植入式神经语音解码器:最新进展,未来挑战。

IF 3.7
Soufiane Jhilal, Silvia Marchesotti, Bertrand Thirion, Brigitte Soudrie, Anne-Lise Giraud, Emmanuel Mandonnet
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引用次数: 0

摘要

闭锁综合征(LIS)患者的社交生活受到其沟通困难的显著影响。因此,研究人员已经开始探索如何从大脑皮层直接记录的神经信号中解码预期的语言。2000年代末的第一批研究报告了适度的解码准确性。然而,由于机器学习的快速发展,最近的研究已经达到了足够高的解码精度,使人们对神经语音解码器在不久的将来的临床效益感到乐观。我们首先讨论了在LIS患者中植入神经语音解码器的选择标准,强调了与脑干中风和肌萎缩侧索硬化症等疾病相关的优点和缺点。我们研究了神经语音解码器的关键设计考虑因素,展示了如何成功植入需要仔细优化多个相互关联的因素,包括语言表示、皮质记录区域、神经特征、训练范式和解码算法。然后讨论当前的方法,并为解码器设计和实现的潜在改进提供论据。最后,我们探讨了谁应该学习使用神经语音解码器的关键问题-患者,机器,或两者。总之,虽然神经语音解码器为改善LIS患者的沟通提供了有希望的途径,但跨越神经康复、神经科学、神经工程和伦理学的跨学科努力对于设计未来的临床试验至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implantable Neural Speech Decoders: Recent Advances, Future Challenges.

The social life of locked-in syndrome (LIS) patients is significantly impacted by their difficulties to communicate. Consequently, researchers have started to explore how to decode intended speech from neural signals directly recorded from the cortex. The first studies in the late 2000s reported modest decoding accuracies. However, thanks to fast advances in machine learning, the most recent studies have reached decoding accuracies high enough to be optimistic about the clinical benefit of neural speech decoders in the near future. We first discuss the selection criteria for implanting a neural speech decoder in LIS patients, emphasizing the advantages and disadvantages associated with conditions such as brainstem stroke and amyotrophic lateral sclerosis. We examine the key design considerations for neural speech decoders, demonstrating how successful implantation requires careful optimization of multiple interrelated factors including language representation, cortical recording areas, neural features, training paradigms, and decoding algorithms. We then discuss current approaches and provide arguments for potential improvements in decoder design and implementation. Finally, we explore the crucial question of who should learn to use the neural speech decoder-the patient, the machine, or both. In conclusion, while neural speech decoders present promising avenues for improving communication for LIS patients, interdisciplinary efforts spanning neurorehabilitation, neuroscience, neuroengineering, and ethics are imperative to design future clinical trials.

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