Tamara Raschka, Zexin Li, Heiko Gaßner, Zacharias Kohl, Jelena Jukic, Franz Marxreiter, Holger Fröhlich
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引用次数: 0
Abstract
Background
Huntington’s disease (HD) is a progressive neurodegenerative disease caused by a CAG trinucleotide expansion in the huntingtin gene. The length of the CAG repeat is inversely correlated with disease onset. HD is characterized by hyperkinetic movement disorder, psychiatric symptoms, and cognitive deficits, which greatly impact patient’s quality of life. Despite this clear genetic course, high variability of HD patients’ symptoms can be observed. Current clinical diagnosis of HD solely relies on the presence of motor signs, disregarding the other important aspects of the disease. By incorporating a broader approach that encompasses motor as well as non-motor aspects of HD, predictive, preventive, and personalized (3P) medicine can enhance diagnostic accuracy and improve patient care.
Methods
Multisymptom disease trajectories of HD patients collected from the Enroll-HD study were first aligned on a common disease timescale to account for heterogeneity in disease symptom onset and diagnosis. Following this, the aligned disease trajectories were clustered using the previously published Variational Deep Embedding with Recurrence (VaDER) algorithm and resulting progression subtypes were clinically characterized. Lastly, an AI/ML model was learned to predict the progression subtype from only first visit data or with data from additional follow-up visits.
Results
Results demonstrate two distinct subtypes, one large cluster (n = 7122) showing a relative stable disease progression and a second, smaller cluster (n = 411) showing a dramatically more progressive disease trajectory. Clinical characterization of the two subtypes correlates with CAG repeat length, as well as several neurobehavioral, psychiatric, and cognitive scores. In fact, cognitive impairment was found to be the major difference between the two subtypes. Additionally, a prognostic model shows the ability to predict HD subtypes from patients’ first visit only.
Conclusion
In summary, this study aims towards the paradigm shift from reactive to preventive and personalized medicine by showing that non-motor symptoms are of vital importance for predicting and categorizing each patients’ disease progression pattern, as cognitive decline is oftentimes more reflective of HD progression than its motor aspects. Considering these aspects while counseling and therapy definition will personalize each individuals’ treatment. The ability to provide patients with an objective assessment of their disease progression and thus a perspective for their life with HD is the key to improving their quality of life. By conducting additional analysis on biological data from both subtypes, it is possible to gain a deeper understanding of these subtypes and uncover the underlying biological factors of the disease. This greatly aligns with the goal of shifting towards 3P medicine.
背景亨廷顿氏病(HD)是一种进行性神经退行性疾病,由亨廷顿基因中的 CAG 三核苷酸扩增引起。CAG重复的长度与疾病的发病成反比。HD 的特征是运动功能亢进、精神症状和认知障碍,这极大地影响了患者的生活质量。尽管有明确的遗传过程,但仍可观察到 HD 患者症状的高度变异性。目前对 HD 的临床诊断仅仅依赖于运动症状的出现,而忽略了疾病的其他重要方面。通过采用一种涵盖 HD 运动和非运动方面的更广泛的方法,预测、预防和个性化(3P)医学可提高诊断准确性并改善患者护理。方法首先将从 Enroll-HD 研究中收集的 HD 患者的多症状疾病轨迹按照共同的疾病时间尺度进行排列,以考虑疾病症状发作和诊断的异质性。然后,使用之前发布的变异深度嵌入与复发(VaDER)算法对对齐后的疾病轨迹进行聚类,并对由此产生的进展亚型进行临床特征描述。最后,我们学习了一个人工智能/ML 模型,以根据首次就诊数据或其他随访数据预测疾病进展亚型。结果结果显示了两种不同的亚型,一个大型群组(n = 7122)显示出相对稳定的疾病进展,而第二个较小的群组(n = 411)则显示出显著进展的疾病轨迹。这两种亚型的临床特征与 CAG 重复长度以及一些神经行为、精神和认知评分相关。事实上,认知障碍是两种亚型的主要区别。总之,本研究旨在实现从反应性医学到预防性和个性化医学的范式转变,表明非运动症状对于预测和分类每位患者的疾病进展模式至关重要,因为认知能力下降往往比运动能力下降更能反映 HD 的进展情况。在咨询和治疗定义时考虑到这些方面将使每个人的治疗个性化。为患者提供疾病进展的客观评估,从而为他们的 HD 生活提供一个视角,是提高他们生活质量的关键。通过对两种亚型的生物数据进行更多分析,有可能对这些亚型有更深入的了解,并发现疾病的潜在生物因素。这在很大程度上符合向 3P 医学转变的目标。
期刊介绍:
PMA Journal is a journal of predictive, preventive and personalized medicine (PPPM). The journal provides expert viewpoints and research on medical innovations and advanced healthcare using predictive diagnostics, targeted preventive measures and personalized patient treatments. The journal is indexed by PubMed, Embase and Scopus.