دورية أكاديمية

迁移模糊聚类在医学 PET/MRI 快速衰减校正中的应用.

التفاصيل البيبلوغرافية
العنوان: 迁移模糊聚类在医学 PET/MRI 快速衰减校正中的应用. (Chinese)
Alternate Title: A transfer fuzzy clustering based fast PET/MRI AC method. (English)
المؤلفون: 孙寿伟, 钱鹏江, 胡凌志, 苏冠豪, Muzic,jr, Raymond F.
المصدر: Computer Engineering & Science / Jisuanji Gongcheng yu Kexue; Apr2016, Vol. 38 Issue 4, p775-784, 10p
مصطلحات موضوعية: POSITRON emission tomography, MAGNETIC resonance imaging, RADIATION damage
Abstract (English): In order to avoid X-radiation harm that PET/CT does to patients, and to achieve better PET/MRI attenuation correction, we divide MRI into different tissues, such as air liquid, soft tissues and bones under the guidance of tissue segmentation method by using fuzzy clustering algorithm. Then different organizations are given different linear attenuation coefficients so as to achieve better PET attenuation correction. The proposed method has three advantages: 1) benefiting from the guidance of historical knowledge, it tends to be effective in the situations when the data is insufficient or distorted by much noise; 2) the simple sampling strategy based on transfer learning greatly shortens the overall time of clustering, and at the same time ensures the robustness of the algorithm, thus suitable for medical MRI fast clustering; 3) as the historical MRI knowledge does not expose the raw data of the source domain, this algorithm is capable of protecting privacy of the source domain, and meets the basic requirements of medical diagnosis. Experimental studies on real-world datasets demonstrate these merits of our work. [ABSTRACT FROM AUTHOR]
Abstract (Chinese): 为了避免 PET/CT 对病人造成大剂量的X辐射伤害和更好地对 PET/MRI 混合成像系统进行信号衰减校正。在组织分割方法的指导下,利用迁移模糊聚类算法将对人体无伤害的磁共振成像 (MRI)划分成诸如空气、液体、软组织、骨头等不同组织成分,然后赋予不同组织不同的线性衰减系数,以此来实现配准的 PET 成像的衰减校正工作。本方法具有三大好处:(1) 迁移模糊聚类算法可以利用历史高级知识来辅助当前病人MRI组织分割任务,从而保证了临床有效性和鲁棒性,降低了环境噪声、数据缺失及个体解剖结构差异等因素对算法的不良影响(2)本算法内嵌的基于迁移学习的简单抽样策略,在保证算法鲁棒性的同时,极大地缩短了聚类划分的整体时间,适用于医学 MRI 大数据快速聚类分割的场合, 因而有效地增强了算法的实用性;(3) 本算法涉及的历史 MRI 知识,都是通过历史 MRI 源数据高度总结得到,非历史 MRI 源数据,这有效地保护了病人隐私,符合医学诊断的基本要求。通过在真实数据集上的 实验表明了上述优点。 [ABSTRACT FROM AUTHOR]
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قاعدة البيانات: Complementary Index
الوصف
تدمد:1007130X
DOI:10.3969/j.issn.1007-130X.2016.04.024