Validity of machine learning algorithms for automatically extract growing rod length on radiographs in children with early-onset scoliosis.

Journal: Medical & biological engineering & computing
Published Date:

Abstract

The magnetically controlled growing rod technique is an effective surgical treatment for children who have early-onset scoliosis. The length of the instrumented growing rods is adjusted regularly to compensate for the normal growth of these patients. Manual measurement of rod length on posteroanterior spine radiographs is subjective and time-consuming. A machine learning (ML) system using a deep learning approach was developed to automatically measure the adjusted rod length. Three ML models-rod model, 58 mm model, and head-piece model-were developed to extract the rod length from radiographs. Three-hundred and eighty-seven radiographs were used for model development, and 60 radiographs with 118 rods were separated for final testing. The average precision (AP), the mean absolute difference (MAD) ± standard deviation (SD), and the inter-method correlation coefficient (ICC) between the manual and artificial intelligence (AI) adjustment measurements were used to evaluate the developed method. The AP of the 3 models were 67.6%, 94.8%, and 86.3%, respectively. The MAD ± SD of the rod length change was 0.98 ± 0.88 mm, and the ICC was 0.90. The average time to output a single rod measurement was 6.1 s. The developed AI provided an accurate and reliable method to detect the rod length automatically.

Authors

  • Mohammad Humayun Kabir
    Department of Electrical and Computer Engineering, University of Alberta, 11-263 Donadeo Innovation Centre for Engineering, 9211-116 St, Edmonton, AB, T6G 1H9, Canada.
  • Marek Reformat
    Department of Electrical and Computer Engineering, University of Alberta, Donadeo Innovation Centre for Engineering, 9211-116 Street, Edmonton, AB T6G 1H9, Canada; Information Technology Institute, University of Social Sciences, 90-113 Lodz, Poland.
  • Sarah Southon Hryniuk
    Department of Surgery, University of Alberta, Edmonton, AB, Canada.
  • Kyle Stampe
    Department of Electrical and Computer Engineering, University of Alberta, 11-263 Donadeo Innovation Centre for Engineering, 9211-116 St, Edmonton, AB, T6G 1H9, Canada.
  • Edmond Lou
    Department of Surgery, University of Alberta.