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首页> 外文期刊>Electronic Physician >Providing an imputation algorithm for missing values of longitudinal data using Cuckoo search algorithm: A case study on cervical dystonia
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Providing an imputation algorithm for missing values of longitudinal data using Cuckoo search algorithm: A case study on cervical dystonia

机译:使用杜鹃搜索算法为纵向数据的缺失值提供插补算法:以宫颈肌张力障碍为例

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Background Missing values in data are found in a large number of studies in the field of medical sciences, especially longitudinal ones, in which repeated measurements are taken from each person during the study. In this regard, several statistical endeavors have been performed on the concepts, issues, and theoretical methods during the past few decades. Methods Herein, we focused on the missing data related to patients excluded from longitudinal studies. To this end, two statistical parameters of similarity and correlation coefficient were employed. In addition, metaheuristic algorithms were applied to achieve an optimal solution. The selected metaheuristic algorithm, which has a great search functionality, was the Cuckoo search algorithm. Results Profiles of subjects with cervical dystonia (CD) were used to evaluate the proposed model after applying missingness. It was concluded that the algorithm used in this study had a higher accuracy (98.48%), compared with similar approaches. Conclusion Concomitant use of similar parameters and correlation coefficients led to a significant increase in accuracy of missing data imputation.
机译:背景技术在医学领域的许多研究中,尤其是纵向研究中,发现了数据中缺失的值,其中在研究过程中对每个人进行了重复测量。在这方面,在过去的几十年中,已经对概念,问题和理论方法进行了一些统计上的努力。方法在这里,我们集中于与纵向研究中排除的患者相关的缺失数据。为此,采用了两个相似度和相关系数的统计参数。另外,应用元启发式算法来获得最佳解决方案。选择的具有启发性的元启发式算法是Cuckoo搜索算法。结果颈椎肌张力障碍(CD)受试者的特征在应用缺失后用于评估所提出的模型。结论是,与类似方法相比,本研究中使用的算法具有更高的准确性(98.48%)。结论伴随使用相似的参数和相关系数导致丢失数据归因的准确性大大提高。

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