Deep learning reveals pathology-confirmed neuroimaging signatures in Alzheimer’s, vascular and Lewy body dementias

IF 10.6 1区 医学 Q1 CLINICAL NEUROLOGY Brain Pub Date : 2024-12-11 DOI:10.1093/brain/awae388
Di Wang, Nicolas Honnorat, Jon B Toledo, Karl Li, Sokratis Charisis, Tanweer Rashid, Anoop Benet Nirmala, Sachintha Ransara Brandigampala, Mariam Mojtabai, Sudha Seshadri, Mohamad Habes
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Abstract

Concurrent neurodegenerative and vascular pathologies pose a diagnostic challenge in the clinical setting, with histopathology remaining the definitive modality for dementia-type diagnosis. To address this clinical challenge, we introduce a neuropathology-based, data-driven, multi-label deep learning framework to identify and quantify in-vivo biomarkers for Alzheimer's disease (AD), vascular dementia (VD), and Lewy body dementia (LBD) using antemortem T1-weighted MRI scans of 423 demented and 361 control participants from NACC and ADNI datasets. Based on the best-performing deep learning model, explainable heatmaps are extracted to visualize disease patterns, and the novel Deep Signature of Pathology Atrophy REcognition (DeepSPARE) indices are developed, where a higher DeepSPARE score indicates more brain alterations associated with that specific pathology. A substantial discrepancy in clinical and neuropathology diagnosis was observed in the demented patients: 71% of them had more than one pathology, but 67% of them were clinically diagnosed as AD only. Based on these neuropathology diagnoses and leveraging cross-validation principles, the deep learning model achieved the best performance with a balanced accuracy of 0.844, 0.839, and 0.623 for AD, VD, and LBD, respectively, and was used to generate the explainable deep-learning heatmaps and DeepSPARE indices. The explainable deep-learning heatmaps revealed distinct neuroimaging brain alteration patterns for each pathology: the AD heatmap highlighted bilateral hippocampal regions, the VD heatmap emphasized white matter regions, and the LBD heatmap exposed occipital alterations. The DeepSPARE indices were validated by examining their associations with cognitive testing, neuropathological, and neuroimaging measures using linear mixed-effects models. The DeepSPARE-AD index was associated with MMSE, Trail B, memory, PFDR-adjustedhippocampal volume, Braak stages, CERAD scores, and Thal phases (PFDR-adjusted < 0.05). The DeepSPARE-VD index was associated with white matter hyperintensity volume and cerebral amyloid angiopathy (PFDR-adjusted < 0.001). The DeepSPARE-LBD index was associated with Lewy body stages (PFDR-adjusted < 0.05). The findings were replicated in an out-of-sample ADNI dataset by testing associations with cognitive, imaging, plasma, and CSF measures. CSF and plasma pTau181 were significantly associated with DeepSPARE-AD in the AD/MCIΑβ+ group (PFDR-adjusted < 0.001), and CSF α-synuclein was associated solely with DeepSPARE-LBD (PFDR-adjusted = 0.036). Overall, these findings demonstrate the advantages of our innovative deep-learning framework in detecting antemortem neuroimaging signatures linked to different pathologies. The newly deep learning-derived DeepSPARE indices are precise, pathology-sensitive, and single-valued noninvasive neuroimaging metrics, bridging the traditional widely available in-vivo T1 imaging with histopathology.
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深度学习揭示阿尔茨海默病、血管性痴呆和路易体痴呆病理证实的神经影像学特征
并发神经退行性和血管病变对临床诊断提出了挑战,组织病理学仍然是痴呆型诊断的最终模式。为了应对这一临床挑战,我们引入了一个基于神经病理学、数据驱动的多标签深度学习框架,通过对来自NACC和ADNI数据集的423名痴呆患者和361名对照患者进行生前t1加权MRI扫描,来识别和量化阿尔茨海默病(AD)、血管性痴呆(VD)和路易体痴呆(LBD)的体内生物标志物。基于表现最好的深度学习模型,提取可解释的热图以可视化疾病模式,并开发了新的病理萎缩识别深度签名(DeepSPARE)指数,其中DeepSPARE得分越高,表明与该特定病理相关的大脑改变越多。在痴呆患者中,临床和神经病理学诊断存在很大差异:71%的患者有一种以上的病理,但67%的患者临床诊断为AD。基于这些神经病理诊断并利用交叉验证原理,深度学习模型在AD、VD和LBD上分别获得了0.844、0.839和0.623的最佳平衡准确率,并用于生成可解释的深度学习热图和DeepSPARE指数。可解释的深度学习热图揭示了每种病理不同的神经成像脑改变模式:AD热图突出了双侧海马区域,VD热图强调了白质区域,LBD热图暴露了枕部改变。通过使用线性混合效应模型检查DeepSPARE指数与认知测试、神经病理和神经影像学指标的关联,验证了它们的有效性。DeepSPARE-AD指数与MMSE、Trail B、记忆、经pfdr调整的海马体积、Braak分期、CERAD评分和Thal分期(经pfdr调整)相关。0.05)。DeepSPARE-VD指数与白质高密度体积和脑淀粉样血管病(PFDR-adjusted <;0.001)。DeepSPARE-LBD指数与路易体分期(pfdr调整)相关;0.05)。通过与认知、成像、血浆和脑脊液测量的关联测试,研究结果在样本外的ADNI数据集中得到了重复。在AD/MCIΑβ+组中,CSF和血浆pTau181与DeepSPARE-AD显著相关(pfdr调整&;lt;0.001), CSF α-synuclein仅与deepspre - lbd相关(调整pfdr = 0.036)。总的来说,这些发现证明了我们创新的深度学习框架在检测与不同病理相关的死前神经成像特征方面的优势。新的深度学习衍生的DeepSPARE指数是精确的,病理敏感的,单值无创神经成像指标,将传统广泛使用的体内T1成像与组织病理学连接起来。
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来源期刊
Brain
Brain 医学-临床神经学
CiteScore
20.30
自引率
4.10%
发文量
458
审稿时长
3-6 weeks
期刊介绍: Brain, a journal focused on clinical neurology and translational neuroscience, has been publishing landmark papers since 1878. The journal aims to expand its scope by including studies that shed light on disease mechanisms and conducting innovative clinical trials for brain disorders. With a wide range of topics covered, the Editorial Board represents the international readership and diverse coverage of the journal. Accepted articles are promptly posted online, typically within a few weeks of acceptance. As of 2022, Brain holds an impressive impact factor of 14.5, according to the Journal Citation Reports.
期刊最新文献
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