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Deep learning for automated scoring of immunohistochemically stained tumour tissue sections - Validation across tumour types based on patient outcomes.
Kildal, Wanja; Cyll, Karolina; Kalsnes, Joakim; Islam, Rakibul; Julbø, Frida M; Pradhan, Manohar; Ersvær, Elin; Shepherd, Neil; Vlatkovic, Ljiljana; Tekpli, Xavier; Garred, Øystein; Kristensen, Gunnar B; Askautrud, Hanne A; Hveem, Tarjei S; Danielsen, Håvard E.
Afiliação
  • Kildal W; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Cyll K; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Kalsnes J; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Islam R; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Julbø FM; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Pradhan M; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Ersvær E; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Shepherd N; Gloucestershire Cellular Pathology Laboratory, Gloucester, GL53 7AN, UK.
  • Vlatkovic L; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Tekpli X; Department of Medical Genetics, Institute of Clinical Medicine, Faculty of Medicine, University of Oslo and Oslo University Hospital, NO-0450, Oslo, Norway.
  • Garred Ø; Department of Pathology, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Kristensen GB; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Askautrud HA; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Hveem TS; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
  • Danielsen HE; Institute for Cancer Genetics and Informatics, Oslo University Hospital, NO-0424, Oslo, Norway.
Heliyon ; 10(13): e32529, 2024 Jul 15.
Article em En | MEDLINE | ID: mdl-39040241
ABSTRACT
We aimed to develop deep learning (DL) models to detect protein expression in immunohistochemically (IHC) stained tissue-sections, and to compare their accuracy and performance with manually scored clinically relevant proteins in common cancer types. Five cancer patient cohorts (colon, two prostate, breast, and endometrial) were included. We developed separate DL models for scoring IHC-stained tissue-sections with nuclear, cytoplasmic, and membranous staining patterns. For training, we used images with annotations of cells with positive and negative staining from the colon cohort stained for Ki-67 and PMS2 (nuclear model), the prostate cohort 1 stained for PTEN (cytoplasmic model) and ß-catenin (membranous model). The nuclear DL model was validated for MSH6 in the colon, MSH6 and PMS2 in the endometrium, Ki-67 and CyclinB1 in prostate, and oestrogen and progesterone receptors in the breast cancer cohorts. The cytoplasmic DL model was validated for PTEN and Mapre2, and the membranous DL model for CD44 and Flotillin1, all in prostate cohorts. When comparing the results of manual and DL scores in the validation sets, using manual scores as the ground truth, we observed an average correct classification rate of 91.5 % (76.9-98.5 %) for the nuclear model, 85.6 % (73.3-96.6 %) for the cytoplasmic model, and 78.4 % (75.5-84.3 %) for the membranous model. In survival analyses, manual and DL scores showed similar prognostic impact, with similar hazard ratios and p-values for all DL models. Our findings demonstrate that DL models offer a promising alternative to manual IHC scoring, providing efficiency and reproducibility across various data sources and markers.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article