ARMS Net: Overlapping chromosome segmentation based on Adaptive Receptive field Multi-Scale network
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
DOI:
10.1016/j.bspc.2021.102811
Publication Date:
2021-05-31T23:00:41Z
AUTHORS (5)
ABSTRACT
Abstract Karyotype analysis has become the crux for diagnosis of genetic diseases, which requires automatic precise identification of quantitative and structural abnormalities. Thus, segmentation of chromosomes from microscope captured photos by image processing technique can help promote the automatic identification of chromosomes. However, chromosomes are often curled and overlapped together randomly in different images, which makes overlapping chromosome segmentation the hot topic in karyotype analysis. Herein an Adaptive Receptive field Multi-Scale network (ARMS Net) based on UNet architecture is proposed. The number of pooling operations is optimized to balance the requirements of deep semantic information extraction and high precision segmentation. The adaptive multi-scale feature extraction module is designed to replace the standard convolution at the bottom of UNet, such that the receptive fields can adaptively match the size of feature map. Besides, an adaptive smooth weighted cross entropy loss function is defined to resolve category imbalance issue. Experimental results show that the Intersection of Union (IoU) score of ARMS Net segmented overlapping area is 99.45%, which is 3.2% higher than that achieved by UNet (96.38%), and 10.1% higher than that achieved by CE-Net (90.35%). In a word, ARMS Net is expected to be used as the backbone network for chromosome instance segmentation in its end-to-end identification.
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