Tuning parameter calibration for prediction in personalized medicine

Huang, Shih-Ting, Düren, Yannick, Hellton, Kristoffer H., Lederer, Johannes

arXiv.org Machine Learning 

In the last decade, improvements in genomic, transcrip-tomic, and proteomic technologies have enabled personalized medicine (also called precision medicine) to become an essential part of contemporary medicine. Personalized medicine takes into account individual variability in genes, proteins, environment, and lifestyle to decide on optimal disease treatment and prevention [14]. The use of a patient's genetic and epigenetic information has already proven to be highly effective to tailor drug therapies or preventive care in a number of applications, such as breast [7], prostate [23], ovarian [17], and pancreatic cancers [24], cardiovascular disease [11], cystic fibrosis [36], and psychiatry [10]. The subfield of pharmacogenomics studies specifically how genes affect a person's response to particular drugs to develop more efficient and safer medications [37]. Genomic, epigenomic, and transcriptomic data used in precision medicine, such as gene expression, copy number variants, or methylation levels are typically high-dimensional with a number of variables that rivals or exceeds the number of observations.

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