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Distanced LSTM: Time-Distanced Gates in Long Short-Term Memory Models for Lung Cancer Detection

机译:距离LSTM:长期短期记忆模型在肺癌检测中的时间间隔门

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The field of lung nodule detection and cancer prediction has been rapidly developing with the support of large public data archives. Previous studies have largely focused cross-sectional (single) CT data. Herein, we consider longitudinal data. The Long Short-Term Memory (LSTM) model addresses learning with regularly spaced time points (i.e., equal temporal intervals). However, clinical imaging follows patient needs with often heterogeneous, irregular acquisitions. To model both regular and irregular longitudinal samples, we generalize the LSTM model with the Distanced LSTM (DLSTM) for temporally varied acquisitions. The DLSTM includes a Temporal Emphasis Model (TEM) that enables learning across regularly and irregularly sampled intervals. Briefly, (1) the temporal intervals between longitudinal scans are modeled explicitly, (2) temporally adjustable forget and input gates are introduced for irregular temporal sampling; and (3) the latest longitudinal scan has an additional emphasis term. We evaluate the DLSTM framework in three datasets including simulated data, 1794 National Lung Screening Trial (NLST) scans, and 1420 clinically acquired data with heterogeneous and irregular temporal accession. The experiments on the first two datasets demonstrate that our method achieves competitive performance on both simulated and regularly sampled datasets (e.g. improve LSTM from 0.6785 to 0.7085 on Fl score in NLST). In external validation of clinically and irregularly acquired data, the benchmarks achieved 0.8350 (CNN feature) and 0.8380 (LSTM) on area under the ROC curve (AUC) score, while the proposed DLSTM achieves 0.8905.
机译:在大型公共数据档案的支持下,肺结节检测和癌症预测领域已迅速发展。先前的研究主要集中在横截面(单个)CT数据上。在此,我们考虑纵向数据。长短期记忆(LSTM)模型解决了以规则间隔的时间点(即相等的时间间隔)进行学习的问题。但是,临床成像通常是通过异类,不规则采集来满足患者需求。为了对规则和不规则的纵向样本进行建模,我们将LSTM模型与距离LSTM(DLSTM)进行了归纳,以用于随时间变化的采集。 DLSTM包括一个时间重点模型(TEM),该模型可以在规则和不规则采样间隔内进行学习。简而言之,(1)纵向扫描之间的时间间隔已明确建模,(2)时间可调的遗忘和输入门用于不规则的时间采样; (3)最近的纵向扫描还有一个额外的强调项。我们在三个数据集中评估了DLSTM框架,包括模拟数据,1794年国家肺部筛查试验(NLST)扫描以及1420个临床获取的数据,其中包括异质性和不规则的时间入选。在前两个数据集上进行的实验表明,我们的方法在模拟数据集和常规采样数据集上均具有竞争优势(例如,将NLST中Fl评分的LSTM从0.6785提高到0.7085)。在临床和不定期获得的数据的外部验证中,基准在ROC曲线(AUC)得分下的面积分别达到0.8350(CNN特征)和0.8380(LSTM),而建议的DLSTM达到0.8905。

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