Shofty Ben, Weizman Lior, Joskowicz Leo, Constantini Shlomi, Kesler Anat, Ben-Bashat Dafna, Yalon Michal, Dvir Rina, Freedman Sigal, Roth Jonathan, Ben-Sira Liat
Department of Pediatric Neurosurgery, Dana Children's Hospital, Tel Aviv Medical Center, Sackler Faculty of Medicine, Tel Aviv University, Tel Aviv, 64239, Israel.
Childs Nerv Syst. 2011 Aug;27(8):1265-72. doi: 10.1007/s00381-011-1436-7. Epub 2011 Mar 31.
Optic pathway gliomas (OPGs) are diagnosed based on typical MR features and require careful monitoring with serial MRI. Reliable, serial radiological comparison of OPGs is a difficult task, where accuracy becomes very important for clinical decisions on treatment initiation and results. Current radiological methodology usually includes linear measurements that are limited in terms of precision and reproducibility.
We present a method that enables semiautomated segmentation and internal classification of OPGs using a novel algorithm. Our method begins with co-registration of the different sequences of an MR study so that T1 and T2 slices are realigned. The follow-up studies are then re-sliced according to the baseline study. The baseline tumor is segmented, with internal components classified into solid non-enhancing, solid-enhancing, and cystic components, and the volume is calculated. Tumor demarcation is then transferred onto the next study and the process repeated. Numerical values are correlated with clinical data such as treatment and visual ability.
We have retrospectively implemented our method on 24 MR studies of three OPG patients. Clinical case reviews are presented here. The volumetric results have been correlated with clinical data and their implications are also discussed.
The heterogeneity of OPGs, the long course, and the young age of the patients are all driving the demand for more efficient and accurate means of tumor follow-up. This method may allow better understanding of the natural history of the tumor and provide a more advanced means of treatment evaluation.
视神经通路胶质瘤(OPG)依据典型的磁共振成像(MR)特征进行诊断,且需要通过系列磁共振成像进行仔细监测。对OPG进行可靠的系列影像学比较是一项艰巨任务,其准确性对于治疗启动和结果的临床决策至关重要。当前的影像学方法通常包括线性测量,但其在精度和可重复性方面存在局限性。
我们提出一种使用新型算法实现OPG半自动分割和内部分类的方法。我们的方法首先对MR研究的不同序列进行配准,以使T1和T2切片重新对齐。然后根据基线研究对后续研究进行重新切片。对基线肿瘤进行分割,将内部成分分为实性无强化、实性强化和囊性成分,并计算体积。然后将肿瘤边界转移到下一次研究并重复该过程。数值与治疗和视力等临床数据相关联。
我们已对3例OPG患者的24项MR研究进行了回顾性实施我们的方法。这里展示了临床病例回顾。体积测量结果已与临床数据相关联,并对其意义进行了讨论。
OPG的异质性、病程长以及患者年龄小,都促使人们对更高效、准确的肿瘤随访方法产生需求。该方法可能有助于更好地了解肿瘤的自然史,并提供更先进的治疗评估手段。