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IBM Systems Journal

Information-Based Medicine   Volume 46, Number 1, 2007
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MedTAKMI-CDI: Interactive knowledge discovery for clinical decision intelligence - References

by A. Inokuchi,
K. Takeda,
N. Inaoka,
and F. Wakao
Cited references

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