Deep learning for detecting prenatal alcohol exposure in pediatric brain MRI: a transfer learning approach with explainability insights

IF 2.1 4区 医学 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Anik Das, Kaue Duarte, Catherine Lebel, Mariana Bento
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Abstract

Prenatal alcohol exposure (PAE) refers to the exposure of the developing fetus due to alcohol consumption during pregnancy and can have life-long consequences for learning, behavior, and health. Understanding the impact of PAE on the developing brain manifests challenges due to its complex structural and functional attributes, which can be addressed by leveraging machine learning (ML) and deep learning (DL) approaches. While most ML and DL models have been tailored for adult-centric problems, this work focuses on applying DL to detect PAE in the pediatric population. This study integrates the pre-trained simple fully convolutional network (SFCN) as a transfer learning approach for extracting features and a newly trained classifier to distinguish between unexposed and PAE participants based on T1-weighted structural brain magnetic resonance (MR) scans of individuals aged 2–8 years. Among several varying dataset sizes and augmentation strategy during training, the classifier secured the highest sensitivity of 88.47% with 85.04% average accuracy on testing data when considering a balanced dataset with augmentation for both classes. Moreover, we also preliminarily performed explainability analysis using the Grad-CAM method, highlighting various brain regions such as corpus callosum, cerebellum, pons, and white matter as the most important features in the model's decision-making process. Despite the challenges of constructing DL models for pediatric populations due to the brain's rapid development, motion artifacts, and insufficient data, this work highlights the potential of transfer learning in situations where data is limited. Furthermore, this study underscores the importance of preserving a balanced dataset for fair classification and clarifying the rationale behind the model's prediction using explainability analysis.
深度学习检测小儿脑磁共振成像中的产前酒精暴露:一种具有可解释性洞察力的迁移学习方法
产前酒精暴露(PAE)是指发育中的胎儿在怀孕期间因饮酒而暴露于酒精中,并可能对学习、行为和健康产生终身影响。由于 PAE 具有复杂的结构和功能属性,因此了解 PAE 对发育中大脑的影响是一项挑战,这可以通过利用机器学习(ML)和深度学习(DL)方法来解决。大多数 ML 和 DL 模型都是针对以成人为中心的问题定制的,而本研究则侧重于应用 DL 检测儿科人群中的 PAE。本研究整合了预先训练好的简单全卷积网络(SFCN),将其作为提取特征的迁移学习方法和新训练的分类器,根据 2 至 8 岁个体的 T1 加权脑结构磁共振(MR)扫描结果来区分未暴露和 PAE 参与者。在几种不同的数据集大小和训练过程中的增强策略中,当考虑对两个类别进行增强的平衡数据集时,分类器在测试数据上获得了最高的灵敏度(88.47%)和平均准确率(85.04%)。此外,我们还使用 Grad-CAM 方法初步进行了可解释性分析,强调了胼胝体、小脑、脑桥和白质等大脑区域是模型决策过程中最重要的特征。尽管由于大脑的快速发育、运动伪影和数据不足等原因,为儿科人群构建 DL 模型面临着挑战,但这项工作凸显了迁移学习在数据有限的情况下的潜力。此外,这项研究还强调了为进行公平分类而保留均衡数据集的重要性,以及利用可解释性分析阐明模型预测背后原理的重要性。
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来源期刊
Frontiers in Computational Neuroscience
Frontiers in Computational Neuroscience MATHEMATICAL & COMPUTATIONAL BIOLOGY-NEUROSCIENCES
CiteScore
5.30
自引率
3.10%
发文量
166
审稿时长
6-12 weeks
期刊介绍: Frontiers in Computational Neuroscience is a first-tier electronic journal devoted to promoting theoretical modeling of brain function and fostering interdisciplinary interactions between theoretical and experimental neuroscience. Progress in understanding the amazing capabilities of the brain is still limited, and we believe that it will only come with deep theoretical thinking and mutually stimulating cooperation between different disciplines and approaches. We therefore invite original contributions on a wide range of topics that present the fruits of such cooperation, or provide stimuli for future alliances. We aim to provide an interactive forum for cutting-edge theoretical studies of the nervous system, and for promulgating the best theoretical research to the broader neuroscience community. Models of all styles and at all levels are welcome, from biophysically motivated realistic simulations of neurons and synapses to high-level abstract models of inference and decision making. While the journal is primarily focused on theoretically based and driven research, we welcome experimental studies that validate and test theoretical conclusions. Also: comp neuro
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