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9年出院病人恶性肿瘤构成及分布分析

CHINESE JOURNAL OF MEDICINE(2011)

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Abstract
目的 分析恶性肿瘤出院人数及构成情况,为医院肿瘤学科建设提供决策依据.方法 分析2000~2008年恶性肿瘤住院病人49039例的病案资料.结果 该院收治肿瘤病人从2000~2008年保持在15.6%~20.3%之间,基本上居出院病人的首位;前5位恶性肿瘤是胃癌、肺癌、肠癌、食管癌、肝癌;男性前5位肺癌、胃癌、肠癌、肝癌、食管癌;女性前五位胃癌、肠癌、肺癌、乳腺癌、食管癌;年龄分布集中在40~70岁;男女比例是1.356:1.结论 胃癌、肺癌、肠癌、食管癌、肝癌、乳腺癌是治疗重点,病员来源广泛,已成为青岛地区肿瘤治疗中心.
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