利用基因表达数据进行神经母细胞瘤阶段预测的深度学习

Aron Park, S. Nam
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引用次数: 5

摘要

神经母细胞瘤是癌症早期死亡的主要原因,其及时、正确的诊断至关重要。基因表达数据集最近被认为是癌症诊断和亚型分类的强大工具。然而,尽管深度学习已经应用于使用图像数据的癌症诊断,但还没有尝试将使用基因表达的深度学习应用于神经母细胞瘤分类。我们将国际神经母细胞瘤分期系统的分期分为多个类别,利用神经母细胞癌患者的基因表达模式和分期设计了一个深度神经网络。尽管患者人数较少(n=280),但第1期和第4期患者的差异很大。如果有可能在更大的人群中复制这种方法,深度学习可能在神经母细胞瘤的分期中发挥重要作用。
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Deep learning for stage prediction in neuroblastoma using gene expression data
Neuroblastoma is a major cause of cancer death in early childhood, and its timely and correct diagnosis is critical. Gene expression datasets have recently been considered as a powerful tool for cancer diagnosis and subtype classification. However, no attempts have yet been made to apply deep learning using gene expression to neuroblastoma classification, although deep learning has been applied to cancer diagnosis using image data. Taking the International Neuroblastoma Staging System stages as multiple classes, we designed a deep neural network using the gene expression patterns and stages of neuroblastoma patients. Despite a small patient population (n = 280), stage 1 and 4 patients were well distinguished. If it is possible to replicate this approach in a larger population, deep learning could play an important role in neuroblastoma staging.
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