Analysis of large datasets to understand living systems
Biomedical data science is a multidisciplinary field which leverages large volumes of data to promote biomedical innovation and discovery. Biomedical data science draws from various fields including Biostatistics, Biomedical informatics, and machine learning, with the goal of understanding biological and medical data. It can be viewed as the study and application of data science to solve biomedical problems.[1] Modern biomedical datasets often have specific features which make their analyses difficult, including:
Large numbers of feature (sometimes billions), typically far larger than the number of samples (typically tens or hundreds)
Requirement of interpretability from decision makers and regulatory bodies
Many biomedical data science projects apply machine learning to such datasets.[2][3] These characteristics, while also present in many data science applications more generally, make biomedical data science a specific field. Examples of biomedical data science research include:
^ abRonneberger, Olaf; Fischer, Philipp; Brox, Thomas (2015). "U-net: Convolutional networks for biomedical image segmentation". International Conference on Medical Image Computing and Computer-Assisted Intervention. arXiv:1505.04597.