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Frontiers in Human Neuroscience logoLink to Frontiers in Human Neuroscience
. 2017 Jul 21;11:363. doi: 10.3389/fnhum.2017.00363

At the Leading Front of Neuroscience: A Bibliometric Study of the 100 Most-Cited Articles

Andy W K Yeung 1,*, Tazuko K Goto 2, W Keung Leung 3
PMCID: PMC5520389  PMID: 28785211

Abstract

Background: It might be difficult for clinicians and scientists to identify comprehensively the major research topics given the large number of publications. A bibliometric report that identifies the most-cited articles within the body of the relevant literature may provide insight and guidance for readers toward scientific topics that are considered important for researchers and all relevant workers of academia. To our knowledge, there is a lack of an overall evaluation of the most-cited articles and hence of a comprehensive review of major research topics in neuroscience. The present study was therefore proposed to analyze and characterize the 100 most-cited articles in neuroscience.

Methods: Based on data provided from Web of Science, the 100 most-cited articles relevant to neuroscience were identified and characterized. Information was extracted for each included article to assess for the publication year, journal published, impact factor, adjusted impact factor, citation count (total, normalized, and adjusted), reference list, authorship and article type.

Results: The total citation count for the 100 most-cited articles ranged from 7,326 to 2,138 (mean 3087.0) and the normalized citation count ranged from 0.163 to 0.007 (mean 0.054). The majority of the 100 articles were research articles (67%) and published from 1996 to 2000 (30%). The author and journal with the largest share of these 100 articles were Stephen M. Smith (n = 6) and Science (n = 13) respectively. Among the 100 most-cited articles, 37 were interlinked via citations of one another, and they could be classified into five major topics, four of which were scientific topics, namely neurological disorders, prefrontal cortex/emotion/reward, brain network, and brain mapping. The remaining topic was methodology. Interestingly 41 out of 63 of the rest, non-interlinked articles could also be categorized under the above five topics. Adjusted journal impact factor among these 100 articles did not appear to be associated with the corresponding adjusted citation count.

Conclusion: The current study compiles a comprehensive list and analysis of the 100 most-cited articles relevant to neuroscience that enables the comprehensive identification and recognition of the most important and relevant research topics concerned.

Keywords: bibliometrics, functional neuroimaging, information science, literature-based discovery, neurosciences, publications

Introduction

Neuroscience is a broad research field aimed at investigating the relationships among neural structures, functions and behaviors. It comprises many research themes; examples include analytic methods, the acquisition of functional neuroimaging and its physics, computational modeling and analytics, physiology and anatomy, sensorimotor functions, aging and cognitive functions, social neuroscience, and language and learning. With the enormous number of articles published in the field, it might be daunting for clinicians and scientists to identify the major research topics of the field concerned. A bibliometric report that identifies the research hotspots and their contributors may provide updated insight as a first step to further explore the details (Snyder and Raichle, 2012; Kim, H. J. et al., 2016; Yeung et al., 2017a,b).

When citation analysis is properly used, it could objectively evaluate the scientific performances of a selected corpus of literature at a relatively low financial cost (Garfield, 1979). There are several up-to-date publications that report on the 100 most-cited articles in various subfields of neuroscience, such as neurointervention (Kim, E. S. et al., 2016), neuroimaging (Kim, H. J. et al., 2016), neurorehabilitation (Kreutzer et al., 2017) and neurosurgery (Ponce and Lozano, 2010). However, to our knowledge, there is a lack of published papers that provide an overall evaluation of the most-cited neuroscience articles.

The purpose of the present study was therefore to identify the 100 most-cited articles in neuroscience and to analyze their characteristics and inter-citation network.

Materials and methods

Data source

The choice of data source and the search strategy were adopted from previous reports (Ponce and Lozano, 2010; Kim, E. S. et al., 2016; Kim, H. J. et al., 2016; Kreutzer et al., 2017). The source of data was the Clarivate Analytics-owned, Web-based, multidisciplinary database Web of Science (WoS), which provides the bibliometric data of published scientific articles starting from 1945. In March 2017, we searched in the Science Citation Index Expanded (SCI-E) section of WoS to identify articles with the following string: TS = neuro* OR WC = Clinical Neurology OR WC = Medicine, General & Internal OR WC = Neuroimaging OR WC = Neuroscience OR WC = Radiology, Nuclear medicine & Medical imaging. This string searched for articles that: (1) contain the string “neuro” in the title, abstract, or keywords; or (2) are published in journals that belong to the five selected Journal Citation Report (JCR) categories.

The articles were sorted according to citation count, and their titles and abstracts were evaluated to ensure that they were relevant to neuroscience. No restrictions were placed on the type of research model (in vivo / in vitro), article type (e.g., research article, review, editorial, letter, etc.), or publication language. The articles citing the 100 most-cited articles and the reference lists of the 100 most-cited articles were searched to decrease the chance that relevant neuroscience papers with equal or higher citations were missed.

Data extraction

The 100 most-cited articles were reviewed and the following information extracted: (1) year of publication; (2) title of journal; (3) adjusted journal impact factor (i.e., impact factor per year since publication of that article); (4) total citation count; (5) normalized citation count (i.e., citation count received during the first 10 years after publication divided by neuroscience publication count during that period); (6) adjusted citation count (i.e., citation count per year since publication of that article); (7) reference list; (8) authorship; and (9) article type. Bradford's law of scattering was applied to the data of the 100 most-cited articles to investigate if core articles are responsible for one-third of the total citations that these articles received (Vickery, 1948). Based on Bradford's law, three groups of articles should contribute to the total citation count when it is equally divided into three portions, whereas the number of articles within the groups should be in the ratio of 1:n:n2. In addition, the Highly Cited Researchers 2016 list was searched to identify if any authors of these 100 most-cited articles have “contributed markedly high numbers of top-cited papers over a recent eleven year period, 2004–2014”1 In addition, we identified if any authors of these 100 articles received any major scientific awards (Lasker Award2 or Nobel Prize3.

Citation network

To reveal if these 100 articles were interlinked (i.e., citing one another), a citation network consisting of these interlinked articles was visualized by using VOSviewer (Van Eck and Waltman, 2009). Each article was represented by a bubble. Two bubbles were connected by a line if either one of them cited the other. In this visualized network, the bubbles were categorized manually according to their topics. Each topic was defined as a discrete theme serving as an umbrella term, under which papers concerning related research work could be grouped together. Bubble size indicated the citation count received within the network.

Influencing factors of citation count

Because the article citation count influences the journal impact factor, and because a higher impact factor tends to attract academics' attention, we assumed there might be a possibility that a higher adjusted impact factor would lead to a higher adjusted citation count. Here, we calculated adjusted values instead of normalized values because online WoS database and the authors' institutions do not have impact factor data before 1997. Therefore, to investigate the association involving impact factor, it was more meaningful to use adjusted data instead of normalizing them according to statistics from a 10-year period. Pearson's correlation test was applied.

Next, we applied Pearson's correlation test to investigate the association between normalized citation count and years since publication. In the old times there were fewer publications so it was reasonable to expect that the older publications received higher normalized citation count.

Statistical tests were performed with SPSS (Version 23.0, IBM, NY, US), and the test results were significant if p < 0.05. If the test results were insignificant but suggested data clustering in the scatter plot, we would conduct a two-step cluster analysis to evaluate if the involved citation count (adjusted or normalized) could be separated into clusters. Significant results would be further examined with Price's law by applying the best-fitting linear or exponential trend lines to the scatter plot. If the data had a better fit by the exponential line, results would be considered to fulfill Price's law, which predicts an exponential change of an outcome variable (i.e., adjusted or normalized citation count in the current study) over the survey period (López-Muñoz et al., 2014; Yeung et al., 2017b). For illustrative purposes, the data would be plotted against the year of publication (instead of years since publication) together with annual counts of neuroscience publications to examine if both trends followed an exponential growth consistent with the notion of “publish or perish.” The annual counts of neuroscience publications were acquired by searching “neuro*” in the PubMed database.

