Three primary areas of empirical literature are identified in this review as needing significant advancements: 3. User privacy; 2. The accuracy and dependability of the model are improved; and 3. The goals, uncertainties, and deployment challenges encountered by the application in question are succinctly stated. The study concludes by outlining potential mitigating strategies that can speed up this process and enable the implementation of this exciting field as soon as possible.
Neural implants powered by AI
Neural implants, also referred to as “brain implants,” are surgically inserted within a patient’s body. With minimal to no adverse consequences, these brain-computer interfaces, or BCIs, are designed to interact with or manipulate brain neurons. Their goal is to aid those with neurological impairments in their rehabilitation (vision, speech, and hearing).
Neural implants represent the perfect combination of neurological sciences and nanotechnology, and despite their relative freshness, they are among the fastest-growing fields of clinical study worldwide. They are used for patient rehabilitation and cognitive enhancement or restoration. Recent developments in signal processing and machine learning (ML) have bolstered the field’s research and demonstrated the substantial long-term gains in quality of life (QoL) that these scientific breakthroughs may bring about. To mitigate hearing, vision, and speech problems, respectively, scientists and AI developers are already building and testing AI-driven cochlear implants (AI-CI), AI-driven visual neural implants (AI-VNI), and AI-driven implanted speech-brain-computer interface (AI-speech-BCI).
Regretfully, the rate of technological progress has surpassed that of ethical and user-focused, non-medical discourse, giving rise to serious worries over the security of artificial intelligence and its appropriate design and application. The current study offers a forum for this discussion since the researchers who designed, tested, and reviewed the tools offer the ideal focal group for talking about these difficulties and coming up with solutions. It compiles these findings into mitigation suggestions that might be implemented.
Concerning the study
This qualitative study attempts to investigate various viewpoints from both past and present neurotechnology professionals, especially those who are currently working on Cis, VNIs, and speech-BCI development. Expertise in neurologically related academic research, rehabilitation, product design and marketing, and social and psychological fields were taken into consideration while choosing study participants. Nineteen of the selected individuals (N = 22) who gave written consent were enrolled in the project and included in the qualitative synthesis since they provided complete information, including attending all required FG sessions.
“Because of the wide variety of disciplines relevant to the development of the VNI, we organized two focus groups including developers of VNIs (FG2 and FG3). FG2 included respondents involved in the early stages of development (i.e., hardware- and software development and preclinical trials). FG3 included respondents that had been involved in the clinical implementation of a retinal implant and who were likely to be involved in the future clinical trials of the VNI.”
With nine to twelve participants, each semi-structured focus group (FG) lasted an average of eighty-eight minutes. Although briefly introduced, conversation topics were not predetermined, allowing developers to offer their thoughts based on their knowledge regarding the difficulties facing the sector and possible solutions. Each of the three major concerns found during the FGs had their data analyzed thematically.
Results and recommendations of the study
Three primary topics emerged from the three FGs in the current study: 1. Design considerations; 2. Clinical trial challenges; and 3. Overall effects (especially regarding privacy and morality) on users and society.
The necessity for future AI-driven technology to perform noticeably better than the “gold standards” of current neurological rehabilitation implementations (such as hearing aids) was emphasized by the respondents. This entails performance and user-friendliness enhancements before these technologies offer benefits that are perceived by society, which will support their adoption. The accuracy and dependability of these cutting-edge technologies were further discussed, and participants agreed that user safety and device dependability had to be taken into consideration during the entire design process.
To answer and address the majority of these difficulties, more clinical trials are needed. Clinical trials involving these invasive, surgically implanted devices unfortunately come with their own set of challenges: 1. Surgical risks that must take into account the trade-offs between accuracy and generalizability in invasive brain surgery; 2. participant selection that must be done carefully after explicit informed consent based on clinical symptoms, sociodemographic information, and medical histories; and 3. post-trail abandonment that may have a much greater negative impact on the patient’s promptly trial termination because of the semi-permanent nature of the implants and the location of installation (the patient’s brain).
Last but not least, sociological data showed that respondents are worried about the moral and ethical implications of these technologies for both their users and society at large. For example, the use of audio-enhancing implants may enable patients to inadvertently listen in on people nearby, jeopardizing the privacy of their neighbors and, consequently, society. Making sure that individuals (users and neighbors alike) maintain their sense of privacy and safety is crucial, especially considering the crucial role that social acceptance plays in the success of this (and all) innovative endeavors.
“Our study has shown that tension arises between the potential benefits of AI in these devices in terms of efficiency and improved options for interpretation of complex data input, and the potential negative effects on user safety, authenticity, and mental privacy. While a well-functioning device would increase independence and therefore promote users’ autonomy, the potential negative effects may simultaneously harm users’ autonomy. Though important suggestions have been made to mitigate these issues, including recommendations for the development of neurorights and mechanisms for improved user control, more ethical analysis is required to further explore this tension.”
For more information: Developer perspectives on the ethics of AI-driven neural implants: a qualitative study, Scientific reports, https://doi.org/10.1038/s41598-024-58535-4
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