南平市2017年户籍居民死因监测结果分析
Strait Journal of Preventive Medicine(2019)
Abstract
目的 分析南平市居民死亡原因特征,为制定防控策略提供依据.方法 用人口死亡登记管理信息系统中南平市户籍居民死亡资料,分析死亡率、死因顺位及年龄别死亡率等指标,描述居民的死因特征.结果 2017年南平市户籍居民粗死亡率566.66/10万,标化率387.89/10万;男性粗死亡率654.44/10万,女性粗死亡率473.09/10万,男性死亡率高于女性;南平市居民主要死因是恶性肿瘤、脑血管病、心脏病、呼吸系统疾病和损伤中毒;损伤中毒居儿童组死因首位,中青年组以恶性肿瘤为首,老年人组以慢性病死亡为主;城乡居民前5位死因相同,顺位略有差异,恶性肿瘤和损伤中毒城市高于农村.结论 慢性病如恶性肿瘤、心脑血管疾病等,应成为今后南平市疾病防控工作的重点,针对不同人群采取相应防控措施.
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