Results

The 100 most-cited articles were sorted in Table 1 according to normalized (Rank A) and total (Rank B) citation counts. The total number of citations that the 100 most-cited articles in the neuroscience field have received ranged from 2,138 to 7,326 (mean ± SD: 3087.0 ± 954.5, cumulative total citations = 308,701; Table 1). The 23 highest-ranked (Rank B) articles on the list received one-third of the total citations of these 100 articles, whereas the next and last one-third citations were contributed by the next 34 and 43 articles respectively, indicating that the distribution did not fulfill Bradford's law (Table 1). The normalized citation counts ranged from 0.007 to 0.163 (mean ± SD: 0.054 ± 0.028, Table 1). In terms of the total citation count (Rank B), the top-ranked article was published by Kurtzke (1983), which reported a scale evaluating neurologic impairment in patients with multiple sclerosis. With regard to the normalized citation count (Rank A), the top-ranked article was published by Nowak et al. (1984), which described the role of magnesium ions in modulating the response of glutamate-activated channels in neurons. The 100 most-cited articles were mainly research articles (n = 67), followed by reviews (n = 29), editorials (n = 2), letters (n = 1) and notes (n = 1).

Table 1.

List of 100 most-cited neuroscience articles ranked according to their citation counts.

Rank Aa Rank Bb Year Authors and title Journal Normalized citation countc 10-year citation countd Total citation count Topice
1 34 1984 Nowak, L., Bregestovski, P., Ascher, P., Herbet, A., Prochiantz, A. Magnesium gates glutamate-activated channels in mouse central neurons Nature 0.163 1,439 3,240 6
2 19 1988 Choi, D. W. Glutamate neurotoxicity and diseases of the nervous-system Neuron 0.145 1,764 3,927 6
3 57 1987 Johnson, J. W., Ascher, P. Glycine potentiates the NMDA response in cultured mouse-brain neurons Nature 0.135 1,511 2,625 6
4 62 1982 Whitehouse, P. J., Price, D. L., Struble, R. G., Clark, A. W., Coyle, J. T., Delong, M. R. Alzheimer's disease and senile dementia - loss of neurons in the basal forebrain Science 0.121 897 2,568 1
5 70 1976 Davies, P., Maloney, A. J. F. Selective loss of central cholinergic neurons in Alzheimer's disease Lancet 0.105 403 2,431 1
6 78 1990 Sokoloff, P., Giros, B., Martres, M. P., Bouthenet, M. L., Schwartz, J. C. Molecular-cloning and characterization of a novel dopamine receptor (D3) as a target for neuroleptics Nature 0.103 1,451 2,346 2
7 85 1991 Garthwaite, J. Glutamate, nitric-oxide and cell cell signaling in the nervous-system Trends Neurosci 0.102 1,563 2,266 6
8 9 2000 Banchereau, J., Briere, F., Caux, C., Davoust, J., Lebecque, S., Liu, Y. T., Pulendran, B., Palucka, K. Immunobiology of dendritic cells Annu Rev Immunol 0.099 2,865 4,392 6
9 61 1991 Oppenheim, R. W. Cell-death during development of the nervous-system Annu Rev Neurosci 0.098 1,501 2,579 6
10 96 1992 Nakanishi, S. Molecular diversity of glutamate receptors and implications for brain-function Science 0.093 1,523 2,186 6
11 51 1993 Saunders, A. M., Strittmatter, W. J., Schmechel, D., Georgehyslop, P. H. S., Pericakvance, M. A., Joo, S. H., Rosi, B. L., Gusella, J. F., Crappermaclachlan, D. R., Alberts, M. J., Hulette, C., Crain, B., Goldgaber, D., Roses, A. D. Association of apolipoprotein-e allele epsilon-4 with late-onset familial and sporadic Alzheimer's disease Neurology 0.084 1,486 2,719 1
12 14 1972 Racine, R. J. Modification of seizure activity by electrical stimulation. Part 2. Motor seizure Electroencephalogr Clin Neurophysiol 0.084 196 4,227 1
13 16 2007 Louis, D. N., Ohgaki, H., Wiestler, O. D., Cavenee, W. K., Burger, P. C., Jouvet, A., Scheithauer, B. W., Kleihues, P. The 2007 WHO classification of tumours of the central nervous system Acta Neuropathol 0.083 3,972 3,998 1
14 11 1997 Polymeropoulos, M. H., Lavedan, C., Leroy, E., Ide, S. E., Dehejia, A., Dutra, A., Pike, B., Root, H., Rubenstein, J., Boyer, R., Stenroos, E. S., Chandrasekharappa, S., Athanassiadou, A., Papapetropoulos, T., Johnson, W. G., Lazzarini, A. M., Duvoisin, R. C., DiIorio, G., Golbe, L. I., Nussbaum, R. L. Mutation in the alpha-synuclein gene identified in families with Parkinson's disease Science 0.082 1,956 4,321 1
15 47 1993 Coyle, J. T., Puttfarcken, P. Oxidative stress, glutamate, and neurodegenerative disorders Science 0.077 1,366 2,866 6
16 17 2001 McDonald, W. I., Compston, A., Edan, G., Goodkin, D., Hartung, H. P., Lublin, F. D., McFarland, H. F., Paty, D. W., Polman, C. H., Reingold, S. C., Sandberg-Wollheim, M., Sibley, W., Thompson, A. J., van den Noort, S., Weinshenker, B. Y., Wolinsky, J. S. Recommended diagnostic criteria for multiple sclerosis: Guidelines from the International Panel on the Diagnosis of Multiple Sclerosis Ann Neurol 0.076 2,326 3,993 1
17 53 1992 Kwong, K. K., Belliveau, J. W., Chesler, D. A., Goldberg, I. E., Weisskoff, R. M., Poncelet, B. P., Kennedy, D. N., Hoppel, B. E., Cohen, M. S., Turner, R., Cheng, H. M., Brady, T. J., Rosen, B. R. Dynamic magnetic-resonance-imaging of human brain activity during primary sensory stimulation Pro Natl Acad Sci U S A 0.074 1,220 2,702 5
18 25 1984 Hopfield, J. J. Neurons with graded response have collective computational properties like those of 2-state neurons Pro Natl Acad Sci U S A 0.073 644 3,496 6
19 2 1991 Braak, H., Braak, E. Neuropathological staging of Alzheimer-related changes Acta Neuropathol 0.071 1,086 6,836 1
20 21 1998 Prusiner, S. B. Prions Pro Natl Acad Sci U S A 0.068 1,745 3,837 1
21 27 2000 Schwartz, M. W., Woods, S. C., Porte, D., Seeley, R. J., Baskin, D. G. Central nervous system control of food intake Nature 0.068 1,958 3,410 4
22 35 1991 Mirra, S. S., Heyman, A., McKeel, D., Sumi, S. M., Crain, B. J., Brownlee, L. M., Vogel, F. S., Hughes, J. P., Vanbelle, G., Berg, L. The Consortium to Establish a Registry for Alzheimer's Disease (CERAD). Part 2. Standardization of the neuropathologic assessment of alzheimers-disease Neurology 0.067 1,029 3,226 1
23 5 2001 Miller, E. K., Cohen, J. D. An integrative theory of prefrontal cortex function Annu Rev Neurosci 0.066 2,014 4,754 2
24 56 2009 Bullmore, E. T., Sporns, O. Complex brain networks: graph theoretical analysis of structural and functional systems Nat Rev Neurosci 0.065 2,652 2,677 3
25 81 1982 Pulsinelli, W. A., Brierley, J. B., Plum, F. Temporal profile of neuronal damage in a model of transient forebrain ischemia Ann Neurol 0.064 478 2,326 6
26 15 1993 Robinson, T. E., Berridge, K. C. The neural basis of drug craving - an incentive-sensitization theory of addiction Brain Res Rev 0.063 1,113 4,016 2
27 36 2004 Rizzolatti, G., Craighero, L. The mirror-neuron system Annu Rev Neurosci 0.063 2,315 3,150 6
28 7 2002 Corbetta, M., Shulman, G. L. Control of goal-directed and stimulus-driven attention in the brain Nat Rev Neurosci 0.062 2,028 4,515 4
29 18 2000 LeDoux, J. E. Emotion circuits in the brain Annu Rev Neurosci 0.062 1,797 3,977 2
30 12 1995 Bell, A. J., Sejnowski, T. J. An information maximization approach to blind separation and blind deconvolution Neural Comput 0.062 1,276 4,318 5
31 89 1993 Lin, L. F. H., Doherty, D. H., Lile, J. D., Bektesh, S., Collins, F. GDNF - a glial-cell line derived neurotrophic factor for midbrain dopaminergic-neurons Science 0.061 1,085 2,256 2
