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Personalised trainer recommendation based on physical activity and genetic profile

机译:基于身体活动和遗传外形的个性化培训师推荐

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Foot-care specialists recommend shoes by analysing the patient’s gait cycle and looking for any structural or functional problems. Such methods are time consuming, inaccurate and unable to identify any risk factors that may lead to development of foot-related diseases in the future. This work presents a footwear recommendation algorithm based on genetic predispositions i.e. the genetic profile associated to selected Single Nucleotide Polymorphisms (SNPs), and the individual activity level, in addition to age, body mass index (BMI) and pronation. The algorithm, built on an Artificial Neural Network (ANN), returns a personalised recommendation for four different commercially available shoe categories (Minimalist, Stability, Motion Control, Cushioned). The activity profiles are generated based on features extracted from actual users’ step count data collected via the wearable device DnaBand™, which are then combined with users’ physical information and genetic profile. The Gaussian Mixture Model (GMM) has been found to best identify the relevant activity profiles’ clusters. 5 case studies have been selected and used to validate the ANN output.
机译:脚护理专家推荐鞋子通过分析患者的步态周期并寻找任何结构或功能问题。这些方法是耗时,不准确,无法识别未来可能导致足够与脚有关的疾病发展的风险因素。该工作介绍了基于遗传倾向的鞋推荐算法,即与所选单核苷酸多态性(SNP)相关的遗传分布,以及单个活性水平,除了年龄,体重指数(BMI)和校牙之外。基于人工神经网络(ANN)的算法,返回四种不同市售鞋类类别的个性化推荐(极简,稳定性,运动控制,缓冲)。基于从通过可穿戴设备DNABAND™收集的实际用户的步骤计数数据中提取的特征生成活动配置文件,然后与用户的物理信息和遗传配置文件组合。已经发现高斯混合模型(GMM)最佳地识别相关的活动配置文件集群。已选择5个案例研究并用于验证ANN输出。

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