Publication Date:
2022
abstract:
Objective:
Cardio-metabolic risk assessment in the general population is of paramount importance to reduce diseases burdened by high morbility and mortality. The present paper defines a strategy for out-of-hospital cardio-metabolic risk assessment, based on data acquired from contact-less sensors.
Methods:
We employ Structural Equation Modeling to identify latent clinical variables of cardio-metabolic risk, related to anthropometric, glycolipidic and vascular function factors. Then, we define a set of sensor-based measurements that correlate with the clinical latent variables.
Results:
Our measurements identify subjects with one or more risk factors in a population of 68 healthy volunteers from the EU-funded SEMEOTICONS project with accuracy 82.4%, sensitivity 82.5%, and specificity 82.1%.
Conclusions:
Our preliminary results strengthen the role of self-monitoring systems for cardio-metabolic risk prevention.
Iris type:
01.01 Articolo in rivista
Keywords:
Cardio-metabolic risk; Risk modeling; Self-monitoring; Smart mirror; Sensor-based measurements; Structural Equation Modeling; Self Organizing Maps
List of contributors:
Colantonio, Sara; Giorgi, Daniela; Bastiani, Luca; Pascali, MARIA ANTONIETTA; Coppini, Giuseppe; Morales, MARIA AURORA
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