32 88 1996 TessierLavigne, M., Goodman, C. S. The molecular biology of axon guidance Science 0.060 1,340 2,258 6
33 58 1996 McKeith, I. G., Galasko, D., Kosaka, K., Perry, E. K., Dickson, D. W., Hansen, L. A., Salmon, D. P., Lowe, J., Mirra, S. S., Byrne, E. J., Lennox, G., Quinn, N. P., Edwardson, J. A., Ince, P. G., Bergeron, C., Burns, A., Miller, B. L., Lovestone, S., Collerton, D., Jansen, E. N. H., Ballard, C., deVos, R. A. I., Wilcock, G. K., Jellinger, K. A., Perry, R. H. Consensus guidelines for the clinical and pathologic diagnosis of dementia with Lewy bodies (DLB): Report of the consortium on DLB international workshop Neurology 0.060 1,332 2,614 1
34 41 2001 Logothetis, N. K., Pauls, J., Augath, M., Trinath, T., Oeltermann, A. Neurophysiological investigation of the basis of the fMRI signal Nature 0.059 1,802 3,054 5
35 72b 1982 Kirino, T. Delayed neuronal death in the gerbil hippocampus following ischemia Brain Res 0.059 436 2,400 3
36 45 2000 Gage, F. H. Mammalian neural stem cells Science 0.058 1,679 2,891 6
37 48 2005 Polman, C. H., Reingold, S. C., Edan, G., Filippi, M., Hartung, H. P., Kappos, L., Lublin, F. D., Metz, L. M., McFarland, H. F., O'Connor, P. W., Sandberg-Wollheim, M., Thompson, A. J., Weinshenker, B. G., Wolinsky, J. S. Diagnostic criteria for multiple sclerosis: 2005 Revisions to the “McDonald Criteria” Ann Neurol 0.057 2,304 2,842 1
38 10 2000 Ashburner, J., Friston, K. J. Voxel-based morphometry - The methods NeuroImage 0.057 1,638 4,327 5
39 13 1999 Petersen, R. C., Smith, G. E., Waring, S. C., Ivnik, R. J., Tangalos, E. G., Kokmen, E. Mild cognitive impairment - Clinical characterization and outcome Arch Neurol 0.056 1,537 4,234 1
40 46 1998 Sakurai, T., Amemiya, A., Ishii, M., Matsuzaki, I., Chemelli, R. M., Tanaka, H., Williams, S. C., Richardson, J. A., Kozlowski, G. P., Wilson, S., Arch, J. R. S., Buckingham, R. E., Haynes, A. C., Carr, S. A., Annan, R. S., McNulty, D. E., Liu, W. S., Terrett, J. A., Elshourbagy, N. A., Bergsma, D. J., Yanagisawa, M. Orexins and orexin receptors: A family of hypothalamic neuropeptides and G protein-coupled receptors that regulate feeding behavior Cell 0.055 1,412 2,879 6
41 40 2005 Fox, M. D., Snyder, A. Z., Vincent, J. L., Corbetta, M., Van Essen, D. C., Raichle, M. E. The human brain is intrinsically organized into dynamic, anticorrelated functional networks Pro Natl Acad Sci U S A 0.054 2,151 3,078 3
42 42 2005 Ashburner, J., Friston, K. J. Unified segmentation NeuroImage 0.053 2,131 3,051 5
43 31 1998 Eriksson, P. S., Perfilieva, E., Bjork-Eriksson, T., Alborn, A. M., Nordborg, C., Peterson, D. A., Gage, F. H. Neurogenesis in the adult human hippocampus Nat Med 0.053 1,360 3,306 6
44 3 2002 Tzourio-Mazoyer, N., Landeau, B., Papathanassiou, D., Crivello, F., Etard, O., Delcroix, N., Mazoyer, B., Joliot, M. Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain NeuroImage 0.051 1,672 5,297 5
45 33 2003 Braak, H., Del Tredici, K., Rub, U., de Vos, R. A. I., Steur, ENHJ, Braak, E. Staging of brain pathology related to sporadic Parkinson's disease Neurobiol Aging 0.051 1,775 3,251 1
46 49 2002 Genovese, C. R., Lazar, N. A., Nichols, T. Thresholding of statistical maps in functional neuroimaging using the false discovery rate NeuroImage 0.051 1,654 2,837 5
47 83 1994 Monyer, H., Burnashev, N., Laurie, D. J., Sakmann, B., Seeburg, P. H. Developmental and regional expression in the rat-brain and functional-properties of 4 NMDA receptors Neuron 0.051 970 2,287 6
48 59 2002 Walsh, D. M., Klyubin, I., Fadeeva, J. V., Cullen, W. K., Anwyl, R., Wolfe, M. S., Rowan, M. J., Selkoe, D. J. Naturally secreted oligomers of amyloid beta protein potently inhibit hippocampal long-term potentiation in vivo Nature 0.051 1,652 2,611 1
49 72b 2007 Fox, M. D., Raichle, M. E. Spontaneous fluctuations in brain activity observed with functional magnetic resonance imaging Nat Rev Neurosci 0.050 278 2,400 1
50 37 2000 Bush, G., Luu, P., Posner, M. I. Cognitive and emotional influences in anterior cingulate cortex Trends Cogn Sci 0.050 1,438 3,138 4
51 38 1999 Pruessmann, K. P., Weiger, M., Scheidegger, M. B., Boesiger, P. SENSE: Sensitivity encoding for fast MRI Magn Reson Med 0.049 1,326 3,130 5
52 95 2000 Cabeza, R., Nyberg, L. Imaging cognition II: An empirical review of 275 PET and fMRI studies J Cogn Neurosci 0.048 1,393 2,190 4
53 50 1996 Kreutzberg, G. W. Microglia: A sensor for pathological events in the CNS Trends Neurosci 0.048 1,057 2,750 6
54 24 2004 Smith, S. M., Jenkinson, M., Woolrich, M. W., Beckmann, C. F., Behrens, T. E. J., Johansen-Berg, H., Bannister, P. R., De Luca, M., Drobnjak, I., Flitney, D. E., Niazy, R. K., Saunders, J., Vickers, J., Zhang, Y. Y., De Stefano, N., Brady, J. M., Matthews, P. M. Advances in functional and structural MR image analysis and implementation as FSL NeuroImage 0.047 1,752 3,618 5
55 63 1994 Gurney, M. E., Pu, H. F., Chiu, A. Y., Dalcanto, M. C., Polchow, C. Y., Alexander, D. D., Caliendo, J., Hentati, A., Kwon, Y. W., Deng, H. X., Chen, W. J., Zhai, P., Sufit, R. L., Siddique, T. Motor-neuron degeneration in mice that express a human cu,zn superoxide-dismutase mutation Science 0.047 892 2,551 1
56 80 2003 Santarelli, L., Saxe, M., Gross, C., Surget, A., Battaglia, F., Dulawa, S., Weisstaub, N., Lee, J., Duman, R., Arancio, O., Belzung, C., Hen, R. Requirement of hippocampal neurogenesis for the behavioral effects of antidepressants Science 0.046 1,605 2,332 2
57 92 2007 Haass, C., Selkoe, D. J. Soluble protein oligomers in neurodegeneration: lessons from the Alzheimer's amyloid beta-peptide Nat Rev Mol Cell Bio 0.046 2,193 2,213 1
58 22 1997 Kanwisher, N., McDermott, J., Chun, M. M. The fusiform face area: A module in human extrastriate cortex specialized for face perception J Neurosci 0.046 1,097 3,756 4
59 91 2007 Ashburner, J. A fast diffeomorphic image registration algorithm NeuroImage 0.046 2,185 2,226 5
60 4 2001 Raichle, M. E., MacLeod, A. M., Snyder, A. Z., Powers, W. J., Gusnard, D. A., Shulman, G. L. A default mode of brain function Pro Natl Acad Sci U S A 0.046 1,395 4,935 3
61 77 2006 Smith, S. M., Jenkinson, M., Johansen-Berg, H., Rueckert, D., Nichols, T. E., Mackay, C. E., Watkins, K. E., Ciccarelli, O., Cader, M. Z., Matthews, P. M., Behrens, T. E. J. Tract-based spatial statistics: Voxelwise analysis of multi-subject diffusion data NeuroImage 0.045 1,955 2,376 5
62 55 2001 Good, C. D., Johnsrude, I. S., Ashburner, J., Henson, R. N. A., Friston, K. J., Frackowiak, R. S. J. A voxel-based morphometric study of ageing in 465 normal adult human brains NeuroImage 0.045 1,366 2,678 5
63 66 2001 Danbolt, N. C. Glutamate uptake Prog Neurobiol 0.045 1,366 2,496 6
64 64 1975 Hachinski, V. C., Iliff, L. D., Zilhka, E., Duboulay, G. H., McAllister, V. L., Marshall, J., Russell, R. W. R., Symon, L. Cerebral blood-flow in dementia Arch Neurol 0.044 156 2,547 1
65 75 1999 Doetsch, F., Caille, I., Lim, D. A., Garcia-Verdugo, J. M., Alvarez-Buylla, A. Subventricular zone astrocytes are neural stem cells in the adult mammalian brain Cell 0.044 1,206 2,387 6
66 100 2006 Neumann, M., Sampathu, D. M., Kwong, L. K., Truax, A. C., Micsenyi, M. C., Chou, T. T., Bruce, J., Schuck, T., Grossman, M., Clark, C. M., McCluskey, L. F., Miller, B. L., Masliah, E., Mackenzie, I. R., Feldman, H., Feiden, W., Kretzschmar, H. A., Trojanowski, J. Q., Lee, V. M. Y. Ubiquitinated TDP-43 in frontotemporal lobar degeneration and amyotrophic lateral sclerosis Science 0.043 1,877 2,138 1
