4.6 Article

Deep Learning for Automatic Subclassification of Gastric Carcinoma Using Whole-Slide Histopathology Images

Journal

CANCERS
Volume 13, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/cancers13153811

Keywords

gastric cancer; differentiated; undifferentiated; mucinous; deep learning; digital pathology

Categories

Funding

  1. National Research Foundation of Korea (NRF) - Korean government (Ministry of Science and ICT) [2019R1F1A1062367]
  2. National Research Foundation of Korea [2019R1F1A1062367] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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The study demonstrated that a deep learning-based tissue classifier can be a useful tool for quantitative analysis of cancer tissue slides, showing the significant prognostic value of histomorphologic types in gastric cancer. This tool can efficiently support pathological workflow and provide insights into treatment planning.
Simple Summary The histopathologic type is one of the most important prognostic factors in gastric cancer (GC), which underpins the basic strategy for surgical management. In the present study, a fully automated approach was applied to distinguish differentiated/undifferentiated and non-mucinous/mucinous tumor types in GC tissue whole-slide images from The Cancer Genome Atlas (TCGA) stomach adenocarcinoma dataset (TCGA-STAD). The patch-level areas under the curves for the receiver operating characteristic curves for the differentiated/undifferentiated and non-mucinous/mucinous classifiers were 0.932 and 0.979, respectively. We also validated the classifiers on our own datasets and confirmed that the generalizability of the classifiers is excellent. The results indicate that the deep-learning-based tissue classifier could be a useful tool for the quantitative analysis of cancer tissue slides. Histomorphologic types of gastric cancer (GC) have significant prognostic values that should be considered during treatment planning. Because the thorough quantitative review of a tissue slide is a laborious task for pathologists, deep learning (DL) can be a useful tool to support pathologic workflow. In the present study, a fully automated approach was applied to distinguish differentiated/undifferentiated and non-mucinous/mucinous tumor types in GC tissue whole-slide images from The Cancer Genome Atlas (TCGA) stomach adenocarcinoma dataset (TCGA-STAD). By classifying small patches of tissue images into differentiated/undifferentiated and non-mucinous/mucinous tumor tissues, the relative proportion of GC tissue subtypes can be easily quantified. Furthermore, the distribution of different tissue subtypes can be clearly visualized. The patch-level areas under the curves for the receiver operating characteristic curves for the differentiated/undifferentiated and non-mucinous/mucinous classifiers were 0.932 and 0.979, respectively. We also validated the classifiers on our own GC datasets and confirmed that the generalizability of the classifiers is excellent. The results indicate that the DL-based tissue classifier could be a useful tool for the quantitative analysis of cancer tissue slides. By combining DL-based classifiers for various molecular and morphologic variations in tissue slides, the heterogeneity of tumor tissues can be unveiled more efficiently.

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