Orthopedic Surgery Artificial Intelligence Laboratory (OSAIL), Mayo Clinic, Rochester, Minnesota; Department of Radiology, Radiology Informatics Lab (RIL), Mayo Clinic, Rochester, Minnesota.
Orthopedic Surgery Artificial Intelligence Laboratory (OSAIL), Mayo Clinic, Rochester, Minnesota; Department of Orthopedic Surgery, Mayo Clinic, Rochester, Minnesota.
J Arthroplasty. 2023 Oct;38(10):1938-1942. doi: 10.1016/j.arth.2023.08.043. Epub 2023 Aug 19.
The growth of artificial intelligence combined with the collection and storage of large amounts of data in the electronic medical record collection has created an opportunity for orthopedic research and translation into the clinical environment. Machine learning (ML) is a type of artificial intelligence tool well suited for processing the large amount of available data. Specific areas of ML frequently used by orthopedic surgeons performing total joint arthroplasty include tabular data analysis (spreadsheets), medical imaging processing, and natural language processing (extracting concepts from text). Previous studies have discussed models able to identify fractures in radiographs, identify implant type in radiographs, and determine the stage of osteoarthritis based on walking analysis. Despite the growing popularity of ML, there are limitations including its reliance on "good" data, potential for overfitting, long life cycle for creation, and ability to only perform one narrow task. This educational article will further discuss a general overview of ML, discussing these challenges and including examples of successfully published models.
人工智能的发展,加上电子病历采集和存储的大量数据,为骨科研究和转化为临床环境创造了机会。机器学习(ML)是一种非常适合处理大量可用数据的人工智能工具。接受过全关节置换术培训的骨科医生经常使用的特定 ML 领域包括表格数据分析(电子表格)、医学图像处理和自然语言处理(从文本中提取概念)。以前的研究已经讨论了能够识别 X 光片骨折、识别 X 光片植入物类型以及根据步态分析确定骨关节炎阶段的模型。尽管机器学习越来越受欢迎,但它也存在一些限制,包括对“好”数据的依赖、过度拟合的可能性、创建的生命周期长以及只能执行一项单一任务的能力。本文将进一步讨论机器学习的概述,讨论这些挑战,并包括成功发表的模型的示例。