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The role of bone mineral density and cartilage volume to predict knee cartilage degeneration

Authors :
Federica Kiyomi Ciliberti
Giuseppe Cesarelli
Lorena Guerrini
Arnar Evgeni Gunnarsson
Riccardo Forni
Romain Aubonnet
Marco Recenti
Deborah Jacob
Halldór Jónsson, Jr
Vincenzo Cangiano
Anna Sigríður Islind
Monica Gambacorta
Paolo Gargiulo
Ciliberti, Federica Kiyomi
Cesarelli, Giuseppe
Guerrini, Lorena
Gunnarsson, Arnar Evgeni
Forni, Riccardo
Aubonnet, Romain
Recenti, Marco
Jacob, Deborah
Jónsson, Halldór
Cangiano, Vincenzo
Islind, Anna Sigríður
Gambacorta, Monica
Gargiulo, Paolo
Publication Year :
2022

Abstract

Knee Osteoarthritis (OA) is a highly prevalent condition affecting knee joint that causes loss of physical function and pain. Clinical treatments are mainly focused on pain relief and limitation of disabilities; therefore, it is crucial to find new paradigms assessing cartilage conditions for detecting and monitoring the progression of OA. The goal of this paper is to highlight the predictive power of several features, such as cartilage density, volume and surface. These features were extracted from the 3D reconstruction of knee joint of forty-seven different patients, subdivided into two categories: degenerative and non-degenerative. The most influent parameters for the degeneration of the knee cartilage were determined using two machine learning classification algorithms (logistic regression and support vector machine); later, box plots, which depicted differences between the classes by gender, were presented to analyze several of the key features’ trend. This work is part of a strategy that aims to find a new solution to assess cartilage condition based on new-investigated features.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....8ce70a79324a53efd9c7384c3ff17320