Literature DB >> 33552964

SuperHistopath: A Deep Learning Pipeline for Mapping Tumor Heterogeneity on Low-Resolution Whole-Slide Digital Histopathology Images.

Konstantinos Zormpas-Petridis1, Rosa Noguera2,3, Daniela Kolarevic Ivankovic4, Ioannis Roxanis5, Yann Jamin1, Yinyin Yuan6.   

Abstract

High computational cost associated with digital pathology image analysis approaches is a challenge towards their translation in routine pathology clinic. Here, we propose a computationally efficient framework (SuperHistopath), designed to map global context features reflecting the rich tumor morphological heterogeneity. SuperHistopath efficiently combines i) a segmentation approach using the linear iterative clustering (SLIC) superpixels algorithm applied directly on the whole-slide images at low resolution (5x magnification) to adhere to region boundaries and form homogeneous spatial units at tissue-level, followed by ii) classification of superpixels using a convolution neural network (CNN). To demonstrate how versatile SuperHistopath was in accomplishing histopathology tasks, we classified tumor tissue, stroma, necrosis, lymphocytes clusters, differentiating regions, fat, hemorrhage and normal tissue, in 127 melanomas, 23 triple-negative breast cancers, and 73 samples from transgenic mouse models of high-risk childhood neuroblastoma with high accuracy (98.8%, 93.1% and 98.3% respectively). Furthermore, SuperHistopath enabled discovery of significant differences in tumor phenotype of neuroblastoma mouse models emulating genomic variants of high-risk disease, and stratification of melanoma patients (high ratio of lymphocyte-to-tumor superpixels (p = 0.015) and low stroma-to-tumor ratio (p = 0.028) were associated with a favorable prognosis). Finally, SuperHistopath is efficient for annotation of ground-truth datasets (as there is no need of boundary delineation), training and application (~5 min for classifying a whole-slide image and as low as ~30 min for network training). These attributes make SuperHistopath particularly attractive for research in rich datasets and could also facilitate its adoption in the clinic to accelerate pathologist workflow with the quantification of phenotypes, predictive/prognosis markers.
Copyright © 2021 Zormpas-Petridis, Noguera, Ivankovic, Roxanis, Jamin and Yuan.

Entities:  

Keywords:  breast cancer; computational pathology; deep learning; digital pathology; machine learning; melanoma; neuroblastoma; tumor region classification

Year:  2021        PMID: 33552964      PMCID: PMC7855703          DOI: 10.3389/fonc.2020.586292

Source DB:  PubMed          Journal:  Front Oncol        ISSN: 2234-943X            Impact factor:   6.244


  46 in total

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2.  Locality Sensitive Deep Learning for Detection and Classification of Nuclei in Routine Colon Cancer Histology Images.

Authors:  Korsuk Sirinukunwattana; Shan E Ahmed Raza; David R J Snead; Ian A Cree; Nasir M Rajpoot
Journal:  IEEE Trans Med Imaging       Date:  2016-02-04       Impact factor: 10.048

3.  The ALK(F1174L) mutation potentiates the oncogenic activity of MYCN in neuroblastoma.

Authors:  Teeara Berry; William Luther; Namrata Bhatnagar; Yann Jamin; Evon Poon; Takaomi Sanda; Desheng Pei; Bandana Sharma; Winston R Vetharoy; Albert Hallsworth; Zai Ahmad; Karen Barker; Lisa Moreau; Hannah Webber; Wenchao Wang; Qingsong Liu; Antonio Perez-Atayde; Scott Rodig; Nai-Kong Cheung; Florence Raynaud; Bengt Hallberg; Simon P Robinson; Nathanael S Gray; Andrew D J Pearson; Suzanne A Eccles; Louis Chesler; Rani E George
Journal:  Cancer Cell       Date:  2012-07-10       Impact factor: 31.743

4.  Multifeature prostate cancer diagnosis and Gleason grading of histological images.

Authors:  Ali Tabesh; Mikhail Teverovskiy; Ho-Yuen Pang; Vinay P Kumar; David Verbel; Angeliki Kotsianti; Olivier Saidi
Journal:  IEEE Trans Med Imaging       Date:  2007-10       Impact factor: 10.048

5.  Tumor necrosis is a prognostic predictor for early recurrence and death in lymph node-positive breast cancer: a 10-year follow-up study of 728 Eastern Cooperative Oncology Group patients.

