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Comparing machine learning clustering with latent class analysis on cancer symptoms' data

机译:将机器学习聚类与潜在类别分析对癌症症状数据进行比较

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Symptom Cluster Research is a major topic in Cancer Symptom Science. In spite of the several statistical and clinical approaches in this domain, there is not a consensus on which method performs better. Identifying a generally accepted analytical method is important in order to be able to utilize and process all the available data. In this paper we report a secondary analysis on cancer symptom data, comparing the performance of five Machine Learning (ML) clustering algorithms in doing so. Based on how well they separate specific subsets of symptom measurements we select the best of them and proceed to compare its performance with the Latent Class Analysis (LCA) method. This analysis is a part of an ongoing study for identifying suitable Machine Learning algorithms to analyse and predict cancer symptoms in cancer treatment.
机译:症状群研究是癌症症状科学中的一个主要主题。尽管在该领域有几种统计和临床方法,但对于哪种方法效果更好尚未达成共识。为了能够利用和处理所有可用数据,识别一种公认的分析方法很重要。在本文中,我们报告了对癌症症状数据的二级分析,比较了五种机器学习(ML)聚类算法在执行此操作时的性能。根据它们将症状测量的特定子集分开的程度,我们选择其中的最佳方法,然后继续将其性能与潜在分类分析(LCA)方法进行比较。该分析是正在进行的研究的一部分,该研究旨在确定合适的机器学习算法来分析和预测癌症治疗中的癌症症状。

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