| Literature DB >> 34196802 |
Kazuma Murata1, Kenji Endo2, Takato Aihara2, Hidekazu Suzuki2, Yasunobu Sawaji2, Yuji Matsuoka2, Taichiro Takamatsu2, Takamitsu Konishi2, Hideya Yamauchi2, Hiroo Endo2, Kengo Yamamoto2.
Abstract
Ossification of the posterior longitudinal ligament (OPLL) causes serious problems, such as myelopathy and acute spinal cord injury. The early and accurate diagnosis of OPLL would hence prevent the miserable prognoses. Plain lateral radiography is an essential method for the evaluation of OPLL. Therefore, minimizing the diagnostic errors of OPLL on radiography is crucial. Image identification based on a residual neural network (RNN) has been recognized to be potentially effective as a diagnostic strategy for orthopedic diseases; however, the accuracy of detecting OPLL using RNN has remained unclear. An RNN was trained with plain lateral cervical radiography images of 2,318 images from 672 patients (535 images from 304 patients with OPLL and 1,773 images from 368 patients of Negative). The accuracy, sensitivity, specificity, false positive rate, and false negative rate of diagnosis of the RNN were calculated. The mean accuracy, sensitivity, specificity, false positive rate, and false negative rate of the model were 98.9%, 97.0%, 99.4%, 2.2%, and 1.0%, respectively. The model achieved an overall area under the curve of 0.99 (95% confidence interval, 0.97-1.00) in which AUC in each fold estimated was 0.99, 0.99, 0.98, 0.98, and 0.99, respectively. An algorithm trained by an RNN could make binary classification of OPLL on cervical lateral X-ray images. RNN may hence be useful as a screening tool to assist physicians in identifying patients with OPLL in future setting. To achieve accurate identification of OPLL patients clinically, RNN has to be trained with other cause of myelopathy.Entities:
Keywords: Image diagnosis; Ossification of the posterior longitudinal ligament; Residual neural network
Year: 2021 PMID: 34196802 DOI: 10.1007/s00586-021-06914-0
Source DB: PubMed Journal: Eur Spine J ISSN: 0940-6719 Impact factor: 3.134