利用深度学习在异构数据上对阿尔茨海默病进行个体分类的可信度

Afolabi Salami Alausa, Jose M Sanchez-Bornot, Abdoreza Asadpour, Paula L McClean, KongFatt Wong-Lin
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引用次数: 0

摘要

准确诊断阿尔茨海默病(AD)对于有效治疗和管理至关重要。虽然深度学习已被应用于阿兹海默症分类,但它通常是在群体水平上进行的,所使用的数据不够异构和全面,而且没有在个体(单个患者)水平上对决策置信度进行评估。本文提出了一种更实用的深度学习方法,不仅能检测个体的 AD 阶段,还能提供相应的置信度估计。特别是,除了卷积神经网络(CNN)外,我们还根据网络的输出活动纳入了软最大置信度指标,以评估其分类置信度。此外,我们还将这种方法应用于异构的综合数据,其中包括认知和功能评估、tau-PET 和 MRI 神经影像学、病史/家族史、人口统计学和 APoE 基因型。重要的是,我们利用 "留一弃一 "交叉验证来训练 CNN,并对个体的健康控制、轻度认知障碍或注意力缺失状态进行分类,同时估算每个输出决策的置信度。我们的研究表明,在不同的置信度软最大温度值下,CNN 对三个类别的分类准确率可达 83-85%,而稳健置信度分数为 78-83%。在置信度评估中使用最佳温度值时,置信度分解得到了进一步改善,正确决策的置信度得分高于错误决策的置信度得分。总之,计算出的个体分类置信度可以帮助临床医生和其他利益相关者了解模型决策结果的可靠性,并提供更好的信任。这项工作的意义可能会延伸到其他分类应用中,在这些应用中,可以对基于深度学习的单一决策的置信度进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alzheimer's Disease Classification Confidence of Individuals using Deep Learning on Heterogeneous Data
Making accurate diagnosis of Alzheimer's disease (AD) is crucial for effective treatment and management. Although deep learning has been applied to AD classification, it is typically performed at group level, the data used are not sufficiently heterogeneous and comprehensive, and decision confidence is not evaluated at individual (single patient) level. This paper proposed a more practical deep learning approach that not only detects AD stages of individuals, but also provides its corresponding confidence estimation. In particular, in addition to a convolutional neural network (CNN), we incorporated a softmax confidence metric based on the network's output activity to evaluate its classification confidence. Further, we applied this approach to a heterogeneous and comprehensive data that comprised cognitive and functional assessments, tau-PET and MRI neuroimaging, medical/family history, demographic, and APoE genotype. Importantly, we utilised leave-one-out cross-validation to train the CNN and classify an individual's healthy control, mild cognitive impairment or AD state, while concurrently estimating each output decision's confidence. We showed that, over different confidence softmax temperature values, CNN could attain classification accuracies at 83-85% for the three classes while having robust confidence scores of 78-83%. Further improvement in confidence breakdown was achieved using the optimal temperature value in confidence evaluation, with higher confidence scores for correct than error decisions. Overall, the computed classification confidence of an individual may aid clinicians and other stakeholders in understanding the reliability of the model's decision outcome and offer better trust. The implication of this work may extend to other classification applications, in which the confidence level of a single deep learning-based decision can be evaluated.
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