A population-based cross-sectional study on the situation of cervical cancer screening in Liaoning, China

被引:0
作者
Bo Zhu
Huihui Yu
Ping Ni
Xi Chen
Jing Zhang
Danbo Wang
机构
[1] Cancer Hospital of China Medical University,Department of Cancer prevention and treatment
[2] Liaoning Cancer Hospital & Institute,Department of Epidemiology
[3] Cancer Hospital of China Medical University,Department of Gynaecology
[4] Liaoning Cancer Hospital & Institute,undefined
[5] Cancer Hospital of China Medical University,undefined
[6] Liaoning Cancer Hospital & Institute,undefined
来源
BMC Women's Health | / 23卷
关键词
Cervical cancer; Screening; Willingness; Population-based;
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