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Macular GCIPL Thickness Map Prediction via Time-Aware Convolutional LSTM

机译:基于时间感知卷积LSTM的黄斑GCIPL厚度图预测

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Macular ganglion cell inner plexiform layer (GCIPL) thickness is an important biomarker for clinical managements of glaucoma. Clinical analysis of GCIPL progression uses averaged thickness only, which easily washes out small changes and reveals no spatial patterns. This is the first work to predict the 2D GCIPL thickness map. We propose a novel Time-aware Convolutional Long Short-Term Memory (TC-LSTM) unit to decompose memories into the short-term and long-term memories and exploit time intervals to penalize the short-term memory. TC-LSTM unit is incorporated into an auto-encoder-decoder so that the end-to-end model can handle irregular sampling intervals of longitudinal GCIPL thickness map sequences and capture both spatial and temporal correlations. Experiments show the superiority of the proposed model over the traditional method.
机译:黄斑神经节细胞内丛状层(GCIPL)厚度是青光眼临床管理的重要生物标志物。 GCIPL进展的临床分析仅使用平均厚度,可以轻松消除细微变化,而且没有空间分布。这是预测2D GCIPL厚度图的第一项工作。我们提出了一种新颖的时间感知卷积长期短期记忆(TC-LSTM)单元,以将记忆分解为短期记忆和长期记忆,并利用时间间隔来惩罚短期记忆。 TC-LSTM单元被集成到自动编码器-解码器中,因此端到端模型可以处理纵向GCIPL厚度图序列的不规则采样间隔,并捕获空间和时间相关性。实验表明,该模型优于传统方法。

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