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Prediction of Tibial Rotation Pathologies Using Particle Swarm Optimization and K-Means Algorithms

机译:基于粒子群算法和K-Means算法的胫骨旋转病理预测

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摘要

The aim of this article is to investigate pathological subjects from a population through different physical factors. To achieve this, particle swarm optimization (PSO) and K-means (KM) clustering algorithms have been combined (PSO-KM). Datasets provided by the literature were divided into three clusters based on age and weight parameters and each one of right tibial external rotation (RTER), right tibial internal rotation (RTIR), left tibial external rotation (LTER), and left tibial internal rotation (LTIR) values were divided into three types as Type 1, Type 2 and Type 3 (Type 2 is non-pathological (normal) and the other two types are pathological (abnormal)), respectively. The rotation values of every subject in any cluster were noted. Then the algorithm was run and the produced values were also considered. The values of the produced algorithm, the PSO-KM, have been compared with the real values. The hybrid PSO-KM algorithm has been very successful on the optimal clustering of the tibial rotation types through the physical criteria. In this investigation, Type 2 (pathological subjects) is of especially high predictability and the PSO-KM algorithm has been very successful as an operation system for clustering and optimizing the tibial motion data assessments. These research findings are expected to be very useful for health providers, such as physiotherapists, orthopedists, and so on, in which this consequence may help clinicians to appropriately designing proper treatment schedules for patients.
机译:本文的目的是通过不同的物理因素调查人群中的病理科目。为了实现这一目标,已经将粒子群优化(PSO)和K均值(KM)聚类算法结合在一起(PSO-KM)。根据年龄和体重参数将文献提供的数据集分为三个类别,分别是右胫骨外旋(RTER),右胫骨内旋(RTIR),左胫骨外旋(LTER)和左胫骨内旋( LTIR)值分为三种类型,分别为类型1,类型2和类型3(类型2为非病理性(正常),其他两种类型为病理性(异常))。记录任何聚类中每个对象的旋转值。然后运行算法并考虑产生的值。已将产生的算法PSO-KM的值与实际值进行比较。混合PSO-KM算法通过物理标准在胫骨旋转类型的最佳聚类上非常成功。在这项研究中,类型2(病理科目)的可预测性特别高,PSO-KM算法作为用于聚类和优化胫骨运动数据评估的操作系统非常成功。预期这些研究结果对健康提供者(例如物理治疗师,骨科医师等)非常有用,其中这种结果可能有助于临床医生为患者适当设计适当的治疗方案。

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