中国数字医学
中國數字醫學
중국수자의학
CHINA DIGITAL MEDICINE
2015年
4期
5-8
,共4页
刘丽%郁春景%陆锐%张凤娟%万卫星
劉麗%鬱春景%陸銳%張鳳娟%萬衛星
류려%욱춘경%륙예%장봉연%만위성
肺肿瘤%PET/CT%分子影像%示踪剂动力学%人工免疫网络
肺腫瘤%PET/CT%分子影像%示蹤劑動力學%人工免疫網絡
폐종류%PET/CT%분자영상%시종제동역학%인공면역망락
lung tumor%PET/CT%molecular imaging%tracer kinetic modelling%artificial immune network
目的:采用基于人工免疫网络智能方法的新型动力学建模技术,获得FDG PET/CT成像的病变肺组织动力学参数,通过定量分析来判别肿瘤的良恶性。方法:5例疑似肺癌患者在无锡市第四人民医院核医学诊疗中心行18F-FDG PET/CT检查。使用德国Siemens公司Biograph True Point 64 PET/CT动态成像,动态图像采样协议为8帧×15秒、6帧×30秒、5帧×300秒,总共持续30分钟。通过感兴趣区域勾画技术得到正常肺组织、疑似肺肿瘤组织和腹主动脉血池区域的时间-放射性活度曲线。采用基于人工免疫网络(PKAIN)的新型PET分子影像动力学参数估计方法(PKAIN)分别估计出正常肺组织和疑似肺肿瘤组织的18F-FDG示踪剂动力学模型参数。结果:5例患者术后均经病理证实为肺部恶性肿瘤,肺部肿瘤组织ROI的FDG动力学参数估计值(均数±标准差)分别为k1=0.1746±0.0531、k2=0.4030±0.3324、k3=0.5208±0.2274、k4=0.1046±0.0543、f=0.1468±0.1305、Ki=0.1003±0.0326。结论:实验结果表明,PKAIN的人工免疫网络智能算法更适合于肿瘤组织的PET/CT分子影像动力学建模。与常规的60分钟18F-FDG采样相比,30分钟短采样时间,提高了FDG PET动力学建模方法的临床应用价值,证实了新型PET/CT分子影像动力学建模方法在肺癌诊断中的价值。
目的:採用基于人工免疫網絡智能方法的新型動力學建模技術,穫得FDG PET/CT成像的病變肺組織動力學參數,通過定量分析來判彆腫瘤的良噁性。方法:5例疑似肺癌患者在無錫市第四人民醫院覈醫學診療中心行18F-FDG PET/CT檢查。使用德國Siemens公司Biograph True Point 64 PET/CT動態成像,動態圖像採樣協議為8幀×15秒、6幀×30秒、5幀×300秒,總共持續30分鐘。通過感興趣區域勾畫技術得到正常肺組織、疑似肺腫瘤組織和腹主動脈血池區域的時間-放射性活度麯線。採用基于人工免疫網絡(PKAIN)的新型PET分子影像動力學參數估計方法(PKAIN)分彆估計齣正常肺組織和疑似肺腫瘤組織的18F-FDG示蹤劑動力學模型參數。結果:5例患者術後均經病理證實為肺部噁性腫瘤,肺部腫瘤組織ROI的FDG動力學參數估計值(均數±標準差)分彆為k1=0.1746±0.0531、k2=0.4030±0.3324、k3=0.5208±0.2274、k4=0.1046±0.0543、f=0.1468±0.1305、Ki=0.1003±0.0326。結論:實驗結果錶明,PKAIN的人工免疫網絡智能算法更適閤于腫瘤組織的PET/CT分子影像動力學建模。與常規的60分鐘18F-FDG採樣相比,30分鐘短採樣時間,提高瞭FDG PET動力學建模方法的臨床應用價值,證實瞭新型PET/CT分子影像動力學建模方法在肺癌診斷中的價值。
목적:채용기우인공면역망락지능방법적신형동역학건모기술,획득FDG PET/CT성상적병변폐조직동역학삼수,통과정량분석래판별종류적량악성。방법:5례의사폐암환자재무석시제사인민의원핵의학진료중심행18F-FDG PET/CT검사。사용덕국Siemens공사Biograph True Point 64 PET/CT동태성상,동태도상채양협의위8정×15초、6정×30초、5정×300초,총공지속30분종。통과감흥취구역구화기술득도정상폐조직、의사폐종류조직화복주동맥혈지구역적시간-방사성활도곡선。채용기우인공면역망락(PKAIN)적신형PET분자영상동역학삼수고계방법(PKAIN)분별고계출정상폐조직화의사폐종류조직적18F-FDG시종제동역학모형삼수。결과:5례환자술후균경병리증실위폐부악성종류,폐부종류조직ROI적FDG동역학삼수고계치(균수±표준차)분별위k1=0.1746±0.0531、k2=0.4030±0.3324、k3=0.5208±0.2274、k4=0.1046±0.0543、f=0.1468±0.1305、Ki=0.1003±0.0326。결론:실험결과표명,PKAIN적인공면역망락지능산법경괄합우종류조직적PET/CT분자영상동역학건모。여상규적60분종18F-FDG채양상비,30분종단채양시간,제고료FDG PET동역학건모방법적림상응용개치,증실료신형PET/CT분자영상동역학건모방법재폐암진단중적개치。
Objective: To distinguish the benign and malignant of lung tumors using a new method based on the artificial immune network algorithm for PET/CT molecular imaging kinetic modeling. Methods: All studies were performed at the Nuclear Medicine Central of the Wuxi Fourth People's Hospital, Wuxi, China. There are five lung cancer patients under PET/CT scan. The PET/CT scans were performed with Biograph True Point 64 PET/CT. Images was acquired for 30 min with people under injection of FDG drug about 370 to 555 MBq. The scanning schedule was: 8 15-s scans, 6 30-s scans, 5 5-min scans. Small size of ROIs was manually drawn over the PET images to obtain the time-activity curves for the Normal lung tissue, suspected lung tumor tissue and abdominal aortic blood pool area. Kinetic parameters of the both the normal lung tissue and the suspected lung tumor tissue were estimated by using the new method which was based on the artificial immune network algorithm (PKAIN). Results: The statistics of parameters of the FDG PET kinetic models of five patients with suspected lung tumor tissue were k1=0.1190±0.0023, k2=0.0397± 0.0132, k3=0.7316±0.3421, k4=0.4334±0.3595, f=0.0857±0.0032, Ki=0.1117±0.00299. Conclusion: The PKAIN outperformed the KIS software when fitting the observed TACs especially for the lung cancer regions. Compared with the 60min sample schedule, the 30min sample schedule is more applicable and to be proven well in lung cancer diagnosis.