@article{Eyüpoğlu_2016, title={Clustering of Mitochondrial D-loop Sequences Using Similarity Matrix, PCA and K-means Algorithm}, url={https://ijisae.org/index.php/IJISAE/article/view/968}, DOI={10.18201/ijisae.2016Special Issue-146982}, abstractNote={<span>In this study, mitochondrial displacement-loop (D-loop) sequences isolated from different hominid species are clustered using similarity matrix, Principal Component Analysis (PCA) and K-means algorithm. Firstly, the mitochondrial D-loop sequence data are retrieved from the GenBank database and copied into MATLAB. Pairwise distances are computed using p distance and Jukes-Cantor methods. A phylogenetic tree is created and then a similarity matrix is generated according to the pairwise distances. Furthermore, the clustering is performed using only K-means algorithm. After that PCA and K-means are used together in order to cluster mitochondrial D-loop sequences.</span>}, journal={International Journal of Intelligent Systems and Applications in Engineering}, author={Eyüpoğlu, Can}, year={2016}, month={Dec.}, pages={244–248} }