A Novel Method for Early Diagnosis of Arthrits from Radiographs Using Fuzzy-c-means Clustering Algorithm
نویسندگان
چکیده
Arthritis is a type of disorders that takes place in bone joints. This disease results in mild pain in the early stage to joint immobility in the later stage of the disease. The curse of this kind of disorder is that it cannot be cured. On the other hand, there are more possibility to control the further severity of this disease through proper diagnosis and treatment. Even though many diagnostic tools are available, only a few methods are available to diagnose this disorder at the early stage. This paper discusses a simplistic diagnostic tool developed to diagnose arthritis at its early stage.
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