2019
DOI: 10.1038/s41598-019-41595-2
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Automated tumour budding quantification by machine learning augments TNM staging in muscle-invasive bladder cancer prognosis

Abstract: Tumour budding has been described as an independent prognostic feature in several tumour types. We report for the first time the relationship between tumour budding and survival evaluated in patients with muscle invasive bladder cancer. A machine learning-based methodology was applied to accurately quantify tumour buds across immunofluorescence labelled whole slide images from 100 muscle invasive bladder cancer patients. Furthermore, tumour budding was found to be correlated to TNM (p = 0.00089) and pT (p = 0.… Show more

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Cited by 37 publications
(42 citation statements)
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“…In particular, we found that high content of TBs in the invasive frontin, frontout, and tumour core as well as low number of CD68 + cells and high PD-L1 expression in the invasive frontout are indicators of bad prognosis. This supports previous findings in the literature [33,36,66,53]. High density of CD8 + , CD3 + , and CD68 + cells in the invasive frontin, frontout, and tumour core was associated with good prognosis by our models, as similarly reported in other studies [23,67].…”
Section: Discussionsupporting
confidence: 93%
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“…In particular, we found that high content of TBs in the invasive frontin, frontout, and tumour core as well as low number of CD68 + cells and high PD-L1 expression in the invasive frontout are indicators of bad prognosis. This supports previous findings in the literature [33,36,66,53]. High density of CD8 + , CD3 + , and CD68 + cells in the invasive frontin, frontout, and tumour core was associated with good prognosis by our models, as similarly reported in other studies [23,67].…”
Section: Discussionsupporting
confidence: 93%
“…For the quantification of tumours buds, segmentation of the epithelial cells was required. The CNN-RF methodology described by Brieu et al [71] and extended in [36] was adopted. Briefly, a convolutional neural network (CNN) was trained on an annotated data set of epithelium and non-epithelium IF images.…”
Section: Methodsmentioning
confidence: 99%
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