AI Article Synopsis

  • The study focuses on developing a model using back propagation neural network (BPNN) to predict changes in pelvic orientation when transitioning from standing to sitting, informed by standing lateral spinopelvic radiographs.
  • It analyzed data from 145 young healthy volunteers, identifying key standing parameters that correlate with sitting pelvic tilt and sacral slope through Pearson correlation.
  • The BPNN model demonstrated strong prediction accuracy, achieving 78.48% accuracy for pelvic tilt and 77.54% for sacral slope, suggesting it's a valuable tool for understanding spinopelvic motion dynamics.

Article Abstract

Background: Spinopelvic motion, the cornerstone of the sagittal balance of the human body, is pivotal in patient-specific total hip arthroplasty.

Purpose: This study aims to develop a novel model using back propagation neural network (BPNN) to predict pelvic changes when one sits down, based on standing lateral spinopelvic radiographs.

Methods: Young healthy volunteers were included in the study, 18 spinopelvic parameters were taken, such as pelvic incidence (PI) and so on. First, standing parameters correlated with sitting pelvic tilt (PT) and sacral slope (SS) were identified Pearson correlation. Then, with these parameters as inputs and sitting PT and SS as outputs, the BPNN prediction network was established. Finally, the prediction results were evaluated by relative error (RE), prediction accuracy (PA), and normalized root mean squared error (NRMSE).

Results: The study included 145 volunteers of 23.1 ± 2.3 years old (M:F = 51:94). Pearson analysis revealed sitting PT was correlated with six standing measurements and sitting SS with five. The best BPNN model achieved 78.48% and 77.54% accuracy in predicting PT and SS, respectively; As for PI, a constant for pelvic morphology, it was 95.99%.

Discussion: In this study, the BPNN model yielded desirable accuracy in predicting sitting spinopelvic parameters, which provides new insights and tools for characterizing spinopelvic changes throughout the motion cycle.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9515412PMC
http://dx.doi.org/10.3389/fsurg.2022.977505DOI Listing

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