Department of Bioengineering, University of Pittsburgh, Pittsburgh, PA, USA.
Rehab Neural Engineering Labs, University of Pittsburgh, Pittsburgh, PA, USA.
J Physiol. 2023 Aug;601(15):3103-3121. doi: 10.1113/JP282884. Epub 2022 Dec 27.
Seventy years ago, Hodgkin and Huxley published the first mathematical model to describe action potential generation, laying the foundation for modern computational neuroscience. Since then, the field has evolved enormously, with studies spanning from basic neuroscience to clinical applications for neuromodulation. Computer models of neuromodulation have evolved in complexity and personalization, advancing clinical practice and novel neurostimulation therapies, such as spinal cord stimulation. Spinal cord stimulation is a therapy widely used to treat chronic pain, with rapidly expanding indications, such as restoring motor function. In general, simulations contributed dramatically to improve lead designs, stimulation configurations, waveform parameters and programming procedures and provided insight into potential mechanisms of action of electrical stimulation. Although the implementation of neural models are relentlessly increasing in number and complexity, it is reasonable to ask whether this observed increase in complexity is necessary for improved accuracy and, ultimately, for clinical efficacy. With this aim, we performed a systematic literature review and a qualitative meta-synthesis of the evolution of computational models, with a focus on complexity, personalization and the use of medical imaging to capture realistic anatomy. Our review showed that increased model complexity and personalization improved both mechanistic and translational studies. More specifically, the use of medical imaging enabled the development of patient-specific models that can help to transform clinical practice in spinal cord stimulation. Finally, we combined our results to provide clear guidelines for standardization and expansion of computational models for spinal cord stimulation.
七十年前, Hodgkin 和 Huxley 发表了第一篇描述动作电位产生的数学模型,为现代计算神经科学奠定了基础。从那时起,该领域取得了巨大的发展,研究范围从基础神经科学扩展到神经调节的临床应用。神经调节的计算机模型在复杂性和个性化方面不断发展,推进了临床实践和新型神经刺激疗法,如脊髓刺激。脊髓刺激是一种广泛用于治疗慢性疼痛的疗法,适应症迅速扩大,例如恢复运动功能。总的来说,模拟极大地促进了引导设计、刺激配置、波形参数和编程程序的改进,并深入了解了电刺激的潜在作用机制。尽管神经模型的实施数量和复杂性不断增加,但有理由问这种观察到的复杂性增加是否对提高准确性,最终对临床疗效是必要的。为此,我们进行了系统的文献回顾和计算模型进化的定性荟萃分析,重点关注复杂性、个性化以及使用医学成像来捕捉真实的解剖结构。我们的综述表明,模型复杂性和个性化的增加提高了机械和转化研究。更具体地说,医学成像的使用使开发患者特异性模型成为可能,这有助于改变脊髓刺激的临床实践。最后,我们将结果结合起来,为脊髓刺激的计算模型的标准化和扩展提供了明确的指导方针。