Browsing by Author "Adebiyi, Marion O."
Now showing 1 - 3 of 3
Results Per Page
Sort Options
Item An Efficient PCA Ensemble Learning Approach for Prediction of RNA-Seq Malaria Vector Gene Expression Data Classification(International Journal of Engineering Research and Technology, 2020) Arowolo, Micheal Olaolu; Adebiyi, Marion O.; Adebiy, Ayodele A.Malaria parasites adopt outstanding variation of life phases as they evolve through manifold mosquito vector atmospheres. Transcriptomes of thousands of individual parasites exists. Ribonucleic acid sequencing (RNA-seq) is a widespread method for gene expression which has resulted into improved understandings of genetical queries. RNA-seq compute transcripts of gene expressions. RNA-seq data necessitates analytical improvements of machine learning techniques. Several learning approached have been proposed by researchers for analysing biological data. In this study, PCA feature extraction algorithm is used to fetch latent components out of a high dimensional malaria vector RNA-seq dataset, and evaluates it classification performance using an Ensemble classification algorithm. The effectiveness of this experiment is validated on aa mosquito anopheles gambiae RNA-Seq dataset. The experiment result achieved a relevant performance metrics with a classification accuracy of 93.3%.Item An ICA-ensemble learning approaches for prediction of RNAseq malaria vector gene expression data classification(International Journal of Electrical and Computer Engineering (IJECE), 2020-09-23) Arowolo, Micheal Olaolu; Adebiyi, Marion O.; Adebiyi, Ayodele A.Malaria parasites introduce outstanding life-phase variations as they grow across multiple atmospheres of the mosquito vector. There are transcriptomes of several thousand different parasites. Ribonucleic acid sequencing (RNAseq) is a prevalent gene expression tool leading to better understanding of genetic interrogations. RNA-seq measures transcriptions of expressions of genes. Data from RNA-seq necessitate procedural enhancements in machine learning techniques. Researchers have suggested various approached learning for the study of biological data. This study works on ICA feature extraction algorithm to realize dormant components from a huge dimensional RNA-seq vector dataset, and estimates its classification performance, Ensemble classification algorithm is used in carrying out the experiment. This study is tested on RNA-seq mosquito anopheles gambiae dataset. The results of the experiment obtained an output metrics with a 93.3% classification accuracy.Item Predicting RNA-Seq data using genetic algorithm and ensemble classification algorithms(Indonesian Journal of Electrical Engineering and Computer Science, 2020-05-03) Arowolo, Micheal Olaolu; Adebiyi, Marion O.; Adebiyi, Ayodele A.Malaria parasites accept uncertain, inconsistent life span breeding through vectors of mosquitoes stratospheres. Thousands of different transcriptome parasites exist. A prevalent Ribonucleic acid sequencing (RNA-seq) technique for gene expression has brought about enhanced identifications of genetical queries. Computation of RNA-seq gene expression data transcripts requires enhancements using analytical machine learning procedures. Numerous learning approaches have been adopted for analyzing and enhancing the performance of biological data and machines. In this study, a Genetic algorithm dimensionality reduction technique is proposed to fetch relevant information from a huge dimensional RNA-seq dataset, and classification uses Ensemble classification algorithms. The experiment is performed using a mosquito Anopheles gambiae dataset with a classification accuracy of 81.7% and 88.3%