Deep learning in digital pathology image analysis: a survey.

Shujian Deng, Xin Zhang, Wen Yan, Eric I-Chao Chang, Yubo Fan, Maode Lai, Yan Xu
Author Information
  1. Shujian Deng: School of Biological Science and Medical Engineering, Beihang University, Beijing, 100191, China.
  2. Xin Zhang: School of Biological Science and Medical Engineering, Beihang University, Beijing, 100191, China.
  3. Wen Yan: School of Biological Science and Medical Engineering, Beihang University, Beijing, 100191, China.
  4. Eric I-Chao Chang: Microsoft Research Asia, Beijing, 100080, China.
  5. Yubo Fan: School of Biological Science and Medical Engineering, Beihang University, Beijing, 100191, China.
  6. Maode Lai: Department of Pathology, School of Medicine, Zhejiang University, Hangzhou, 310007, China.
  7. Yan Xu: School of Biological Science and Medical Engineering, Beihang University, Beijing, 100191, China. xuyan04@gmail.com.

Abstract

Deep learning (DL) has achieved state-of-the-art performance in many digital pathology analysis tasks. Traditional methods usually require hand-crafted domain-specific features, and DL methods can learn representations without manually designed features. In terms of feature extraction, DL approaches are less labor intensive compared with conventional machine learning methods. In this paper, we comprehensively summarize recent DL-based image analysis studies in histopathology, including different tasks (e.g., classification, semantic segmentation, detection, and instance segmentation) and various applications (e.g., stain normalization, cell/gland/region structure analysis). DL methods can provide consistent and accurate outcomes. DL is a promising tool to assist pathologists in clinical diagnosis.

Keywords

MeSH Term

Deep Learning
Machine Learning
Surveys and Questionnaires

Word Cloud

Created with Highcharts 10.0.0DLlearningmethodspathologyanalysissegmentationDeepdigitaltasksfeaturescanimageegclassificationdetectionachievedstate-of-the-artperformancemanyTraditionalusuallyrequirehand-crafteddomain-specificlearnrepresentationswithoutmanuallydesignedtermsfeatureextractionapproacheslesslaborintensivecomparedconventionalmachinepapercomprehensivelysummarizerecentDL-basedstudieshistopathologyincludingdifferentsemanticinstancevariousapplicationsstainnormalizationcell/gland/regionstructureprovideconsistentaccurateoutcomespromisingtoolassistpathologistsclinicaldiagnosisanalysis:surveydeep

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