67 67 2004 Petersen, R. C. Mild cognitive impairment as a diagnostic entity J Intern Med 0.042 1,541 2,495 1
68 71 2001 Petersen, R. C., Doody, R., Kurz, A., Mohs, R. C., Morris, J. C., Rabins, P. V., Ritchie, K., Rossor, M., Thal, L., Winblad, B. Current concepts in mild cognitive impairment Arch Neurol 0.041 1,259 2,412 1
69 6 1992 Hughes, A. J., Daniel, S. E., Kilford, L., Lees, A. J. Accuracy of clinical-diagnosis of idiopathic Parkinson's disease: a clinicopathological study of 100 cases J Neurol Neurosurg Psychiatry 0.041 674 4,533 1
70 76 2000 Akiyama, H., Barger, S., Barnum, S., Bradt, B., Bauer, J., Cole, G. M., Cooper, N. R., Eikelenboom, P., Emmerling, M., Fiebich, B. L., Finch, C. E., Frautschy, S., Griffin, W. S. T., Hampel, H., Hull, M., Landreth, G., Lue, L. F., Mrak, R., Mackenzie, I. R., McGeer, P. L., O'Banion, M. K., Pachter, J., Pasinetti, G., Plata-Salaman, C., Rogers, J., Rydel, R., Shen, Y., Streit, W., Strohmeyer, R., Tooyoma, I., Van Muiswinkel, F. L., Veerhuis, R., Walker, D., Webster, S., Wegrzyniak, B., Wenk, G., Wyss-Coray, T. Inflammation and Alzheimer's disease Neurobiol Aging 0.041 1,184 2,378 1
71 20 2002 Smith, S. M. Fast robust automated brain extraction Hum Brain Mapp 0.041 1,320 3,867 5
72 93 2005 McKeith, I. G., Dickson, D. W., Lowe, J., Emre, M., O'Brien, J. T., Feldman, H., Cummings, J., Duda, J. E., Lippa, C., Perry, E. K., Aarsland, D., Arai, H., Ballard, C. G., Boeve, B., Burn, D. J., Costa, D., Del Ser, T., Dubois, B., Galasko, D., Gauthier, S., Goetz, C. G., Gomez-Tortosa, E., Halliday, G., Hansen, L. A., Hardy, J., Iwatsubo, T., Kalaria, R. N., Kaufer, D., Kenny, R. A., Korczyn, A., Kosaka, K., Lee, V. M. Y., Lees, A., Litvan, I., Londos, E., Lopez, O. L., Minoshima, S., Mizuno, Y., Molina, J. A., Mukaetova-Ladinska, E. B., Pasquier, F., Perry, R. H., Schulz, J. B., Trojanowski, J. Q., Yamada, M. Diagnosis and management of dementia with Lewy bodies - Third report of the DLB consortium Neurology 0.040 1,616 2,201 1
73 54 2002 Wolpaw, J. R., Birbaumer, N., McFarland, D. J., Pfurtscheller, G., Vaughan, T. M. Brain-computer interfaces for communication and control Clin Neurophysiol 0.039 1,271 2,686 5
74 28 1992 Reynolds, B. A.,Weiss, S. Generation of neurons and astrocytes from isolated cells of the adult mammalian central-nervous-system Science 0.039 642 3,389 6
75 52 2003 Maldjian, J. A., Laurienti, P. J., Kraft, R. A., Burdette, J. H. An automated method for neuroanatomic and cytoarchitectonic atlas-based interrogation of fMRI data sets NeuroImage 0.039 1,340 2,708 5
76 1 1983 Kurtzke, J. F. Rating neurologic impairment in multiple-sclerosis: an Expanded Disability Status Scale (EDSS) Neurology 0.038 310 7,326 1
77 98 1991 Terry, R. D., Masliah, E., Salmon, D. P., Butters, N., Deteresa, R., Hill, R., Hansen, L. A., Katzman, R. Physical basis of cognitive alterations in Alzheimer's disease: synapse loss is the major correlate of cognitive impairment Ann Neurol 0.037 574 2,182 1
78 43 1998 Neary, D., Snowden, J. S., Gustafson, L., Passant, U., Stuss, D., Black, S., Freedman, M., Kertesz, A., Robert, P. H., Albert, M., Boone, K., Miller, B. L., Cummings, J., Benson, D. F. Frontotemporal lobar degeneration - A consensus on clinical diagnostic criteria Neurology 0.037 947 3,042 1
79 97 1996 Lublin, F. D., Reingold, S. C. Defining the clinical course of multiple sclerosis: Results of an international survey Neurology 0.034 753 2,183 1
80 30 1997 Schultz, W., Dayan, P., Montague, P. R. A neural substrate of prediction and reward Science 0.034 806 3,367 2
81 32 2002 Jenkinson, M., Bannister, P., Brady, M., Smith, S. Improved optimization for the robust and accurate linear registration and motion correction of brain images NeuroImage 0.033 1,079 3,274 5
82 87 1998 Lambert, M. P., Barlow, A. K., Chromy, B. A., Edwards, C., Freed, R., Liosatos, M., Morgan, T. E., Rozovsky, I., Trommer, B., Viola, K. L., Wals, P., Zhang, C., Finch, C. E., Krafft, G. A., Klein, W. L. Diffusible, nonfibrillar ligands derived from A beta(1-42) are potent central nervous system neurotoxins Pro Natl Acad Sci U S A 0.032 827 2,263 1
83 8 1996 Cox, R. W. AFNI: Software for analysis and visualization of functional magnetic resonance neuroimages Comput Biomed Res 0.032 708 4,406 5
84 99 1998 Schultz, W. Predictive reward signal of dopamine neurons J Neurophysiol 0.031 798 2,159 2
85 60 2001 Jenkinson, M., Smith, S. A global optimisation method for robust affine registration of brain images Med Image Anal 0.026 804 2,594 5
86 82 2002 Nichols, T. E., Holmes, A. P. Nonparametric permutation tests for functional neuroimaging: A primer with examples Hum Brain Mapp 0.026 834 2,296 5
87 26 1994 Cummings, J. L., Mega, M., Gray, K., Rosenbergthompson, S., Carusi, D. A., Gornbein, J. The neuropsychiatric inventory - comprehensive assessment of psychopathology in dementia Neurology 0.025 479 3,453 1
88 86 2001 Zhang, Y. Y., Brady, M., Smith, S. Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm IEEE Trans Med Imaging 0.025 765 2,265 5
89 94 1999 Klimesch, W. EEG alpha and theta oscillations reflect cognitive and memory performance: a review and analysis Brain Res Rev 0.024 659 2,196 1
90 69 1999 Pfurtscheller, G., da Silva, F. H. L. Event-related EEG/MEG synchronization and desynchronization: basic principles Clin Neurophysiol 0.023 639 2,448 5
91 68 2002 Fischl, B., Salat, D. H., Busa, E., Albert, M., Dieterich, M., Haselgrove, C., van der Kouwe, A., Killiany, R., Kennedy, D., Klaveness, S., Montillo, A., Makris, N., Rosen, B., Dale, A. M. Whole brain segmentation: Automated labeling of neuroanatomical structures in the human brain Neuron 0.021 699 2,491 5
92 90 1996 Gallese, V., Fadiga, L., Fogassi, L., Rizzolatti, G. Action recognition in the premotor cortex Brain 0.020 447 2,236 4
93 44 1994 Chaplan, S. R., Bach, F. W., Pogrel, J. W., Chung, J. M., Yaksh, T. L. Quantitative assessment of tactile allodynia in the rat paw J Neurosci Methods 0.019 366 2,948 6
94 79 1995 Forman, S. D., Cohen, J. D., Fitzgerald, M., Eddy, W. F., Mintun, M. A., Noll, D. C. Improved assessment of significant activation in functional magnetic-resonance-imaging (fMRI) - use of a cluster-size threshold Magn Reson Med 0.019 392 2,342 5
95 84 1998 Sled, J. G., Zijdenbos, A. P., Evans, A. C. A nonparametric method for automatic correction of intensity nonuniformity in MRI data IEEE Trans Med Imaging 0.018 461 2,273 5
96 72b 1992 Hardy, J. A., Higgins, G. A. Alzheimer's disease: the amyloid cascade hypothesis Science 0.017 2,382 2,400 6
97 23 1993 Morris, J. C. The Clinical Dementia Rating (CDR) - current version and scoring rules Neurology 0.016 282 3,621 1
98 39 1999 Dale, A. M., Fischl, B., Sereno, M. I. Cortical surface-based analysis - I. Segmentation and surface reconstruction NeuroImage 0.014 381 3,099 5
99 65 1994 Bechara, A., Damasio, A. R., Damasio, H., Anderson, S. W. Insensitivity to future consequences following damage to human prefrontal cortex Cognition 0.014 265 2,533 2
100 29 1995 Biswal, B., Yetkin, F. Z., Haughton, V. M., Hyde, J. S. Functional connectivity in the motor cortex of resting human brain using echo-planar MRI Magn Reson Med 0.007 152 3,377 3

