Literature DB >> 35502367

An efficient fluorescence in situ hybridization (FISH)-based circulating genetically abnormal cells (CACs) identification method based on Multi-scale MobileNet-YOLO-V4.

Chao Xu1, Yi Zhang1, Xianjun Fan2, Xingjie Lan3, Xin Ye2, Tongning Wu1.   

Abstract

Background: Circulating tumor cells (CTCs) acting as "liquid biopsy" of cancer are cells that have been shed from the primary tumor, which cause the development of a secondary tumor in a distant organ site, leading to cancer metastasis. Recent research suggests that CTCs with abnormalities in gene copy numbers in mononuclear cell-enriched peripheral blood samples, namely circulating genetically abnormal cells (CACs), could be used as a non-invasive decision tool to detect patients with benign pulmonary nodules. Such cells are identified by counting the fluorescence signals of fluorescence in situ hybridization (FISH). However, owing to the rarity of CACs in the blood, identification of CACs using this technique is time-consuming and is a drawback of this method.
Methods: This study has proposed an efficient and automatic FISH-based CACs identification approach which is based on a combination of the high accuracy of You Only Look Once (YOLO)-V4 and the lightweight and rapidness of MobileNet-V3. The backbone of YOLO-V4 was replaced with MobileNet-V3 to improve the detection efficiency and prevent overfitting, and the architecture of YOLO-V4 was optimized by utilizing a new feature map with a larger scale to enable the enhanced detection ability for small targets.
Results: We trained and tested the proposed model using a dataset containing more than 7,000 cells based on five-fold cross-validation. All the images in the dataset were 2,448×2,048 (pixels) in size. The number of cells in each image was >70. The accuracy of four-color fluorescence signals detection for our proposed model were all approximately 98%, and the mean average precision (mAP) were close to 100%. The final outcome of the developed method was the type of cells, i.e., normal cells, CACs, gaining cells or deletion cells. The method had a CACs identification accuracy of 93.86% (similar to an expert pathologist), and a detection speed that was about 500 times greater than that of a pathologist. Conclusions: The developed method could greatly increase the review accuracy, enhance the efficiency of reviewers, and reduce the review turnaround time during CACs identification. 2022 Quantitative Imaging in Medicine and Surgery. All rights reserved.

Entities:  

Keywords:  Circulating genetically abnormal cell (CAC); MobileNet-V3; You Only Look Once-V4 (YOLO-V4); fluorescence in situ hybridization (FISH); multi-scale

Year:  2022        PMID: 35502367      PMCID: PMC9014158          DOI: 10.21037/qims-21-909

Source DB:  PubMed          Journal:  Quant Imaging Med Surg        ISSN: 2223-4306


  18 in total

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Authors:  Catherine Alix-Panabières; Klaus Pantel
Journal:  Nat Rev Cancer       Date:  2014-07-31       Impact factor: 60.716

2.  Identification of circulating tumor cells using 4-color fluorescence in situ hybridization: Validation of a noninvasive aid for ruling out lung cancer in patients with low-dose computed tomography-detected lung nodules.

Authors:  Ruth L Katz; Tanweer M Zaidi; Deep Pujara; Namita D Shanbhag; Duy Truong; Shekhar Patil; Reza J Mehran; Randa A El-Zein; Sanjay S Shete; Joshua D Kuban
Journal:  Cancer Cytopathol       Date:  2020-04-22       Impact factor: 5.284

3.  Genetically abnormal circulating cells in lung cancer patients: an antigen-independent fluorescence in situ hybridization-based case-control study.

