Analysing and Evaluating Complementarity of Multi-Modal Data Fusion in AD Diagnosis

Zhaodong Chen, Fengtao Nan, Yun Yang, Jiayu Wang, Po Yang
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Abstract

The clinical progression of Alzheimer's disease( AD ) can't be accurately evaluated by single modality data alone. Multi-modal data have a good effect on the diagnosis of AD. Clarifying the complementarity between modalities is crucial for the assessment of each stage of AD. Few studies have specifically explored the complementarity between different modalities due to the lack of completely aligned and paired multi-modal data and the limitation of sample size. However, collecting the full set of aligned and paired data is expensive or even impractical. In addition, the limited number of samples poses a great challenge to the robustness of the model. In this paper, different machine learning( ML ) methods were used to explore data complementarity between T1-weighted magnetic resonance imaging ( MRI ), cerebrospinal fluid ( CSF ), and fluorodeoxyglucose-positron emission tomography ( FDG-PET ) modalities. The different modal data of Alzheimer's Neuroimaging Initiative ( ADNI ) and the self-extracted neuroimaging data were experimentally explored. Experiments show that there is obvious complementarity between MRI and CSF. By fusing MRI and CSF data, three binary classification tasks using multi-modal fusion data have achieved varying degrees of improvement. At the same time, we also explored the important features of multi-modal fusion data through SHapley Additive exPlanations ( SHAP ), and found that most important features are supported by relevant literature.
AD诊断中多模态数据融合的互补性分析与评价
阿尔茨海默病(Alzheimer's disease, AD)的临床进展不能仅凭单一模式的数据进行准确评估。多模态数据对AD的诊断有较好的效果。明确不同模式之间的互补性对于评估AD的每个阶段至关重要。由于缺乏完全对齐和配对的多模态数据以及样本量的限制,很少有研究专门探讨不同模态之间的互补性。然而,收集完整的对齐和配对数据集是昂贵的,甚至不切实际。此外,有限的样本数量对模型的鲁棒性提出了很大的挑战。本文使用不同的机器学习(ML)方法来探索t1加权磁共振成像(MRI),脑脊液(CSF)和氟脱氧葡萄糖-正电子发射断层扫描(FDG-PET)模式之间的数据互补性。实验探讨了不同模式的阿尔茨海默氏神经影像学倡议(ADNI)数据和自提取的神经影像学数据。实验表明,MRI与脑脊液具有明显的互补性。通过融合MRI和CSF数据,使用多模态融合数据的三种二元分类任务都取得了不同程度的改进。同时,我们还通过SHapley Additive explanation (SHAP)对多模态融合数据的重要特征进行了探索,发现大多数重要特征都得到了相关文献的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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