Analysis of primary care computerized medical records (CMR) data with deep autoencoders (DAE)
The use of deep learning is becoming increasingly important in the analysis of medical data such as pattern recognition for classification. The use of primary healthcare computational medical records (CMR) data is vital in prediction of infection prevalence across a population, and decision making a...
Main Authors: | Thomas, SA, Smith, NA, Livina, V, Yonova, I, Webb, R, de Lusignan, S |
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Format: | Journal article |
Language: | English |
Published: |
Frontiers Media
2019
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