2020
DOI: 10.3389/fgene.2020.00309
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Editorial: Artificial Intelligence Bioinformatics: Development and Application of Tools for Omics and Inter-Omics Studies

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Cited by 9 publications
(5 citation statements)
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“…As a result, ten experiments were conducted, one for each number of nodes considered. For each experiment, a model with the following characteristics was created: Learning rate: 0.001; Loss Function: Binary cross-entropy; Optimization algorithm: Stochastic Gradient Descent; Trigger function for hidden layer: ReLU; Trigger function for the output layer: sigmoids; Number of nodes in the hidden layer: x [ 5 , 15 ]. …”
Section: Resultsmentioning
confidence: 99%
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“…As a result, ten experiments were conducted, one for each number of nodes considered. For each experiment, a model with the following characteristics was created: Learning rate: 0.001; Loss Function: Binary cross-entropy; Optimization algorithm: Stochastic Gradient Descent; Trigger function for hidden layer: ReLU; Trigger function for the output layer: sigmoids; Number of nodes in the hidden layer: x [ 5 , 15 ]. …”
Section: Resultsmentioning
confidence: 99%
“…In fact, it was further partitioned, according to an 80:20 ratio, into an additional training set and a validation set. A grid search was performed on these two in a search space, understood as the number of nodes, equal to the interval [ 5 , 15 ]. For the search of the best optimization algorithm, the first training set was used, on which a k-fold cross-validation with k = 9 was applied, with experiments repeated 11 times.…”
Section: Methodsmentioning
confidence: 99%
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“…Following up on a Research Topic already carried out in past years ( Chicco et al, 2020 ), we introduce a new Research Topic of articles to present Artificial Intelligence and new bioinformatics applications and computational approaches for analyzing omics data, or the application of existing tools, toward a more complete interpretation of biological phenomena, with applications in personalized medicine and biotechnology.…”
Section: Introductionmentioning
confidence: 99%
“…Following the NETTAB/BBCC2019 Conference (http://www.igst.it/nettab/2019/), this Research Topic has been aimed to collect articles that describe development of novel tools for the analysis of proteomics data and their integration with omics data from genomics level in studies that add knowledge into the complexity of biology using inter-omics approaches. The Conference has been organized as a joint meeting of two annual events, NETTAB (http://www.nettab.org) and BBCC (http://www.bbcc-meetings.it), both followed by the publication of article collections in specialized journals (Armano et al, 2007;Romano et al, 2011Romano et al, , 2017Romano et al, , 2019Marabotti et al, 2018;Chicco et al, 2020;Facchiano, 2020). The Conference has been attended by about 80 researchers, hosted a special session on "Computational Proteomics" and a panel discussion entitled "Community efforts for computational proteomics", co-chaired by the leaders of the ELIXIR Proteomics Community, Oliver Kohlbacher (University of Tübingen), Lennart Martens (VIB-UGent Center for Medical Biotechnology) and Juan Antonio Vizcaíno (EBI).…”
mentioning
confidence: 99%