Allen Ben
Department of Psychology, University of Kansas, Lawrence, KS 66045, USA.
Biomedicines. 2023 Mar 3;11(3):771. doi: 10.3390/biomedicines11030771.
Deep brain stimulation is a treatment that controls symptoms by changing brain activity. The complexity of how to best treat brain dysfunction with deep brain stimulation has spawned research into artificial intelligence approaches. Machine learning is a subset of artificial intelligence that uses computers to learn patterns in data and has many healthcare applications, such as an aid in diagnosis, personalized medicine, and clinical decision support. Yet, how machine learning models make decisions is often opaque. The spirit of explainable artificial intelligence is to use machine learning models that produce interpretable solutions. Here, we use topic modeling to synthesize recent literature on explainable artificial intelligence approaches to extracting domain knowledge from machine learning models relevant to deep brain stimulation. The results show that patient classification (i.e., diagnostic models, precision medicine) is the most common problem in deep brain stimulation studies that employ explainable artificial intelligence. Other topics concern attempts to optimize stimulation strategies and the importance of explainable methods. Overall, this review supports the potential for artificial intelligence to revolutionize deep brain stimulation by personalizing stimulation protocols and adapting stimulation in real time.
深部脑刺激是一种通过改变大脑活动来控制症状的治疗方法。如何利用深部脑刺激最佳地治疗脑功能障碍的复杂性催生了对人工智能方法的研究。机器学习是人工智能的一个子集,它利用计算机从数据中学习模式,并且在医疗保健领域有许多应用,比如辅助诊断、个性化医疗和临床决策支持。然而,机器学习模型如何做出决策往往是不透明的。可解释人工智能的精神是使用能够产生可解释解决方案的机器学习模型。在此,我们使用主题建模来综合近期关于可解释人工智能方法的文献,这些方法用于从与深部脑刺激相关的机器学习模型中提取领域知识。结果表明,患者分类(即诊断模型、精准医学)是采用可解释人工智能的深部脑刺激研究中最常见的问题。其他主题涉及优化刺激策略的尝试以及可解释方法的重要性。总体而言,本综述支持人工智能通过个性化刺激方案和实时调整刺激来彻底改变深部脑刺激的潜力。