Stroke recovery phenotyping through network trajectory approaches and graph neural networks.

Q1 Computer Science Brain Informatics Pub Date : 2022-06-19 DOI:10.1186/s40708-022-00160-w
Sanjukta Krishnagopal, Keith Lohse, Robynne Braun
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引用次数: 1

Abstract

Stroke is a leading cause of neurological injury characterized by impairments in multiple neurological domains including cognition, language, sensory and motor functions. Clinical recovery in these domains is tracked using a wide range of measures that may be continuous, ordinal, interval or categorical in nature, which can present challenges for multivariate regression approaches. This has hindered stroke researchers' ability to achieve an integrated picture of the complex time-evolving interactions among symptoms. Here, we use tools from network science and machine learning that are particularly well-suited to extracting underlying patterns in such data, and may assist in prediction of recovery patterns. To demonstrate the utility of this approach, we analyzed data from the NINDS tPA trial using the Trajectory Profile Clustering (TPC) method to identify distinct stroke recovery patterns for 11 different neurological domains at 5 discrete time points. Our analysis identified 3 distinct stroke trajectory profiles that align with clinically relevant stroke syndromes, characterized both by distinct clusters of symptoms, as well as differing degrees of symptom severity. We then validated our approach using graph neural networks to determine how well our model performed predictively for stratifying patients into these trajectory profiles at early vs. later time points post-stroke. We demonstrate that trajectory profile clustering is an effective method for identifying clinically relevant recovery subtypes in multidimensional longitudinal datasets, and for early prediction of symptom progression subtypes in individual patients. This paper is the first work introducing network trajectory approaches for stroke recovery phenotyping, and is aimed at enhancing the translation of such novel computational approaches for practical clinical application.

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基于网络轨迹和图神经网络的脑卒中恢复表型分析。
中风是神经损伤的主要原因,其特征是多个神经系统领域的损伤,包括认知、语言、感觉和运动功能。这些领域的临床恢复是使用广泛的测量方法进行跟踪的,这些测量方法可能是连续的、有序的、间隔的或分类的,这可能对多变量回归方法提出挑战。这阻碍了中风研究人员对症状之间复杂的随时间变化的相互作用的综合描述。在这里,我们使用来自网络科学和机器学习的工具,这些工具特别适合于提取此类数据中的潜在模式,并可能有助于预测恢复模式。为了证明该方法的实用性,我们使用轨迹轮廓聚类(TPC)方法分析了NINDS tPA试验的数据,以识别5个离散时间点11个不同神经系统域的不同中风恢复模式。我们的分析确定了3种不同的中风轨迹特征,这些特征与临床相关的中风综合征相一致,具有不同的症状群和不同程度的症状严重程度。然后,我们使用图神经网络验证了我们的方法,以确定我们的模型在中风后早期和后期时间点将患者分层到这些轨迹剖面的预测效果。我们证明,轨迹分布聚类是一种有效的方法,可以在多维纵向数据集中识别临床相关的恢复亚型,并对个体患者的症状进展亚型进行早期预测。本文首次介绍了脑卒中恢复表型的网络轨迹方法,旨在加强这种新型计算方法在实际临床应用中的翻译。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Brain Informatics
Brain Informatics Computer Science-Computer Science Applications
CiteScore
9.50
自引率
0.00%
发文量
27
审稿时长
13 weeks
期刊介绍: Brain Informatics is an international, peer-reviewed, interdisciplinary open-access journal published under the brand SpringerOpen, which provides a unique platform for researchers and practitioners to disseminate original research on computational and informatics technologies related to brain. This journal addresses the computational, cognitive, physiological, biological, physical, ecological and social perspectives of brain informatics. It also welcomes emerging information technologies and advanced neuro-imaging technologies, such as big data analytics and interactive knowledge discovery related to various large-scale brain studies and their applications. This journal will publish high-quality original research papers, brief reports and critical reviews in all theoretical, technological, clinical and interdisciplinary studies that make up the field of brain informatics and its applications in brain-machine intelligence, brain-inspired intelligent systems, mental health and brain disorders, etc. The scope of papers includes the following five tracks: Track 1: Cognitive and Computational Foundations of Brain Science Track 2: Human Information Processing Systems Track 3: Brain Big Data Analytics, Curation and Management Track 4: Informatics Paradigms for Brain and Mental Health Research Track 5: Brain-Machine Intelligence and Brain-Inspired Computing
期刊最新文献
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