Soffientini Chiara Dolores, De Bernardi Elisabetta, Zito Felicia, Castellani Massimo, Baselli Giuseppe
DEIB, Department of Electronics, Information, and Bioengineering, Politecnico di Milano, Piazza Leonardo da Vinci 32, Milan 20133, Italy.
Department of Medicine and Surgery, Tecnomed Foundation, University of Milano-Bicocca, Monza 20900, Italy.
Med Phys. 2016 May;43(5):2662. doi: 10.1118/1.4947483.
Quantitative (18)F-fluorodeoxyglucose positron emission tomography is limited by the uncertainty in lesion delineation due to poor SNR, low resolution, and partial volume effects, subsequently impacting oncological assessment, treatment planning, and follow-up. The present work develops and validates a segmentation algorithm based on statistical clustering. The introduction of constraints based on background features and contiguity priors is expected to improve robustness vs clinical image characteristics such as lesion dimension, noise, and contrast level.
An eight-class Gaussian mixture model (GMM) clustering algorithm was modified by constraining the mean and variance parameters of four background classes according to the previous analysis of a lesion-free background volume of interest (background modeling). Hence, expectation maximization operated only on the four classes dedicated to lesion detection. To favor the segmentation of connected objects, a further variant was introduced by inserting priors relevant to the classification of neighbors. The algorithm was applied to simulated datasets and acquired phantom data. Feasibility and robustness toward initialization were assessed on a clinical dataset manually contoured by two expert clinicians. Comparisons were performed with respect to a standard eight-class GMM algorithm and to four different state-of-the-art methods in terms of volume error (VE), Dice index, classification error (CE), and Hausdorff distance (HD).
The proposed GMM segmentation with background modeling outperformed standard GMM and all the other tested methods. Medians of accuracy indexes were VE <3%, Dice >0.88, CE <0.25, and HD <1.2 in simulations; VE <23%, Dice >0.74, CE <0.43, and HD <1.77 in phantom data. Robustness toward image statistic changes (±15%) was shown by the low index changes: <26% for VE, <17% for Dice, and <15% for CE. Finally, robustness toward the user-dependent volume initialization was demonstrated. The inclusion of the spatial prior improved segmentation accuracy only for lesions surrounded by heterogeneous background: in the relevant simulation subset, the median VE significantly decreased from 13% to 7%. Results on clinical data were found in accordance with simulations, with absolute VE <7%, Dice >0.85, CE <0.30, and HD <0.81.
The sole introduction of constraints based on background modeling outperformed standard GMM and the other tested algorithms. Insertion of a spatial prior improved the accuracy for realistic cases of objects in heterogeneous backgrounds. Moreover, robustness against initialization supports the applicability in a clinical setting. In conclusion, application-driven constraints can generally improve the capabilities of GMM and statistical clustering algorithms.
定量(18)F-氟脱氧葡萄糖正电子发射断层扫描由于信噪比低、分辨率低和部分容积效应导致病变轮廓不确定,进而影响肿瘤学评估、治疗计划和随访。本研究开发并验证了一种基于统计聚类的分割算法。引入基于背景特征和邻接先验的约束条件,有望提高算法对病变大小、噪声和对比度水平等临床图像特征的鲁棒性。
通过根据先前对无病变背景感兴趣体积的分析(背景建模)来约束四个背景类别的均值和方差参数,对八类高斯混合模型(GMM)聚类算法进行了修改。因此,期望最大化仅在致力于病变检测的四个类别上进行操作。为了有利于连接物体的分割,通过插入与邻域分类相关的先验信息引入了另一种变体。该算法应用于模拟数据集和采集的体模数据。在由两位专家临床医生手动勾勒轮廓的临床数据集上评估了对初始化的可行性和鲁棒性。在体积误差(VE)、骰子系数、分类误差(CE)和豪斯多夫距离(HD)方面,与标准八类GMM算法和四种不同的先进方法进行了比较。
所提出的带有背景建模的GMM分割算法优于标准GMM算法和所有其他测试方法。在模拟中,准确性指标的中位数为:VE<3%,骰子系数>0.88,CE<0.25,HD<1.2;在体模数据中,VE<23%,骰子系数>0.74,CE<0.43,HD<1.77。低指标变化表明对图像统计变化(±15%)具有鲁棒性:VE变化<26%,骰子系数变化<17%,CE变化<15%。最后,证明了对用户依赖的体积初始化具有鲁棒性。仅对于被异质背景包围的病变,空间先验的纳入提高了分割准确性:在相关模拟子集中,VE中位数从13%显著降低到7%。临床数据的结果与模拟结果一致,绝对VE<7%,骰子系数>0.85,CE<0.30,HD<0.81。
仅引入基于背景建模的约束条件就优于标准GMM算法和其他测试算法。空间先验的插入提高了异质背景中物体实际情况的准确性。此外,对初始化的鲁棒性支持了其在临床环境中的适用性。总之,应用驱动的约束条件通常可以提高GMM算法和统计聚类算法的性能。