Critical Evaluation of Deep Neural Networks for Wrist Fracture Detection
Abu Mohammed Raisuddin, Elias Vaattovaara, Mika Nevalainen, Marko, Nikki, Elina J\"arvenp\"a\"a, Kaisa Makkonen, Pekka Pinola, Tuula Palsio,, Arttu Niemensivu, Osmo Tervonen, Aleksei Tiulpin

TL;DR
This study evaluates a deep learning pipeline for wrist fracture detection, revealing high accuracy on general cases but significantly lower performance on difficult cases requiring CT confirmation, emphasizing the need for challenging test scenarios.
Contribution
Developed and analyzed DeepWrist, a state-of-the-art deep learning model, and highlighted its limitations on challenging wrist fracture cases needing CT confirmation.
Findings
High performance on general test set (AUC 0.99)
Lower performance on challenging cases (AUC 0.84)
Emphasizes importance of testing AI models in difficult scenarios
Abstract
Wrist Fracture is the most common type of fracture with a high incidence rate. Conventional radiography (i.e. X-ray imaging) is used for wrist fracture detection routinely, but occasionally fracture delineation poses issues and an additional confirmation by computed tomography (CT) is needed for diagnosis. Recent advances in the field of Deep Learning (DL), a subfield of Artificial Intelligence (AI), have shown that wrist fracture detection can be automated using Convolutional Neural Networks. However, previous studies did not pay close attention to the difficult cases which can only be confirmed via CT imaging. In this study, we have developed and analyzed a state-of-the-art DL-based pipeline for wrist (distal radius) fracture detection -- DeepWrist, and evaluated it against one general population test set, and one challenging test set comprising only cases requiring confirmation by…
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