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Sökning: WFRF:(Nordling Stig) > (2015-2019) > Breast cancer outco...

Breast cancer outcome prediction with tumour tissue images and machine learning

Turkki, Riku (författare)
Univ Helsinki, Inst Mol Med Finland FIMM, Helsinki, Finland;Karolinska Inst, Sci Life Lab SciLifeLab, Solna, Sweden
Byckhov, Dmitrii (författare)
Univ Helsinki, Inst Mol Med Finland FIMM, Helsinki, Finland
Lundin, Mikael (författare)
Univ Helsinki, Inst Mol Med Finland FIMM, Helsinki, Finland
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Isola, Jorma (författare)
Univ Tampere, Dept Canc Biol, BioMediTech, Tampere, Finland
Nordling, Stig (författare)
Univ Helsinki, Dept Pathol, Medicum, Helsinki, Finland
Kovanen, Panu E. (författare)
Helsinki Univ Hosp, HUSLAB, Ctr Canc, Helsinki, Finland;Helsinki Univ Hosp, Medicum, Ctr Canc, Helsinki, Finland;Univ Helsinki, Helsinki, Finland
Verrill, Clare (författare)
Univ Oxford, Nuffield Dept Surg Sci, Oxford, England;NIHR Oxford Biomed Res Ctr, Oxford, England
von Smitten, Karl (författare)
Eira Hosp, Helsinki, Finland
Joensuu, Heikki (författare)
Univ Helsinki, Helsinki, Finland;Helsinki Univ Hosp, Dept Oncol, Helsinki, Finland
Lundin, Johan (författare)
Karolinska Institutet
Linder, Nina (författare)
Uppsala universitet,Internationell mödra- och barnhälsovård (IMCH),Univ Helsinki, Inst Mol Med Finland FIMM, Helsinki, Finland
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 (creator_code:org_t)
2019-05-22
2019
Engelska.
Ingår i: Breast Cancer Research and Treatment. - : SPRINGER. - 0167-6806 .- 1573-7217. ; 177:1, s. 41-52
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
Stäng  
  • Purpose: Recent advances in machine learning have enabled better understanding of large and complex visual data. Here, we aim to investigate patient outcome prediction with a machine learning method using only an image of tumour sample as an input.Methods: Utilising tissue microarray (TMA) samples obtained from the primary tumour of patients (N=1299) within a nationwide breast cancer series with long-term-follow-up, we train and validate a machine learning method for patient outcome prediction. The prediction is performed by classifying samples into low or high digital risk score (DRS) groups. The outcome classifier is trained using sample images of 868 patients and evaluated and compared with human expert classification in a test set of 431 patients.Results: In univariate survival analysis, the DRS classification resulted in a hazard ratio of 2.10 (95% CI 1.33-3.32, p=0.001) for breast cancer-specific survival. The DRS classification remained as an independent predictor of breast cancer-specific survival in a multivariate Cox model with a hazard ratio of 2.04 (95% CI 1.20-3.44, p=0.007). The accuracy (C-index) of the DRS grouping was 0.60 (95% CI 0.55-0.65), as compared to 0.58 (95% CI 0.53-0.63) for human expert predictions based on the same TMA samples.Conclusions: Our findings demonstrate the feasibility of learning prognostic signals in tumour tissue images without domain knowledge. Although further validation is needed, our study suggests that machine learning algorithms can extract prognostically relevant information from tumour histology complementing the currently used prognostic factors in breast cancer.

Ämnesord

MEDICIN OCH HÄLSOVETENSKAP  -- Klinisk medicin -- Cancer och onkologi (hsv//swe)
MEDICAL AND HEALTH SCIENCES  -- Clinical Medicine -- Cancer and Oncology (hsv//eng)

Nyckelord

Breast cancer
Machine learning
Deep learning
Outcome prediction

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