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An algorithm for using deep learning convolutional neural networks with three dimensional depth sensor imaging in scoliosis detection

Terufumi Kokabu, Satoshi Kanai, Noriaki Kawakami, Koki Uno, Toshiaki Kotani, Teppei Suzuki, Hiroyuki Tachi, Yuichiro Abe, Norimasa Iwasaki, Hideki Sudo

2021The Spine Journal60 citationsDOIOpen Access PDF

Abstract

BACKGROUND CONTEXT: Timely intervention in growing individuals, such as brace treatment, relies on early detection of adolescent idiopathic scoliosis (AIS). To this end, several screening methods have been implemented. However, these methods have limitations in predicting the Cobb angle. PURPOSE: This study aimed to evaluate the performance of a three-dimensional depth sensor imaging system with a deep learning algorithm, in predicting the Cobb angle in AIS. STUDY DESIGN: Retrospective analysis of prospectively collected, consecutive, nonrandomized series of patients at five scoliosis centers in Japan. PATIENT SAMPLE: One hundred and-sixty human subjects suspected to have AIS were included. OUTCOME MEASURES: Patient demographics, radiographic measurements, and predicted Cobb angle derived from the deep learning algorithm were the outcome measures for this study. METHODS: One hundred and sixty data files were shuffled into five datasets with 32 data files at random (dataset 1, 2, 3, 4, and 5) and five-fold cross validation was performed. The relationships between the actual and predicted Cobb angles were calculated using Pearson's correlation coefficient analyses. The prediction performances of the network models were evaluated using mean absolute error and root mean square error between the actual and predicted Cobb angles. The shuffling into five datasets and five-fold cross validation was conducted ten times. There were no study-specific biases related to conflicts of interest. RESULTS: The correlation between the actual and the mean predicted Cobb angles was 0.91. The mean absolute error and root mean square error were 4.0° and 5.4°, respectively. The accuracy of the mean predicted Cobb angle was 94% for identifying a Cobb angle of ≥10° and 89% for that of ≥20°. CONCLUSIONS: The three-dimensional depth sensor imaging system with its newly innovated convolutional neural network for regression is objective and has significant ability to predict the Cobb angle in children and adolescents. This system is expected to be used for screening scoliosis in clinics or physical examination at schools.

Topics & Concepts

CobBCobb angleScoliosisMedicineMean squared errorCorrelation coefficientAlgorithmArtificial intelligencePearson product-moment correlation coefficientRadiographyRandom forestStatisticsMathematicsSurgeryComputer scienceBiologyGeneticsScoliosis diagnosis and treatmentTotal Knee Arthroplasty OutcomesShoulder Injury and Treatment
An algorithm for using deep learning convolutional neural networks with three dimensional depth sensor imaging in scoliosis detection | Litcius