2023
DOI: 10.1002/path.6088
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Multiscale deep learning framework captures systemic immune features in lymph nodes predictive of triple negative breast cancer outcome in large‐scale studies

Abstract: The suggestion that the systemic immune response in lymph nodes (LNs) conveys prognostic value for triple-negative breast cancer (TNBC) patients has not previously been investigated in large cohorts. We used a deep learning (DL) framework to quantify morphological features in haematoxylin and eosin-stained LNs on digitised whole slide images. From 345 breast cancer patients, 5,228 axillary LNs, cancer-free and involved, were assessed. Generalisable multiscale DL frameworks were developed to capture and quantif… Show more

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Cited by 11 publications
(5 citation statements)
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“…An early adoption of machine learning techniques was used in a study by Niemisto et al 25 In 2005, where K-means clustering algorithm was used to segment LNs based on a simplified three-color clustering scheme. Verghese et al 26 applied a modified Otsu thresholding method to localize LNs in the whole slide breast cancer images. In the study by Wang et al, 27 a U-Net autoencoder was trained using 1x magnification regional gastric cancer LN images to localize the LNs within the slide.…”
Section: Resultsmentioning
confidence: 99%
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“…An early adoption of machine learning techniques was used in a study by Niemisto et al 25 In 2005, where K-means clustering algorithm was used to segment LNs based on a simplified three-color clustering scheme. Verghese et al 26 applied a modified Otsu thresholding method to localize LNs in the whole slide breast cancer images. In the study by Wang et al, 27 a U-Net autoencoder was trained using 1x magnification regional gastric cancer LN images to localize the LNs within the slide.…”
Section: Resultsmentioning
confidence: 99%
“…The authors raised concerns about the choice of the optimal magnification for the model, illustrating this with tumor cell detection differences at 20x and 40x magnification. Verghese et al 26 trained multi-scale U-Net autoencoders with atrous convolution layers for LN sinus and germinal center detection in H&E-stained breast cancer slides. The authors trained the model using WSI crops at 2.5x, 5x and 10x magnifications, concluding that a mixture of different slide magnifications during training improved the final U-Net model performance.…”
Section: Resultsmentioning
confidence: 99%
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“…The presence of high levels of TILs and of tumor-derived immune-related gene expression are associated with improved prognosis and therapeutic response, particularly in triple-negative and HER2 + breast cancer [ 1 6 , 23 ]. In addition, morphological immune features identified in regional lymph nodes are also prognostic in TNBC [ 24 , 25 ]. Based on the hypothesis that tumor-triggered immune responses can be detected not only in the tumor microenvironment and lymph nodes but also in the peripheral blood, this study utilized CyTOF to evaluate the circulating immune cell repertoire of patients with operable breast cancer before initiation of NAC and potential associations with response to NAC.…”
Section: Discussionmentioning
confidence: 99%
“…Superpixels is another method that segments tumors into raster cells according to similarities in adjacent pixel colors or other features [17,18]. Finally, approaches can be implemented that analyze tumors on different scales (multiscaling) or to optimize raster cell size as a hyperparameter, as it is effectively changing the resolution and accuracy of the statistical modeling [19].…”
Section: Structure and Analysis Of Spatial Ic Datasetsmentioning
confidence: 99%