Evaluation of a newly designed deep learning-based algorithm for automated assessment of scapholunate distance in wrist radiography as a surrogate parameter for scapholunate ligament rupture and the correlation with arthroscopy.

Journal Information

Full Title: Radiol Med

Abbreviation: Radiol Med

Country: Unknown

Publisher: Unknown

Language: N/A

Publication Details

Subject Category: Radiology

Available in Europe PMC: Yes

Available in PMC: Yes

PDF Available: No

Transparency Score
4/6
66.7% Transparent
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Evidence found in paper:

"all training and inference code is publicly available at www github com/blinded-for-review ."

Evidence found in paper:

"Declarations Conflict of interestThe authors have not disclosed any competing interests. Ethical approvalThis study was approved by the institutional review board (Eberhard Karls University Tuebingen, project identification code: 600/2021BO2). The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013). Animals were not involved. Conflict of interest The authors have not disclosed any competing interests."

Evidence found in paper:

"Funding Open Access funding enabled and organized by Projekt DEAL. The authors have not disclosed any funding."

Protocol Registration
Open Access
Paper is freely available to read
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Tool: rtransparent

OST Version: N/A

Last Updated: Aug 05, 2025