Identification and Connectomic Profiling of Concussion Using Bayesian Machine Learning.

IF 3.9 2区 医学 Q1 CLINICAL NEUROLOGY
Journal of neurotrauma Pub Date : 2024-08-01 Epub Date: 2024-04-29 DOI:10.1089/neu.2023.0509
Benjamin J Hacker, Phoebe E Imms, Ammar M Dharani, Jessica Zhu, Nahian F Chowdhury, Nikhil N Chaudhari, Andrei Irimia
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引用次数: 0

Abstract

Accurate early diagnosis of concussion is useful to prevent sequelae and improve neurocognitive outcomes. Early after head impact, concussion diagnosis may be doubtful in persons whose neurological, neuroradiological, and/or neurocognitive examinations are equivocal. Such individuals can benefit from novel accurate assessments that complement clinical diagnostics. We introduce a Bayesian machine learning classifier to identify concussion through cortico-cortical connectome mapping from magnetic resonance imaging in persons with quasi-normal cognition and without neuroradiological findings. Classifier features are generated from connectivity matrices specifying the mean fractional anisotropy of white matter connections linking brain structures. Each connection's saliency to classification was quantified by training individual classifier instantiations using a single feature type. The classifier was tested on a discovery sample of 92 healthy controls (HCs; 26 females, age μ ± σ: 39.8 ± 15.5 years) and 471 adult mTBI patients (158 females, age μ ± σ: 38.4 ± 5.9 years). Results were replicated in an independent validation sample of 256 HCs (149 females, age μ ± σ: 55.3 ± 12.1 years) and 126 patients with concussion (46 females, age μ ± σ: 39.0 ± 17.7 years). Classifier accuracy exceeds 99% in both samples, suggesting robust generalizability to new samples. Notably, 13 bilateral cortico-cortical connection pairs predict diagnostic status with accuracy exceeding 99% in both discovery and validation samples. Many such connection pairs are between prefrontal cortex structures, fronto-limbic and fronto-subcortical structures, and occipito-temporal structures in the ventral ("what") visual stream. This and related connectivity form a highly salient network of brain connections that is particularly vulnerable to concussion. Because these connections are important in mediating cognitive control, memory, and attention, our findings explain the high frequency of cognitive disturbances after concussion. Our classifier was trained and validated on concussed participants with cognitive profiles very similar to those of HCs. This suggests that the classifier can complement current diagnostics by providing independent information in clinical contexts where patients have quasi-normal cognition but where concussion diagnosis stands to benefit from additional evidence.

利用贝叶斯机器学习对脑震荡进行识别和连接组学分析。
脑震荡的早期准确诊断有助于预防后遗症和改善神经认知结果。在头部撞击后的早期,如果神经学、神经放射学和/或神经认知检查结果不明确,则脑震荡的诊断可能存在疑问。这些人可以从补充临床诊断的新型精确评估中获益。我们引入了贝叶斯机器学习分类器,通过磁共振成像中的皮质-皮质连接组图谱,对认知能力准正常且无神经放射学检查结果的人进行脑震荡鉴定。分类器特征由连接矩阵生成,该矩阵指定了连接大脑结构的白质连接的平均分数各向异性。通过使用单一特征类型训练单个分类器实例,量化每个连接对分类的显著性。分类器在 92 个健康对照组(HCs;26 位女性,年龄 μ ± σ:39.8 ± 15.5 岁)和 471 位成年 mTBI 患者(158 位女性,年龄 μ ± σ:38.4 ± 5.9 岁)的发现样本上进行了测试。结果在独立验证样本中得到了重复,该样本包括 256 名成人脑震荡患者(149 名女性,年龄 μ ± σ:55.3 ± 12.1 岁)和 126 名脑震荡患者(46 名女性,年龄 μ ± σ:39.0 ± 17.7 岁)。在这两个样本中,分类器的准确率都超过了 99%,这表明对新样本具有很强的普适性。值得注意的是,在发现样本和验证样本中,13 对双侧皮质-皮质连接对预测诊断状态的准确率均超过 99%。其中许多连接对位于腹侧("什么")视觉流中的前额叶皮层结构、前边缘和前皮层下结构以及枕颞结构之间。这种连接和相关连接形成了一个高度突出的大脑连接网络,特别容易受到脑震荡的影响。由于这些连接在调解认知控制、记忆和注意力方面非常重要,我们的发现解释了脑震荡后认知障碍的高频率。我们的分类器在脑震荡参与者身上进行了训练和验证,他们的认知特征与正常人非常相似。这表明,分类器可以补充目前的诊断方法,在患者认知能力准正常但脑震荡诊断需要更多证据的临床情况下提供独立的信息。
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来源期刊
Journal of neurotrauma
Journal of neurotrauma 医学-临床神经学
CiteScore
9.20
自引率
7.10%
发文量
233
审稿时长
3 months
期刊介绍: Journal of Neurotrauma is the flagship, peer-reviewed publication for reporting on the latest advances in both the clinical and laboratory investigation of traumatic brain and spinal cord injury. The Journal focuses on the basic pathobiology of injury to the central nervous system, while considering preclinical and clinical trials targeted at improving both the early management and long-term care and recovery of traumatically injured patients. This is the essential journal publishing cutting-edge basic and translational research in traumatically injured human and animal studies, with emphasis on neurodegenerative disease research linked to CNS trauma.
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