Public Perception of the Brain-Computer Interface Based on a Decade of Data on X: Mixed Methods Study.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Mohammed A Almanna, Lior M Elkaim, Mohammed A Alvi, Jordan J Levett, Ben Li, Muhammad Mamdani, Mohammed Al-Omran, Naif M Alotaibi
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引用次数: 0

Abstract

Background: Given the recent evolution and achievements in brain-computer interface (BCI) technologies, understanding public perception and sentiments toward such novel technologies is important for guiding their communication strategies in marketing and education.

Objective: This study aims to explore the public perception of BCI technology by examining posts on X (formerly known as Twitter) using natural language processing (NLP) methods.

Methods: A mixed methods study was conducted on BCI-related posts from January 2010 to December 2021. The dataset included 65,340 posts from 38,962 unique users. This dataset was subject to a detailed NLP analysis including VADER, TextBlob, and NRCLex libraries, focusing on quantifying the sentiment (positive, neutral, and negative), the degree of subjectivity, and the range of emotions expressed in the posts. The temporal dynamics of sentiments were examined using the Mann-Kendall trend test to identify significant trends or shifts in public interest over time, based on monthly incidence. We used the Sentiment.ai tool to infer users' demographics by matching predefined attributes in users' profile biographies to certain demographic groups. We used the BERTopic tool for semantic understanding of discussions related to BCI.

Results: The analysis showed a significant rise in BCI discussions in 2017, coinciding with Elon Musk's announcement of Neuralink. Sentiment analysis revealed that 59.38% (38,804/65,340) of posts were neutral, 32.75% (21,404/65,340) were positive, and 7.85% (5132/65,340) were negative. The average polarity score demonstrated a generally positive trend over the course of the study (Mann-Kendall Statistic=0.266; τ=0.266; P<.001). Most posts were objective (50,847/65,340, 77.81%), with a smaller proportion being subjective (14,393/65,340, 22.02%). Biographic analysis showed that the "broadcasting" group contributed the most to BCI discussions (17,803/58,030, 30.67%), while the "scientific" group, contributing 27.58% (n=16,005), had the highest overall engagement metrics. The emotional analysis identified anticipation (score = 10,802/52,618, 20.52%), trust (score=9244/52,618, 17.56%), and fear (score=7344/52,618, 13.95%) as the most prominent emotions in BCI discussions. Key topics included Neuralink and Elon Musk, practical applications of BCIs, and the potential for gamification.

Conclusions: This NLP-assisted study provides a decade-long analysis of public perception of BCI technology based on data from X. Overall, sentiments were neutral yet cautiously apprehensive, with anticipation, trust, and fear as the dominant emotions. The presence of fear underscores the need to address ethical concerns, particularly around data privacy, safety, and transparency. Transparent communication and ethical considerations are essential for building public trust and reducing apprehension. Influential figures and positive clinical outcomes, such as advancements in neuroprosthetics, could enhance favorable perceptions. The gamification of BCI, particularly in gaming and entertainment, also offers potential for wider public engagement and adoption. However, public perceptions on X may differ from other platforms, affecting the broader interpretation of results. Despite these limitations, the findings provide valuable insights for guiding future BCI developments, policy making, and communication strategies.

基于十年X数据的公众对脑机接口的认知:混合方法研究。
背景:鉴于脑机接口(BCI)技术的最新发展和成就,了解公众对这些新技术的看法和情绪对于指导他们在营销和教育中的传播策略非常重要。目的:本研究旨在通过使用自然语言处理(NLP)方法检查X(以前称为Twitter)上的帖子,探讨公众对脑机接口技术的看法。方法:采用混合方法对2010年1月至2021年12月的脑机接口相关岗位进行研究。该数据集包括来自38,962个独立用户的65,340个帖子。对该数据集进行了详细的NLP分析,包括VADER、TextBlob和NRCLex库,重点是量化情绪(积极、中性和消极)、主观性程度和帖子中表达的情绪范围。使用Mann-Kendall趋势测试来检查情绪的时间动态,以确定基于月发生率的公共利益随时间的显著趋势或变化。我们使用了Sentiment。Ai工具,通过匹配用户个人资料传记中的预定义属性来推断用户的人口统计信息。我们使用BERTopic工具对与脑机接口相关的讨论进行语义理解。结果:分析显示,2017年关于BCI的讨论显著增加,恰逢埃隆·马斯克宣布成立Neuralink。情绪分析结果显示,59.38%(38804 / 65340)的帖子为中性,32.75%(21404 / 65340)的帖子为正面,7.85%(5132/ 65340)的帖子为负面。平均极性得分在整个研究过程中呈现出总体积极的趋势(Mann-Kendall统计量=0.266;τ= 0.266;结论:这项nlp辅助研究基于x的数据,对公众对BCI技术的看法进行了长达十年的分析。总体而言,情绪是中性的,但谨慎忧虑,预期、信任和恐惧是主导情绪。恐惧的存在凸显了解决道德问题的必要性,特别是在数据隐私、安全和透明度方面。透明的沟通和道德考虑对于建立公众信任和减少忧虑至关重要。有影响力的人物和积极的临床结果,如神经义肢的进步,可以增强好感。脑机接口的游戏化,特别是在游戏和娱乐领域,也为更广泛的公众参与和采用提供了潜力。然而,公众对X的看法可能与其他平台不同,从而影响对结果的更广泛解释。尽管存在这些局限性,但研究结果为指导未来脑机接口的发展、政策制定和沟通策略提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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