Development of artificial intelligence for automated measurement of cervical lordosis on lateral radiographs

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作者
Takahito Fujimori
Yuki Suzuki
Shota Takenaka
Kosuke Kita
Yuya Kanie
Takashi Kaito
Yuichiro Ukon
Tadashi Watabe
Nozomu Nakajima
Shoji Kido
Seiji Okada
机构
[1] Osaka University,Department of Orthopedic Surgery, Graduate School of Medicine
[2] Osaka University,Department of Artificial Intelligence Diagnostic Radiology, Graduate School of Medicine
[3] Osaka University,Department of Nuclear Medicine and Tracer Kinetics, Graduate School of Medicine
[4] Japanese Red Cross Society Himeji Hospital,Department of Orthopedic Surgery
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摘要
Cervical sagittal alignment is an essential parameter for the evaluation of spine disorders. Manual measurement is time-consuming and burdensome to measurers. Artificial intelligence (AI) in the form of convolutional neural networks has begun to be used to measure x-rays. This study aimed to develop AI for automated measurement of lordosis on lateral cervical x-rays. We included 4546 cervical x-rays from 1674 patients. For all x-rays, the caudal endplates of C2 and C7 were labeled based on consensus among well-experienced spine surgeons, the data for which were used as ground truth. This ground truth was split into training data and test data, and the AI model learned the training data. The absolute error of the AI measurements relative to the ground truth for 4546 x-rays was determined by fivefold cross-validation. Additionally, the absolute error of AI measurements was compared with the error of other 2 surgeons’ measurements on 415 radiographs of 168 randomly selected patients. In fivefold cross-validation, the absolute error of the AI model was 3.3° in the average and 2.2° in the median. For comparison of other surgeons, the mean absolute error for measurement of 168 patients was 3.1° ± 3.4° for the AI model, 3.9° ± 3.4° for Surgeon 1, and 3.8° ± 4.7° for Surgeon 2. The AI model had a significantly smaller error than Surgeon 1 and Surgeon 2 (P = 0.002 and 0.036). This algorithm is available at (https://ykszk.github.io/c2c7demo/). The AI model measured cervical spine alignment with better accuracy than surgeons. AI can assist in routine medical care and can be helpful in research that measures large numbers of images. However, because of the large errors in rare cases such as highly deformed ones, AI may, in principle, be limited to assisting humans.
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