Characterization of Kidney Infection in Ultrasound B-mode Images Using Texture Analysis

dc.contributor.authorGarelnabi,MEM
dc.contributor.authorAbdulallah,Ibtisam
dc.contributor.authorBakry,A. H. A
dc.contributor.authorAbdulla,Elsafi Ahmed
dc.contributor.authorAdam,Mohamed
dc.date.accessioned2025-10-15T18:28:10Z
dc.date.issued2016
dc.description.abstractThe general objective of this study was to develop an algorithm that can extracted textural features from ultrasound images of normal and abnormal kidneys in order to classify these images as having normal tissues, glomerulonephritis, or pyelonephritis. Linear discriminant analysis was used to classify the extracted features from the medulla and pelvic calycle system of kidneys ultrasound images. The results of the study showed that the overall accuracy using medulla texture equal to 98% while for those extracted from pelvic calycle system was 95.7. In conclusion linear function was developed to classify other ultrasound images with an error <5%.
dc.identifier.urihttps://dspace.nu.edu.sd/handle/nusu/129
dc.language.isoen
dc.publisherInternational Journal of Science and Research
dc.subjectB-mode ultrasound
dc.subjectKidney
dc.subjectTexture Analysis
dc.subjectFeature Extraction.
dc.titleCharacterization of Kidney Infection in Ultrasound B-mode Images Using Texture Analysis
dc.typeArticle

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