, Wilfred F.J. (author), Makrodimitris, S. (author)
Next generation sequencing of cell-free DNA (cfDNA) is a promising method for treatment monitoring and therapy selection in metastatic breast cancer (MBC). However, distinguishing tumor-specific variants from sequencing artefacts and germline variation with low false discovery rate is challenging when using large targeted sequencing panels...
journal article 2023
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Eltager, M.A.M.E. (author), Abdelaal, T.R.M. (author), Charrout, M. (author), Mahfouz, A.M.E.T.A. (author), Reinders, M.J.T. (author), Makrodimitris, S. (author)
Deep generative models, such as variational autoencoders (VAE), have gained increasing attention in computational biology due to their ability to capture complex data manifolds which subsequently can be used to achieve better performance in downstream tasks, such as cancer type prediction or subtyping of cancer. However, these models are...
journal article 2023
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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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Makrodimitris, S. (author), Reinders, M.J.T. (author), van Ham, R.C.H.J. (author)
Physical interaction between two proteins is strong evidence that the proteins are involved in the same biological process, making Protein-Protein Interaction (PPI) networks a valuable data resource for predicting the cellular functions of proteins. However, PPI networks are largely incomplete for non-model species. Here, we tested to what...
journal article 2020
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Villegas Morcillo, A.O. (author), Makrodimitris, S. (author), van Ham, R.C.H.J. (author), Gomez, A.M. (author), Sanchez, Victoria (author), Reinders, M.J.T. (author)
Motivation: Protein function prediction is a difficult bioinformatics problem. Many recent methods use deep neural networks to learn complex sequence representations and predict function from these. Deep supervised models require a lot of labeled training data which are not available for this task. However, a very large amount of protein...
journal article 2020
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van den Akker, E.B. (author), Makrodimitris, S. (author), Hulsman, M. (author), Brugman, Martijn H. (author), Nikolic, Tatjana (author), Bradley, Ted (author), Waisfisz, Quinten (author), Baas, Frank (author), Reinders, M.J.T. (author), Holstege, H. (author)
journal article 2020
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Makrodimitris, S. (author), Reinders, M.J.T. (author), van Ham, R.C.H.J. (author)
Motivation: Co-expression of two genes across different conditions is indicative of their involvement in the same biological process. However, when using RNA-Seq datasets with many experimental conditions from diverse sources, only a subset of the experimental conditions is expected to be relevant for finding genes related to a particular...
journal article 2020
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Makrodimitris, S. (author), van Ham, R.C.H.J. (author), Reinders, M.J.T. (author)
The current rate at which new DNA and protein sequences are being generated is too fast to experimentally discover the functions of those sequences, emphasizing the need for accurate Automatic Function Prediction (AFP) methods. AFP has been an active and growing research field for decades and has made considerable progress in that time....
review 2020
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Makrodimitris, S. (author), van Ham, R.C.H.J. (author), Reinders, M.J.T. (author)
Motivation: Most automatic functional annotation methods assign Gene Ontology (GO) terms to proteins based on annotations of highly similar proteins. We advocate that proteins that are less similar are still informative. Also, despite their simplicity and structure, GO terms seem to be hard for computers to learn, in particular the Biological...
journal article 2019
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