Rokham Hooman, Falakshahi Haleh, Pearlson Godfrey D, Calhoun Vince D
Tri-Institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State University, Georgia Institute of Technology, and Emory University, Atlanta, Georgia, USA.
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, Georgia, USA.
Hum Brain Mapp. 2025 Sep;46(13):e70347. doi: 10.1002/hbm.70347.
Investigating neuroimaging data to identify brain-based markers of mental illnesses has gained significant attention. Nevertheless, these endeavors encounter challenges arising from a reliance on symptoms and self-report assessments in making an initial diagnosis. The absence of biological data to delineate nosological categories hinders the provision of additional neurobiological insights into these disorders. This study explores the use of neuroimaging to identify brain-based markers for mental illnesses, addressing the limitations of existing diagnoses. Previous research showed the potential of integrating structural neuroimaging data by treating diagnostic categories as uncertain and adjusting them to align better with biological data. Building on this, our current research incorporates multimodal neuroimaging data, combining fMRI with structural MRI, and introduces methodological advances to enhance diagnosis by creating more homogeneous categories based on MRI-derived neurobiological information. Unlike other studies that reclassify psychiatric groups purely based on biological data, our approach integrates neuroimaging and symptom-based categories using ensemble methods, deep learning, and data fusion. This strategy aims to improve symptom-based categorization by identifying biologically-based categories that help distinguish between correctly classified, challenging, and noisy samples. Our goals include identifying potential biomarkers for existing symptom-based categories, determining biologically homogeneous groups, and mitigating label noise across mood and psychosis categories. We analyzed the relationship between biological findings and existing categories, highlighting discrepancies between brain imaging features and symptom-based categories, and assessing the potential of augmenting label categories for sample heterogeneity. Notably, visualization techniques provided insights into distinct brain patterns in well-classified versus challenging samples. We used a deep convolutional framework and bagging approaches for diagnostic classification, finding that ensemble deep models outperformed individual models, and multimodal frameworks consistently surpassed unimodal approaches. In sum, this work highlights the potential of combining existing symptom-based categorization with multimodal data and advanced data-driven approaches to improve the categorization of mental illness.
研究神经影像数据以识别精神疾病基于大脑的标志物已引起广泛关注。然而,这些努力面临着一些挑战,因为在进行初步诊断时依赖症状和自我报告评估。缺乏用于划分疾病分类的生物学数据阻碍了对这些疾病提供更多神经生物学见解。本研究探索使用神经影像来识别精神疾病基于大脑的标志物,以解决现有诊断方法的局限性。先前的研究表明,通过将诊断类别视为不确定因素并对其进行调整以更好地与生物学数据对齐,整合结构神经影像数据具有潜力。在此基础上,我们当前的研究纳入了多模态神经影像数据,将功能磁共振成像(fMRI)与结构磁共振成像(MRI)相结合,并引入了方法学上的进展,通过基于MRI衍生的神经生物学信息创建更同质的类别来增强诊断。与其他纯粹基于生物学数据对精神疾病群体进行重新分类的研究不同,我们的方法使用集成方法、深度学习和数据融合来整合神经影像和基于症状的类别。这种策略旨在通过识别基于生物学的类别来改进基于症状的分类,这些类别有助于区分正确分类、具有挑战性和噪声较大的样本。我们的目标包括识别现有基于症状类别的潜在生物标志物,确定生物学上同质的群体,并减轻情绪和精神病类别中的标签噪声。我们分析了生物学发现与现有类别之间的关系,突出了脑成像特征与基于症状的类别之间的差异,并评估了增加标签类别以解决样本异质性的潜力。值得注意的是,可视化技术为分类良好与具有挑战性的样本中的不同脑模式提供了见解。我们使用深度卷积框架和装袋方法进行诊断分类,发现集成深度模型优于单个模型,并且多模态框架始终优于单模态方法。总之,这项工作突出了将现有的基于症状的分类与多模态数据和先进的数据驱动方法相结合以改善精神疾病分类的潜力。