通过图切割快速定位生物发光源

Kai Liu, Jie Tian, Shouping Zhu, C. Qin, Xing Zhang, Dong Han
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引用次数: 0

摘要

生物发光成像(BLI)和生物发光断层扫描(BLT)使阐明细胞特征成为可能,从而更好地了解人类疾病在小动物体内的影响。然而,据我们所知,现有的BLT梯度型重建方法效率不高,并且通常需要相对较小的兴趣量(VOI)才能获得可行的结果。本文提出了一种基于图切割的BLT快速重建方法,利用最大流量/最小切割算法在异质小鼠图谱中定位生物发光源。由于原有的图割理论只能处理图可表示问题,因此引入二次伪布尔优化,使图具有可处理性。该方法可以从整个域重构内部光源,从而避免了对视场的先验知识。实验结果表明,该方法在异种小鼠图谱中得到了验证,通过图切可以可靠有效地定位源;与梯度型方法相比,图切割的速度大约快25-50倍。
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Fast localize the bioluminescent source via graph cuts
Bioluminescence imaging (BLI) and bioluminescence tomography (BLT) make it possible to elucidate cellular signatures to better understand the effects of human disease in small animal in vivo. However, to the best of our knowledge, the existing gradient-type reconstruction methods in BLT are not very efficient, and often require a relatively small volume of interest (VOI) for feasible results. In this paper, a fast graph cuts based reconstruction method for BLT is presented, which is to localize the bioluminescent source in heterogeneous mouse atlas via max-flow/min-cut algorithm. Since the original graph cuts theory can only handle graph-representable problem, the quadratic pseudo-boolean optimization is incorporated to make the graph tractable. The internal light source can be reconstructed from the whole domain, so a priori knowledge of VOI can be avoided in this method. In the experiments, the proposed method is validated in a heterogeneous mouse atlas, and the source can be localized reliably and efficiently by graph cuts; and compared with a gradient-type method, graph cuts is about 25–50 times faster.
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