The aim of our study was to classify scoliosis compared to to healthy patients using noninvasive surface acquisition via Video-raster-stereography, without prior knowledge of radio-graphic data. Data acquisitions were made using Rasterstereography; unsupervised learning was adopted for clustering and supervised learning was used for prediction model Support Vector Machine and Deep Network architectures were compared. A M-fold cross validation procedure was performed to evaluate the results. The accuracy and balanced accuracy of the best supervised model were close to 85%. Classification rates by class were measured using the confusion matrix, giving a low percentage of unclassified patients. Rasterstereography has turned out to be a good tool to distinguish subject with scoliosis from healthy patients limiting the exposure to unnecessary radiations.

Supervised and unsupervised learning to classify scoliosis and healthy subjects based on non-invasive rasterstereography analysis / Colombo, T.; Mangone, M.; Agostini, F.; Bernetti, A.; Paoloni, M.; Santilli, V.; Palagi, L.. - In: PLOS ONE. - ISSN 1932-6203. - 16:12(2021), pp. 1-24. [10.1371/journal.pone.0261511]

Supervised and unsupervised learning to classify scoliosis and healthy subjects based on non-invasive rasterstereography analysis

Colombo T.;Mangone M.;Agostini F.;Bernetti A.;Paoloni M.;Santilli V.;Palagi L.
2021

Abstract

The aim of our study was to classify scoliosis compared to to healthy patients using noninvasive surface acquisition via Video-raster-stereography, without prior knowledge of radio-graphic data. Data acquisitions were made using Rasterstereography; unsupervised learning was adopted for clustering and supervised learning was used for prediction model Support Vector Machine and Deep Network architectures were compared. A M-fold cross validation procedure was performed to evaluate the results. The accuracy and balanced accuracy of the best supervised model were close to 85%. Classification rates by class were measured using the confusion matrix, giving a low percentage of unclassified patients. Rasterstereography has turned out to be a good tool to distinguish subject with scoliosis from healthy patients limiting the exposure to unnecessary radiations.
2021
supervised learning; unsupervised learning; scoliosis; rasterstereography analysis
01 Pubblicazione su rivista::01a Articolo in rivista
Supervised and unsupervised learning to classify scoliosis and healthy subjects based on non-invasive rasterstereography analysis / Colombo, T.; Mangone, M.; Agostini, F.; Bernetti, A.; Paoloni, M.; Santilli, V.; Palagi, L.. - In: PLOS ONE. - ISSN 1932-6203. - 16:12(2021), pp. 1-24. [10.1371/journal.pone.0261511]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1601700
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