互惠多网络噪声标签学习(MMNNLL)方法及其在双相情感障碍和精神分裂症跨诊断分类中的应用。

Yuhui Du, Zheng Wang, Ju Niu, Yulong Wang, Godfrey D Pearlson, Vince D Calhoun
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引用次数: 0

摘要

诊断精神障碍的主观性使准确诊断变得复杂。疾病之间的复杂关系进一步加剧了这一问题,特别是在临床实践中,双相情感障碍(BP)和精神分裂症(SZ)等疾病可以表现出类似的临床症状和认知障碍。为了解决这些挑战,本文提出了一种互惠的多网络噪声标签学习(MMNNLL)方法,该方法旨在利用存在潜在临床诊断偏差或错误的神经影像学数据来提高诊断准确性。MMNNLL有效地利用多个深度神经网络(dnn)从带有噪声标签的数据中学习,通过最大化dnn在识别和利用带有干净和噪声标签的样本时的一致性。在公开的CIFAR-10和PathMNIST数据集上的实验结果表明,我们的方法在对不同类型和级别的标签噪声的独立测试数据进行分类方面是有效的。此外,我们的MMNNLL方法显著优于最先进的噪声标签学习方法。当应用于BP和SZ患者的脑功能连接数据时,我们的方法识别出两种生物型,与原始临床分类相比,它们表现出更明显的组差异,并且使用传统的机器学习和先进的深度学习技术,提高了分类精度。综上所述,我们的方法有效地解决了精神障碍分类学中可能存在的不准确性,并通过多网络协作和竞争,通过鲁棒噪声标签学习实现了跨诊断分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mutualistic Multi-Network Noisy Label Learning (MMNNLL) Method and Its Application to Transdiagnostic Classification of Bipolar Disorder and Schizophrenia.

The subjective nature of diagnosing mental disorders complicates achieving accurate diagnoses. The complex relationship among disorders further exacerbates this issue, particularly in clinical practice where conditions like bipolar disorder (BP) and schizophrenia (SZ) can present similar clinical symptoms and cognitive impairments. To address these challenges, this paper proposes a mutualistic multi-network noisy label learning (MMNNLL) method, which aims to enhance diagnostic accuracy by leveraging neuroimaging data under the presence of potential clinical diagnosis bias or errors. MMNNLL effectively utilizes multiple deep neural networks (DNNs) for learning from data with noisy labels by maximizing the consistency among DNNs in identifying and utilizing samples with clean and noisy labels. Experimental results on public CIFAR-10 and PathMNIST datasets demonstrate the effectiveness of our method in classifying independent test data across various types and levels of label noise. Additionally, our MMNNLL method significantly outperforms state-of-the-art noisy label learning methods. When applied to brain functional connectivity data from BP and SZ patients, our method identifies two biotypes that show more pronounced group differences, and improved classification accuracy compared to the original clinical categories, using both traditional machine learning and advanced deep learning techniques. In summary, our method effectively addresses the possible inaccuracy in nosology of mental disorders and achieves transdiagnostic classification through robust noisy label learning via multi-network collaboration and competition.

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