Institute for Mathematical Innovation, University of Bath, Bath, UK.
Musculoskeletal Research Unit, Bristol Medical School, University of Bristol, Bristol, UK.
Sci Rep. 2022 Feb 8;12(1):2058. doi: 10.1038/s41598-022-06018-9.
Hip fractures are a major cause of morbidity and mortality in the elderly, and incur high health and social care costs. Given projected population ageing, the number of incident hip fractures is predicted to increase globally. As fracture classification strongly determines the chosen surgical treatment, differences in fracture classification influence patient outcomes and treatment costs. We aimed to create a machine learning method for identifying and classifying hip fractures, and to compare its performance to experienced human observers. We used 3659 hip radiographs, classified by at least two expert clinicians. The machine learning method was able to classify hip fractures with 19% greater accuracy than humans, achieving overall accuracy of 92%.
髋部骨折是老年人发病率和死亡率的主要原因,会产生高昂的医疗和社会护理成本。鉴于预期的人口老龄化,预计全球髋部骨折的发病率将会增加。由于骨折分类强烈决定了所选择的手术治疗方法,因此骨折分类的差异会影响患者的结局和治疗成本。我们旨在创建一种用于识别和分类髋部骨折的机器学习方法,并将其性能与有经验的人类观察者进行比较。我们使用了 3659 张髋部 X 光片,由至少两名专家临床医生进行分类。该机器学习方法能够比人类更准确地分类髋部骨折,总体准确率达到 92%。