2022
DOI: 10.1101/2022.09.11.507485
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Ensemble Machine Learning to “Boost” Ubiquitination-sites Prediction

Abstract: Ubiquitination-site prediction is an important task because ubiquitination is a critical regulatory function for many biological processes such as proteasome degradation, DNA repair and transcription, signal transduction, endocytoses, and sorting. However, the highly dynamic and reversible nature of ubiquitination makes it difficult to experimentally identify specific ubiquitination sites. In this paper, we explore the possibility of improving the prediction of ubiquitination sites using ensemble machine learn… Show more

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“…This translates into their issue selection, focusing on development, the South, (alter)globalization, and sustainability. In addition, MO’s ambition is to offer a form of explanatory or slow journalism: shedding light upon “the cohesion of evolutions and realities from afar and nearby” (MO, 2019). SCEPTR profiles itself as a right-wing, conservative alternative to traditional and other alternative media.…”
Section: Case Selection and Analytical Approachmentioning
confidence: 99%
“…This translates into their issue selection, focusing on development, the South, (alter)globalization, and sustainability. In addition, MO’s ambition is to offer a form of explanatory or slow journalism: shedding light upon “the cohesion of evolutions and realities from afar and nearby” (MO, 2019). SCEPTR profiles itself as a right-wing, conservative alternative to traditional and other alternative media.…”
Section: Case Selection and Analytical Approachmentioning
confidence: 99%