Doorhof, 2018 - Google Patents
Using reinforcement learning to improve clinical decision making in neonatal careDoorhof, 2018
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- 3228558729083515108
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- Doorhof D
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Health care is coming to a new era. Now that technology has advanced, able to handle large amounts of data, and we collect more and more biomedical data, new opportunities and challenges rise in health care research (Miotto et al., 2017). Examples of these biomedical …
- 230000002787 reinforcement 0 title description 77
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