Machine Learning and Systems Biology in Genomics and Health 2022
DOI: 10.1007/978-981-16-5993-5_6
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Connecting the Dots: Using Machine Learning to Forge Gene Regulatory Networks from Large Biological Datasets. At the Intersection of GRNs: Where System Biology Meets Machine Learning

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“…Plants are well-suited experimental systems to study the mechanistic basis of developmental dynamics, given that they are more amenable to in vivo manipulation than, for example, animals. Constructing the Arabidopsis gene regulatory network is currently topical research [31][32][33]. Figure 10 shows that the convergence effect of the MCMC iteration number of 50,000 under the PCCs-ED-DBN model is approximately the same as the convergence effect of the MCMC iteration number of 200,000 under the HMM-DBN model.…”
Section: Gene Regulatory Network In Arabidopsismentioning
confidence: 98%
“…Plants are well-suited experimental systems to study the mechanistic basis of developmental dynamics, given that they are more amenable to in vivo manipulation than, for example, animals. Constructing the Arabidopsis gene regulatory network is currently topical research [31][32][33]. Figure 10 shows that the convergence effect of the MCMC iteration number of 50,000 under the PCCs-ED-DBN model is approximately the same as the convergence effect of the MCMC iteration number of 200,000 under the HMM-DBN model.…”
Section: Gene Regulatory Network In Arabidopsismentioning
confidence: 98%