Literature DB >> 35474753

OC_Finder: Osteoclast segmentation, counting, and classification using watershed and deep learning.

Xiao Wang1, Mizuho Kittaka2,3, Yilin He4, Yiwei Zhang5, Yasuyoshi Ueki2,3, Daisuke Kihara6,1,7.   

Abstract

Osteoclasts are multinucleated cells that exclusively resorb bone matrix proteins and minerals on the bone surface. They differentiate from monocyte/macrophage-lineage cells in the presence of osteoclastogenic cytokines such as the receptor activator of nuclear factor-κB ligand (RANKL) and are stained positive for tartrate-resistant acid phosphatase (TRAP). In vitro, osteoclast formation assays are commonly used to assess the capacity of osteoclast precursor cells for differentiating into osteoclasts wherein the number of TRAP-positive multinucleated cells are counted as osteoclasts. Osteoclasts are manually identified on cell culture dishes by human eyes, which is a labor-intensive process. Moreover, the manual procedure is not objective and result in lack of reproducibility. To accelerate the process and reduce the workload for counting the number of osteoclasts, we developed OC_Finder, a fully automated system for identifying osteoclasts in microscopic images. OC_Finder consists of cell image segmentation with a watershed algorithm and cell classification using deep learning. OC_Finder detected osteoclasts differentiated from wild-type and Sh3bp2KI/+ precursor cells at a 99.4% accuracy for segmentation and at a 98.1% accuracy for classification. The number of osteoclasts classified by OC_Finder was at the same accuracy level with manual counting by a human expert. OC_Finder also showed consistent performance on additional datasets collected with different microscopes with different settings by a different operator. Together, successful development of OC_Finder suggests that deep learning is a useful tool to perform prompt and accurate unbiased classification and detection of specific cell types in microscopic images.

Entities:  

Keywords:  Automatic Segmentation; Deep learning; Osteoclast counting; Osteoclast segmentation; open source software

Year:  2022        PMID: 35474753      PMCID: PMC9038109          DOI: 10.3389/fbinf.2022.819570

Source DB:  PubMed          Journal:  Front Bioinform        ISSN: 2673-7647


  21 in total

1.  DeepPap: Deep Convolutional Networks for Cervical Cell Classification.

Authors:  Ling Zhang; Isabella Nogues; Ronald M Summers; Shaoxiong Liu; Jianhua Yao
Journal:  IEEE J Biomed Health Inform       Date:  2017-05-19       Impact factor: 5.772

Review 2.  Osteoimmunology: The Conceptual Framework Unifying the Immune and Skeletal Systems.

Authors:  Kazuo Okamoto; Tomoki Nakashima; Masahiro Shinohara; Takako Negishi-Koga; Noriko Komatsu; Asuka Terashima; Shinichiro Sawa; Takeshi Nitta; Hiroshi Takayanagi
Journal:  Physiol Rev       Date:  2017-10-01       Impact factor: 37.312

3.  Osteoclast differentiation factor is a ligand for osteoprotegerin/osteoclastogenesis-inhibitory factor and is identical to TRANCE/RANKL.

Authors:  H Yasuda; N Shima; N Nakagawa; K Yamaguchi; M Kinosaki; S Mochizuki; A Tomoyasu; K Yano; M Goto; A Murakami; E Tsuda; T Morinaga; K Higashio; N Udagawa; N Takahashi; T Suda
Journal:  Proc Natl Acad Sci U S A       Date:  1998-03-31       Impact factor: 11.205

4.  OC_Finder: Osteoclast segmentation, counting, and classification using watershed and deep learning.

Authors:  Xiao Wang; Mizuho Kittaka; Yilin He; Yiwei Zhang; Yasuyoshi Ueki; Daisuke Kihara
Journal:  Front Bioinform       Date:  2022-03-25

Review 5.  Bone remodeling during fracture repair: The cellular picture.

Authors:  Aaron Schindeler; Michelle M McDonald; Paul Bokko; David G Little
Journal:  Semin Cell Dev Biol       Date:  2008-07-25       Impact factor: 7.727

6.  Cellpose: a generalist algorithm for cellular segmentation.

Authors:  Carsen Stringer; Tim Wang; Michalis Michaelos; Marius Pachitariu
Journal:  Nat Methods       Date:  2020-12-14       Impact factor: 47.990

Review 7.  Sex and Gender Differences Research Design for Basic, Clinical, and Population Studies: Essentials for Investigators.

Authors:  Janet W Rich-Edwards; Ursula B Kaiser; Grace L Chen; JoAnn E Manson; Jill M Goldstein
Journal:  Endocr Rev       Date:  2018-08-01       Impact factor: 19.871

8.  Quantification of Osteoclasts in Culture, Powered by Machine Learning.

Authors:  Edo Cohen-Karlik; Zamzam Awida; Ayelet Bergman; Shahar Eshed; Omer Nestor; Michelle Kadashev; Sapir Ben Yosef; Hussam Saed; Yishay Mansour; Amir Globerson; Drorit Neumann; Yankel Gabet
Journal:  Front Cell Dev Biol       Date:  2021-05-25

9.  Deep Learning in Label-free Cell Classification.

Authors:  Claire Lifan Chen; Ata Mahjoubfar; Li-Chia Tai; Ian K Blaby; Allen Huang; Kayvan Reza Niazi; Bahram Jalali
Journal:  Sci Rep       Date:  2016-03-15       Impact factor: 4.379

10.  Microbe-Dependent Exacerbated Alveolar Bone Destruction in Heterozygous Cherubism Mice.

Authors:  Mizuho Kittaka; Tetsuya Yoshimoto; Collin Schlosser; Mikihito Kajiya; Hidemi Kurihara; Ernst J Reichenberger; Yasuyoshi Ueki
Journal:  JBMR Plus       Date:  2020-04-14
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  2 in total

1.  OC_Finder: Osteoclast segmentation, counting, and classification using watershed and deep learning.

Authors:  Xiao Wang; Mizuho Kittaka; Yilin He; Yiwei Zhang; Yasuyoshi Ueki; Daisuke Kihara
Journal:  Front Bioinform       Date:  2022-03-25

2.  Automated Quantification of Human Osteoclasts Using Object Detection.

Authors:  Sampsa Kohtala; Tonje Marie Vikene Nedal; Carlo Kriesi; Siv Helen Moen; Qianli Ma; Kristin Sirnes Ødegaard; Therese Standal; Martin Steinert
Journal:  Front Cell Dev Biol       Date:  2022-07-05
  2 in total

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