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. 2024 May 2;15:1386164. doi: 10.3389/fneur.2024.1386164

Table 8.

Cited reference concerned with acupuncture for cerebral infarction that details of knowledge clusters.

Cluster ID Size Silhouette Mean (Year) Label (LLR) Label (MI)
0 41 0.819 2018 Visualization analysis Ischemic stroke rehabilitation
1 30 0.847 2013 Cerebral ischemia Ischemic stroke rehabilitation
2 25 0.881 2008 Novel avenue Ischemic stroke rehabilitation
3 21 0.931 2008 Diabetes mellitu Ischemic stroke rehabilitation
4 18 0.969 2018 Electro-acupuncture treatment Ischemic stroke rehabilitation
5 18 0.944 2014 Neurotrophic factor Ischemic stroke rehabilitation
6 17 0.928 2016 Therapeutic effect Ischemic stroke rehabilitation
7 16 0.945 2007 Baihui acupoint Ischemic brain injury
8 16 0.959 2011 Scopus-based literature analysis Ischemic stroke rehabilitation
9 15 0.960 2017 Memory deficit Spastic paresis
10 14 0.989 2020 Neuroinflammatory damage Ischemic stroke rehabilitation
11 12 0.939 2013 Acute stroke White matter microstructure
12 11 0.925 2013 Controlled trial Cerebral ischemia
15 7 0.926 2012 Factorial design Cerebral ischemia
16 6 0.943 2014 Population-based study Cerebral ischemia

The cluster analysis results mainly include cluster ID, mean year, size, silhouette, label (LLR), and label (MI). Cluster ID is the number after clustering, and Size represents the number of members contained in the cluster. The larger the size is, the smaller the number. Mean Year represents the average year of the literature in the cluster, which can be used to judge the distance of the cited literature in the cluster. The larger the log-likelihood ratio (LLR) is, the more representative the cluster category; mutual information (MI) is mainly used to represent the relationship between terms and categories in text mining, and it does not consider the frequency of feature words.