IVCVLGDec 28, 2019

Deep neural network models for computational histopathology: A survey

arXiv:1912.12378v2705 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers in computational pathology, but is incremental as it summarizes existing work without new results.

This survey reviews over 130 papers on deep learning approaches for histopathological image analysis, covering methods like supervised and unsupervised learning, and discusses datasets, challenges, and future directions.

Histopathological images contain rich phenotypic information that can be used to monitor underlying mechanisms contributing to diseases progression and patient survival outcomes. Recently, deep learning has become the mainstream methodological choice for analyzing and interpreting cancer histology images. In this paper, we present a comprehensive review of state-of-the-art deep learning approaches that have been used in the context of histopathological image analysis. From the survey of over 130 papers, we review the fields progress based on the methodological aspect of different machine learning strategies such as supervised, weakly supervised, unsupervised, transfer learning and various other sub-variants of these methods. We also provide an overview of deep learning based survival models that are applicable for disease-specific prognosis tasks. Finally, we summarize several existing open datasets and highlight critical challenges and limitations with current deep learning approaches, along with possible avenues for future research.

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