Advancing spine care through AI and machine learning: overview and applications.
Andrea CinaLuca Maria SconfienzaPublished in: EFORT open reviews (2024)
Machine learning (ML), a subset of artificial intelligence, is crucial for spine care and research due to its ability to improve treatment selection and outcomes, leveraging the vast amounts of data generated in health care for more accurate diagnoses and decision support. ML's potential in spine care is particularly notable in radiological image analysis, including the localization and labeling of anatomical structures, detection and classification of radiological findings, and prediction of clinical outcomes, thereby paving the way for personalized medicine. The manuscript discusses ML's application in spine care, detailing supervised and unsupervised learning, regression, classification, and clustering, and highlights the importance of both internal and external validation in assessing ML model performance. Several ML algorithms such as linear models, support vector machines, decision trees, neural networks, and deep convolutional neural networks, can be used in the spine domain to analyze diverse data types (visual, tabular, omics, and multimodal).
Keyphrases
- machine learning
- artificial intelligence
- big data
- healthcare
- deep learning
- palliative care
- convolutional neural network
- quality improvement
- affordable care act
- neural network
- electronic health record
- human health
- weight loss
- type diabetes
- chronic pain
- skeletal muscle
- glycemic control
- adipose tissue
- combination therapy