Segmentation and detection of fluorescent 3D spots

Sundaresh Ram, Jeffrey J Rodriguez, Giovanni Bosco

Research output: Contribution to journalArticle

16 Citations (Scopus)

Abstract

The 3D spatial organization of genes and other genetic elements within the nucleus is important for regulating gene expression. Understanding how this spatial organization is established and maintained throughout the life of a cell is key to elucidating the many layers of gene regulation. Quantitative methods for studying nuclear organization will lead to insights into the molecular mechanisms that maintain gene organization as well as serve as diagnostic tools for pathologies caused by loss of nuclear structure. However, biologists currently lack automated and high throughput methods for quantitative and qualitative global analysis of 3D gene organization. In this study, we use confocal microscopy and fluorescence in-situ hybridization (FISH) as a cytogenetic technique to detect and localize the presence of specific DNA sequences in 3D. FISH uses probes that bind to specific targeted locations on the chromosomes, appearing as fluorescent spots in 3D images obtained using fluorescence microscopy. In this article, we propose an automated algorithm for segmentation and detection of 3D FISH spots. The algorithm is divided into two stages: spot segmentation and spot detection. Spot segmentation consists of 3D anisotropic smoothing to reduce the effect of noise, top-hat filtering, and intensity thresholding, followed by 3D region-growing. Spot detection uses a Bayesian classifier with spot features such as volume, average intensity, texture, and contrast to detect and classify the segmented spots aseither true or false spots. Quantitative assessment of the proposed algorithm demonstrates improved segmentation and detection accuracy compared to other techniques.

Original languageEnglish (US)
Pages (from-to)198-212
Number of pages15
JournalCytometry Part A
Volume81 A
Issue number3
DOIs
StatePublished - Mar 2012

Fingerprint

Fluorescence In Situ Hybridization
Genes
Cytogenetic Analysis
Fluorescence Microscopy
Confocal Microscopy
Noise
Chromosomes
Pathology
Gene Expression

Keywords

  • Anisotropic diffusion
  • Bayesian classification
  • FISH images
  • Region growing
  • Segmentation
  • Spot detection
  • Top-hat filtering
  • Watershed transformation

ASJC Scopus subject areas

  • Cell Biology
  • Histology
  • Pathology and Forensic Medicine

Cite this

Segmentation and detection of fluorescent 3D spots. / Ram, Sundaresh; Rodriguez, Jeffrey J; Bosco, Giovanni.

In: Cytometry Part A, Vol. 81 A, No. 3, 03.2012, p. 198-212.

Research output: Contribution to journalArticle

Ram, Sundaresh ; Rodriguez, Jeffrey J ; Bosco, Giovanni. / Segmentation and detection of fluorescent 3D spots. In: Cytometry Part A. 2012 ; Vol. 81 A, No. 3. pp. 198-212.
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