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   discriminating malignant and benign brain tumors using texture features of mri-adc images  
   
نویسنده vijithananda sahan m. ,jayatilake mohan l. ,goncalves teresa c. ,rato luis m. ,weerakoon bimali s. ,kalupahana tharindu d. ,silva anil de ,dissanayake karuna ,hewavithana padma b.
منبع multidisciplinary cancer investigation - 2023 - دوره : 7 - شماره : 1 - صفحه:1 -10
چکیده    Introduction: the diagnosis of brain tumors often involves the use of magnetic resonance imaging (mri), with the apparent diffusion coefficient (adc) being a commonly employed technique in current clinical practice. this study seeks to investigate the potential of using statistical texture analysis of mri-adc images to distinguish between malignant and benign brain tumors. methods: the research utilized 980 mri brain adc image slices labeled as malignant and 805 labeled as benign from 252 subjects. the clinical diagnosis of each participant was verified by histopathological and radiological reports. the region of interest (roi) was defined to extract adc values within the tumor areas. from each roi, statistical features including higherorder moments of adc, mean pixel value, and texture features of grey level co-occurrence matrix (glcm) were extracted along with patient demographic information. the mean feature values for each category were computed and analyzed using a one-tailed p value test at a 95% confidence level. results: the average pixel value of adc, as well as the glcm texture features (variance 1, variance 2, mean 1, mean 2, contrast, and energy), were found to be significantly higher (p<0.05) for benign tumors. in contrast, malignant tumors exhibited significantly higher values for kurtosis of adc and glcm texture features (entropy, homogeneity, and correlation). the patient’s age and other features (skewness of adc, glcm texture features such as shade, entropy, and prominence) did not provide sufficient evidence to reject the null hypothesis (p>0.05). conclusions: in conclusion, the aforementioned features, with the exception of the patient’s age, skewness, and glcm features such as entropy, shade, and prominence can be used as potential biomarkers for distinguishing between benign and malignant brain tumors.
کلیدواژه magnetic resonance imaging ,malignant brain neoplasm ,benign brain neoplasm ,diffusion weighted mri
آدرس university of peradeniya, faculty of medicine, department of radiology, sri lanka, university of peradeniya, faculty of allied health sciences, department of radiography/radiotherapy, sri lanka, university of evora, school of science and technology, department of informatics, portugal, university of evora, school of science and technology, department of informatics, portugal, university of peradeniya, faculty of allied health sciences, department of radiography/radiotherapy, sri lanka, university of sri jayewardenepura, faculty of engineering, department of computer engineering, sri lanka, national hospital of sri lanka, department of radiology, sri lanka, national hospital of sri lanka, department of histopathology, sri lanka, university of peradeniya, faculty of medicine, department of radiology, sri lanka
پست الکترونیکی badhra.hewavithana@med.pdn.ac.lk
 
     
   
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