Adaptive Clustering of MR Diffusion Parameter Space for Brain Tumor Tissue Characterization
نویسندگان
چکیده
p:q space for image in Fig A. The contours around centers indicate the degree of membership of a pixel being a certain tissue. C: p:q clustering based tissue segmentation for ROI shown in Fig A. Figure 2 A: Post-gad T1w for patient GP1 at baseline followed by 16 weeks post therapy. B: Healthy WM tissue map generated from p:q clustering of images in Fig A. C: Edema & infiltrative tumor tissue map generated from p:q clustering of images in Fig A. Adaptive Clustering of MR Diffusion Parameter Space for Brain Tumor Tissue Characterization
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