Deep Learning based Prediction of MSI in Colorectal Cancer via
Prediction of the Status of MMR Markers
- URL: http://arxiv.org/abs/2203.00449v1
- Date: Thu, 24 Feb 2022 18:56:59 GMT
- Title: Deep Learning based Prediction of MSI in Colorectal Cancer via
Prediction of the Status of MMR Markers
- Authors: Ruqayya Awan, Mohammed Nimir, Shan E Ahmed Raza, Johannes Lotz, David
Snead, Andrew Robison, Nasir M. Rajpoot
- Abstract summary: MSI or MMR deficiency is one of the well-studied aberrations in terms of molecular changes.
We present our work on predicting MSI status in a two-stage process using a single target slide either stained with CK818 or H&E.
- Score: 10.686818568750525
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An accurate diagnosis and profiling of tumour are critical to the best
treatment choices for cancer patients. In addition to the cancer type and its
aggressiveness, molecular heterogeneity also plays a vital role in treatment
selection. MSI or MMR deficiency is one of the well-studied aberrations in
terms of molecular changes. Colorectal cancer patients with MMR deficiency
respond well to immunotherapy, hence assessment of the relevant molecular
markers can assist clinicians in making optimal treatment selections for
patients. Immunohistochemistry is one of the ways for identifying these
molecular changes which requires additional sections of tumour tissue.
Introduction of automated methods that can predict MSI or MMR status from a
target image without the need for additional sections can substantially reduce
the cost associated with it. In this work, we present our work on predicting
MSI status in a two-stage process using a single target slide either stained
with CK818 or H\&E. First, we train a multi-headed convolutional neural network
model where each head is responsible for predicting one of the MMR protein
expressions. To this end, we perform registration of MMR slides to the target
slide as a pre-processing step. In the second stage, statistical features
computed from the MMR prediction maps are used for the final MSI prediction.
Our results demonstrate that MSI classification can be improved on
incorporating fine-grained MMR labels in comparison to the previous approaches
in which coarse labels (MSI/MSS) are utilised.
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