Verma Ragini, Zacharaki Evangelia I, Ou Yangming, Cai Hongmin, Chawla Sanjeev, Lee Seung-Koo, Melhem Elias R, Wolf Ronald, Davatzikos Christos
Department of Radiology, University of Pennsylvania, 3600 Market Street, Suite 380, Philadelphia, PA 19104, USA.
Acad Radiol. 2008 Aug;15(8):966-77. doi: 10.1016/j.acra.2008.01.029.
Treatment of brain neoplasms can greatly benefit from better delineation of bulk neoplasm boundary and the extent and degree of more subtle neoplastic infiltration. Magnetic resonance imaging (MRI) is the primary imaging modality for evaluation before and after therapy, typically combining conventional sequences with more advanced techniques such as perfusion-weighted imaging and diffusion tensor imaging (DTI). The purpose of this study is to quantify the multiparametric imaging profile of neoplasms by integrating structural MRI and DTI via statistical image analysis methods to potentially capture complex and subtle tissue characteristics that are not obvious from any individual image or parameter.
Five structural MRI sequences, namely, B0, diffusion-weighted images, fluid-attenuated inversion recovery, T1-weighted, and gadolinium-enhanced T1-weighted, and two scalar maps computed from DTI (ie, fractional anisotropy and apparent diffusion coefficient) are used to create an intensity-based tissue profile. This is incorporated into a nonlinear pattern classification technique to create a multiparametric probabilistic tissue characterization, which is applied to data from 14 patients with newly diagnosed primary high-grade neoplasms who have not received any therapy before imaging.
Preliminary results demonstrate that this multiparametric tissue characterization helps to better differentiate among neoplasm, edema, and healthy tissue, and to identify tissue that is likely to progress to neoplasm in the future. This has been validated on expert assessed tissue.
This approach has potential applications in treatment, aiding computer-assisted surgery by determining the spatial distributions of healthy and neoplastic tissue, as well as in identifying tissue that is relatively more prone to tumor recurrence.
脑肿瘤的治疗能够从更好地勾勒肿瘤主体边界以及更细微的肿瘤浸润范围和程度中大大获益。磁共振成像(MRI)是治疗前后评估的主要成像方式,通常将传统序列与灌注加权成像和扩散张量成像(DTI)等更先进技术相结合。本研究的目的是通过统计图像分析方法整合结构MRI和DTI,以量化肿瘤的多参数成像特征,从而有可能捕捉到从任何单个图像或参数中都不明显的复杂细微组织特征。
使用五个结构MRI序列,即B0、扩散加权图像、液体衰减反转恢复序列、T1加权和钆增强T1加权,以及从DTI计算得到的两个标量图(即分数各向异性和表观扩散系数)来创建基于强度的组织特征。将其纳入非线性模式分类技术中,以创建多参数概率性组织特征描述,并应用于14例新诊断的原发性高级别肿瘤患者的数据,这些患者在成像前未接受任何治疗。
初步结果表明,这种多参数组织特征描述有助于更好地区分肿瘤、水肿和健康组织,并识别未来可能发展为肿瘤的组织。这已在专家评估的组织上得到验证。
这种方法在治疗方面具有潜在应用,通过确定健康组织和肿瘤组织的空间分布来辅助计算机辅助手术,以及识别相对更易发生肿瘤复发的组织。