Clinical chemistry in higher dimensions: Machine-learning and enhanced prediction from routine clinical chemistry data
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2016
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Abstract
Big Data is having an impact on many areas of research, not the least of which is biomedical science. In this review paper, big data and machine learning are defined in terms accessible to the clinical chemistry community. Seven myths associated with machine learning and big data are then presented, ā¦Reference Key |
a2016clinicalclinical
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Authors | Richardson A;Signor BM;Lidbury BA;Badrick T;; |
Journal | Clinical biochemistry |
Year | 2016 |
DOI | DOI not found |
URL | |
Keywords |
National Center for Biotechnology Information
NCBI
NLM
MEDLINE
review
pubmed abstract
nih
national institutes of health
national library of medicine
statistical
machine learning*
data interpretation
pmid:27452181
doi:10.1016/j.clinbiochem.2016.07.013
alice richardson
ben m signor
tony badrick
clinical chemistry tests*
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