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DONATELLA CERNIGLIA

A Population-Based 3D Atlas of the Pathological Lumbar Spine Segment

  • Autori: Sciortino V.; Pasta S.; Ingrassia T.; Cerniglia D.
  • Anno di pubblicazione: 2022
  • Tipologia: Articolo in rivista
  • Parole Chiave: PCA; SSM; biomechanics; pathological lumbar spine segment; spinal column
  • OA Link: http://hdl.handle.net/10447/569042

Abstract

The spine is the load-bearing structure of human beings and may present several disorders, with low back pain the most frequent problem during human life. Signs of a spine disorder or disease vary depending on the location and type of the spine condition. Therefore, we aim to develop a probabilistic atlas of the lumbar spine segment using statistical shape modeling (SSM) and then explore the variability of spine geometry using principal component analysis (PCA). Using computed tomography (CT), the human spine was reconstructed for 24 patients with spine disorders and then the mean shape was deformed upon specific boundaries (e.g., by +/- 3 or +/- 1.5 standard deviation). Results demonstrated that principal shape modes are associated with specific morphological features of the spine segment such as Cobb's angle, lordosis degree, spine width and height. The lumbar spine atlas here developed has evinced the potential of SSM to investigate the association between shape and morphological parameters, with the goal of developing new treatments for the management of patients with spine disorders.