Tumour karyotype - PowerPoint PPT Presentation

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Tumour karyotype

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Chromosomal aberrations are being investigated as diagnostic indicators of ... Some false positives are they real? Pooling across chromosomes results in big gains ... – PowerPoint PPT presentation

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Title: Tumour karyotype


1
Tumour karyotype
Spectral karyotyping showing chromosomal
aberrations in cancer cell lines
2
Chromosomal aberrations
  • Segments of DNA that get duplicated
  • Gains
  • Segments of DNA that get deleted
  • Losses
  • Chromosomal aberrations are being investigated as
    diagnostic indicators of cancer and other
    diseases
  • Better diagnosis of disease
  • Potentially reveals biomolecular mechanisms of
    disease
  • This research is done using
  • array comparative genomic hybridization (aCGH)
  • Measures DNA copy number changes

3
Array CGH
  • Array CGH is a genetic technique used to identify
    chromosomal aberrations in cancer
  • High resolution
  • Full coverage

4
Array CGH data
  • Measures log2 ratios of normal vs sample for
    pre-specified segments of the genome called
    clones
  • Theoretical log2 ratios
  • 1 copy gain (duplication) log(3/2) 0.58
  • Neutral log (2/2) 0
  • 1 copy loss (deletion) log(1/2) -1
  • Measurement based on detection of hybridization
    level to probes on an array
  • 30,000 measurements per sample

5
Computational challenges
  • Noisy signals
  • Spatial dependence between adjacent clones
  • Outliers
  • Systematic errors
  • Copy number polymorphisms

6
Our approach
  • Use a supervised hidden Markov model (HMM) to
    model spatial dependency between clones
  • States are loss, neutral, gain-one, gain-many
  • Infer the unobserved state sequence from the data
    using a standard efficient algorithm called for
    forwards-backwards
  • This part of the model is standard
  • Use a Gaussian mixture model to model the
    outliers separately from the inliers
  • Inliers have spatial dependence
  • Outliers do not
  • Use prior knowledge about locations of CNPs to
    inform the model about possible locations of
    outliers
  • Several published lists of CNPs are available
  • Internally generated list more comprehensive
  • Pool data across chromosomes to gain statistical
    strength

7
(No Transcript)
8
Test data
  • Mantle cell lymphoma cell lines with ground
    truth
  • 123 losses and 72 gains covering approximately 1
    of the human genome
  • Compare results to state-of-the-art algorithms

9
Results
LSP-HMM-C had 97 recall and 83 precision
10
Example results
LSP-HMM
11
Example results
MERGELEVELS
Base-HMM
12
Conclusions
  • HMM framework superior to MergeLevels
  • Adding robustness further improves performance
    over the Base-HMM
  • Adding LSP information improves performance
    marginally over robust HMM, but importantly does
    not make results worse
  • Motivation for using more comprehensive lists to
    improve results
  • Some false positives are they real?
  • Pooling across chromosomes results in big gains
  • Data more easily overwhelms incorrect priors
  • Makes the algorithm less sensitive to parameter
    settings
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