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   designing an intelligent lesion detection system using deep architecture neural networks in the lower limb x-ray images  
   
نویسنده amiri sepideh ,akbarabadi mina ,rimaz shahnaz ,abdolali fatemeh ,ahadi reza ,afshani mohsen ,alaei askarabad zahra ,kowsarirad tahereh ,sakinehpour sohrab ,eyvazzadeh nazila ,cheraghi susan
منبع frontiers in biomedical technologies - 2023 - دوره : 10 - شماره : 2 - صفحه:169 -179
چکیده    Purpose: diagnosis of musculoskeletal abnormalities is essential due to more than 1.7 billion people worldwide being affected by musculoskeletal disorders. in this study, we focus on diagnosing musculoskeletal abnormalities in the lower extremities within x-ray images by deep architecture neural networks.methods: our dataset contains 61,098 musculoskeletal radiographic images, which includes 42658 normal images and 18440 abnormal images. each image belongs to a single type of lower extremity radiography, including the toe, foot, ankle, leg, knee, femur, and hip joint. we proposed a new deep neural network architecture with two different scenarios that perform lower extremity lesion diagnosis functions with high accuracy. the core of the proposed method is a deep learning framework based on the mask r-cnn and cnn. the model with the best results utilized the mask r-cnn algorithm to generate the bounding box, followed by the cnn algorithm to detect the class based on that. results: the proposed model can detect different types of lower limb lesions by an auc-roc of 0.925, with an operating point of 0.859 sensitivity and a specificity of 0.893.conclusions: by comparing the different results, it can be concluded that the consecutive implementation of mask r-cnn and cnn function better than mask r-cnn and cnn separately.
کلیدواژه x-ray ,lower limb ,deep learning ,detection ,mask regional convolutional neural network
آدرس university of copenhagen, department of computer sciences, denmark, k. n. toosi university of technology, faculty of industrial engineering, department of information technology, iran, iran university of medical sciences, radiation biology research center, iran, alberta university, faculty of medicine and dentistry, department of radiology and diagnostic imaging, canada, iran university of medical science, department of anatomical science, iran, tarbiat modares university, department of electrical and computer engineering, iran, iran university of medical sciences, allied medicine faculty, department of radiation sciences, iran, iran university of medical sciences, allied medicine faculty, department of radiation sciences, iran, iran university of medical sciences, allied medicine faculty, department of radiation sciences, iran, aja university of medical sciences, radiation sciences research center, iran, assistant professor faculty of para-medicine, iran
پست الکترونیکی cheraghi.s@iums.ac.ir
 
     
   
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