Authors in bold indicated they were Highly Cited Researchers 2016 announced by Clarivate Analytics.

a

Rank A ranked the articles according to their normalized citation counts.

b

Rank B ranked the articles according to their total citation counts. Three articles have same rank as they have same number of total citations.

c

Normalized citation count of a paper = its average annual citation count of 10 years since publication / average annual neuroscience publication count of that period.

d

10-year citation count = citation count received during the first 10 years since publication.

e

These 100 articles were evaluated and categorized into six topics – (1) neurological disorders, (2) prefrontal cortex and associated emotion/reward, (3) brain network, (4) brain mapping, (5) methodology, and (6) basic neuroscience.

Major contributing journals and periods

The 100 most-cited articles were published in 37 journals (Table 2). The journals that contributed five or more of the 100 most-cited articles included Science, NeuroImage, Neurology, Nature and Proceedings of the National Academy of Sciences of the United States of America. The journals that published the 100 most-cited neuroscience articles with the highest mean normalized citation counts were Lancet, Annual Review of Immunology, Nature, Acta Neuropathologica and Trends in Neurosciences. The 100 articles were published from 1972 to 2009, and the largest proportion of them was published during 1996–2000, followed by 2001–2005 and 1991–1995. Eighty-one of these 100 articles were published within these periods (Table 3).

Table 2.

Journals in which the 100 most-cited neuroscience articles were published.

Journal Number of articles Total citation count Mean normalized citation counta ± SD
Science 13 35,523 0.060 ± 0.028
NeuroImage 11 35,491 0.044 ± 0.012
Neurology 9 30,385 0.045 ± 0.022
Nature 6 17,286 0.096 ± 0.045
Proceedings of the National Academy of Sciences of the United States of America 6 20,311 0.058 ± 0.017
Annals of Neurology 4 11,343 0.059 ± 0.016
Annual Review of Neuroscience 4 14,460 0.072 ± 0.017
Archives of Neurology 3 9,193 0.047 ± 0.008
Brain Researchb 3 8,612 0.049 ± 0.021
Magnetic Resonance in Medicine 3 8,849 0.025 ± 0.021
Nature Reviews Neuroscience 3 9,592 0.059 ± 0.008
Neuron 3 8,705 0.072 ± 0.064
Acta Neuropathologica 2 10,834 0.077 ± 0.009
Cell 2 5,266 0.050 ± 0.008
Clinical Neurophysiology 2 5,134 0.031 ± 0.011
Human Brain Mapping 2 6,163 0.033 ± 0.011
IEEE Transactions on Medical Imaging 2 4,538 0.021 ± 0.005
Neurobiology of Aging 2 5,629 0.046 ± 0.007
Trends in Neurosciences 2 5,016 0.075 ± 0.039
Annual Review of Immunology 1 4,392 0.099
Brain 1 2,236 0.020
Clinical Neurophysiologyc 1 2,533 0.031
Cognition 1 4,406 0.014
Computers and Biomedical Research 1 4,227 0.032
Journal of Cognitive Neuroscience 1 2,190 0.048
Journal of Internal Medicine 1 2,495 0.042
Journal of Neurology Neurosurgery and Psychiatry 1 4,533 0.041
Journal of Neurophysiology 1 2,159 0.031
Journal of Neuroscience 1 3,756 0.046
Journal of Neuroscience Methods 1 2,948 0.019
Lancet 1 2,431 0.105
Medical Image Analysis 1 2,594 0.026
Nature Medicine 1 3,306 0.053
Nature Reviews Molecular Cell Biology 1 2,213 0.046
Neural Computation 1 4,318 0.062
Progress in Neurobiology 1 2,496 0.045
Trends in Cognitive Sciences 1 3,138 0.050
a

Normalized citation count of a paper = its average annual citation count of 10 years since publication/average annual neuroscience publication count of that period. Hence, mean normalized citation count of a journal = average of normalized citation counts of the top 100 most-cited neuroscience articles published in that journal.

b

Two articles were published in Brain Research Reviews, merged into Brain Research since 2014.

c

Clinical Neurophysiology was named Electroencephalography and Clinical Neurophysiology before 1999.

