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When patients present with symptoms of hip pain a clinician might diagnose a condition called femoroacetabular impingement (FAI), where the ball and socket of the hip joint rub together during movement. To diagnose FAI a doctor inspects an x-ray, and records the angles between certain key points in the image. If the angles are `too big' then FAI is diagnosed. We anticipate that these key points can be located in an x-ray using deep learning and thus the angles measured and FAI diagnosed automatically. In this paper we deploy a stacked hourglass network to automatically locate key-points in hip x-rays, which we then use to automatically diagnose FAI in a patient. On a test set of 112 hips our algorithm diagnoses cam impingement, one of two types of FAI, correctly 90% of the time. To our knowledge this is the first time any kind of FAI has been automatically diagnosed.

More information Original publication

DOI

10.1109/ISBI48211.2021.9433959

Type

Conference paper

Publisher

IEEE

Publication Date

2021-05-25T00:00:00+00:00

Pages

179 - 182

Total pages

3