Nieminen Linda, Ketamo Harri, Vuori Jari, Kankaanpää Markku
Faculty of Medicine and Health Technology, Tampere University, Tampere, Finland.
Department of Rehabilitation and Psychosocial Support, Tampere University Hospital, Tampere, Finland.
Sci Rep. 2025 Jul 2;15(1):22914. doi: 10.1038/s41598-025-06429-4.
As a comprehensive perspective on functioning is useful in patient assessments, the WHO developed the International Classification of Functioning, Disability, and Health (ICF) to provide a standardized terminology and framework for describing and classifying human functioning. However, its complex structure poses a problem for implementation as part of clinical practice.The aim of this study was to test a graph machine learning engine, Headai Graphmind, to recognize ICF codes from electronic health records written in Finnish. A dataset of 93 patients aged 18 to 65 years with chronic low back pain was collected. Headai Graphmind was then tested for its ability to match free text with ICF codes on a sample of 20 patients. The results were compared against the findings of a domain expert. Headai Graphmind achieved 0.95 precision, 0.83 recall, and 0.89 F1 score.The application found 112 distinct ICF codes compared to 119 codes found by the domain expert. Headai Graphmind has the capability to recognize ICF codes from the electronic health records of patients with chronic low back pain. The method could be helpful when implementing the ICF classification in clinical practice, and enable retrospective coding of medical information for further use.
由于对功能的全面视角在患者评估中很有用,世界卫生组织制定了《国际功能、残疾和健康分类》(ICF),以提供用于描述和分类人类功能的标准化术语和框架。然而,其复杂的结构给作为临床实践一部分的实施带来了问题。本研究的目的是测试一种图机器学习引擎Headai Graphmind,以从用芬兰语书写的电子健康记录中识别ICF编码。收集了93名年龄在18至65岁之间患有慢性腰痛的患者的数据集。然后在20名患者的样本上测试了Headai Graphmind将自由文本与ICF编码匹配的能力。将结果与领域专家的发现进行了比较。Headai Graphmind实现了0.95的精确率、0.83的召回率和0.89的F1分数。该应用程序发现了112个不同的ICF编码,而领域专家发现了119个编码。Headai Graphmind有能力从慢性腰痛患者的电子健康记录中识别ICF编码。该方法在临床实践中实施ICF分类时可能会有所帮助,并能够对医疗信息进行回顾性编码以供进一步使用。