Bertani A, Cappello A, Benedetti M G, Simoncini L, Catani F
Biomedical Engineering Laboratory, Dipartimento di Elettronica, Informatica e Sistemistica, University of Bologna, Bologna, Italy.
Clin Biomech (Bristol). 1999 Aug;14(7):484-93. doi: 10.1016/s0268-0033(98)90099-7.
Main purpose of this study was to apply quantitative gait analysis and statistical pattern recognition as clinical decision-making aids in flat foot diagnosis and post-surgery monitoring.
Statistical pattern recognition techniques were applied to discriminate between normal and flat foot populations through ground reaction force measurements; ground reaction forces time course was assumed as a sensible index of the foot function.
Gait analysis is becoming recognized as an important clinical tool in orthopaedics, in pre-surgery planning, post-surgery monitoring and in a posteriori evaluation of different treatment techniques. Statistical pattern recognition techniques have been utilized with success in this field to identify the most significant variables of selected motor functions in different pathologies, and to design classification rules and quantitative evaluation scores.
Ground reaction forces were recorded during free speed barefoot walks on 28 healthy subjects, and 28 symptomatic flexible flat foot children selected for surgical intervention. A new feature selection algorithm, based on heuristic optimization, was applied to select the most discriminant ground reaction forces time samples. A two-stage pattern recognition system, composed by three linear feature extractors, one for each ground reaction force component, and a linear classifier, was designed to classify the feet of each subject using the selected features. The output of the classifier was used to define a functional score.
The classifier assigned the ground reaction force patterns performed by each subject into the right class with an estimated error of 15%, corresponding to an assignment error for each subject's foot of 9%. The most discriminant ground reaction forces time samples selected are in full agreement with the pathophysiology of the symptomatic flexible flat foot. The obtained score was utilized to monitor the 1 and 2 years post-operative functional recovery of two differently treated subgroups of 32 flexible flat foot subjects.
Statistical pattern recognition techniques are promising tools for clinical gait analysis; the obtained score provides important functional information that could be used as a further aid in the clinical evaluation of flat foot and different surgical treatment techniques.
Symptomatic flexible flat foot surgical decision making is frequently difficult because of the lack of objective criteria to assess functional abnormalities of the foot/ankle complex. Gait analysis and statistical pattern recognition can give us parameters with which to characterize "functional" flat foot. Moreover, we can objectively follow up the recovery of the foot/ankle complex function after surgical treatment.
本研究的主要目的是应用定量步态分析和统计模式识别作为扁平足诊断及术后监测的临床决策辅助手段。
应用统计模式识别技术,通过地面反作用力测量来区分正常人群和扁平足人群;地面反作用力随时间的变化过程被视为足部功能的一个合理指标。
步态分析正逐渐被公认为骨科领域一项重要的临床工具,可用于术前规划、术后监测以及对不同治疗技术的事后评估。统计模式识别技术已在该领域成功应用,用于识别不同病理状态下选定运动功能的最重要变量,并设计分类规则和定量评估分数。
记录了28名健康受试者以及28名因手术干预而入选的有症状柔性扁平足儿童在自由速度下赤脚行走时的地面反作用力。应用一种基于启发式优化的新特征选择算法,来选择最具判别力的地面反作用力时间样本。设计了一个两阶段模式识别系统,由三个线性特征提取器(每个地面反作用力分量一个)和一个线性分类器组成,使用选定的特征对每个受试者的足部进行分类。分类器的输出用于定义一个功能分数。
分类器将每个受试者执行的地面反作用力模式正确分类的估计误差为15%,相当于每个受试者足部的分类错误率为9%。所选的最具判别力的地面反作用力时间样本与有症状柔性扁平足的病理生理学完全一致。所获得的分数用于监测32名柔性扁平足受试者两个不同治疗亚组术后1年和2年的功能恢复情况。
统计模式识别技术是临床步态分析中很有前景的工具;所获得的分数提供了重要的功能信息,可作为扁平足临床评估及不同手术治疗技术的进一步辅助手段。
由于缺乏评估足/踝复合体功能异常的客观标准,有症状柔性扁平足的手术决策常常很困难。步态分析和统计模式识别可以为我们提供表征“功能性”扁平足的参数。此外,我们可以客观地跟踪手术治疗后足/踝复合体功能的恢复情况。