Polish-Japanese Academy of Information Technology, Faculty of Computer Science, 86 Koszykowa Street, 02-008 Warsaw, Poland.
UMass Chan Medical School, Department of Neurology, 65 Lake Avenue, Worcester, MA 01655, USA.
Sensors (Basel). 2024 Feb 29;24(5):1572. doi: 10.3390/s24051572.
Neurodegenerative diseases (NDs) such as Alzheimer's Disease (AD) and Parkinson's Disease (PD) are devastating conditions that can develop without noticeable symptoms, causing irreversible damage to neurons before any signs become clinically evident. NDs are a major cause of disability and mortality worldwide. Currently, there are no cures or treatments to halt their progression. Therefore, the development of early detection methods is urgently needed to delay neuronal loss as soon as possible. Despite advancements in Medtech, the early diagnosis of NDs remains a challenge at the intersection of medical, IT, and regulatory fields. Thus, this review explores "digital biomarkers" (tools designed for remote neurocognitive data collection and AI analysis) as a potential solution. The review summarizes that recent studies combining AI with digital biomarkers suggest the possibility of identifying pre-symptomatic indicators of NDs. For instance, research utilizing convolutional neural networks for eye tracking has achieved significant diagnostic accuracies. ROC-AUC scores reached up to 0.88, indicating high model performance in differentiating between PD patients and healthy controls. Similarly, advancements in facial expression analysis through tools have demonstrated significant potential in detecting emotional changes in ND patients, with some models reaching an accuracy of 0.89 and a precision of 0.85. This review follows a structured approach to article selection, starting with a comprehensive database search and culminating in a rigorous quality assessment and meaning for NDs of the different methods. The process is visualized in 10 tables with 54 parameters describing different approaches and their consequences for understanding various mechanisms in ND changes. However, these methods also face challenges related to data accuracy and privacy concerns. To address these issues, this review proposes strategies that emphasize the need for rigorous validation and rapid integration into clinical practice. Such integration could transform ND diagnostics, making early detection tools more cost-effective and globally accessible. In conclusion, this review underscores the urgent need to incorporate validated digital health tools into mainstream medical practice. This integration could indicate a new era in the early diagnosis of neurodegenerative diseases, potentially altering the trajectory of these conditions for millions worldwide. Thus, by highlighting specific and statistically significant findings, this review demonstrates the current progress in this field and the potential impact of these advancements on the global management of NDs.
神经退行性疾病(NDs),如阿尔茨海默病(AD)和帕金森病(PD),是一些破坏性疾病,可能在没有明显症状的情况下发展,导致神经元在任何临床迹象出现之前发生不可逆转的损伤。NDs 是全球范围内导致残疾和死亡的主要原因。目前,尚无治愈或治疗方法可以阻止其进展。因此,迫切需要开发早期检测方法,以尽快延缓神经元的损失。尽管在医疗技术方面取得了进展,但 NDs 的早期诊断仍然是医学、信息技术和监管领域交叉点上的一个挑战。因此,本综述探讨了“数字生物标志物”(设计用于远程神经认知数据收集和人工智能分析的工具)作为一种潜在的解决方案。该综述总结了最近将人工智能与数字生物标志物相结合的研究表明,有可能识别出 NDs 的无症状前指标。例如,利用卷积神经网络进行眼动追踪的研究已经取得了显著的诊断准确性。ROC-AUC 得分高达 0.88,表明该模型在区分 PD 患者和健康对照组方面具有较高的性能。同样,通过工具进行面部表情分析的进展在检测 ND 患者的情绪变化方面具有显著的潜力,一些模型的准确性达到 0.89,精确性达到 0.85。本综述遵循结构化的文章选择方法,从全面的数据库搜索开始,最终进行严格的质量评估,并对不同方法对 NDs 的意义进行了总结。该过程通过 10 个表格可视化,其中包含 54 个参数,描述了不同的方法及其对理解 ND 变化中各种机制的影响。然而,这些方法也面临着与数据准确性和隐私问题相关的挑战。为了解决这些问题,本综述提出了一些策略,强调了需要进行严格验证并快速将其整合到临床实践中的必要性。这种整合可以改变 ND 诊断,使早期检测工具更具成本效益,并在全球范围内更容易获得。总之,本综述强调了将经过验证的数字健康工具纳入主流医疗实践的紧迫性。这一整合可能预示着神经退行性疾病早期诊断的新时代的到来,有可能改变全球范围内数百万人的疾病轨迹。因此,通过突出具体和具有统计学意义的发现,本综述展示了该领域的当前进展以及这些进展对全球 NDs 管理的潜在影响。