Spinal Muscle Atrophy Disease Modelling as Bayesian Network
Helal, Manal
(2021)
Spinal Muscle Atrophy Disease Modelling as Bayesian Network.
UNSPECIFIED.
We investigate the molecular gene expressions studies and public databases for disease modelling using Probabilistic Graphical Models and Bayesian Inference. A case study on Spinal Muscle Atrophy Genome-Wide Association Study results is modelled and analyzed. The genes up and down-regulated in two stages of the disease development are linked to prior knowledge published in the public domain and co-expressions network is created and analyzed. The Molecular Pathways triggered by these genes are identified. The Bayesian inference posteriors distributions are estimated using a variational analytical algorithm and a Markov chain Monte Carlo sampling algorithm. Assumptions, limitations and possible future work are concluded.
Item Type | Other |
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Uncontrolled Keywords | Probabilistic Graphical Models; Spinal Muscle Atrophy; Disease Computational Modelling |
Subjects |
Computer Science(all) > Artificial Intelligence Computer Science(all) > Computer Science Applications |
Divisions |
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Date Deposited | 18 Nov 2024 12:13 |
Last Modified | 18 Nov 2024 12:13 |
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picture_as_pdf - Helal_2021_J._Phys._Conf._Ser._2128_012015.pdf
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