Multiple verification in computational modeling of bone pathologies
Pietro Li\`o (Computer Laboratory. University of Cambridge. United, Kingdom), Emanuela Merelli (School of Science, Technology. University of, Camerino. Italy), Nicola Paoletti (School of Science, Technology., University of Camerino. Italy)

TL;DR
This paper presents a novel model checking approach using stochastic modeling to diagnose bone pathologies, including osteoporosis, by deriving multiple diagnostic estimators from clinical data and system dynamics.
Contribution
It introduces a new formal framework combining model checking with stochastic models for diagnosing complex bone diseases, incorporating multiple biomarkers and properties like self-adaptiveness.
Findings
Effective detection of rapid bone density decline
Integration of clinical records into diagnostic estimators
Potential to extend to other systemic co-morbidities
Abstract
We introduce a model checking approach to diagnose the emerging of bone pathologies. The implementation of a new model of bone remodeling in PRISM has led to an interesting characterization of osteoporosis as a defective bone remodeling dynamics with respect to other bone pathologies. Our approach allows to derive three types of model checking-based diagnostic estimators. The first diagnostic measure focuses on the level of bone mineral density, which is currently used in medical practice. In addition, we have introduced a novel diagnostic estimator which uses the full patient clinical record, here simulated using the modeling framework. This estimator detects rapid (months) negative changes in bone mineral density. Independently of the actual bone mineral density, when the decrease occurs rapidly it is important to alarm the patient and monitor him/her more closely to detect insurgence…
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