Department of Orthopedic Surgery, St Anna Hospital, Geldrop.
Leiden Institute of Advanced Computer Science, Leiden University Leiden, The Netherlands.
Acta Orthop. 2021 Jun;92(3):254-257. doi: 10.1080/17453674.2021.1884408. Epub 2021 Feb 12.
Background and purpose - Machine learning (ML) techniques are a form of artificial intelligence able to analyze big data. Analyzing the outcome of (digital) questionnaires, ML might recognize different patterns in answers that might relate to different types of pathology. With this study, we investigated the proof-of-principle of ML-based diagnosis in patients with hip complaints using a digital questionnaire and the Kellgren and Lawrence (KL) osteoarthritis score.Patients and methods - 548 patients (> 55 years old) scheduled for consultation of hip complaints were asked to participate in this study and fill in an online questionnaire. Our questionnaire consists of 27 questions related to general history-taking and validated patient-related outcome measures (Oxford Hip Score and a Numeric Rating Scale for pain). 336 fully completed questionnaires were related to their classified diagnosis (either hip osteoarthritis, bursitis or tendinitis, or other pathology). Different AI techniques were used to relate questionnaire outcome and hip diagnoses. Resulting area under the curve (AUC) and classification accuracy (CA) are reported to identify the best scoring AI model. The accuracy of different ML models was compared using questionnaire outcome with and without radiologic KL scores for degree of osteoarthritis.Results - The most accurate ML model for diagnosis of patients with hip complaints was the Random Forest model (AUC 82%, 95% CI 0.78-0.86; CA 69%, CI 0.64-0.74) and most accurate analysis with addition of KL scores was with a Support Vector Machine model (AUC 89%, CI 0.86-0.92; CA 83%, CI 0.79-0.87).Interpretation - Analysis of self-reported online questionnaires related to hip complaints can differentiate between basic hip pathologies. The addition of radiological scores for osteoarthritis further improves these outcomes.
背景与目的-机器学习(ML)技术是一种能够分析大数据的人工智能形式。分析(数字)问卷的结果,ML 可能会识别出答案中的不同模式,这些模式可能与不同类型的病理学有关。本研究通过数字问卷和 Kellgren 和 Lawrence(KL)骨关节炎评分,调查了基于 ML 的诊断技术在髋部疾病患者中的初步研究结果。
患者与方法-548 名(>55 岁)计划就诊髋部疾病的患者被邀请参加本研究并填写在线问卷。我们的问卷包含 27 个与一般病史采集和验证后的患者相关的结果评估指标(牛津髋关节评分和疼痛数字评分量表)。336 份完整的问卷与他们的分类诊断(髋关节骨关节炎、滑囊炎或肌腱炎或其他病理学)相关。使用不同的 AI 技术来分析问卷结果与髋部诊断之间的关系。报告所得的曲线下面积(AUC)和分类准确率(CA)以确定最佳评分 AI 模型。使用包含和不包含放射学 KL 评分的问卷结果比较不同 ML 模型的准确性,以评估骨关节炎程度。
结果-用于诊断髋部疾病患者的最准确的 ML 模型是随机森林模型(AUC 82%,95%CI 0.78-0.86;CA 69%,CI 0.64-0.74),而添加 KL 评分后最准确的分析则是支持向量机模型(AUC 89%,CI 0.86-0.92;CA 83%,CI 0.79-0.87)。
解释-对与髋部疾病相关的在线自我报告问卷的分析可以区分基本的髋部病理学。添加骨关节炎的放射学评分可以进一步提高这些结果。