Risk Assessment of Hip Fracture Based on Machine Learning.
Alessio GalassiJosé David Martín-GuerreroEduardo VillamorCarlos MonserratMaría José RupérezPublished in: Applied bionics and biomechanics (2020)
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical assessment. Bone Mineral Density (BMD) measured by Dual-Energy X-Ray Absorptiometry (DXA) is the current gold standard in osteoporosis clinical assessment. However, its classification accuracy is only around 65%. In order to improve this accuracy, this paper proposes the use of Machine Learning (ML) models trained with data from a biomechanical model that simulates a sideways-fall. Machine Learning (ML) models are models able to learn and to make predictions from data. During a training process, ML models learn a function that maps inputs and outputs without previous knowledge of the problem. The main advantage of ML models is that once the mapping function is constructed, they can make predictions for complex biomechanical behaviours in real time. However, despite the increasing popularity of Machine Learning (ML) models and their wide application to many fields of medicine, their use as hip fracture predictors is still limited. This paper proposes the use of ML models to assess and predict hip fracture risk. Clinical, geometric, and biomechanical variables from the finite element simulation of a side fall are used as independent variables to train the models. Among the different tested models, Random Forest stands out, showing its capability to outperform BMD-DXA, achieving an accuracy over 87%, with specificity over 92% and sensitivity over 83%.
Keyphrases
- hip fracture
- machine learning
- bone mineral density
- dual energy
- postmenopausal women
- risk assessment
- body composition
- big data
- finite element
- computed tomography
- artificial intelligence
- healthcare
- deep learning
- magnetic resonance imaging
- magnetic resonance
- high resolution
- resistance training
- high intensity
- virtual reality
- finite element analysis