Authors:  K W Gilchrist; R Gray; B Fowble; D C Tormey; S G Taylor
Journal:  J Clin Oncol       Date:  1993-10       Impact factor: 44.544

6.  Predictive value of tumor-infiltrating lymphocytes to pathological complete response in neoadjuvant treated triple-negative breast cancers.

Authors:  Miao Ruan; Tian Tian; Jia Rao; Xiaoli Xu; Baohua Yu; Wentao Yang; Ruohong Shui
Journal:  Diagn Pathol       Date:  2018-08-31       Impact factor: 2.644

7.  Methods for Segmentation and Classification of Digital Microscopy Tissue Images.

Authors:  Quoc Dang Vu; Simon Graham; Tahsin Kurc; Minh Nguyen Nhat To; Muhammad Shaban; Talha Qaiser; Navid Alemi Koohbanani; Syed Ali Khurram; Jayashree Kalpathy-Cramer; Tianhao Zhao; Rajarsi Gupta; Jin Tae Kwak; Nasir Rajpoot; Joel Saltz; Keyvan Farahani
Journal:  Front Bioeng Biotechnol       Date:  2019-04-02

8.  CellProfiler Analyst: data exploration and analysis software for complex image-based screens.

Authors:  Thouis R Jones; In Han Kang; Douglas B Wheeler; Robert A Lindquist; Adam Papallo; David M Sabatini; Polina Golland; Anne E Carpenter
Journal:  BMC Bioinformatics       Date:  2008-11-15       Impact factor: 3.169

9.  Intrinsic susceptibility MRI identifies tumors with ALKF1174L mutation in genetically-engineered murine models of high-risk neuroblastoma.

Authors:  Yann Jamin; Laura Glass; Albert Hallsworth; Rani George; Dow-Mu Koh; Andrew D J Pearson; Louis Chesler; Simon P Robinson
Journal:  PLoS One       Date:  2014-03-25       Impact factor: 3.240

10.  Whole Slide Imaging Versus Microscopy for Primary Diagnosis in Surgical Pathology: A Multicenter Blinded Randomized Noninferiority Study of 1992 Cases (Pivotal Study).

Authors:  Sanjay Mukhopadhyay; Michael D Feldman; Esther Abels; Raheela Ashfaq; Senda Beltaifa; Nicolas G Cacciabeve; Helen P Cathro; Liang Cheng; Kumarasen Cooper; Glenn E Dickey; Ryan M Gill; Robert P Heaton; René Kerstens; Guy M Lindberg; Reenu K Malhotra; James W Mandell; Ellen D Manlucu; Anne M Mills; Stacey E Mills; Christopher A Moskaluk; Mischa Nelis; Deepa T Patil; Christopher G Przybycin; Jordan P Reynolds; Brian P Rubin; Mohammad H Saboorian; Mauricio Salicru; Mark A Samols; Charles D Sturgis; Kevin O Turner; Mark R Wick; Ji Y Yoon; Po Zhao; Clive R Taylor
Journal:  Am J Surg Pathol       Date:  2018-01       Impact factor: 6.394

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  2 in total

1.  Fast whole-slide cartography in colon cancer histology using superpixels and CNN classification.

Authors:  Frauke Wilm; Michaela Benz; Volker Bruns; Serop Baghdadlian; Jakob Dexl; David Hartmann; Petr Kuritcyn; Martin Weidenfeller; Thomas Wittenberg; Susanne Merkel; Arndt Hartmann; Markus Eckstein; Carol Immanuel Geppert
Journal:  J Med Imaging (Bellingham)       Date:  2022-03-14

Review 2.  Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives.

Authors:  Shima Mehrvar; Lauren E Himmel; Pradeep Babburi; Andrew L Goldberg; Magali Guffroy; Kyathanahalli Janardhan; Amanda L Krempley; Bhupinder Bawa
Journal:  J Pathol Inform       Date:  2021-11-01
  2 in total

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