The performance improvement of automatic classification among obstructive lung diseases on the basis of the features of shape analysis, in addition to texture analysis at HRCT
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Joon Beom Seo | Suk-Ho Kang | Youngjoo Lee | Namkug Kim | June-Goo Lee | June-Goo Lee | J. Seo | Namkug Kim | Youngjoo Lee | S. Kang
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