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Papers/Microscopy Cell Segmentation via Convolutional LSTM Networks

Microscopy Cell Segmentation via Convolutional LSTM Networks

Assaf Arbelle, Tammy Riklin Raviv

2018-05-29Cell SegmentationSegmentationCell Tracking
PaperPDFCodeCode(official)Code

Abstract

Live cell microscopy sequences exhibit complex spatial structures and complicated temporal behaviour, making their analysis a challenging task. Considering cell segmentation problem, which plays a significant role in the analysis, the spatial properties of the data can be captured using Convolutional Neural Networks (CNNs). Recent approaches show promising segmentation results using convolutional encoder-decoders such as the U-Net. Nevertheless, these methods are limited by their inability to incorporate temporal information, that can facilitate segmentation of individual touching cells or of cells that are partially visible. In order to exploit cell dynamics we propose a novel segmentation architecture which integrates Convolutional Long Short Term Memory (C-LSTM) with the U-Net. The network's unique architecture allows it to capture multi-scale, compact, spatio-temporal encoding in the C-LSTMs memory units. The method was evaluated on the Cell Tracking Challenge and achieved state-of-the-art results (1st on Fluo-N2DH-SIM+ and 2nd on DIC-C2DL-HeLa datasets) The code is freely available at: https://github.com/arbellea/LSTM-UNet.git

Results

TaskDatasetMetricValueModel
Medical Image SegmentationDIC-C2DH-HeLaSEG (~Mean IoU)0.793EncLSTM
Medical Image SegmentationDIC-C2DH-HeLaSEG (~Mean IoU)0.511DecLSTM
Medical Image SegmentationFluo-N2DH-SIM+SEG (~Mean IoU)0.811EncLSTM
Medical Image SegmentationFluo-N2DH-SIM+SEG (~Mean IoU)0.802DecLSTM
Medical Image SegmentationFluo-N2DL-HeLaSEG (~Mean IoU)0.839DecLSTM
Medical Image SegmentationFluo-N2DL-HeLaSEG (~Mean IoU)0.811EncLSTM
Medical Image SegmentationPhC-C2DH-U373SEG (~Mean IoU)0.842EncLSTM
Medical Image SegmentationFluo-N2DH-GOWT1SEG (~Mean IoU)0.854DecLSTM
Medical Image SegmentationFluo-N2DH-GOWT1SEG (~Mean IoU)0.85EncLSTM
Cell SegmentationDIC-C2DH-HeLaSEG (~Mean IoU)0.793EncLSTM
Cell SegmentationDIC-C2DH-HeLaSEG (~Mean IoU)0.511DecLSTM
Cell SegmentationFluo-N2DH-SIM+SEG (~Mean IoU)0.811EncLSTM
Cell SegmentationFluo-N2DH-SIM+SEG (~Mean IoU)0.802DecLSTM
Cell SegmentationFluo-N2DL-HeLaSEG (~Mean IoU)0.839DecLSTM
Cell SegmentationFluo-N2DL-HeLaSEG (~Mean IoU)0.811EncLSTM
Cell SegmentationPhC-C2DH-U373SEG (~Mean IoU)0.842EncLSTM
Cell SegmentationFluo-N2DH-GOWT1SEG (~Mean IoU)0.854DecLSTM
Cell SegmentationFluo-N2DH-GOWT1SEG (~Mean IoU)0.85EncLSTM

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