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Detecting Ankle Fractures in Plain Radiographs Using Deep Learning with Accurately Labeled Datasets Aided by Computed Tomography: A Retrospective Observational Study

Ji-Hun Kim, Yong-Cheol Mo, Seung-Myung Choi, Hyun Youk, Jung Woo Lee

2021Applied Sciences19 citationsDOIOpen Access PDF

Abstract

Ankle fractures are common and, compared to other injuries, tend to be overlooked in the emergency department. We aim to develop a deep learning algorithm that can detect not only definite fractures but also obscure fractures. We collected the data of 1226 patients with suspected ankle fractures and performed both X-rays and CT scans. With anteroposterior (AP) and lateral ankle X-rays of 1040 patients with fractures and 186 normal patients, we developed a deep learning model. The training, validation, and test datasets were split in a 3/1/1 ratio. Data augmentation and under-sampling techniques were administered as part of the preprocessing. The Inception V3 model was utilized for the image classification. Performance of the model was validated using a confusion matrix and the area under the receiver operating characteristic curve (AUC-ROC). For the AP and lateral trials, the best accuracy and AUC values were 83%/0.91 in AP and 90%/0.95 in lateral. Additionally, the mean accuracy and AUC values were 83%/0.89 for the AP trials and 83%/0.9 for the lateral trials. The reliable dataset resulted in the CNN model providing higher accuracy than in past studies.

Topics & Concepts

MedicineAnkleReceiver operating characteristicConfusionConfusion matrixRadiographyEmergency departmentArtificial intelligenceComputed tomographyDeep learningRadiologyPreprocessorNuclear medicineComputer scienceSurgeryInternal medicinePsychiatryPsychoanalysisPsychologyFoot and Ankle SurgerySports injuries and preventionReliability and Agreement in Measurement