2019
DOI: 10.1158/1538-7445.am2019-4446
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Abstract 4446: Assessment of tissue composition with digital pathology in colorectal cancer

Abstract: Background: The tumor microenvironment is a key feature to understand cancer biology and may be used clinically. Quantification of tissue composition is usually based either on visual pathological review (VPR) or deconvolution of whole genome molecular data. Although the former is a direct measurement it has modest reproducibility while the latter is an indirect measurement of unclear accuracy, expensive and not always available. Here we test digital pathology coupled with machine learning as a new tool to ass… Show more

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Cited by 3 publications
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“…Alternatively, with low D:I, patients can be reassured and follow surveillance with greater confidence. DNN can also be used on biopsy specimens 8 so could contribute to the initial decision for LE. Further work with larger patient numbers is required to determine whether D:I can also indicate radiosensitivity when considering adjuvant CRT.…”
Section: Discussionmentioning
confidence: 99%
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“…Alternatively, with low D:I, patients can be reassured and follow surveillance with greater confidence. DNN can also be used on biopsy specimens 8 so could contribute to the initial decision for LE. Further work with larger patient numbers is required to determine whether D:I can also indicate radiosensitivity when considering adjuvant CRT.…”
Section: Discussionmentioning
confidence: 99%
“…A stained section was annotated to indicate the cancer then scanned. Artificial intelligence (AI)‐based histomorphological tissue classification was undertaken using a deep neural net algorithm (DNN) 8 to quantify tissue composition across the whole lesion. DNN automatically segments the tumour into the following compartments (Figure 1) and quantifies the area (mm 2 ) with a maximum resolution of 50 µm 2 for a single area: Background (white space, excluded from subsequent analysis). Necrosis. Epithelium (tumour area). Desmoplastic stroma. Inflamed stroma. Mucin. Non‐neoplastic mesenchymal components of bowel wall. …”
Section: Methodsmentioning
confidence: 99%
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“…A deep neural network algorithm (Simoyan and Zisserman VGG https://arxiv. org/abs/1409.1556) was trained to segment and quantify individual tissue areas as described in (28). Area measurements were normalized by total stromal content.…”
Section: Histotype Analysismentioning
confidence: 99%