Deep learning for detection of radiographic sacroiliitis: achieving expert-level performance

被引:60
作者
Bressem, Keno K. [1 ,2 ]
Vahldiek, Janis L. [1 ]
Adams, Lisa [1 ,2 ]
Niehues, Stefan Markus [1 ]
Haibel, Hildrun [3 ]
Rodriguez, Valeria Rios [3 ]
Torgutalp, Murat [3 ]
Protopopov, Mikhail [3 ]
Proft, Fabian [3 ]
Rademacher, Judith [2 ,3 ]
Sieper, Joachim [3 ]
Rudwaleit, Martin [4 ]
Hamm, Bernd [1 ]
Makowski, Marcus R. [1 ,5 ]
Hermann, Kay-Geert [1 ]
Poddubnyy, Denis [3 ,6 ]
机构
[1] Charite Univ Med Berlin, Dept Radiol, Hindenburgdamm 30, D-12203 Berlin, Germany
[2] Berlin Inst Hlth, Berlin, Germany
[3] Charite Univ Med Berlin, Dept Gastroenterol Infect Dis & Rheumatol, Berlin, Germany
[4] Klinikum Bielefeld Rosenhohe, Dept Internal Med & Rheumatol, Bielefeld, Germany
[5] Tech Univ Munich, Sch Med, Dept Diagnost & Intervent Radiol, Munich, Germany
[6] German Rheumatism Res Ctr, Dept Epidemiol, Berlin, Germany
关键词
Axial spondyloarthritis; Sacroiliitis; Artificial intelligence; Deep learning; Machine learning; AXIAL SPONDYLOARTHRITIS; ANKYLOSING-SPONDYLITIS; CLASSIFICATION; RELIABILITY; CRITERIA; DATASET; CANCER; JOINTS;
D O I
10.1186/s13075-021-02484-0
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Radiographs of the sacroiliac joints are commonly used for the diagnosis and classification of axial spondyloarthritis. The aim of this study was to develop and validate an artificial neural network for the detection of definite radiographic sacroiliitis as a manifestation of axial spondyloarthritis (axSpA). Methods Conventional radiographs of the sacroiliac joints obtained in two independent studies of patients with axSpA were used. The first cohort comprised 1553 radiographs and was split into training (n = 1324) and validation (n = 229) sets. The second cohort comprised 458 radiographs and was used as an independent test dataset. All radiographs were assessed in a central reading session, and the final decision on the presence or absence of definite radiographic sacroiliitis was used as a reference. The performance of the neural network was evaluated by calculating areas under the receiver operating characteristic curves (AUCs) as well as sensitivity and specificity. Cohen's kappa and the absolute agreement were used to assess the agreement between the neural network and the human readers. Results The neural network achieved an excellent performance in the detection of definite radiographic sacroiliitis with an AUC of 0.97 and 0.94 for the validation and test datasets, respectively. Sensitivity and specificity for the cut-off weighting both measurements equally were 88% and 95% for the validation and 92% and 81% for the test set. The Cohen's kappa between the neural network and the reference judgements were 0.79 and 0.72 for the validation and test sets with an absolute agreement of 90% and 88%, respectively. Conclusion Deep artificial neural networks enable the accurate detection of definite radiographic sacroiliitis relevant for the diagnosis and classification of axSpA.
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页数:10
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