| Literature DB >> 35810261 |
Marie K Reumann1,2, Benedikt J Braun3, Maximilian M Menger3, Fabian Springer4, Johann Jazewitsch5, Tobias Schwarz5, Andreas Nüssler5, Tina Histing3, Mika F R Rollmann3.
Abstract
Methods of artificial intelligence (AI) have found applications in many fields of medicine within the last few years. Some disciplines already use these methods regularly within their clinical routine. However, the fields of application are wide and there are still many opportunities to apply these new AI concepts. This review article gives an insight into the history of AI and defines the special terms and fields, such as machine learning (ML), neural networks and deep learning. The classical steps in developing AI models are demonstrated here, as well as the iteration of data rectification and preparation, the training of a model and subsequent validation before transfer into a clinical setting are explained. Currently, musculoskeletal disciplines implement methods of ML and also neural networks, e.g. for identification of fractures or for classifications. Also, predictive models based on risk factor analysis for prevention of complications are being initiated. As non-union in bone is a rare but very complex disease with dramatic socioeconomic impact for the healthcare system, many open questions arise which could be better understood by using methods of AI in the future. New fields of research applying AI models range from predictive models and cost analysis to personalized treatment strategies.Entities:
Keywords: Cost analysis; Data science; Fracture healing; Personalized medicine; Prediction models
Mesh:
Year: 2022 PMID: 35810261 DOI: 10.1007/s00113-022-01202-y
Source DB: PubMed Journal: Unfallchirurgie (Heidelb) ISSN: 2731-7021