Dominic Cullen , Peter Thompson , David Johnson , Claudia Lindner
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引用次数: 0
Abstract
Background
Accurate assessment of knee alignment in pre- and post-operative radiographs is crucial for knee arthroplasty planning and evaluation. Current methods rely on manual alignment assessment, which is time-consuming and error-prone. This study proposes a machine learning-based approach to fully automatically measure anatomical varus/valgus alignment in standard anteroposterior (AP) knee radiographs.
Methods
We collected a training dataset of 566 pre-operative and 457 one-year post-operative AP knee radiographs from total knee arthroplasty patients, along with a separate test set of 376 patients. The distal femur and proximal tibia/fibula were manually outlined using points to capture the knee joint. The outlines were used to develop an automatic system to locate the points. The anatomical femorotibial angle was calculated using the points, with varus/valgus defined as negative/positive deviations from zero. Fifty test images were clinically measured on two occasions by an orthopaedic surgeon. Agreement between points-based manual, automatic, and clinical measurements was assessed using intra-class correlation coefficient (ICC), mean absolute difference (MAD) and Bland-Altman analysis.
Results
The agreement between automatic and manual measurements was excellent pre-/post-operatively with ICC 0.98/0.96 and MAD 0.8°/0.7°. The agreement between automatic and clinical measurements was excellent pre-operatively (ICC: 0.97; MAD: 1.2°) but lacked performance post-operatively (ICC: 0.78; MAD: 1.5°). The clinical intra-observer agreement was excellent pre-/post-operatively with ICC 0.99/0.95 and MAD 0.9°/0.8°.
Conclusion
The developed system demonstrates high reliability in automatically measuring varus/valgus alignment pre- and post-operatively, and shows excellent agreement with clinical measurements pre-operatively. It provides a promising approach for automating the measurement of anatomical alignment.
期刊介绍:
The Knee is an international journal publishing studies on the clinical treatment and fundamental biomechanical characteristics of this joint. The aim of the journal is to provide a vehicle relevant to surgeons, biomedical engineers, imaging specialists, materials scientists, rehabilitation personnel and all those with an interest in the knee.
The topics covered include, but are not limited to:
• Anatomy, physiology, morphology and biochemistry;
• Biomechanical studies;
• Advances in the development of prosthetic, orthotic and augmentation devices;
• Imaging and diagnostic techniques;
• Pathology;
• Trauma;
• Surgery;
• Rehabilitation.