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Deep learning-based cell identification and disease diagnosis using spatio-temporal cellular dynamics in compact digital holographic microscopy

机译:基于深度学习的细胞识别和疾病诊断在紧凑的数字全息显微镜中使用时空蜂窝动力学

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摘要

We demonstrate a successful deep learning strategy for cell identification and disease diagnosis using spatio-temporal cell information recorded by a digital holographic microscopy system. Shearing digital holographic microscopy is employed using a low-cost, compact, field-portable and 3D-printed microscopy system to record video-rate data of live biological cells with nanometer sensitivity in terms of axial membrane fluctuations, then features are extracted from the reconstructed phase profiles of segmented cells at each time instance for classification. The time-varying data of each extracted feature is input into a recurrent bi-directional long short-term memory (Bi-LSTM) network which learns to classify cells based on their time-varying behavior. Our approach is presented for cell identification between the morphologically similar cases of cow and horse red blood cells. Furthermore, the proposed deep learning strategy is demonstrated as having improved performance over conventional machine learning approaches on a clinically relevant dataset of human red blood cells from healthy individuals and those with sickle cell disease. The results are presented at both the cell and patient levels. To the best of our knowledge, this is the first report of deep learning for spatio-temporal-based cell identification and disease detection using a digital holographic microscopy system.
机译:我们使用数字全息显微镜系统记录的时空小区信息展示了用于细胞识别和疾病诊断的成功深入学习策略。使用剪切数字全息显微镜采用低成本,紧凑,现场便携和3D印刷显微镜系统,以记录在轴向膜波动方面具有纳米敏感性的实时生物电池的视频速率数据,然后从重建中提取特征分段细胞在每次实例进行分类的相位谱。每个提取的特征的时变数据被输入到复发性双向长期内存(BI-LSTM)网络中,该网络学习基于其时变行为来对小区进行分类。我们的方法是用于母牛和马红细胞形态学上类似案件之间的细胞识别。此外,所提出的深度学习策略被证明是在从健康个体和镰状细胞疾病的人类红细胞的临床相关数据集上具有改进的常规机器学习方法的性能。结果表明在细胞和患者水平。据我们所知,这是使用数字全息显微镜系统进行两种基于时空细胞鉴定和疾病检测的第一个报告。

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