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使用 PET 引导的磁共振图像共分割技术对小动物模型中的乳腺癌进行自动化计算机定量分析。

Automated computer quantification of breast cancer in small-animal models using PET-guided MR image co-segmentation.

机构信息

Center for Infectious Disease Imaging, , Bethesda, MD 20892, USA.

出版信息

EJNMMI Res. 2013 Jul 5;3(1):49. doi: 10.1186/2191-219X-3-49.

Abstract

BACKGROUND

Care providers use complementary information from multiple imaging modalities to identify and characterize metastatic tumors in early stages and perform surveillance for cancer recurrence. These tasks require volume quantification of tumor measurements using computed tomography (CT) or magnetic resonance imaging (MRI) and functional characterization through positron emission tomography (PET) imaging. In vivo volume quantification is conducted through image segmentation, which may require both anatomical and functional images available for precise tumor boundary delineation. Although integrating multiple image modalities into the segmentation process may improve the delineation accuracy and efficiency, due to variable visibility on image modalities, complex shape of metastatic lesions, and diverse visual features in functional and anatomical images, a precise and efficient segmentation of metastatic breast cancer remains a challenging goal even for advanced image segmentation methods. In response to these challenges, we present here a computer-assisted volume quantification method for PET/MRI dual modality images using PET-guided MRI co-segmentation. Our aims in this study were (1) to determine anatomical tumor volumes automatically from MRI accurately and efficiently, (2) to evaluate and compare the accuracy of the proposed method with different radiotracers (18F-Z HER2-Affibody and 18F-flourodeoxyglucose (18F-FDG)), and (3) to confirm the proposed method's determinations from PET/MRI scans in comparison with PET/CT scans.

METHODS

After the Institutional Administrative Panel on Laboratory Animal Care approval was obtained, 30 female nude mice were used to construct a small-animal breast cancer model. All mice were injected with human breast cancer cells and HER2-overexpressing MDA-MB-231HER2-Luc cells intravenously. Eight of them were selected for imaging studies, and selected mice were imaged with MRI, CT, and 18F-FDG-PET at weeks 9 and 10 and then imaged with 18F-Z HER2-Affibody-PET 2 days after the scheduled structural imaging (MRI and CT). After CT and MR images were co-registered with corresponding PET images, all images were quantitatively analyzed by the proposed segmentation technique.Automatically determined anatomical tumor volumes were compared to radiologist-derived reference truths. Observer agreements were presented through Bland-Altman and linear regression analyses. Segmentation evaluations were conducted using true-positive (TP) and false-positive (FP) volume fractions of delineated tissue samples, as complied with the state-of-the-art evaluation techniques for image segmentation. Moreover, the PET images, obtained using different radiotracers, were examined and compared using the complex wavelet-based structural similarity index (CWSSI). (continued on the next page) (continued from the previous page)

RESULTS

PET/MR dual modality imaging using the 18F-Z HER2-Affibody imaging agent provided diagnostic image quality in all mice with excellent tumor delineations by the proposed method. The 18F-FDG radiotracer did not show accurate identification of the tumor regions. Structural similarity index (CWSSI) between PET images using 18F-FDG and 18F-Z HER2-Affibody agents was found to be 0.7838. MR showed higher diagnostic image quality when compared to CT because of its better soft tissue contrast. Significant correlations regarding the anatomical tumor volumes were obtained between both PET-guided MRI co-segmentation and reference truth (R2=0.92, p<0.001 for PET/MR, and R2=0.84, p<0.001, for PET/CT). TP and FP volume fractions using the automated co-segmentation method in PET/MR and PET/CT were found to be (TP 97.3%, FP 9.8%) and (TP 92.3%, FP 17.2%), respectively.

CONCLUSIONS

The proposed PET-guided MR image co-segmentation algorithm provided an automated and efficient way of assessing anatomical tumor volumes and their spatial extent. We showed that although the 18F-Z HER2-Affibody radiotracer in PET imaging is often used for characterization of tumors rather than detection, sensitivity and specificity of the localized radiotracer in the tumor region were informative enough; therefore, roughly determined tumor regions from PET images guided the delineation process well in the anatomical image domain for extracting accurate tumor volume information. Furthermore, the use of 18F-FDG radiotracer was not as successful as the 18F-Z HER2-Affibody in guiding the delineation process due to false-positive uptake regions in the neighborhood of tumor regions; hence, the accuracy of the fully automated segmentation method changed dramatically. Last, we qualitatively showed that MRI yields superior identification of tumor boundaries when compared to conventional CT imaging.

