Literature DB >> 32060319

Prediction of Sequential Organelles Localization under Imbalance using A Balanced Deep U-Net.

Novanto Yudistira1,2, Muthusubash Kavitha3, Takeshi Itabashi4,5,6, Atsuko H Iwane4,5,6, Takio Kurita3.   

Abstract

Assessing the structure and function of organelles in living organisms of the primitive unicellular red algae Cyanidioschyzon merolae on three-dimensional sequential images demands a reliable automated technique in the class imbalance among various cellular structures during mitosis. Existing classification networks with commonly used loss functions were focused on larger numbers of cellular structures that lead to the unreliability of the system. Hence, we proposed a balanced deep regularized weighted compound dice loss (RWCDL) network for better localization of cell organelles. Specifically, we introduced two new loss functions, namely compound dice (CD) and RWCD by implementing multi-class variant dice and weighting mechanism, respectively for maximizing weights of peroxisome and nucleus among five classes as the main contribution of this study. We extended the Unet-like convolution neural network (CNN) architecture for evaluating the ability of our proposed loss functions for improved segmentation. The feasibility of the proposed approach is confirmed with three different large scale mitotic cycle data set with different number of occurrences of cell organelles. In addition, we compared the training behavior of our designed architectures with the ground truth segmentation using various performance measures. The proposed balanced RWCDL network generated the highest area under the curve (AUC) value in elevating the small and obscure peroxisome and nucleus, which is 30% higher than the network with commonly used mean square error (MSE) and dice loss (DL) functions. The experimental results indicated that the proposed approach can efficiently identify the cellular structures, even when the contour between the cells is obscure and thus convinced that the balanced deep RWCDL approach is reliable and can be helpful for biologist to accurately identify the relationship between the cell behavior and structures of cell organelles during mitosis.

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Year:  2020        PMID: 32060319      PMCID: PMC7021757          DOI: 10.1038/s41598-020-59285-9

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  2 in total

1.  Learning fine-grained estimation of physiological states from coarse-grained labels by distribution restoration.

Authors:  Zengyi Qin; Jiansheng Chen; Zhenyu Jiang; Xumin Yu; Chunhua Hu; Yu Ma; Suhua Miao; Rongsong Zhou
Journal:  Sci Rep       Date:  2020-12-15       Impact factor: 4.379

2.  Hybrid AI-assistive diagnostic model permits rapid TBS classification of cervical liquid-based thin-layer cell smears.

Authors:  Xiaohui Zhu; Xiaoming Li; Kokhaur Ong; Wenli Zhang; Wencai Li; Longjie Li; David Young; Yongjian Su; Bin Shang; Linggan Peng; Wei Xiong; Yunke Liu; Wenting Liao; Jingjing Xu; Feifei Wang; Qing Liao; Shengnan Li; Minmin Liao; Yu Li; Linshang Rao; Jinquan Lin; Jianyuan Shi; Zejun You; Wenlong Zhong; Xinrong Liang; Hao Han; Yan Zhang; Na Tang; Aixia Hu; Hongyi Gao; Zhiqiang Cheng; Li Liang; Weimiao Yu; Yanqing Ding
Journal:  Nat Commun       Date:  2021-06-10       Impact factor: 14.919

  2 in total

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