Table 3.

Distribution of the 100 most-cited neuroscience articles by publication date.

Publication year Number of articles Mean normalized citation counta ± SD
1971–1975 2 0.064 ± 0.028
1976–1980 1 0.105
1981–1985 6 0.086 ± 0.046
1986–1990 3 0.127 ± 0.022
1991–1995 23 0.051 ± 0.029
1996–2000 30 0.047 ± 0.019
2001–2005 28 0.046 ± 0.013
2006–2010 7 0.054 ± 0.015
a

Please refer to Table 2 for the definition of normalized citation count.

Major contributing authors

A total of 533 authors contributed to these 100 most-cited articles, and 55 of them were in the latest-available list of Highly Cited Researchers 2016. Ten authors contributed to three or more of the 100 most-cited articles (Table 4), led by Stephen M. Smith, John Ashburner, and Mark Jenkinson. All of them were still contributing to the academic publication in either 2016 or 2017. Among the 533 authors, we identified two Lasker Award winners, namely Prusiner, Stanley B., and DeLong, Mahlon R. We did not identify any Nobel Prize winner.

Table 4.

Authors who contributed three or more of the 100 most-cited neuroscience articles.

Author Total articlesa (n) Role of author in Total articlesb Mean normalized citation count ± SD
First and corresponding author Co-author
Smith, Stephen M. 6 3 3 0.036 ± 0.009
Ashburner, John 4 3 1 0.050 ± 0.006
Jenkinson, Mark 4 2 2 0.038 ± 0.010
Friston, Karl J. 3 3 0.051 ± 0.006
Hansen, Lawrence A. 3 3 0.041 ± 0.004
Lublin, Fred D. 3 1 2 0.056 ± 0.021
Miller, Bruce L. 3 3 0.047 ± 0.012
Petersen, Ronald C. 3 3 0.046 ± 0.009
Raichle, Marcus E. 3 1 2 0.050 ± 0.004
Reingold, Stephen C. 3 3 0.056 ± 0.021

Authors in bold indicated they were in the list of Highly Cited Researchers 2016 announced by Clarivate Analytics.

a

Lublin and Reingold co-authored the same 3 articles. Miller and Raichle each contributed to one article that belonged to cluster 2 (articles published in higher impact factor journals). All other articles reported here belonged to cluster 1. Please refer to Figure 2 concerning definition of the clustering.

b

None of these ten authors were first author but not corresponding or corresponding but not first author; all listed authors remain active, i.e., last indexed article published in 2016 or 2017.

Five topics formed a citation network

Thirty-seven of these 100 most-cited articles were interlinked with 55 citations among them, and the citation network is displayed in Figure 1. The articles forming the network could be classified into five topics, including four scientific topics: (1) neurological disorders, e.g., Alzheimer's disease, dementia, and Parkinson's disease (red); (2) the prefrontal cortex and associated emotion/ reward (blue); (3) the brain network, including the resting state network (green); and (4) brain mapping (orange). The remaining topic was methodology, e.g., the basis of functional magnetic resonance imaging signals, data analytic, computation, and processing methods (black). It seemed that brain connectivity papers (Figure 1, green) were at the center of the citation network surrounded by method (black dot) and brain mapping (orange) papers. Meanwhile the neurological disorders (red) and emotion/reward (blue) papers were at the periphery. It should be noted that the linkages among these five topics were relatively weak (only nine inter-topic citation links, Figure 1), and there was no cross-topic author. This indicated that the citations were mainly self-connecting within each topic, e.g., within the brain network and methodology groups, respectively. These five topics together accounted for 78 out of the 100 most-cited papers. Among these 78 papers, 52.6% (41/78) of them were not within the citation network.

Figure 1.

Figure 1

Citation network among the 100 most-cited neuroscience articles. Thirty-seven articles (first author and publication year) were interlinked with one another by 55 citations, thus forming the network. These articles could be classified into five topics: (1) neurological disorders (red, n = 6); (2) the prefrontal cortex and associated emotion/reward (blue, n = 5); (3) the brain network (green, n = 5); (4) brain mapping (orange, n = 4); and (5) the methodology (black, n = 17). The bubble size indicated the citation count received within this 37-article network. Articles surrounded by a black solid line had authorship from six Highly Cited Researchers who had at least three most-cited neuroscience articles, with more details as follows: Friston has authored “Ashburner (2000) and (2005)” and “Good (2001)” Jenkinson has authored “Jenkinson (2001) and (2002)” and “Smith (2004)” Miller has authored “McKeith (1996)” Petersen did not author articles in this network; Raichle has authored “Fox (2005) and (2007)” and Smith has authored “Jenkinson (2001) and (2002),” “Smith (2002), (2004) and (2006)” and “Zhang (2001).”

We examined the remaining 63 articles not connected to the 37-article network by citations, and we discovered that 27 were related to neurological disorders, four were related to the prefrontal cortex and associated emotion/ reward, two were related to brain mapping and eight were related to methodology. Twenty-two articles were related to basic neuroscience. Overall, the articles of the five major topics (n = 78) contributed to 79.6% (neurological disorder: 34.3%, prefrontal cortex/emotion/reward: 9.0%, brain network: 5.3%, brain mapping: 6.3%, and methodology: 24.7%) of the 308,701 total citations that all of the 100 most-cited articles received. There was no cross-topic author among these included articles.

Normalized citation influenced by years of publication

We did not find a significant correlation between the adjusted journal impact factor and the adjusted citation count (r2 = −0.025, p = 0.804, Figure 2). Two-step clustering analysis found that the data points could be divided into two clusters with a silhouette value of 0.9, indicating that the clustering was distinct. The smaller cluster (cluster 2, triangles, Figure 2) consisted of 32 articles published in nine journals with relatively higher adjusted impact factors. Among these 32 articles, there were 22 Highly Cited Researchers 2016 authoring 14 papers. The six Highly Cited Researchers who authored at least three of the 100 most-cited neuroscience articles published only two articles in cluster 2. However, the normalized citation counts of articles in this cluster did not seem to differ much from those in the other cluster with a lower normalized impact factor. Also, within each cluster, there was no association detectable between the normalized citation count and the normalized impact factor.

Figure 2.

Figure 2

Plot of adjusted citation count against adjusted journal impact factor. There was no correlation between the two factors (r2 = –0.025, p = 0.804). The articles were divided into two clusters (cluster 1: circles and cluster 2: triangles), with cluster 2 (n = 32) consisting of articles published in journals with higher adjusted impact factors. There was no apparent difference in the adjusted citation count between the two clusters. In addition, there was no relationship between adjusted citation count and adjusted impact factor within each cluster (cluster 1: r2 = –0.033, p = 0.791; cluster 2: r2 = 0.079, p = 0.666). The adjusted citation count of an article = the total citation count/years of publication. The adjusted journal impact factor = the summation of annual impact factors since the publication of that particular article/years of publication.

