Sebastian Sakowski
Overview
Explore the profile of Sebastian Sakowski including associated specialties, affiliations and a list of published articles.
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Articles
7
Citations
4
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0
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Recent Articles
1.
Dudek G, Sakowski S, Brzezinska O, Sarnik J, Budlewski T, Dragan G, et al.
PLoS One
. 2024 Mar;
19(3):e0300717.
PMID: 38517871
Machine learning (ML) algorithms can handle complex genomic data and identify predictive patterns that may not be apparent through traditional statistical methods. They become popular tools for medical applications including...
2.
Galita G, Sarnik J, Brzezinska O, Budlewski T, Poplawska M, Sakowski S, et al.
Int J Mol Sci
. 2024 Mar;
25(5).
PMID: 38473866
Rheumatoid arthritis (RA) is an autoimmune disease characterized by chronic inflammation affecting up to 2.0% of adults around the world. The molecular background of RA has not yet been fully...
3.
Majchrzak M, Sakowski S, Waldmajer J, Parniewski P
Int J Mol Sci
. 2023 Mar;
24(5).
PMID: 36902111
The increasingly expanding genomic databases generate the need for new tools for their processing and further use. In the paper, a bioinformatics tool, which is a search engine of microsatellite...
4.
Bartoszek K, Majchrzak M, Sakowski S, Kubiak-Szeligowska A, Kaj I, Parniewski P
PLoS Comput Biol
. 2018 Feb;
14(1):e1005931.
PMID: 29385125
The Binary State Speciation and Extinction (BiSSE) model is a branching process based model that allows the diversification rates to be controlled by a binary trait. We develop a general...
5.
Sakowski S, Krasinski T, Waldmajer J, Sarnik J, Blasiak J, Poplawski T
Genet Mol Biol
. 2017 Oct;
40(4):860-870.
PMID: 29064510
The development of conventional, silicon-based computers has several limitations, including some related to the Heisenberg uncertainty principle and the von Neumann "bottleneck". Biomolecular computers based on DNA and proteins are...
6.
Sakowski S, Krasinski T, Sarnik J, Blasiak J, Waldmajer J, Poplawski T
Z Naturforsch C J Biosci
. 2017 Apr;
72(7-8):303-313.
PMID: 28432850
Great advances in biotechnology have allowed the construction of a computer from DNA. One of the proposed solutions is a biomolecular finite automaton, a simple two-state DNA computer without memory,...
7.
Blasiak J, Krasinski T, Poplawski T, Sakowski S
Postepy Biochem
. 2011 Jul;
57(1):13-23.
PMID: 21735816
Biocomputers can be an alternative for traditional "silicon-based" computers, which continuous development may be limited due to further miniaturization (imposed by the Heisenberg Uncertainty Principle) and increasing the amount of...