聚类分析
脚踝
选择(遗传算法)
不稳定性
层次聚类
计算机科学
降维
特征选择
数据挖掘
星团(航天器)
鉴定(生物学)
人工智能
理论(学习稳定性)
机器学习
主成分分析
维数之咒
医学
物理医学与康复
高维数据聚类
线性判别分析
模式识别(心理学)
功能数据分析
作者
Lijiang Luan,Roger Adams,Evangelos Pappas,Adrian Pranata,Gordon Waddington,Jie Lyu,Jia Han
标识
DOI:10.1109/tnsre.2026.3653182
摘要
Individual differences in the biomechanical characteristics of chronic ankle instability (CAI) and the heterogeneity in treatment responses suggest that CAI may have distinguishable subtypes. However, the existing selection criteria for CAI are limited, and the current CAI model groups various types of ankle instability without any precise differentiation of subtypes. This study aimed to apply clustering analysis to identify distinct CAI subtypes. An ordered dataset representing three CAI types (perceived ankle instability (PAI), functional ankle instability (FAI), and mechanical ankle instability (MAI)) was designed, and the K-means clustering algorithm was then applied to clinical data from 210 participants, including individuals with CAI, copers, and healthy people. Clustering analysis was performed using the Cumberland Ankle Instability Tool (CAIT), Identification of Functional Ankle Instability (IdFAI), and anterior drawer test (ADT) scores as indicators, followed by dimensionality reduction and cluster validation. The K-Means clustering algorithm identified five distinct CAI subtypes: PAI, FAI, PAI+FAI, PAI+FAI+MAI, and Sub-coper. The clustering model based on clinical data confirmed the absence of pure MAI and showed that CAI patients could present with varying levels of instability. The most prevalent subtype might be a combination of PAI and FAI. This study demonstrates that, by using clustering analysis, CAI can be categorized into distinct subtypes, offering a more precise diagnostic framework. This approach supports the development of subgroup-based management strategies for CAI and highlights the need for updated selection criteria for CAI.
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