A deep learning approach for mental health quality prediction using functional network connectivity and assessment data.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-06-01 Epub Date: 2024-02-10 DOI:10.1007/s11682-024-00857-y
Meenu Ajith, Dawn M Aycock, Erin B Tone, Jingyu Liu, Maria B Misiura, Rebecca Ellis, Sergey M Plis, Tricia Z King, Vonetta M Dotson, Vince Calhoun
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Abstract

While one can characterize mental health using questionnaires, such tools do not provide direct insight into the underlying biology. By linking approaches that visualize brain activity to questionnaires in the context of individualized prediction, we can gain new insights into the biology and behavioral aspects of brain health. Resting-state fMRI (rs-fMRI) can be used to identify biomarkers of these conditions and study patterns of abnormal connectivity. In this work, we estimate mental health quality for individual participants using static functional network connectivity (sFNC) data from rs-fMRI. The deep learning model uses the sFNC data as input to predict four categories of mental health quality and visualize the neural patterns indicative of each group. We used guided gradient class activation maps (guided Grad-CAM) to identify the most discriminative sFNC patterns. The effectiveness of this model was validated using the UK Biobank dataset, in which we showed that our approach outperformed four alternative models by 4-18% accuracy. The proposed model's performance evaluation yielded a classification accuracy of 76%, 78%, 88%, and 98% for the excellent, good, fair, and poor mental health categories, with poor mental health accuracy being the highest. The findings show distinct sFNC patterns across each group. The patterns associated with excellent mental health consist of the cerebellar-subcortical regions, whereas the most prominent areas in the poor mental health category are in the sensorimotor and visual domains. Thus the combination of rs-fMRI and deep learning opens a promising path for developing a comprehensive framework to evaluate and measure mental health. Moreover, this approach had the potential to guide the development of personalized interventions and enable the monitoring of treatment response. Overall this highlights the crucial role of advanced imaging modalities and deep learning algorithms in advancing our understanding and management of mental health.

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利用功能网络连接和评估数据进行心理健康质量预测的深度学习方法。
虽然我们可以通过问卷调查来描述心理健康的特征,但这些工具并不能直接洞察潜在的生物学问题。通过将可视化大脑活动的方法与个性化预测背景下的问卷调查联系起来,我们可以对大脑健康的生物学和行为学方面有新的认识。静息态 fMRI(rs-fMRI)可用于识别这些状况的生物标志物,并研究异常连接的模式。在这项工作中,我们使用来自 rs-fMRI 的静态功能网络连通性(sFNC)数据来估计个体参与者的心理健康质量。深度学习模型使用 sFNC 数据作为输入,预测心理健康质量的四个类别,并可视化每个类别的神经模式。我们使用引导梯度类激活图(guided Grad-CAM)来识别最具辨别力的 sFNC 模式。我们使用英国生物库数据集对该模型的有效性进行了验证,结果表明我们的方法比其他四种模型的准确率高出 4-18%。在对所提出模型的性能评估中,对优、良、一般和差心理健康类别的分类准确率分别为 76%、78%、88% 和 98%,其中差心理健康的准确率最高。研究结果显示,每个组别都有不同的 sFNC 模式。与心理健康状况良好相关的模式包括小脑皮层下区域,而心理健康状况不佳类别中最突出的区域是感觉运动和视觉领域。因此,rs-fMRI 与深度学习的结合为开发评估和测量心理健康的综合框架开辟了一条前景广阔的道路。此外,这种方法还有可能指导个性化干预措施的开发,并实现对治疗反应的监测。总之,这凸显了先进成像模式和深度学习算法在促进我们了解和管理心理健康方面的关键作用。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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