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241.
Poročilo o preskusu št.: LVG 2024-141 : vzorec št. 2024/00143
Tine Hauptman, Maarten De Groot, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize
Published in DiRROS: 23.10.2024; Views: 54; Downloads: 0
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242.
Poročilo o preskusu št.: LVG 2024-144 : vzorec št. 2024/00753
Tine Hauptman, Špela Hočevar, Patricija Podkrajšek, Barbara Piškur, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize
Published in DiRROS: 23.10.2024; Views: 61; Downloads: 0
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243.
244.
Poročilo o preskusu št.: LVG 2024-145 : vzorec št. 2024/00764
Tine Hauptman, Zina Devetak, Špela Hočevar, Patricija Podkrajšek, Barbara Piškur, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize
Published in DiRROS: 23.10.2024; Views: 54; Downloads: 0
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245.
Poročilo o preskusu št.: LVG 2024-146 : vzorec št. 2024/00771
Tine Hauptman, Zina Devetak, Špela Hočevar, Patricija Podkrajšek, Barbara Piškur, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize
Published in DiRROS: 23.10.2024; Views: 56; Downloads: 0
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246.
247.
Poročilo o preskusu št.: LVG 2024-156 : vzorec št. 2024/00627
Barbara Piškur, Patricija Podkrajšek, Zina Devetak, Nikica Ogris, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize, Pseudocercospora pini-densiflorae, rdeči bor, bolezen iglic
Published in DiRROS: 23.10.2024; Views: 55; Downloads: 0
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248.
Poročilo o preskusu št.: LVG 2024-154 : vzorec št. 2024/00830
Nikica Ogris, 2024, expertise, arbitration decision

Keywords: varstvo gozdov, morfološke analize
Published in DiRROS: 23.10.2024; Views: 41; Downloads: 0
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249.
250.
Knots and $\theta$-curves identification in polymeric chains and native proteins using neural networks
Fernando Bruno da Silva, Boštjan Gabrovšek, Marta Korpacz, Kamil Luczkiewicz, Szymon Niewieczerzal, Maciej Sikora, Joanna I. Sulkowska, 2024, original scientific article

Abstract: Entanglement in proteins is a fascinating structural motif that is neither easy to detect via traditional methods nor fully understood. Recent advancements in AI-driven models have predicted that millions of proteins could potentially have a nontrivial topology. Herein, we have shown that long short-term memory (LSTM)-based neural networks (NN) architecture can be applied to detect, classify, and predict entanglement not only in closed polymeric chains but also in polymers and protein-like structures with open knots, actual protein configurations, and also $\theta$-curves motifs. The analysis revealed that the LSTM model can predict classes (up to the $6_1$ knot) accurately for closed knots and open polymeric chains, resembling real proteins. In the case of open knots formed by protein-like structures, the model displays robust prediction capabilities with an accuracy of 99%. Moreover, the LSTM model with proper features, tested on hundreds of thousands of knotted and unknotted protein structures with different architectures predicted by AlphaFold 2, can distinguish between the trivial and nontrivial topology of the native state of the protein with an accuracy of 93%.
Keywords: machine learning, topology, protein databases, entanglements, open knots, closed knots
Published in DiRROS: 23.10.2024; Views: 76; Downloads: 34
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