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Coronavirus Research at a Glance | |
admin | |
2020-05-06 | |
发布年 | 2020 |
语种 | 英语 |
国家 | 法国 |
领域 | 地球科学 |
正文(英文) |
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Map of 1,000 keywords from a body of texts on the coronavirus taken from PubMed (6,560 documents published between 1 January 2000 and 5 February 2020).
The Paris-based ISC-PIF Institute has published a series of maps generated from automated analysis of all scientific publications devoted to Covid-19. Its director explains the value of these visualisations for research and the public.
Your laboratory studies multi-agent systems (social media, insect colonies, neural networks, traffic jams, etc.) in which the interaction of crowds produces a well-organised overall behaviour. Among these systems, you have taken an interest in researchers and their scientific production, and in particular made interactive maps for coronavirus research available to the public.1 What exactly is involved? How are these maps constructed? Once these keywords were identified, we tried to determine how they were connected, that is to say what is the probability that one of these terms is associated with another by a researcher in an article – in another field, ‘cancer’ has a high chance of being linked with ‘tobacco’, for instance. By measuring this probability for each pair of words in all of the articles, we revealed groups that interacted more actively with one another than with the remainder of the terms studied. These groups define none other than the major research themes often investigated by specific communities (coronavirus among humans or among pigs, symptoms of the illness, etc.). On the map, in which each dot represents a term – the larger the dot, the more central it is in the network of relations between terms – and where associated words are connected by lines, these communities clearly stand out in the form of clusters of different colours. What concrete information do they provide? The other advantage is that these maps foster collaboration among researchers. By explicitly showing the links between terms used by different communities, they can prompt the scientific community to exchange ideas to move forward. Indeed, groundbreaking discoveries are often made at the interface of disciplines. To this end, on 5 April I produced another map that offers a broad synthesis of research on antivirals, based on 17,000 papers published over the last twenty years. The coronavirus features as one field among others, and the idea is to visualise work being conducted elsewhere (herpes, cancer) to potentially find answers to Covid-19. Have these maps already led to any important application concerning the Covid-19 crisis? Can the general public also make use of such visualisations? This tool enables even non-experts like myself to get an idea, in light of scientific studies, of the issues surrounding the use of the molecule. A search for the term ‘toxicity’ in this map reveals that the relevant research relates to cardiovascular disorders and eye conditions (retinopathy). Close reading of the publications shows that harmful effects seem to be primarily observed after a long period of use. This of course does not mean that medical opinion on the potential dangers of this medicine is superfluous, but simply that the map helps to gain a better grasp of what the scientific debate is about. Could your maps have other uses? Furthermore, we are working to make this software a collaborative instrument. The maps will soon be created in groups, with each person providing their expertise by adding more relevant expressions and documents, or on the contrary removing some of them. The idea is to produce, in a genuinely cumulative manner, maps that are not frozen but can evolve and improve depending on the context and scientific production. Footnotes
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来源平台 | Centre national de la recherche scientifique |
文献类型 | 新闻 |
条目标识符 | http://119.78.100.173/C666/handle/2XK7JSWQ/248080 |
专题 | 地球科学 |
推荐引用方式 GB/T 7714 | admin. Coronavirus Research at a Glance. 2020. |
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