| Literature DB >> 34739630 |
Senmao Li1, Yongwei Guo2, Xiaoyi Hou1, Jinhua Liu1, Wanlin Fan1, Sitong Ju1, Philomena A Wawer Matos1,3, Alexander C Rokohl1,3, Ludwig M Heindl4,5.
Abstract
BACKGROUND: To explore the research trends for uveal melanoma with bibliometric methods using Web of Science Core Collection (WoSCC) and PubMed (PM).Entities:
Keywords: Bibliometric analysis; Knowledge domain; Uveal melanoma; VOSviewer; Visualization
Mesh:
Year: 2021 PMID: 34739630 PMCID: PMC8993789 DOI: 10.1007/s10792-021-02098-0
Source DB: PubMed Journal: Int Ophthalmol ISSN: 0165-5701 Impact factor: 2.031
Fig. 1Annual publications distribution and growth rate. Growth rate = 1 + (this year / last year) × 100%
The top 10 most productive institutions of UM researching in last two decades
| Institutes | Papers | % |
|---|---|---|
| Jefferson University | 201 | 5.334 |
| University of California System | 199 | 5.281 |
| Leiden University | 178 | 4.724 |
| Unicancer | 161 | 4.273 |
| University of Liverpool | 151 | 4.007 |
| Harvard University | 149 | 3.954 |
| University of Texas System | 139 | 3.689 |
| University of Duisburg Essen | 119 | 3.158 |
| Royal Liverpool Broadgreen University Hospitals NHS Trust | 114 | 3.025 |
| Royal Liverpool University Hospital | 113 | 2.999 |
The top 10 most productive authors contributed of UM researching in last two decades
| Name | Papers | % |
|---|---|---|
| Shields CL | 148 | 3.949 |
| Jager MJ | 119 | 3.175 |
| Shields JA | 117 | 3.122 |
| Coupland SE | 89 | 2.375 |
| Harbour JW | 74 | 1.974 |
| Damato B | 71 | 1.894 |
| Luyten GPM | 67 | 1.788 |
| Singh AD | 62 | 1.645 |
| Desjardins I | 56 | 1.494 |
| Burnier MN | 53 | 1.414 |
The top 10 most valuable sources of UM researching in last two decades
| Sources | Documents | Citations | Total link strength |
|---|---|---|---|
| Investigative Ophthalmology and Visual Science | 223 | 5440 | 2667 |
| Ophthalmology | 114 | 4778 | 2488 |
| British Journal of Ophthalmology | 126 | 1881 | 1359 |
| Archives of Ophthalmology | 77 | 2404 | 1159 |
| American Journal of Ophthalmology | 81 | 1289 | 1082 |
| Melanoma Research | 135 | 2034 | 1020 |
| Eye | 58 | 1104 | 858 |
| International Journal of Radiation Oncology Biology Physics | 59 | 1568 | 778 |
| Clinical Cancer Research | 47 | 1832 | 735 |
| Jama Ophthalmology | 45 | 724 | 734 |
The relatedness of items is determined based on the number of references they share. Total link strength attribute indicates the total strength of the bibliographic coupling links of a given sources with other sources
Fig. 2The bibliographic coupling analysis visualization of sources. The node size is determined by the number of published articles. In Bibliographic coupling analysis, the relatedness of items is determined based on the number of references they share. The links between nodes represent relatedness. The color of a node represents the cluster it belongs to, and different clusters are represented by different colors
Fig. 3The co-occurrence analysis visualization of keywords in WoSCC. The node size is determined by the number of published articles. In co-occurrence analysis, the relatedness of items is determined based on the number of documents they occur together. The links between nodes represent relatedness. The color of a node represents the cluster it belongs to, and different clusters are represented by different colors
The top 10 keywords in every cluster
| 1 Red | 2 Green | 3 Blue | 4 Orange | 5 Purple | 6 Brown | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Uveal melanoma | 1256 | Melanoma | 738 | Metastasis | 308 | Eye | 196 | 154 | Immunotherapy | 136 | |
| Choroidal melanoma | 261 | Prognosis | 221 | Cancer | 81 | Choroid | 168 | Ocular melanoma | 102 | Uveal | 93 |
| Brachytherapy | 192 | Survival | 131 | Monosomy 3 | 49 | Uvea | 154 | Liver metastases | 66 | Ipilimumab | 51 |
| Enucleation | 93 | 102 | Oncology | 49 | Immunohistochemistry | 134 | Cutaneous melanoma | 63 | Mucosal melanoma | 45 | |
| Radiotherapy | 88 | Genetics | 74 | Liver | 48 | Tumor | 108 | Liver metastasis | 55 | Pembrolizumab | 42 |
| Retinoblastoma | 62 | 72 | Apoptosis | 45 | Malignant melanoma | 72 | Melphalan | 44 | Nivolumab | 41 | |
| Ocular | 52 | Pathology | 64 | Invasion | 43 | Ciliary body | 54 | Chemotherapy | 37 | Metastatic | 31 |
| Proton therapy | 46 | Mutation | 63 | Angiogenesis | 41 | Plaque radiotherapy | 48 | Isolated hepatic perfusion | 26 | Biomarker | 30 |
| Ultrasound | 45 | 61 | Proliferation | 39 | Nevus | 45 | Radioembolization | 19 | Epigenetics | 28 | |
| Plaque brachytherapy | 44 | Treatment | 56 | Conjunctival melanoma | 35 | Melanocytoma | 44 | Breast cancer | 18 | Metastatic melanoma | 24 |
The more frequent of keyword according to the co-occurrence analysis, the higher rank it gets. The numbers after keywords show the total link strength of keyword according to the co-occurrence analysis
Fig. 4Overly visualization of the co-occurrence analysis visualization of keywords in WoSCC. The node size is determined by the number of published articles. The color of the spots represents mean published time. The bluer the color, the earlier the average published time of the keyword. The yellower the color, the newer the keyword is relatively
Fig. 5The co-occurrence analysis visualization of keywords in PubMed. The node size is determined by the number of published articles. In co-occurrence analysis, the relatedness of items is determined based on the number of documents they occur together. The links between nodes represent relatedness. The color of a node represents the cluster it belongs to, and different clusters are represented by different colors