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Concept oriented biomedical information retrieval

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Figure

Figure 2.1: A typical patient record [53].
Figure 2.2: A practical Electronic Medical Record (Produced by NextGen EHR Software [63])
Figure 2.3: The top ranked document in PUBMED search engine with the query headache [73].
Figure 2.4: A concept can be expressed with different terms.
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