School of Health Sciences, University of Nottingham, Nottingham, England, UK.
Stud Health Technol Inform. 2022 Jun 6;290:494-498. doi: 10.3233/SHTI220125.
Bibliometric analysis provides a summary for research reported in scientific literature. This can highlight pattens and trends in academic research areas, and assist in research directions. Recent growing requirements for efficient communications and increased user learning needs in the health domain, has instigated mass exploitation of chatbots. 2148 documents were analysed to show a shift in research focus around the year 2016. The rate of documents produced in the last few years is more than the collective 20 year period, and future outputs may soar. The emergence of machine and deep learning technology with chatbot usage suggested research opportunity to be exploited in techniques which embed advanced AI abilities. Key authors still spearhead the research direction but a new wave of outputs will further disperse topics into advanced techniques such as personalised disease detections and sophisticated interface that significantly mask any artificiality to their composition.
文献计量分析为科学文献中报告的研究提供了总结。这可以突出学术研究领域的模式和趋势,并有助于研究方向。最近在健康领域对高效沟通的需求不断增长,以及用户学习需求的增加,促使了聊天机器人的大规模开发。分析了 2148 份文件,以显示 2016 年左右研究重点的转移。过去几年发表的文献数量超过了过去 20 年的总和,未来的产出可能会飙升。随着聊天机器人使用的机器和深度学习技术的出现,研究机会被建议利用嵌入先进人工智能能力的技术。主要作者仍然引领着研究方向,但新一波的产出将进一步将主题分散到高级技术中,如个性化疾病检测和复杂的界面,这大大掩盖了它们组成的任何人为因素。