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Combining information from prognostic scoring tools for CAP: an American view on how to get the best of all worlds
Niederman M. S., Feldman C., Richards G. A.
Source:
Eur Respir J 2006; 27: 9-11
Journal Issue:
January
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Citations should be made in the following way:
Niederman M. S., Feldman C., Richards G. A.. Combining information from prognostic scoring tools for CAP: an American view on how to get the best of all worlds. Eur Respir J 2006; 27: 9-11
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