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Using in vivo fluorescence lifetime imaging to detect HER2-positive tumors

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Figure

Fig. 1 Fluorescence intensity (a.u.) and lifetime (sec) measured at the tumor and contralateral sites, 1 h after injection of HER2-specific Affibody probe
Figure 1 shows the results of in vivo images of fluores-cence intensity and lifetime at tumor and contralateralsite, 1 h after injection of HER2-specific affibody probe.Figure 2 shows the mean value of fluorescence lifetime
Fig. 3 In vivo fluorescence lifetime at the tumor site vs. HER2expression in the tumor measured by ELISA after tumor extraction

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