Abstract
The categorisation of desmoplastic reaction (DR) present at the
colorectal cancer (CRC) invasive front into mature, intermediate or
immature type has been previously shown to have high prognostic
significance. However, the lack of an objective and reproducible
assessment methodology for the assessment of DR has been a major hurdle
to its clinical translation. In this study, a deep learning algorithm
was trained to automatically classify immature DR on haematoxylin and
eosin digitised slides of stage II and III CRC cases (n = 41). When assessing the classifier’s performance on a test set of patient samples (n
= 40), a Dice score of 0.87 for the segmentation of myxoid stroma was
reported. The classifier was then applied to the full cohort of 528
stage II and III CRC cases, which was then divided into a training (n = 396) and a test set (n
= 132). Automatically classed DR was shown to have superior prognostic
significance over the manually classed DR in both the training and test
cohorts. The findings demonstrated that deep learning algorithms could
be applied to assist pathologists in the detection and classification of
DR in CRC in an objective, standardised and reproducible manner.
Original language | English |
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Article number | 1615 |
Journal | Cancers |
Volume | 13 |
Issue number | 7 |
DOIs | |
Publication status | Published - 31 Mar 2021 |
Keywords
- Deep learning
- Image analysis
- Desmoplastic reaction
- Colorectal cancer
- Digital pathology