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Poster Display

197P - Computational pathology pipeline enables quantification of intratumor heterogeneity and tumor-infiltrating lymphocyte score

Date

07 Dec 2023

Session

Poster Display

Presenters

Daniel Tiezzi

Citation

Annals of Oncology (2023) 20 (suppl_1): 100621-100621. 10.1016/iotech/iotech100621

Authors

D.G. Tiezzi1, A. Fröhlich2, F. Chahud3, S. Pagnota4

Author affiliations

  • 1 HC-FMRP-USP - Hospital das Clínicas da Faculdade de Medicina de Ribeirao, Ribeirao Preto/BR
  • 2 Federal University of Santa Catarina UFSC, Araranguá/BR
  • 3 Faculdade de Medicina de Ribeirão Preto, Ribeirão Preto/BR
  • 4 University of Sannio RCOST, Benevento/IT

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Abstract 197P

Background

Tumor mutation burden, intratumor heterogeneity and the cancer related immune infiltrate are associated with response to target and immune therapies in several cancer types. The aim of this study is to establish a computational pathology (CPath) pipeline for investigating useful histopathological features in hematoxylin and eosin (H&E) whole slide images (WSIs). The pipeline allows for the segmentation and classification of nuclei. As an application, a machine learning approach is used to quantify intratumor heterogeneity (ITH) and tumor-infiltrating lymphocyte (TIL) scores.

Methods

We randomly selected 178 invasive ductal carcinomas WSIs from the TCGA database to process. Image annotation and nuclei detection were performed on QuPath by a pathologist using StarDist and used to train a SVM-based nuclei type classifier. The classifier was trained to distinguish between tumor, lymphocyte, and stroma. A total of 113.211 nuclei images were extracted using OpenSlide and used to train an autoencoder for dimensionality reduction. The variability of the WSIs was computed by applying a statistical measure of dispersion to the feature vectors. The TIL score was computed as the average minimum distance between a tumor cell and its nearest lymphocyte neighbor. We used the mutation burden, the ITH, PAM50 classification, nuclear and histological grades data from [https://doi.org/10.1038/nm.3984] to validate our ITH score. The percentage of infiltrating lymphocytes inferred by the quanTIseq pipeline based on RNAseq data was used to validate the SVM model.

Results

The nuclei classifier achieved 88% accuracy on the test set and the 96%/92% sensitivity to tumor/lymphocyte on a validation dataset. The mean squared error of the autoencoder was 0.0004 in the test set. The ITH score was associated with the clonal number of a tumor (x2 = 8.8, p= 0.03). Finally, we observed a positive correlation between the TIL/tumor ratio inferred by the CPath pipeline and the total number of T lymphocytes inferred by quanTIseq (Spearman= 0. 34, p < 0.0001).

Conclusions

We explored a CPath pipeline for detecting and classifying nuclei. The pipeline was used to compute ITH and TIL scores which correlated with validation data. Thus, validating our pipeline.

Legal entity responsible for the study

D.G. Tiezzi.

Funding

Has not received any funding.

Disclosure

All authors have declared no conflicts of interest.

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