Survival prediction and risk estimation of Glioma patients using mRNA
expressions
- URL: http://arxiv.org/abs/2011.00659v1
- Date: Mon, 2 Nov 2020 00:39:04 GMT
- Title: Survival prediction and risk estimation of Glioma patients using mRNA
expressions
- Authors: Navodini Wijethilake, Dulani Meedeniya, Charith Chitraranjan, Indika
Perera
- Abstract summary: Gliomas are lethal type of central nervous system tumors with a poor prognosis.
In this work, we identify survival related 7 gene signature and explore two approaches for survival prediction and risk estimation.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gliomas are lethal type of central nervous system tumors with a poor
prognosis. Recently, with the advancements in the micro-array technologies
thousands of gene expression related data of glioma patients are acquired,
leading for salient analysis in many aspects. Thus, genomics are been emerged
into the field of prognosis analysis. In this work, we identify survival
related 7 gene signature and explore two approaches for survival prediction and
risk estimation. For survival prediction, we propose a novel probabilistic
programming based approach, which outperforms the existing traditional machine
learning algorithms. An average 4 fold accuracy of 74% is obtained with the
proposed algorithm. Further, we construct a prognostic risk model for risk
estimation of glioma patients. This model reflects the survival of glioma
patients, with high risk for low survival patients.
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