학술논문

A Novel Unsupervised Segmentation Approach Quantifies Tumor Tissue Populations Using Multiparametric MRI: First Results with Histological Validation.
Document Type
Journal Article
Source
Molecular Imaging & Biology. Jun2017, Vol. 19 Issue 3, p391-397. 7p.
Subject
*IMAGE segmentation
*MAGNETIC resonance imaging
*HISTOLOGY
*NECROTIC enteritis
*FUZZY logic
*ALGORITHMS
*ANIMAL experimentation
*CLUSTER analysis (Statistics)
*DIGITAL image processing
*MICE
*RESEARCH funding
*TUMORS
RESEARCH evaluation
Language
ISSN
1536-1632
Abstract
Purpose: We aimed to precisely estimate intra-tumoral heterogeneity using spatially regularized spectral clustering (SRSC) on multiparametric MRI data and compare the efficacy of SRSC with the previously reported segmentation techniques in MRI studies.Procedures: Six NMRI nu/nu mice bearing subcutaneous human glioblastoma U87 MG tumors were scanned using a dedicated small animal 7T magnetic resonance imaging (MRI) scanner. The data consisted of T2 weighted images, apparent diffusion coefficient maps, and pre- and post-contrast T2 and T2* maps. Following each scan, the tumors were excised into 2-3-mm thin slices parallel to the axial field of view and processed for histological staining. The MRI data were segmented using SRSC, K-means, fuzzy C-means, and Gaussian mixture modeling to estimate the fractional population of necrotic, peri-necrotic, and viable regions and validated with the fractional population obtained from histology.Results: While the aforementioned methods overestimated peri-necrotic and underestimated viable fractions, SRSC accurately predicted the fractional population of all three tumor tissue types and exhibited strong correlations (rnecrotic = 0.92, rperi-necrotic = 0.82 and rviable = 0.98) with the histology.Conclusions: The precise identification of necrotic, peri-necrotic and viable areas using SRSC may greatly assist in cancer treatment planning and add a new dimension to MRI-guided tumor biopsy procedures. [ABSTRACT FROM AUTHOR]