Authors:  Ruth L Katz; Weigong He; Abha Khanna; Ricardo L Fernandez; Tanweer M Zaidi; Matthew Krebs; Nancy P Caraway; Hua-Zhong Zhang; Feng Jiang; Margaret R Spitz; David P Blowers; Carlos A Jimenez; Reza J Mehran; Stephen G Swisher; Jack A Roth; Jeffrey S Morris; Carol J Etzel; Randa El-Zein
Journal:  Clin Cancer Res       Date:  2010-07-22       Impact factor: 12.531

4.  Automated detection of circulating tumor cells with naive Bayesian classifiers.

Authors:  Carl-Magnus Svensson; Solveigh Krusekopf; Jörg Lücke; Marc Thilo Figge
Journal:  Cytometry A       Date:  2014-04-14       Impact factor: 4.355

5.  A Convolutional Neural Network Uses Microscopic Images to Differentiate between Mouse and Human Cell Lines and Their Radioresistant Clones.

Authors:  Masayasu Toratani; Masamitsu Konno; Ayumu Asai; Jun Koseki; Koichi Kawamoto; Keisuke Tamari; Zhihao Li; Daisuke Sakai; Toshihiro Kudo; Taroh Satoh; Katsutoshi Sato; Daisuke Motooka; Daisuke Okuzaki; Yuichiro Doki; Masaki Mori; Kazuhiko Ogawa; Hideshi Ishii
Journal:  Cancer Res       Date:  2018-09-25       Impact factor: 12.701

6.  U-Net: deep learning for cell counting, detection, and morphometry.

Authors:  Thorsten Falk; Dominic Mai; Robert Bensch; Özgün Çiçek; Ahmed Abdulkadir; Yassine Marrakchi; Anton Böhm; Jan Deubner; Zoe Jäckel; Katharina Seiwald; Alexander Dovzhenko; Olaf Tietz; Cristina Dal Bosco; Sean Walsh; Deniz Saltukoglu; Tuan Leng Tay; Marco Prinz; Klaus Palme; Matias Simons; Ilka Diester; Thomas Brox; Olaf Ronneberger
Journal:  Nat Methods       Date:  2018-12-17       Impact factor: 28.547

7.  Application of circulating genetically abnormal cells in the diagnosis of early-stage lung cancer.

Authors:  Xiaochang Qiu; Haoran Zhang; Yongheng Zhao; Jing Zhao; Yunyan Wan; Dezhi Li; Zhouhong Yao; Dianjie Lin
Journal:  J Cancer Res Clin Oncol       Date:  2021-04-24       Impact factor: 4.553

8.  Deep learning approach to peripheral leukocyte recognition.

Authors:  Qiwei Wang; Shusheng Bi; Minglei Sun; Yuliang Wang; Di Wang; Shaobao Yang
Journal:  PLoS One       Date:  2019-06-25       Impact factor: 3.240

9.  Label-free detection of rare circulating tumor cells by image analysis and machine learning.

Authors:  Shen Wang; Yuyuan Zhou; Xiaochen Qin; Suresh Nair; Xiaolei Huang; Yaling Liu
Journal:  Sci Rep       Date:  2020-07-22       Impact factor: 4.379

10.  Detection of circulating genetically abnormal cells in peripheral blood for early diagnosis of non-small cell lung cancer.

Authors:  Wei-Ran Liu; Bin Zhang; Chen Chen; Yue Li; Xin Ye; Dong-Jiang Tang; Jun-Cheng Zhang; Jing Ma; Yan-Ling Zhou; Xian-Jun Fan; Dong-Sheng Yue; Chen-Guang Li; Hua Zhang; Yu-Chen Ma; Yan-Song Huo; Zhen-Fa Zhang; Shu-Yu He; Chang-Li Wang
Journal:  Thorac Cancer       Date:  2020-09-28       Impact factor: 3.500

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  1 in total

1.  SMANet: multi-region ensemble of convolutional neural network model for skeletal maturity assessment.

Authors:  Yi Zhang; Wenwen Zhu; Kai Li; Dong Yan; Hua Liu; Jie Bai; Fan Liu; Xiaoguang Cheng; Tongning Wu
Journal:  Quant Imaging Med Surg       Date:  2022-07
  1 in total

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