On the contrary, there was a positive correlation between years since publication of the article and the normalized citation count (r2 = 0.373, p < 0.001, Figure 3), meaning that newer publications had a lower normalized citation count. Such a correlation followed a best-fitting linear trend line (r2 = 0.14) more closely than an exponential one (r2 = 0.06), indicating that it does not fulfill Price's law. Conversely, the annual neuroscience publication counts during the same period experienced exponential growth (r2 = 0.96).

Figure 3.

Figure 3

Plot of normalized citation count of the 100 most-cited neuroscience articles and annual neuroscience publication count against publication year. Each normalized citation count point was represented by a dot. It positively correlated (r2 = 0.373, p < 0.001) with years since publication (i.e., negatively correlated with publication year). The growth fitted a linear trend (dashed line, r2 = 0.14) better than an exponential trend (solid line, r2 = 0.06). For illustrative purpose, the annual count of neuroscience publications during the same period was plotted (each data was represented by a cross). It experienced an exponential growth (y = 3 × 10−77e0.0919x). Data were retrieved from searching “neuro*” in the PubMed database.

Discussion

Similar to previous publications (Ponce and Lozano, 2010; Kim, E. S. et al., 2016; Kim, H. J. et al., 2016; Kreutzer et al., 2017), we evaluated the top 100 most-cited neuroscience articles by convenience. From the visualized citation network (Figure 1), it could be seen that the articles investigating the brain connectivity (green), particularly the resting state, were relatively published more recently (Raichle et al., 2001; Fox et al., 2005; Fox and Raichle, 2007; Bullmore and Sporns, 2009). This was consistent with the perspectives of Friston (2011) and Snyder and Raichle (2012) that the topic of brain connectivity, particularly during the resting state, has gained popularity and importance. Besides resting state, sensory studies have also employed connectivity analyses (Yeung et al., 2016). Such a research direction, together with basic cellular and molecular neuroscience, should provide extra insight into a better understanding of neurological disorders, which the neuroscience literature has already heavily emphasized. We observed that the topic of neurological disorders contributed six papers to the set of 37 interlinked papers, whereas there were 27 papers in this topic amongst the 63 non-interlinked papers. For the topics of methodology and brain connectivity, these numbers were 17/8 and 5/0 respectively. These five brain connectivity papers with high citation counts were reporting functional connectivity when the brain was at resting state; and thus they were highly relevant to each other and interlinked. Similarly, the majority of methodology papers with high citation counts were related to each other or followed by high-citation papers from other topics, and thus appeared in the interlinked network. However, perhaps the spectrum of neurological disorders was so diverse that a proportion of these highly cited papers were not related to each other and thus not appearing in the interlinked network.

The distribution of the citations that the 100 most-cited articles received did not follow Bradford's law. Instead, it was more evenly distributed among the articles. This implied that the 100 most-cited articles were receiving relatively balanced attention and citation counts instead of having a few articles among them continuing to dominate the neuroscience literature. The top two most-cited articles revealed by the current study were published decades ago, in 1983 and 1991, respectively, but did not rank very high under the normalized citation count (76 and 19, Table 1). On the other hand, the major contributing journals that published half of the 100 most-cited articles, perhaps except two, had long histories, namely Science (since 1880), NeuroImage (since 1993), Neurology (since 1951), Nature (since 1869), Proceedings of the National Academy of Sciences of the United States of America (since 1914) and Annals of Neurology (since 1977). This phenomenon was consistent with other subfield studies (Kim, E. S. et al., 2016; Kim, H. J. et al., 2016). From Figure 2 it can be seen that the articles were divided into two clusters by adjusted journal impact factor. The smaller cluster consisted of articles published in high-impact factor journals, such as Cell, Lancet, Science, the Nature group of journals, Annual Review of Neuroscience, and Annual Review of Immunology. However, there was no apparent difference in the adjusted citation counts of articles between the two clusters. Also, in each cluster there was no relationship between the adjusted citation count and the adjusted impact factor. This is consistent to previous reports on cardiovascular research that the journal impact factor is not representative of the citation count of its individual papers (Opthof, 1997; Opthof et al., 2004).

The results from the current study indicated that the periods that contributed to the largest proportion of the 100 articles were 1991–2005, which was later than the period (1976–1995) reported by a similar survey on neurosurgery (Ponce and Lozano, 2010) but was similar to the situations for neurointervention (Kim, E. S. et al., 2016) and neuroimaging (Kim, H. J. et al., 2016). In addition, we observed a significant correlation that the newer most-cited articles received a lower normalized citation count. Though the more recently published articles must have a higher annual citation count than their older counterparts to enter the list of 100 most-cited articles, including neuroscience articles (Lefaivre et al., 2011), the reduction in their normalized citation count could be explained by the exponential growth in neuroscience publications. The implication was that over the years the growth of neuroscience publication count was larger than the growth of citation count. These analyses should have essentially provided more balanced accounts for the citation analysis compared to those evaluations based on the total citation count only, as the articles with both high total and normalized citation counts should be the ones with up-to-date relevance for current and future researchers.

The averaged citation count of the 100 most-cited neuroscience articles was 3,087, which was higher than those reported in clinical/surgical subfields such as neurosurgery (452.6, Ponce and Lozano, 2010), neruointervention (363.5, Kim, E. S. et al., 2016), and neurorehabilitation (317.0, Kreutzer et al., 2017). This difference was consistent with general bibliometric findings that basic science researches often received more citations than did specific clinical researches (Van Eck et al., 2013; Yeung et al., 2017b). It should be noted that there was also opposite information which stated that clinical papers were more frequently cited than basic science papers, at least in the field of cardiovascular research. This implied that the balance between basic and clinical science may vary amongst fields (Opthof, 2011).

Review papers accounted for 29% of the top 100 most-cited articles in the current study, which was considerably higher than the proportion identified by subfield studies, such as 16% in neuroimaging (Kim, H. J. et al., 2016), 16% in neurorehabilitation (Kreutzer et al., 2017), 11% in neurosurgery (Ponce and Lozano, 2010), and even 0% in neurointervention (Kim, E. S. et al., 2016). This could imply that other subfields of neuroscience, such as the basic and cellular neurosciences, have published crucial reviews that received a lot of citations, such as the articles ranked 2, 8, and 27 (Rank A) on the top 100 list of the current study.

Approximately 10% of the authors (55 out of 533) who contributed to the 100 most-cited neuroscience articles were listed as Highly Cited Researchers 2016. Six of the ten authors who contributed to three or more most-cited neuroscience articles were Highly Cited Researchers 2016. The most-cited neuroscience articles of these six authors were mainly published in NeuroImage (33%). Only two of the most-cited neuroscience articles authored by them belonged to cluster 2 in Figure 2 (triangles, one in Nature Reviews Neuroscience and one in Science). Within the 37-article citation network, these six Highly Cited Researchers contributed to 13 articles (black solid line, Figure 1), accounting for nine of the 14 articles in the methodology group (black dot), three of the five articles in the brain network group (green) and one of the six articles in the neurological disorder group (red). These indicated they preferably focused on the methodology and brain network, and they published in NeuroImage.

There are several intrinsic limitations of using citation analysis to evaluate the academic importance of a specific article, author or journal. First, the interpretation of citation count may not be straightforward. For instance, it was impossible to identify inappropriate citations, citations for questioning or rebuttal instead of affirmation, and selective citation behaviors, such as preferably citing articles that were written in English, were available through open access and were published in prestigious journals (Garfield, 1979). In addition, through the “snowball effect,” people tend to cite publications that are already highly cited (Kuhn, 1962; Lefaivre et al., 2011). Second, the search was limited to the WoS database. It did not record citations by textbooks, and there might exist inaccurate or missing data especially regarding very ancient publications. There are other databases, such as Scopus and Google Scholar, but they are weaker at tracking older publications (Ponce and Lozano, 2010). In addition, from the citation network visualized in the current study there were five major topics and there were no cross-topic authors. This might imply that neuroscience research has different niches and it would be worthwhile for future bibliometric studies to further evaluate specific bodies of literature within neuroscience.

