Abstract:
Somatic mutation can occur at any stages of an individual which may turn towards cancer due to
normal genome cell transformations. Hence, its early detection is essential for the appropriate
treatment and other purposes. Generally, mutated genes are matched with the normal tissues of
the donor. In addition, mutated genes are compared with the existing publicly available
mutational loads. However; this computation is too costly due to appropriate matching samples
and in terms of computational complexity, time consumption, memory usage etc. In these
consequences, this paper proposes an efficient machine learning based approach to distinguish
the somatic single nucleotide variants in absence of matching samples. Here, we have applied
multilayer perceptron of artificial neural network on the standard training sets like BRCA,
COAD, PAAD, KIRC, ESC, UCEC. Then the results are validated using 10-fold cross validation
technique. The maximum accuracy active by the execution of the proposed scheme is 97% with
f1-measure ranges from 88-97% for different cancer types which is much higher than the
existing state of the art approaches.
Description:
This thesis submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering of East West University, Dhaka, Bangladesh