BONE STRAIN INDEX AS A PREDICTOR OF FURTHER VERTEBRAL FRACTURE IN OSTEOPOROTIC WOMEN
Authors/Creators
- 1. IRCCS Istituto Ortopedico Galeazzi; Università degli Studi di Milano
- 2. Fondazione IRCCS Ca' Granda - Ospedale Maggiore Policlinico
Description
Background: Osteoporosis is an asymptomatic disease of high prevalence and incidence, leading to bone fractures burdened by high mortality and disability, mainly when several subsequent fractures occur. A fragility fracture predictive model, Artificial Intelligence-based, to identify dual X-ray absorptiometry (DXA) variables able to characterise those patients who are prone to further fractures called Bone Strain Index, was evaluated in this study.
Methods: In a prospective, longitudinal, multicentric study 172 female outpatients with at least one vertebral fracture at the first observation were enrolled. They performed a spine X-ray to calculate spine deformity index (SDI) and a lumbar and femoral DXA scan to assess bone mineral density (BMD) and bone strain index (BSI) at baseline and after a follow-up period of 3 years in average. At the end of the follow-up, 93 women developed a further vertebral fracture. The further vertebral fracture was considered as one unit increase of SDI. We assessed the predictive capacity of supervised Artificial Neural Networks (ANNs) to distinguish women consistently with a further fracture from those without a further fracture and to identify the variables expressing the maximal amount of relevant information to discriminate the two groups. ANNs were allowed to choose relevant input data automatically (TWIST-system). Moreover, we constructed a semantic connectivity map with Auto Contractive Map to offer some insight regarding the complex biological connections among the studied variables and the two conditions (further fracture vs no further fracture).
Results: TWIST system selected 5 out of 13 available variables: age, menopause age, BMI, FTot BMC, FTot BSI. With training testing procedure, ANNs reached predictive accuracy of 79.36%, with a sensitivity of 75% and a specificity of 83.72%. The semantic connectivity map highlighted the role of BSI in predicting the risk of a further fracture.
Conclusions: Artificial Intelligence is a useful method to analyse a complex system like that regarding osteoporosis, able to identify patients prone to a further fragility fracture. BSI appears to be a useful DXA index in identifying those patients who are at risk of further vertebral fractures.
Files
Files
(25.3 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:58c95460e5aa10f34e1bef29dae3c57d
|
25.3 kB | Download |