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Machine learning/AI is an influential tool in the analysis of RNA-Seq gene expression data. ML methods are broadly used to identify new biomarkers for disease diagnosis and treatment monitoring and to learn unseen patterns in gene expression that boost our understanding of the fundamental biological pathways. The success of an ML/AI model depends heavily on the input data. Identifying an appropriate dataset can be a challenge, and the data must be selected carefully, as a predictive model trained on the unreliable or inappropriate data will produce unreliable predictions. The rations of machine learning analyses in public functional genomics repositories are encountered by rare curated ML/AI-ready datasets. Therefore, it is important to study a data set sensibly to confirm its reputation for a machine learning job.
Bioconductor packages are used to show all differential gene expressions by generating the volcano map, Euclidean distances, and heatmap.
Professional Certification Program
The aim of providing access to powerful statistical and graphical methods for the analysis of genomic data.
Day 1: GEO repository and GEO2R web tool.
Day 2: R studio and Bioconductor packages.
Day 3: Gene expression analysis with RNA-seq Data.
Dr. Md Afroz Alam is a Professor and Head in the Department of Bioinformatics, at Shalom New Life College, Bengaluru, Karnataka. He received his Ph.D. Degree in Bioinformatics from Jaypee University of Information Technology, Solan, Himachal Pradesh in 2009. Then he has worked as Assistant . . .
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INR. 1999
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PhD in Computational Mechanics from MIT with 15+ years of experience in Industrial AI. Former Lead Data Scientist at Tesla and current advisor to Fortune 500 manufacturing firms.
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