Valerio José E, Aguirre Vera Guillermo de Jesús, Fernandez Gomez Maria P, Zumaeta Jorge, Alvarez-Pinzon Andrés M
Neurosurgery Innovation and Technology Division, Latinoamerica Valerio Foundation, Weston, FL 33331, USA.
Department of Neurological Surgery, Palmetto General Hospital, Miami, FL 33016, USA.
Brain Sci. 2025 May 9;15(5):494. doi: 10.3390/brainsci15050494.
Parkinson's disease (PD) is a progressive neurodegenerative disorder marked by motor and non-motor dysfunctions that severely compromise patients' quality of life. While pharmacological treatments provide symptomatic relief in the early stages, advanced PD often requires neurosurgical interventions, such as deep brain stimulation (DBS) and focused ultrasound (FUS), for effective symptom management. A significant challenge in optimizing these therapeutic strategies is the early identification and recruitment of suitable candidates for clinical trials. This review explores the role of artificial intelligence (AI) in advancing neurosurgical and neuroscience interventions for PD, highlighting the ways in which AI-driven platforms are transforming clinical trial design and patient selection. Machine learning (ML) algorithms and big data analytics enable precise patient stratification, risk assessment, and outcome prediction, accelerating the development of novel therapeutic approaches. These innovations improve trial efficiency, broaden treatment options, and enhance patient outcomes. However, integrating AI into clinical trial frameworks presents challenges such as data standardization, regulatory hurdles, and the need for extensive validation. Addressing these obstacles will require collaboration among neurosurgeons, neuroscientists, AI specialists, and regulatory bodies to establish ethical and effective guidelines for AI-driven technologies in PD neurosurgical research. This paper emphasizes the transformative potential of AI and technological innovation in shaping the future of PD neurosurgery, ultimately enhancing therapeutic efficacy and patient care.
帕金森病(PD)是一种进行性神经退行性疾病,其特征为运动和非运动功能障碍,严重影响患者的生活质量。虽然药物治疗在早期可缓解症状,但晚期帕金森病通常需要神经外科干预,如深部脑刺激(DBS)和聚焦超声(FUS),以有效控制症状。优化这些治疗策略的一个重大挑战是早期识别和招募合适的临床试验候选人。本综述探讨了人工智能(AI)在推进帕金森病神经外科和神经科学干预方面的作用,强调了人工智能驱动平台如何改变临床试验设计和患者选择。机器学习(ML)算法和大数据分析能够实现精确的患者分层、风险评估和结果预测,加速新型治疗方法的开发。这些创新提高了试验效率,拓宽了治疗选择,并改善了患者预后。然而,将人工智能整合到临床试验框架中存在数据标准化、监管障碍以及广泛验证需求等挑战。解决这些障碍需要神经外科医生、神经科学家、人工智能专家和监管机构之间的合作,为帕金森病神经外科研究中人工智能驱动的技术制定道德且有效的指导方针。本文强调了人工智能和技术创新在塑造帕金森病神经外科未来方面的变革潜力,最终提高治疗效果并改善患者护理。