Conclusions

We have identified the 100 most-cited articles in neuroscience to assess its driving force over time, and we have revealed that there were five major topics interlinked to one another, namely four scientific topics and one methodology. The list produced in the current study allows clinicians and scientists to quickly grasp important works and findings for their references.

Author contributions

AY conceived the work, acquired and analyzed data, and drafted the work. TG and WL facilitated the acquisition of data and critically revised the work. All authors have approved the final content of the manuscript.

Conflict of interest statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Acknowledgments

The authors thank Ms Samantha Kar Yan Li for her statistical assistance.

Funding. This work was substantially supported by a grant from the Research Grants Council of the Hong Kong Special Administrative Region, China (HKU 766212M).

References

  1. Bullmore E., Sporns O. (2009). Complex brain networks: graph theoretical analysis of structural and functional systems. Nat. Rev. Neurosci. 10, 186–198. 10.1038/nrn2575 [DOI] [PubMed] [Google Scholar]
  2. Fox M. D., Raichle M. E. (2007). Spontaneous fluctuations in brain activity observed with functional magnetic resonance imaging. Nat. Rev. Neurosci. 8, 700–711. 10.1038/nrn2201 [DOI] [PubMed] [Google Scholar]
  3. Fox M. D., Snyder A. Z., Vincent J. L., Corbetta M., Van Essen D. C., Raichle M. E. (2005). The human brain is intrinsically organized into dynamic, anticorrelated functional networks. Proc. Natl. Acad. Sci. U.S.A. 102, 9673–9678. 10.1073/pnas.0504136102 [DOI] [PMC free article] [PubMed] [Google Scholar]
  4. Friston K. J. (2011). Functional and effective connectivity: a review. Brain Connect. 1, 13–36. 10.1089/brain.2011.0008 [DOI] [PubMed] [Google Scholar]
  5. Garfield E. (1979). Is citation analysis a legitimate evaluation tool? Scientometrics 1, 359–375. [Google Scholar]
  6. Kim E. S., Yoon D. Y., Kim H. J., Jeon H. J., Lee J. Y., Cho B.-M., et al. (2016). Citation classics in neurointerventional research: a bibliometric analysis of the 100 most cited articles. J. Neurointerv. Surg. 9, 508–511. 10.1136/neurintsurg-2016-012399 [DOI] [PubMed] [Google Scholar]
  7. Kim H. J., Yoon D. Y., Kim E. S., Lee K., Bae J. S., Lee J.-H. (2016). The 100 most-cited articles in neuroimaging: a bibliometric analysis. Neuroimage 139, 149–156. 10.1016/j.neuroimage.2016.06.029 [DOI] [PubMed] [Google Scholar]
  8. Kreutzer J. S., Agyemang A. A., Weedon D., Zasler N., Oliver M., Sorensen A. A., et al. (2017). The top 100 cited neurorehabilitation papers. Neurorehabilitation 40, 163–174. 10.3233/NRE-161415 [DOI] [PubMed] [Google Scholar]
  9. Kuhn T. S. (1962). Historical structure and scientific discovery. Science 136, 760–764. 10.1126/science.136.3518.760 [DOI] [PubMed] [Google Scholar]
  10. Kurtzke J. F. (1983). Rating neurologic impairment in multiple-sclerosis: an Expanded Disability Status Scale (EDSS). Neurology 33, 1444–1452. 10.1212/WNL.33.11.1444 [DOI] [PubMed] [Google Scholar]
  11. Lefaivre K. A., Shadgan B., O'Brien P. J. (2011). 100 Most cited articles in orthopaedic surgery. Clin. Orthop. Relat. Res. 469, 1487–1497. 10.1007/s11999-010-1604-1 [DOI] [PMC free article] [PubMed] [Google Scholar]
  12. López-Muñoz F., Shen W. W., Shinfuku N., Pae C.-U., Castle D. J., Chung A. K., et al. (2014). A bibliometric study on second-generation antipsychotic drugs in the Asia-Pacific region. J. Exp. Clin. Med. 6, 111–117. 10.1016/j.jecm.2014.06.001 [DOI] [Google Scholar]
  13. Nowak L., Bregestovski P., Ascher P., Herbet A., Prochiantz A. (1984). Magnesium gates glutamate-activated channels in mouse central neurones. Nature 307, 462–465. 10.1038/307462a0 [DOI] [PubMed] [Google Scholar]
  14. Opthof T. (1997). Sense and nonsense about the impact factor. Cardiovasc. Res. 33, 1–7. 10.1016/S0008-6363(96)00215-5 [DOI] [PubMed] [Google Scholar]
  15. Opthof T. (2011). Differences in citation frequency of clinical and basic science papers in cardiovascular research. Med. Biol. Eng. Comput. 49, 613–621. 10.1007/s11517-011-0783-6 [DOI] [PMC free article] [PubMed] [Google Scholar]
  16. Opthof T., Coronel R., Piper H. M. (2004). Impact factors: no totum pro parte by skewness of citation. Cardiovasc. Res. 61, 201–203. 10.1016/j.cardiores.2003.11.023 [DOI] [PubMed] [Google Scholar]
  17. Ponce F. A., Lozano A. M. (2010). Highly cited works in neurosurgery. Part I: the 100 top-cited papers in neurosurgical journals: a review. J. Neurosurg. 112, 223–232. 10.3171/2009.12.JNS091599 [DOI] [PubMed] [Google Scholar]
  18. Raichle M. E., Macleod A. M., Snyder A. Z., Powers W. J., Gusnard D. A., Shulman G. L. (2001). A default mode of brain function. Proc. Natl. Acad. Sci. U.S.A. 98, 676–682. 10.1073/pnas.98.2.676 [DOI] [PMC free article] [PubMed] [Google Scholar]
  19. Snyder A. Z., Raichle M. E. (2012). A brief history of the resting state: the Washington University perspective. Neuroimage 62, 902–910. 10.1016/j.neuroimage.2012.01.044 [DOI] [PMC free article] [PubMed] [Google Scholar]
  20. Van Eck N. J., Waltman L. (2009). Software survey: VOSviewer, a computer program for bibliometric mapping. Scientometrics 84, 523–538. 10.1007/s11192-009-0146-3 [DOI] [PMC free article] [PubMed] [Google Scholar]
  21. Van Eck N. J., Waltman L., Van Raan A. F., Klautz R. J., Peul W. C. (2013). Citation analysis may severely underestimate the impact of clinical research as compared to basic research. PLoS ONE 8:e62395. 10.1371/journal.pone.0062395 [DOI] [PMC free article] [PubMed] [Google Scholar]
  22. Vickery B. C. (1948). Bradford's law of scattering. J. Doc. 4, 198–203. 10.1108/eb026133 [DOI] [Google Scholar]
  23. Yeung A. W. K., Goto T. K., Leung W. K. (2017a). A bibliometric review of research trends in neuroimaging. Curr. Sci. 112, 725–734. 10.18520/cs/v112/i04/725-734 [DOI] [Google Scholar]
  24. Yeung A. W. K., Goto T. K., Leung W. K. (2017b). The changing landscape of neuroscience research, 2006–2015: a bibliometric study. Front. Neurosci. 11:120. 10.3389/fnins.2017.00120 [DOI] [PMC free article] [PubMed] [Google Scholar]
  25. Yeung A. W. K., Tanabe H. C., Suen J. L. K., Goto T. K. (2016). Taste intensity modulates effective connectivity from the insular cortex to the thalamus in humans. Neuroimage 135, 214–222. 10.1016/j.neuroimage.2016.04.057 [DOI] [PubMed] [Google Scholar]

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