FrenchFISH: Poisson models for quantifying DNA copy-number from fluorescence in situ hybridisation of tissue sections
File(s)FrenchFISH_JCO_CCI_Formatted_Revised_Clean.pdf (9.62 MB)
Accepted version
Author(s)
Type
Journal Article
Abstract
PURPOSE
Chromosomal aberration and DNA copy number change are robust hallmarks of cancer. The gold standard for detecting copy number changes in tumor cells is fluorescence in situ hybridization (FISH) using locus-specific probes that are imaged as fluorescent spots. However, spot counting often does not perform well on solid tumor tissue sections due to partially represented or overlapping nuclei.
MATERIALS AND METHODS
To overcome these challenges, we have developed a computational approach called FrenchFISH, which comprises a nuclear volume correction method coupled with two types of Poisson models: either a Poisson model for improved manual spot counting without the need for control probes or a homogeneous Poisson point process model for automated spot counting.
RESULTS
We benchmarked the performance of FrenchFISH against previous approaches using a controlled simulation scenario and tested it experimentally in 12 ovarian carcinoma FFPE-tissue sections for copy number alterations at three loci (c-Myc, hTERC, and SE7). FrenchFISH outperformed standard spot counting with 74% of the automated counts having < 1 copy number difference from the manual counts and 17% having < 2 copy number differences, while taking less than one third of the time of manual counting.
CONCLUSION
FrenchFISH is a general approach that can be used to enhance clinical diagnosis on sections of any tissue by both speeding up and improving the accuracy of spot count estimates.
Chromosomal aberration and DNA copy number change are robust hallmarks of cancer. The gold standard for detecting copy number changes in tumor cells is fluorescence in situ hybridization (FISH) using locus-specific probes that are imaged as fluorescent spots. However, spot counting often does not perform well on solid tumor tissue sections due to partially represented or overlapping nuclei.
MATERIALS AND METHODS
To overcome these challenges, we have developed a computational approach called FrenchFISH, which comprises a nuclear volume correction method coupled with two types of Poisson models: either a Poisson model for improved manual spot counting without the need for control probes or a homogeneous Poisson point process model for automated spot counting.
RESULTS
We benchmarked the performance of FrenchFISH against previous approaches using a controlled simulation scenario and tested it experimentally in 12 ovarian carcinoma FFPE-tissue sections for copy number alterations at three loci (c-Myc, hTERC, and SE7). FrenchFISH outperformed standard spot counting with 74% of the automated counts having < 1 copy number difference from the manual counts and 17% having < 2 copy number differences, while taking less than one third of the time of manual counting.
CONCLUSION
FrenchFISH is a general approach that can be used to enhance clinical diagnosis on sections of any tissue by both speeding up and improving the accuracy of spot count estimates.
Date Issued
2021-02-11
Date Acceptance
2020-11-16
Citation
Journal of Clinical Oncology, 2021, 5, pp.176-186
ISSN
0732-183X
Publisher
American Society of Clinical Oncology
Start Page
176
End Page
186
Journal / Book Title
Journal of Clinical Oncology
Volume
5
Copyright Statement
© 2021 American Society of Clinical Oncology. All rights reserved. This paper is licensed under the Creative Commons Attribution 4.0 License: https://creativecommons.org/licenses/by/4.0/
License URL
Sponsor
Imperial College Healthcare NHS Trust- BRC Funding
Cancer Research UK
Ovarian Cancer Action
Grant Number
RDB01
RG71079
n/a
Subjects
Oncology & Carcinogenesis
1103 Clinical Sciences
1112 Oncology and Carcinogenesis
Publication Status
Published
Date Publish Online
2021-02-11