
国际肿瘤学杂志 ›› 2022, Vol. 49 ›› Issue (1): 51-55.doi: 10.3760/cma.j.cn371439-20210408-00007
收稿日期:2021-04-08
									
				
											修回日期:2021-09-17
									
				
									
				
											出版日期:2022-01-08
									
				
											发布日期:2022-01-17
									
			通讯作者:
					黄伟
											E-mail:alvinbird@163.com
												基金资助:
        
               		Zhang Hongjiao1, Jiang Jie2, Huang Wei1(
)
			  
			
			
			
                
        
    
Received:2021-04-08
									
				
											Revised:2021-09-17
									
				
									
				
											Online:2022-01-08
									
				
											Published:2022-01-17
									
			Contact:
					Huang Wei   
											E-mail:alvinbird@163.com
												Supported by:摘要:
放疗是肺癌特别是局部晚期肺癌患者的主要治疗方式之一。局部晚期肺癌常伴有肺不张,给放疗靶区的勾画带来较大的困难和不确定性,进而影响患者疗效。最新研究表明功能影像具备独特的成像原理,可真实反映肿瘤的增殖、代谢等生物学信息,在区分肺癌与肺不张靶区勾画方面具有应用前景。
张红娇, 姜杰, 黄伟. 功能影像辅助伴肺不张肺癌放疗靶区勾画的研究进展[J]. 国际肿瘤学杂志, 2022, 49(1): 51-55.
Zhang Hongjiao, Jiang Jie, Huang Wei. Research progress of functional imaging-assisted radiotherapy target delineation of lung cancer with atelectasis[J]. Journal of International Oncology, 2022, 49(1): 51-55.
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