4.5 Article

Artificial intelligence (AI) vs. human in hip fracture detection

Journal

HELIYON
Volume 8, Issue 11, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.heliyon.2022.e11266

Keywords

Hip fracture; Computer vision; Artificial intelligence; Deep learning; Trauma

Funding

  1. Khon Kaen University's Research and Graduate Studies
  2. [RP64-8-003]

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In this study, a YOLOv4-tiny AI model was used to detect and classify hip fractures, and its performance was compared with human doctors. The results showed that the model had high sensitivity and accuracy in detecting hip fractures.
Objective: This study aimed to assess the diagnostic accuracy and sensitivity of a YOLOv4-tiny AI model for detecting and classifying hip fractures types.Materials and methods: In this retrospective study, a dataset of 1000 hip and pelvic radiographs was divided into a training set consisting of 450 fracture and 450 normal images (900 images total) and a testing set consisting of 50 fracture and 50 normal images (100 images total). The training set images were each manually augmented with a bounding box drawn around each hip, and each bounding box was manually labeled either (1) normal, (2) femoral neck fracture, (3) intertrochanteric fracture, or (4) subtrochanteric fracture. Next, a deep convolutional neural network YOLOv4-tiny AI model was trained using the augmented training set images, and then model performance was evaluated with the testing set images. Human doctors then evaluated the same testing set im-ages, and the performances of the model and doctors were compared. The testing set contained no crossover data.Results: The resulting output images revealed that the AI model produced bounding boxes around each hip region and classified the fracture and normal hip regions with a sensitivity of 96.2%, specificity of 94.6%, and an ac-curacy of 95%. The human doctors performed with a sensitivity ranging from 69.2 to 96.2%. Compared with human doctors, the detection rate sensitivity of the model was significantly better than a general practitioner and first-year residents and equivalent to specialist doctors.Conclusions: This model showed hip fracture detection sensitivity comparable to well-trained radiologists and orthopedists and classified hip fractures highly accurately.

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