Chinese Journal of Stroke ›› 2018, Vol. 13 ›› Issue (11): 1217-1222.DOI: 10.3969/j.issn.1673-5765.2018.11.018
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Received:
2018-01-11
Online:
2018-11-20
Published:
2018-11-20
党慧,钟镝,李国忠
通讯作者:
李国忠 hydlgz1962@163.com
DANG Hui, ZHONG Di, LI Guo-Zhong. Advance in Computed Tomography Imaging Feature of Early Hematoma Expansion in Intracranial Hemorrhage Patients[J]. Chinese Journal of Stroke, 2018, 13(11): 1217-1222.
党慧, 钟镝, 李国忠. 脑出血早期血肿扩大的CT影像学特点研究进展[J]. 中国卒中杂志, 2018, 13(11): 1217-1222.
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