Classifying non-small cell lung cancer types and transcriptomic subtypes using convolutional neural networks

Author:

Yu Kun-Hsing1ORCID,Wang Feiran2,Berry Gerald J3,Ré Christopher4,Altman Russ B567,Snyder Michael7,Kohane Isaac S1

Affiliation:

1. Department of Biomedical Informatics, Harvard Medical School, Boston, Massachusetts, USA

2. Department of Electrical Engineering, Stanford University, Stanford, California, USA

3. Department of Pathology, Stanford University, Stanford, California, USA

4. Department of Computer Science, Stanford University, Stanford, California, USA

5. Biomedical Informatics Program, Stanford University, Stanford, California, USA

6. Department of Bioengineering, Stanford University, Stanford, California, USA

7. Department of Genetics, Stanford University, Stanford, California, USA

Abstract

AbstractObjectiveNon-small cell lung cancer is a leading cause of cancer death worldwide, and histopathological evaluation plays the primary role in its diagnosis. However, the morphological patterns associated with the molecular subtypes have not been systematically studied. To bridge this gap, we developed a quantitative histopathology analytic framework to identify the types and gene expression subtypes of non-small cell lung cancer objectively.Materials and MethodsWe processed whole-slide histopathology images of lung adenocarcinoma (n = 427) and lung squamous cell carcinoma patients (n = 457) in the Cancer Genome Atlas. We built convolutional neural networks to classify histopathology images, evaluated their performance by the areas under the receiver-operating characteristic curves (AUCs), and validated the results in an independent cohort (n = 125).ResultsTo establish neural networks for quantitative image analyses, we first built convolutional neural network models to identify tumor regions from adjacent dense benign tissues (AUCs > 0.935) and recapitulated expert pathologists’ diagnosis (AUCs > 0.877), with the results validated in an independent cohort (AUCs = 0.726-0.864). We further demonstrated that quantitative histopathology morphology features identified the major transcriptomic subtypes of both adenocarcinoma and squamous cell carcinoma (P < .01).DiscussionOur study is the first to classify the transcriptomic subtypes of non-small cell lung cancer using fully automated machine learning methods. Our approach does not rely on prior pathology knowledge and can discover novel clinically relevant histopathology patterns objectively. The developed procedure is generalizable to other tumor types or diseases.

Funder

National Cancer Institute

National Institutes of Health

National Human Genome Research Institute

Mobilize Center

Stanford University

Harvard Data Science Fellowship

Harvard Medical School Center for Computational Biomedicine Award

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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