Literature DB >> 30519934

Vertebral body insufficiency fractures: detection of vertebrae at risk on standard CT images using texture analysis and machine learning.

Urs J Muehlematter1, Manoj Mannil2, Anton S Becker2, Kerstin N Vokinger3,4, Tim Finkenstaedt2, Georg Osterhoff5, Michael A Fischer6, Roman Guggenberger2.   

Abstract

PURPOSE: To evaluate the diagnostic performance of bone texture analysis (TA) combined with machine learning (ML) algorithms in standard CT scans to identify patients with vertebrae at risk for insufficiency fractures.
MATERIALS AND METHODS: Standard CT scans of 58 patients with insufficiency fractures of the spine, performed between 2006 and 2013, were analyzed retrospectively. Every included patient had at least two CT scans. Intact vertebrae in a first scan that either fractured ("unstable") or remained intact ("stable") in the consecutive scan were manually segmented on mid-sagittal reformations. TA features for all vertebrae were extracted using open-source software (MaZda). In a paired control study, all vertebrae of the study cohort "cases" and matched controls were classified using ROC analysis of Hounsfield unit (HU) measurements and supervised ML techniques. In a within-subject vertebra comparison, vertebrae of the cases were classified into "unstable" and "stable" using identical techniques.
RESULTS: One hundred twenty vertebrae were included. Classification of cases/controls using ROC analysis of HU measurements showed an AUC of 0.83 (95% confidence interval [CI], 0.77-0.88), and ML-based classification showed an AUC of 0.97 (CI, 0.97-0.98). Classification of unstable/stable vertebrae using ROC analysis showed an AUC of 0.52 (CI, 0.42-0.63), and ML-based classification showed an AUC of 0.64 (CI, 0.61-0.67).
CONCLUSION: TA combined with ML allows to identifying patients who will suffer from vertebral insufficiency fractures in standard CT scans with high accuracy. However, identification of single vertebra at risk remains challenging. KEY POINTS: • Bone texture analysis combined with machine learning allows to identify patients at risk for vertebral body insufficiency fractures on standard CT scans with high accuracy. • Compared to mere Hounsfield unit measurements on CT scans, application of bone texture analysis combined with machine learning improve fracture risk prediction. • This analysis has the potential to identify vertebrae at risk for insufficiency fracture and may thus increase diagnostic value of standard CT scans.

Entities:  

Keywords:  Machine learning; Osteoporosis; Spine; Tomography, X-ray computed

Mesh:

Year:  2018        PMID: 30519934     DOI: 10.1007/s00330-018-5846-8

Source DB:  PubMed          Journal:  Eur Radiol        ISSN: 0938-7994            Impact factor:   5.315


  24 in total

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Review 4.  Artificial intelligence in spine care: current applications and future utility.

Authors:  Alexander L Hornung; Christopher M Hornung; G Michael Mallow; J Nicolás Barajas; Augustus Rush; Arash J Sayari; Fabio Galbusera; Hans-Joachim Wilke; Matthew Colman; Frank M Phillips; Howard S An; Dino Samartzis
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6.  [Hounsfield units as a measure of bone density-applications in spine surgery].

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Authors:  Elizabeth M Curtis; Stephen Woolford; Claire Holmes; Cyrus Cooper; Nicholas C Harvey
Journal:  Curr Osteoporos Rep       Date:  2020-02       Impact factor: 5.096

9.  Multi-detector computed tomography (MDCT) imaging: association of bone texture parameters with finite element analysis (FEA)-based failure load of single vertebrae and functional spinal units.

Authors:  Nico Sollmann; Nithin Manohar Rayudu; John Jie Sheng Lim; Michael Dieckmeyer; Egon Burian; Maximilian T Löffler; Jan S Kirschke; Thomas Baum; Karupppasamy Subburaj
Journal:  Quant Imaging Med Surg       Date:  2021-07

10.  CT Cervical Spine Fracture Detection Using a Convolutional Neural Network.

Authors:  J E Small; P Osler; A B Paul; M Kunst
Journal:  AJNR Am J Neuroradiol       Date:  2021-04-01       Impact factor: 4.966

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