Classification of lung adenocarcinoma transcriptome subtypes from pathological images using deep convolutional networks

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Abstract

Purpose: Convolutional neural networks have become rapidly popular for image recognition and image analysis because of its powerful potential. In this paper, we developed a method for classifying subtypes of lung adenocarcinoma from pathological images using neural network whose that can evaluate phenotypic features from wider area to consider cellular distributions. Methods: In order to recognize the types of tumors, we need not only to detail features of cells, but also to incorporate statistical distribution of the different types of cells. Variants of autoencoders as building blocks of pre-trained convolutional layers of neural networks are implemented. A sparse deep autoencoder which minimizes local information entropy on the encoding layer is then proposed and applied to images of size 2048 × 2048. We applied this model for feature extraction from pathological images of lung adenocarcinoma, which is comprised of three transcriptome subtypes previously defined by the Cancer Genome Atlas network. Since the tumor tissue is composed of heterogeneous cell populations, recognition of tumor transcriptome subtypes requires more information than local pattern of cells. The parameters extracted using this approach will then be used in multiple reduction stages to perform classification on larger images. Results: We were able to demonstrate that these networks successfully recognize morphological features of lung adenocarcinoma. We also performed classification and reconstruction experiments to compare the outputs of the variants. The results showed that the larger input image that covers a certain area of the tissue is required to recognize transcriptome subtypes. The sparse autoencoder network with 2048 × 2048 input provides a 98.9% classification accuracy. Conclusion: This study shows the potential of autoencoders as a feature extraction paradigm and paves the way for a whole slide image analysis tool to predict molecular subtypes of tumors from pathological features.

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CITATION STYLE

APA

Antonio, V. A. A., Ono, N., Saito, A., Sato, T., Altaf-Ul-Amin, M., & Kanaya, S. (2018). Classification of lung adenocarcinoma transcriptome subtypes from pathological images using deep convolutional networks. International Journal of Computer Assisted Radiology and Surgery, 13(12), 1905–1913. https://doi.org/10.1007/s11548-018-1835-2

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