1. Introduction of High Throughput Magnetic Resonance T2-Weighted Image Texture Analysis for WHO Grade 2 and 3 Gliomas
- Author
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Tomoko Shofuda, Yasunori Fujimoto, Toshiki Yoshimine, Yonehiro Kanemura, Naoki Kagawa, Manabu Kinoshita, Yasuyoshi Chiba, Katsuyuki Nakanishi, Mio Sakai, Hideyuki Arita, Naoya Hashimoto, and Yoshiyuki Watanabe
- Subjects
Male ,Pathology ,Gene Identification and Analysis ,lcsh:Medicine ,Contrast Media ,Pathology and Laboratory Medicine ,Grayscale ,Diagnostic Radiology ,0302 clinical medicine ,Image texture ,Medicine and Health Sciences ,lcsh:Science ,Neurological Tumors ,Throughput (business) ,Mathematics ,Aged, 80 and over ,Multidisciplinary ,medicine.diagnostic_test ,Brain Neoplasms ,Texture (cosmology) ,Radiology and Imaging ,Glioma ,Middle Aged ,Magnetic Resonance Imaging ,Oncology ,Neurology ,030220 oncology & carcinogenesis ,Physical Sciences ,Female ,Statistics (Mathematics) ,Research Article ,Adult ,medicine.medical_specialty ,Imaging Techniques ,Image Analysis ,Research and Analysis Methods ,Young Adult ,03 medical and health sciences ,Signs and Symptoms ,Diagnostic Medicine ,Prewitt operator ,Image Interpretation, Computer-Assisted ,Confidence Intervals ,Genetics ,medicine ,Humans ,Mutation Detection ,Aged ,business.industry ,lcsh:R ,Cancers and Neoplasms ,Biology and Life Sciences ,Pattern recognition ,Magnetic resonance imaging ,Image Enhancement ,medicine.disease ,Confidence interval ,ROC Curve ,Lesions ,lcsh:Q ,Artificial intelligence ,business ,030217 neurology & neurosurgery - Abstract
Reports have suggested that tumor textures presented on T2-weighted images correlate with the genetic status of glioma. Therefore, development of an image analyzing framework that is capable of objective and high throughput image texture analysis for large scale image data collection is needed. The current study aimed to address the development of such a framework by introducing two novel parameters for image textures on T2-weighted images, i.e., Shannon entropy and Prewitt filtering. Twenty-two WHO grade 2 and 28 grade 3 glioma patients were collected whose pre-surgical MRI and IDH1 mutation status were available. Heterogeneous lesions showed statistically higher Shannon entropy than homogenous lesions (p = 0.006) and ROC curve analysis proved that Shannon entropy on T2WI was a reliable indicator for discrimination of homogenous and heterogeneous lesions (p = 0.015, AUC = 0.73). Lesions with well-defined borders exhibited statistically higher Edge mean and Edge median values using Prewitt filtering than those with vague lesion borders (p = 0.0003 and p = 0.0005 respectively). ROC curve analysis also proved that both Edge mean and median values were promising indicators for discrimination of lesions with vague and well defined borders and both Edge mean and median values performed in a comparable manner (p = 0.0002, AUC = 0.81 and p < 0.0001, AUC = 0.83, respectively). Finally, IDH1 wild type gliomas showed statistically lower Shannon entropy on T2WI than IDH1 mutated gliomas (p = 0.007) but no difference was observed between IDH1 wild type and mutated gliomas in Edge median values using Prewitt filtering. The current study introduced two image metrics that reflect lesion texture described on T2WI. These two metrics were validated by readings of a neuro-radiologist who was blinded to the results. This observation will facilitate further use of this technique in future large scale image analysis of glioma.
- Published
- 2016