摘要

背景

医疗护理人员使用多种成像方式的补充信息来识别和描述早期转移瘤,并进行癌症复发的监测。这些任务需要使用计算机断层扫描(CT)或磁共振成像(MRI)进行肿瘤测量的容积量化,并通过正电子发射断层扫描(PET)成像进行功能特征描述。在体内,通过图像分割进行容积量化,这可能需要用于精确肿瘤边界描绘的解剖学和功能图像。尽管将多种成像方式整合到分割过程中可能会提高描绘的准确性和效率,但由于转移病变的形状复杂,以及功能和解剖图像的视觉特征多样,即使对于先进的图像分割方法,精确且高效地分割转移性乳腺癌仍然是一个具有挑战性的目标。针对这些挑战,我们提出了一种使用 PET 引导的 MRI 共分割的 PET/MRI 双模态图像的计算机辅助容积量化方法。我们的研究目的是:(1)从 MRI 中准确且高效地自动确定解剖学肿瘤体积;(2)评估并比较不同示踪剂(18F-Z HER2-Affibody 和 18F-氟脱氧葡萄糖(18F-FDG))的准确性;(3)确认 PET/MRI 扫描与 PET/CT 扫描的结果。

方法

在获得机构动物护理管理委员会批准后,使用 30 只雌性裸鼠构建了一个小动物乳腺癌模型。所有的老鼠都被静脉注射了人类乳腺癌细胞和 HER2 过表达的 MDA-MB-231HER2-Luc 细胞。其中 8 只被选择进行成像研究,选择的老鼠在第 9 周和第 10 周分别进行 MRI、CT 和 18F-FDG-PET 成像,然后在预定的结构成像(MRI 和 CT)后两天进行 18F-Z HER2-Affibody-PET 成像。在 CT 和 MR 图像与相应的 PET 图像配准后,使用提出的分割技术对所有图像进行定量分析。自动确定的解剖学肿瘤体积与放射科医生得出的参考真值进行比较。通过 Bland-Altman 和线性回归分析呈现观察者协议。使用描绘组织样本的真阳性(TP)和假阳性(FP)体积分数来进行分割评估,这符合图像分割的最新评估技术。此外,使用基于复杂小波的结构相似性指数(CWSSI)检查并比较了使用不同示踪剂的 PET 图像。

结果

使用 18F-Z HER2-Affibody 成像剂的 PET/MR 双模态成像在所有老鼠中提供了诊断质量良好的图像,并且该方法能够很好地描绘肿瘤。18F-FDG 示踪剂不能准确地识别肿瘤区域。18F-FDG 和 18F-Z HER2-Affibody 示踪剂的 PET 图像之间的结构相似性指数(CWSSI)为 0.7838。与 CT 相比,MR 具有更高的诊断图像质量,因为它具有更好的软组织对比度。在 PET/MR 和 PET/CT 中,都获得了关于解剖学肿瘤体积的显著相关性(R2=0.92,p<0.001;R2=0.84,p<0.001)。在 PET/MR 和 PET/CT 中,使用自动共分割方法的 TP 和 FP 体积分数分别为(TP 97.3%,FP 9.8%)和(TP 92.3%,FP 17.2%)。

结论

提出的 PET 引导的 MR 图像共分割算法为评估解剖学肿瘤体积及其空间范围提供了一种自动且高效的方法。我们表明,尽管在 PET 成像中,18F-Z HER2-Affibody 示踪剂通常用于肿瘤的特征描述而不是检测,但肿瘤区域中局部示踪剂的敏感性和特异性足以提供信息;因此,PET 图像中大致确定的肿瘤区域可以很好地引导解剖图像域中的描绘过程,以提取准确的肿瘤体积信息。此外,18F-FDG 示踪剂的使用不如 18F-Z HER2-Affibody 成功,因为在肿瘤区域周围存在假阳性摄取区域,因此,完全自动化的分割方法的准确性发生了巨大变化。最后,我们定性地表明,与传统的 CT 成像相比,MRI 能够更好地识别肿瘤边界。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/25af/3708745/98552f66ff62/2191-219X-3-49-1.jpg

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