| Literature DB >> 33727668 |
Abu Mohammed Raisuddin1, Elias Vaattovaara2,3, Mika Nevalainen2,3, Marko Nikki3, Elina Järvenpää3, Kaisa Makkonen3, Pekka Pinola2,3, Tuula Palsio2,4, Arttu Niemensivu2, Osmo Tervonen2,3, Aleksei Tiulpin2,3,5.
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 CT. Our results reveal that a typical state-of-the-art approach, such as DeepWrist, while having a near-perfect performance on the general independent test set, has a substantially lower performance on the challenging test set-average precision of 0.99 (0.99-0.99) versus 0.64 (0.46-0.83), respectively. Similarly, the area under the ROC curve was of 0.99 (0.98-0.99) versus 0.84 (0.72-0.93), respectively. Our findings highlight the importance of a meticulous analysis of DL-based models before clinical use, and unearth the need for more challenging settings for testing medical AI systems.Entities:
Year: 2021 PMID: 33727668 PMCID: PMC7971048 DOI: 10.1038/s41598-021-85570-2
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379