Semi-automated Image Processing for Preclinical Bioluminescent Imaging.

N. Slavine, R. Mccoll
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引用次数: 6

Abstract

OBJECTIVE Bioluminescent imaging is a valuable noninvasive technique for investigating tumor dynamics and specific biological molecular events in living animals to better understand the effects of human disease in animal models. The purpose of this study was to develop and test a strategy behind automated methods for bioluminescence image processing from the data acquisition to obtaining 3D images. METHODS In order to optimize this procedure a semi-automated image processing approach with multi-modality image handling environment was developed. To identify a bioluminescent source location and strength we used the light flux detected on the surface of the imaged object by CCD cameras. For phantom calibration tests and object surface reconstruction we used MLEM algorithm. For internal bioluminescent sources we used the diffusion approximation with balancing the internal and external intensities on the boundary of the media and then determined an initial order approximation for the photon fluence we subsequently applied a novel iterative deconvolution method to obtain the final reconstruction result. RESULTS We find that the reconstruction techniques successfully used the depth-dependent light transport approach and semi-automated image processing to provide a realistic 3D model of the lung tumor. Our image processing software can optimize and decrease the time of the volumetric imaging and quantitative assessment. CONCLUSION The data obtained from light phantom and lung mouse tumor images demonstrate the utility of the image reconstruction algorithms and semi-automated approach for bioluminescent image processing procedure. We suggest that the developed image processing approach can be applied to preclinical imaging studies: characteristics of tumor growth, identify metastases, and potentially determine the effectiveness of cancer treatment.
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用于临床前生物发光成像的半自动图像处理。
目的生物发光成像是一种有价值的无创技术,可用于研究活体动物的肿瘤动力学和特异性生物分子事件,以更好地了解人类疾病对动物模型的影响。本研究的目的是开发和测试从数据采集到获得3D图像的生物发光图像处理自动化方法背后的策略。方法为了优化该流程,开发了一种基于多模态图像处理环境的半自动化图像处理方法。为了确定生物发光源的位置和强度,我们使用CCD相机在成像物体表面检测到的光通量。对于模体标定测试和目标表面重建,我们采用了MLEM算法。对于内部生物发光源,我们使用扩散近似来平衡介质边界上的内部和外部强度,然后确定光子通量的初始阶近似,然后应用一种新的迭代反卷积方法来获得最终重建结果。结果我们发现重建技术成功地使用了深度依赖的光传输方法和半自动图像处理,提供了一个真实的肺肿瘤三维模型。我们的图像处理软件可以优化和减少体积成像和定量评估的时间。结论从光幻象和肺小鼠肿瘤图像中获得的数据证明了图像重建算法和半自动化方法在生物发光图像处理过程中的实用性。我们建议,开发的图像处理方法可以应用于临床前影像学研究:肿瘤生长特征,识别转移,并潜在地确定癌症治疗的有效性。
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