Scientific Reports (Jan 2023)

Computer-aided design and 3-dimensional artificial/convolutional neural network for digital partial dental crown synthesis and validation

  • Taseef Hasan Farook,
  • Saif Ahmed,
  • Nafij Bin Jamayet,
  • Farah Rashid,
  • Aparna Barman,
  • Preena Sidhu,
  • Pravinkumar Patil,
  • Awsaf Mahmood Lisan,
  • Sumaya Zabin Eusufzai,
  • James Dudley,
  • Umer Daood

DOI
https://doi.org/10.1038/s41598-023-28442-1
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 8

Abstract

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Abstract The current multiphase, invitro study developed and validated a 3-dimensional convolutional neural network (3D-CNN) to generate partial dental crowns (PDC) for use in restorative dentistry. The effectiveness of desktop laser and intraoral scanners in generating data for the purpose of 3D-CNN was first evaluated (phase 1). There were no significant differences in surface area [t-stat(df) = − 0.01 (10), mean difference = − 0.058, P > 0.99] and volume [t-stat(df) = 0.357(10)]. However, the intraoral scans were chosen for phase 2 as they produced a greater level of volumetric details (343.83 ± 43.52 mm3) compared to desktop laser scanning (322.70 ± 40.15 mm3). In phase 2, 120 tooth preparations were digitally synthesized from intraoral scans, and two clinicians designed the respective PDCs using computer-aided design (CAD) workflows on a personal computer setup. Statistical comparison by 3-factor ANOVA demonstrated significant differences in surface area (P < 0.001), volume (P < 0.001), and spatial overlap (P < 0.001), and therefore only the most accurate PDCs (n = 30) were picked to train the neural network (Phase 3). The current 3D-CNN produced a validation accuracy of 60%, validation loss of 0.68–0.87, sensitivity of 1.00, precision of 0.50–0.83, and serves as a proof-of-concept that 3D-CNN can predict and generate PDC prostheses in CAD for restorative dentistry.